US20120040848A2 - Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen - Google Patents

Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen Download PDF

Info

Publication number
US20120040848A2
US20120040848A2 US12/999,907 US99990709A US2012040848A2 US 20120040848 A2 US20120040848 A2 US 20120040848A2 US 99990709 A US99990709 A US 99990709A US 2012040848 A2 US2012040848 A2 US 2012040848A2
Authority
US
United States
Prior art keywords
genes
gene
sample
tumor
expression
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Granted
Application number
US12/999,907
Other versions
US20110183862A1 (en
US9347088B2 (en
Inventor
Marie-Annick Buendia
Carolina Niell
Stefano Cairo
Aurelien de Reynies
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Centre National de la Recherche Scientifique CNRS
Institut Pasteur de Lille
Institut National de la Sante et de la Recherche Medicale INSERM
Original Assignee
Centre National de la Recherche Scientifique CNRS
Institut Pasteur de Lille
Institut National de la Sante et de la Recherche Medicale INSERM
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Priority claimed from EP08290628A external-priority patent/EP2138589A1/en
Application filed by Centre National de la Recherche Scientifique CNRS, Institut Pasteur de Lille, Institut National de la Sante et de la Recherche Medicale INSERM filed Critical Centre National de la Recherche Scientifique CNRS
Assigned to INSTITUT PASTEUR, CENTRE NATIONAL DE LA RECHERCHE SCIENTIFIQUE (CNRS), INSTITUT NATIONAL DE LA SANTE ET DE LA RECHERCHE MEDICALE (INSERM) reassignment INSTITUT PASTEUR ASSIGNMENT OF ASSIGNORS INTEREST (SEE DOCUMENT FOR DETAILS). Assignors: Cairo, Stefano, NIELL, CAROLINA ARMENGOL, BUENDIA, MARIE ANNICK, DE REYNIES, AURELIEN
Publication of US20110183862A1 publication Critical patent/US20110183862A1/en
Publication of US20120040848A2 publication Critical patent/US20120040848A2/en
Application granted granted Critical
Publication of US9347088B2 publication Critical patent/US9347088B2/en
Expired - Fee Related legal-status Critical Current
Adjusted expiration legal-status Critical

Links

Images

Classifications

    • CCHEMISTRY; METALLURGY
    • C12BIOCHEMISTRY; BEER; SPIRITS; WINE; VINEGAR; MICROBIOLOGY; ENZYMOLOGY; MUTATION OR GENETIC ENGINEERING
    • C12QMEASURING OR TESTING PROCESSES INVOLVING ENZYMES, NUCLEIC ACIDS OR MICROORGANISMS; COMPOSITIONS OR TEST PAPERS THEREFOR; PROCESSES OF PREPARING SUCH COMPOSITIONS; CONDITION-RESPONSIVE CONTROL IN MICROBIOLOGICAL OR ENZYMOLOGICAL PROCESSES
    • C12Q1/00Measuring or testing processes involving enzymes, nucleic acids or microorganisms; Compositions therefor; Processes of preparing such compositions
    • C12Q1/68Measuring or testing processes involving enzymes, nucleic acids or microorganisms; Compositions therefor; Processes of preparing such compositions involving nucleic acids
    • C12Q1/6809Methods for determination or identification of nucleic acids involving differential detection

Definitions

  • the present invention relates to a method to in vitro determine the grade of a liver tumor in a sample previously obtained from a patient, using a molecular signature based on the expression of a set of genes comprising at least 2, especially has or consist of 2 to 16 genes, preferably a set of 16 genes.
  • the method focuses on hepatoblastoma (HB) or hepatocellular carcinoma (HCC), in adults or in children.
  • the invention is also directed to sets of primers, sets of probes, compositions, kits or arrays, comprising primers or probes specific for a set of genes comprising at least 2 genes, especially has or consists of 2 to 16 genes, preferably exactly 16 genes.
  • Said sets, kits and arrays are tools suitable to determine the grade of a liver tumor in a patient.
  • liver is a common site of metastases from a variety of organs such as lung, breast, colon and rectum.
  • liver is also a site of different kinds of cancerous tumors that start in the liver (primary liver cancers).
  • the most frequent is the Hepatocellular Carcinoma (HCC) (about 3 out of 4 primary liver cancers are this type) and is mainly diagnosed in adults.
  • HCC Hepatocellular Carcinoma
  • CC cholangiocarcinoma
  • HB hepatoblastoma
  • the prognosis and treatment options associated with these different kinds of cancers is difficult to predict, and is dependent in particular on the stage of the cancer (such as the size of the tumor, whether it affects part or all of the liver, has spread to other places in the body or its aggressiveness). Therefore, it is important for clinicians and physicians to establish a classification of primary liver cancers (HCC or HB) to propose the most appropriate treatment and adopt the most appropriate surgery strategy. Some factors are currently used (degree of local invasion, histological types of cancer with specific grading, tumour markers and general status of the patient) but have been found to not be accurate and sufficient enough to ensure a correct classification.
  • the PRETEXT (pre-treatment extent of disease) system designed by the International Childhood Liver Tumor Strategy Group (SIOPEL) is a non invasive technique commonly used by clinicians, to assess the extent of liver cancer, to determine the time of surgery and to adapt the treatment protocol.
  • SIOPEL International Childhood Liver Tumor Strategy Group
  • a revised staging system taking into account other criteria, such as caudate lobe involvement, extrahepatic abdominal disease, tumor focality, tumor rupture or intraperitoneal haemorrhage, distant metastases, lymph node metastases, portal vein involvement and involvement of the IVC (inferior vena cava) and/or hepatic veins, has been recently proposed (Roebuck; 2007; Pediatr Radiol; 37: 123-132).
  • the PRETEXT system even if reproducible and providing good prognostic value, is based on imaging and clinical symptoms, making this system dependent upon the technicians and clinicians. There is thus a need for a system, complementary to the PRETEXT system, based on genetic and molecular features of the liver tumors.
  • the present invention concerns a method or process of profiling gene expression for a set of genes, in a sample previously obtained from a patient diagnosed for a liver tumor.
  • said method is designed to determine the grade of a liver tumor in a patient.
  • liver tumor or “hepatic tumor”, it is meant a tumor originating from the liver of a patient, which is a malignant tumor (comprising cancerous cells), as opposed to a benign tumor (non cancerous) which is explicitly excluded.
  • Malignant liver tumors encompass two main kinds of tumors: hepatoblastoma (HB) or hepatocellular carcinoma (HCC). These two tumor types can be assayed for the presently reported molecular signature.
  • the present method may also be used to assay malignant liver tumors which are classified as unspecified (non-HB, non-HCC).
  • the present method may be used to determine the grade of a liver tumor or several liver tumors of the same patient, depending on the extent of the liver cancer.
  • a liver tumor will be used throughout the specification to possibly apply to “one or several liver tumor(s)”.
  • the term “neoplasm” may also be used as a synonymous of “tumor”.
  • the tumor whose grade has to be determined is located in the liver.
  • the presence of the tumor(s) in the liver may be diagnosed by ultrasound scan, x-rays, blood test, CT scans (computerised tomography) and/or MRI scans (magnetic resonance imaging).
  • the tumor although originating from the liver, has extended to other tissues or has given rise to metastasis.
  • the patient is a child i.e., a human host who is under 20 years of age according to the present application. Therefore, in a particular embodiment, the liver tumor is a paediatric HB or a paediatric HCC. In another embodiment, the liver tumor is an adult HCC.
  • a grade is defined as a subclass of the liver tumor, corresponding to prognostic factors, such as tumor status, liver function and general health status.
  • the present method of the invention allows or at least contributes to differentiating liver tumors having a good prognosis from tumors with a bad prognosis, in terms of evolution of the patient's disease.
  • a good prognosis tumor is defined as a tumor with good survival probability for the patient (more than 80% survival at two years for HB and more than 50% survival at two years for HCC), low probability of metastases and good response to treatment for the patient.
  • a bad prognosis tumor is defined as a tumor with an advanced stage, such as one having vascular invasion or/and extrahepatic metastasis, and associated with a low survival probability for the patient (less than 50% survival in two years).
  • the method of the invention is carried out on a sample isolated from the patient who has previously been diagnosed for the tumor(s) and who, optionally, may have been treated by surgery.
  • the sample is the liver tumor (tumoral tissue) or of one of the liver tumors identified by diagnosis imaging and obtained by surgery or a biopsy of this tumor.
  • the tumor located in the liver tumor is called the primary tumor.
  • the sample is not the liver tumor, but is representative of this tumor.
  • representative it is meant that the sample is regarded as having the same features as the primary tumors, when considering the gene expression profile assayed in the present invention. Therefore, the sample may also consist of metastatic cells (secondary tumors spread into different part(s) of the body) or of a biological fluid containing cancerous cells (such as blood).
  • the sample may be fixed, for example in formalin (formalin fixed).
  • the sample may be embedded in paraffin (paraffin-embedded) or equivalent products.
  • the tested sample is a formalin-fixed, paraffin-embedded (FFPE) sample.
  • One advantage of the method of the present invention is that, despite the possible heterogeneity of some liver tumors (comprising epithelial tumor cells at different stages of liver differentiation within the same tumor), the assay has proved to be reproducible and efficient on liver tumor biopsies obtained from any part of the whole tumor. Therefore, there is no requirement for the isolation of cells presenting particular features except from the fact that they are obtained from a liver tumor or are representative thereof, to carry out the gene expression profile assay.
  • the tumor originates from a patient having a Caucasian origin, in particular European, North American, Australian, New-Zealander or Orientalizers.
  • the method or process of the invention comprises assaying the expression level of a set of genes in a sample, in order to get an expression profile thereof.
  • expression of a set of genes it is meant assaying, in particular detecting, the product or several products resulting from the expression of a gene, this product being in the form of a nucleic acid, especially RNA, mRNA, cDNA, polypeptide, protein or any other formats.
  • the assay of the gene expression profile comprises detecting a set of nucleotide targets, each nucleotide target corresponding to the expression product of a gene encompassed in the set.
  • nucleotide target means a nucleic acid molecule whose expression must be measured, preferably quantitatively measured.
  • expression measured it is meant that the expression product(s), in particular the transcription product(s) of a gene, are measured.
  • quantitative it is meant that the method is used to determine the quantity or the number of copies of the expression products, in particular the transcription products or nucleotide targets, originally present in the sample. This must be opposed to the qualitative measurement, whose aim is to determine the presence or absence of said expression product(s) only.
  • a nucleotide target is in particular a RNA, and most particularly a total RNA.
  • the nucleotide target is mRNA or transcripts.
  • the mRNA initially present in the sample may be used to obtain cDNA or cRNA, which is then detected and possibly measured.
  • the expression of the gene is assayed directly on the sample, in particular in the tumor.
  • the expression products or the nucleotide targets are prepared from the sample, in particular are isolated or even purified.
  • the nucleotide targets are mRNA
  • a further step comprising or consisting in the retro-transcription of said mRNA into cDNA (complementary DNA) may also be performed prior to the step of detecting expression.
  • the cDNA may also be transcribed in vitro to provide cRNA.
  • the expression product(s) or the nucleotide target(s) may be labelled, with isotopic (such as radioactive) or non isotopic (such as fluorescent, coloured, luminescent, affinity, enzymatic, magnetic, thermal or electrical) markers or labels.
  • isotopic such as radioactive
  • non isotopic such as fluorescent, coloured, luminescent, affinity, enzymatic, magnetic, thermal or electrical
  • steps carried out for assaying the gene expression must not alter the qualitative or the quantitative expression (number of copies) of the expression product(s) or of the nucleotide target(s), or must not interfere with the subsequent step comprising assaying the qualitative or the quantitative expression of said expression product(s) or nucleotide target(s).
  • the step of profiling gene expression comprises determining the expression of a set of genes.
  • a set is defined as a group of genes that must be assayed for one test, and especially performed at the same time, on the same patient's sample.
  • a set comprises at least 2 and has especially from 2 to 16 genes, said 2 to 16 genes being chosen from the 16 following genes: alpha-fetoprotein (AFP), aldehyde dehydrogenase 2 (ALDH2), amyloid P component serum (APCS), apolipoprotein C-IV (APOC4), aquaporin 9 (AQP9), budding uninhibited by benzimidazoles 1 (BUB1), complement componant 1 (C1S), cytochrome p450 2E1 (CYP2E1), discs large homolog 7 (DLG7), dual specificity phosphatase 9 (DUSP9), E2F5 transcription factor (E2F5), growth hormone receptor (GHR), 4-hydroxyphenylpyruvase dioxygenas
  • Table 1 A complete description of these 16 genes is given in Table 1. This table lists, from left to right, the symbol of the gene, the complete name of the gene, the number of the SEQ ID provided in the sequence listing, the Accession Number from the NCBI database on June 2008, the human chromosomal location and the reported function (when known).
  • a set of genes comprises at least 2 out the 16 genes of Table 1, and particularly at least or exactly 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 out of the 16 genes of Table 1.
  • the set comprises or consists of the 16 genes of Table 1 i.e. the set of genes comprises or consists of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes. Accordingly, unless otherwise stated when reference is made in the present application to a set of 2 to 16 genes of Table 1, it should be understood as similarly applying to any number of genes within said 2 to 16 range.
  • the set of genes comprises or consists of one of the following sets: (a) the E2F5 and HPD genes, (b) the APCS, BUB1, E2F5, GHR and HPD genes, (c) the ALDH2, APCS, APOC4, BUB1, C1S, CYP2E1, E2F5, GHR and HPD genes, (d) the ALDH2, APCS, APOC4, AQP9, BUB1, C1S, DUSP9, E2F5 and RPL10A genes, or (e) the ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, E2F5, GHR, IGSF1 and RPL10A genes.
  • the set may, besides the specific genes of Table 1, contain additional genes not listed in Table 1. This means that the set must comprises from 2 to 16 genes of Table 1, i.e. 2 to 16 genes of Table 1 (in particular 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, or 16 genes), and optionally comprises one or more additional genes. Said set may also be restricted to said 2 to 16 genes of Table 1.
  • Additional genes may be selected for the difference of expression observed between the various grades of liver cancer, in particular between a tumor of good prognosis and a tumor of poor prognosis.
  • Gene name SEQ ID No Location Function
  • the invention also relates to a set of genes comprising or consisting of the 16 genes of Table 1 (i.e., AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes), in which 1, 2, 3, 4 or 5 genes out of the 16 genes are substituted by a gene presenting the same features in terms of difference of expression between a tumor of a good prognosis and a tumor of poor prognosis.
  • Table 1 i.e., AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes
  • the number of genes of the set does not exceed 100, particularly 50, 30, 20, more particularly 16 and even more particularly is maximum 5, 6, 7, 8, 9 or 10.
  • genes which can be added or may replace genes of the set may be identified in following Table 2.
  • Table 2 list of genes according to p value.
  • FDR Description IPO4 123.7 248.3 2.0 2.00E ⁇ 07 0.00036 importin 4 CPSF1 467.8 1010.7 2.2 2.00E-07 0.00036 cleavage and polyadenylation specific factor 1, 160 kDa MCM4 25.8 90.7 3.5 1.10E ⁇ 06 0.00115 MCM4 minichromosome maintenance deficient 4 ( S.
  • IPO4 BC136759
  • CPSF1 NM_013291
  • MCM4 NM_005914.2
  • NM_182746.1 two accession numbers for the same gene correspond to 2 different isoforms of the gene
  • EIF3S3 NM_003756.2
  • NCL NM_005381.2
  • CDC25C NM_001790.3
  • CENPA NM_001809.3
  • K1F14 BC113742
  • IPW # U12897
  • KNTC2 AK313184
  • TMEM48 NM_018087
  • BOP1 NM_015201
  • EIF3S9 NM_003751; NM_001037283
  • PH-4 (NM _177939), SMC4L1 (NM_005496; NM_001002800), TTK (AK315696), LAMA3 (NM_198129), C10orf72 (NM_001031746; NM_144984), TPX2 (NM_012112), MSH2 (NM_000251), DKC1 (NM_001363), STK6 (AY892410), CCT6A (NM_001762; # NM_001009186), SULT1C1 (AK313193), ILF3 (NM_012218; NM_004516), IMPDH2 (NM_000884), HIC2 (NM_015094), AFM (NM_001133), MCM7 (NM_005916; NM_182776), CNAP1(AK128354), CBARA1 (AK225695), PLA2G4C (NM_003706), CPSF1(NM_013291), SNRPN (BC000611)
  • the set of genes of the invention is designed to determine the grade of hepatoblastoma, in particular paediatric hepatoblastoma. In another embodiment, the set of genes is designed to determine the grade of hepatocellular carcinoma, in particular paediatric HCC or adult HCC.
  • RNA preferably mRNA
  • the expression may be measured after carrying out an amplification process, such as by PCR, quantitative PCR (qPCR) or real-time PCR. Kits designed for measuring expression after an amplification step are disclosed below.
  • the expression may be measured using hybridization method, especially with a step of hybridizing on a solid support, especially an array, a macroarray or a microarray or in other conditions especially in solution.
  • Arrays and kits of the invention, designed for measuring expression by hybridization method are disclosed below.
  • the expression of a gene may be assayed in two manners:
  • the expression which is assayed is preferably the relative expression of each gene, calculated with reference to at least one (preferably 1, 2, 3 or 4) invariant gene(s).
  • Invariant genes suitable to perform the invention, are genes whose expression is constant whatever the grade of the liver tumors, such as for example ACTG1, EFF1A1, PNN and RHOT2 genes, whose features are summarized in Table 3.
  • the relative expression is calculated with respect to at least the RHOT2 gene or with respect to the RHOT2 gene.
  • the relative expression is calculated with respect to at least the PNN gene or with respect to the PNN gene. It may be calculated with respect to the RHOT2 and PNN genes.
  • An additional step of the method or process comprises the determination of the grade of said liver tumor, referring to the gene expression profile that has been assayed.
  • the method is designed to determine the grade of hepatoblastoma, in particular paediatric hepatoblastoma.
  • the method is designed to determine the grade of hepatocellular carcinoma, in particular paediatric HCC or adult HCC.
  • a gene expression profile or a signature (preferably obtained after normalization), which is thus specific for each sample, is compared to the gene expression profile of a reference sample or to the gene expression profiles of each sample of a collection of reference samples (individually tested) whose grade is known, so as to determine the grade of said liver tumor.
  • This comparison step is carried out with at least one prediction algorithm.
  • the comparison step is carried out with 1, 2, 3, 4, 5 or 6 prediction algorithms chosen in the following prediction algorithms: Compound Covariate Predictor (CCP), Linear Discriminator Analysis (LDA), One Nearest Neighbor (1NN), Three Nearest Neighbor (3NN), Nearest Centroid (NC) and Support Vector Machine (SVM).
  • CCP Compound Covariate Predictor
  • LDA Linear Discriminator Analysis
  • NNN One Nearest Neighbor
  • 3NN Three Nearest Neighbor
  • NC Nearest Centroid
  • SVM Support Vector Machine
  • Each algorithm classifies tumors within either of the two groups, defined as tumors with good prognosis (such as C1) or tumors with bad prognosis (such as C2); each group comprises the respective reference samples used for comparison, and one of these two groups also comprises the tumor to be classified.
  • tumors with good prognosis such as C1
  • tumors with bad prognosis such as C2
  • each group comprises the respective reference samples used for comparison, and one of these two groups also comprises the tumor to be classified.
  • the grade of a tumor sample may be assigned with certainty to the class of good prognosis or to the class of bad prognosis, when 5 or 6 of the above algorithms classified the tumor sample in the same group.
  • the grade of a tumor sample may be assigned with certainty to the class of good prognosis or to the class of bad prognosis, when 5 or 6 of the above algorithms classified the tumor sample in the same group.
  • less than 5 of the above algorithms classify a tumor sample in the same group, it provides an indication of the grade rather than a definite classification.
  • Reference samples which can be used for comparison with the gene expression profile of a tumor to be tested are one or several sample(s) representative for tumor with poor prognosis (such as C2), one or several sample(s) representative of tumor with good prognosis (such as C1), one or several sample(s) of a normal adult liver and/or one or several sample(s) of a fetal liver.
  • Table 4 lists the level of expression of each gene of Table 1 depending upon the status of the reference sample i.e., robust tumor with poor prognostic and robust tumor with good prognostic. Examples of methods to identify such robust tumors are provided in the examples.
  • the present invention provides a new classification method in this respect, which is based on discretization of continuous values.
  • Reference samples usually correspond to so-called “robust tumor” for which all the marker genes providing the signature are expressed (either under expressed or overexpressed) as expected i.e., in accordance with the results disclosed in Table 5, when tested in similar conditions, as disclosed in the examples hereafter.
  • a robust tumor having an overexpression of one or several gene(s) selected among ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR and HPD genes (these genes belong to the so-called group of differentiation-related genes), and/or an underexpression of one or several gene(s) selected among AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1 and RPL10A genes (these genes belong to the so-called group of proliferation-related genes), is an indicator of a robust liver tumor, in particular of a hepatoblastoma, with a good prognosis.
  • a robust tumor having an overexpression of one or several gene(s) selected among AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1 and RPL10A genes, and/or an underexpression of one or several gene(s) among ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR and HPD genes, is an indicator of a robust liver tumor, in particular of a hepatoblastoma, with a poor prognosis.
  • a gene is said “underexpressed” when its expression is lower than the expression of the same gene in the other tumor grade, and a gene is said “overexpressed” when its expression is higher than the expression of the same gene in the other tumor grade.
  • Table 5 provides the gene expression profiles of the 16 genes of Table 1 in 13 samples of hepatoblastoma (HB) including 8 samples that have been previously identified as rC1 subtype and 5 samples that have been previously identified as rC2 subtype.
  • This Table can therefore be used for comparison, to determine the gene expression profile of a HB tumor to be classified, with the robust tumors disclosed (constituting reference samples), for a set of genes as defined in the present application. Said comparison involves using the classification algorithms which are disclosed herein, for both the selected reference samples and the assayed sample.
  • TABLE 5 Normalized qPCR data of 16 genes in 13 HB samples including 8 samples of the rC1 subtype and 5 samples of the rC2 subtype (in grey).
  • the qpCR values have been obtained by measuring the expression of the 16 genes in 8 samples of the rC1 subtype and 5 samples of the rC2 subtype by the SYBR green method using the primers as disclosed in Table 6 below and in the conditions reported in the examples, and normalized by the ROTH2 gene (primers in Table 7).
  • the method of the present invention is also suitable to classify new tumor samples, and to use them as new reference samples. Therefore, the gene expression values of these new reference samples may be used in combination or in place of some of the values reported in Table 5.
  • the step of determining the tumor grade comprises performing a method of discretization of continuous values of gene expression obtained on the set of genes the tested patients' samples.
  • Discretization is generally defined as the process of transforming a continuous-valued variable into a discrete one by creating a set of contiguous intervals (or equivalently a set of cutpoints) that spans the range of the variable's values. Discretization has been disclosed for use in classification performance in Lustberg J. L. et al, 2008.
  • liver tumor grade especially for those tumors described in the present application, including Hepatoblastoma (HB) or Hepatocellular carcinoma (HCC).
  • HB Hepatoblastoma
  • HCC Hepatocellular carcinoma
  • the discretization method is especially disclosed in the examples where it is illustrated by using data obtained on tumor samples wherein these data are those obtained from profiling the 16 genes providing the large set of genes for expression profiling according to the invention. It is pointed out that the discretization method may however be carried out on a reduced number of profiled genes within this group of 16 genes, starting from a set consisting of 2 genes (or more genes) including one (or more) overexpressed proliferation-related genes chosen among AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1 and RPL10A and one down-regulated differentiation-related gene chosen among ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR, HPD, said genes being thus classified as a result of gene profiles observed on robust tumors with poor prognosis (according to the classification in Table 4 above).
  • the number of assayed gene for expression profiling is 2, 4, 6, 8, 10, 12, 14 or 16 and the same number of genes in each category (either the group of overexpressed proliferation-related genes or the group of downregulated differentiation-related gene) is used to perform the method.
  • the invention thus relates to a method enabling the determination of the tumor grade on a patient's sample, which comprises a classification of the tumor through discretization according to the following steps:
  • the above defined ratio of average values may be alternatively calculated as the ratio of the average for the discresized values for the differentiation-related genes on the average for the discretized values for the proliferation-related genes, to obtain a score. If this calculation made is adopted the cut-offs values are inversed, i.e., are calculated as 1/xxx.
  • the data obtained on the assayed genes for profiling a patient's sample are preferably normalized with respect to one or more invariant gene(s) of the present invention, in order to prevent detrimental impact on the results that may arise from possible inaccuracy in the quantification of initial nucleic acid, especially RNA, in the sample.
  • cut-offs values have to be determined to allow the determination of the tumor grade.
  • the cut-offs values can be determined experimentally by carrying out the following steps on expression profiling results obtained on a determined number of tumor samples:
  • the invention provides cut-offs values as reference cut-offs, in order to carry out the determination of tumor grade in particular testing conditions as those disclosed below and in the examples.
  • the cut-off for each gene is the value corresponding to a determined percentile, which can be different for each of the considered two groups of genes (proliferation-related genes on the one hand and differentiation-related genes on the other hand).
  • the selected percentile is determined with respect to the fraction of tumors (such as 1 ⁇ 3 or more) harbouring some chosen features such as overexpression of proliferation-related genes and/or dowregulation of differentiation-related genes, in the two groups of genes of the set of genes.
  • the cut-off corresponds to a high quantile (above the 50 th , preferably the 60 th , or even above the 65 th , such as the 67 th and for example within the range of 55 th and 70 th ) for said proliferation-related genes and the cut-off corresponds to a low quantile (below the 50 th , preferably equal to or below the 40 th for example the 33 rd , and for example within the range of between 20 th and 40 th ) of the differentiation-related genes.
  • the cut-off for each group of genes and the cut-off for the sample may be determined with respect to the same percentile(s) or may be determined with respect to different percentile.
  • the percentile which is chosen for the overexpressed proliferation-related genes is the 67 th and the percentile which is chosen for the downregulated differentiation-related genes is the 33 rd .
  • the percentile which is chosen for the overexpressed proliferation-related genes is the 60 th and the percentile which is chosen for the downregulated differentiation-related genes is the 40 rd .
  • Each percentile (or cut-off value corresponding to the percentile) defines a cutpoint and the discretized values for each gene are either “1” or “2” below or above said percentile.
  • the values “1” and “2” are distributed with respect to the percentiles so as to create the highest difference in the values of the calculated ratio for the most different tumor grades. This is illustrated in the examples for the selected percentiles.
  • the relative values of the profiled genes are determined by real-time PCR (qPCR).
  • Conditions to carry out the real-time PCR are disclosed herein, especially in the examples, as conditions applicable to analyzed samples.
  • PCR primers and probes suitable for the performance of RT-PCR are those disclosed herein for the various genes.
  • the analysed tumor is a hepatoblastoma and its grade is determined by discretization as disclosed above and illustrated in the examples, taking into account that:
  • the tumor is an hepatocellular carcinoma and its grade is determined by discretization as disclosed above and illustrated in the examples, taking into account that:
  • a modified score is determined which corresponds to the average of the discretized values of the “proliferation-related genes” only for the sample.
  • a new cut-off value is determined for said genes, which is the cut-off value for the modified score (in the present case it is 1.3).
  • This cut-off can be determined via a percentile (here the 60 th ) of the distribution of the modified scores, using the samples of the intermediate class.
  • a sample (initially classified in the intermediate class) with a modified score below the “proliferation cut-off” (for example 1.3) can be re-classified into the C1 class, and a sample with a modified score above the “proliferation cut-off” (for example 1.3) can be re-classified into the C2 class.
  • a set comprising from 2 to 16 genes may be used to assay the grade of tumor cells in a tumor originating from the liver.
  • the results obtained, after determining the expression of each of the genes of the set, are then treated for classification according to the steps disclosed herein.
  • the invention relates to each and any combination of genes disclosed in Table 1, to provide a set comprising from 2 to 16 of these genes, in particular a set comprising or consisting of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15 or 16 of these genes.
  • one or many genes of Table 1 may be modified by substitution or by addition of one or several genes as explained above, which also enable to determine the grade of the liver tumor, when assayed in combination with the other genes.
  • the liver tumor is a paediatric HB
  • the method or process of the invention enables to distinguish a first class, called C1, qualifying as a good prognosis tumor and a second class, called C2, qualifying as a poor prognosis tumor.
  • the C1 grade is predominantly composed of fetal histotype cells (i.e., well differentiated and non proliferative cells).
  • the C2 grade presents cells other than the fetal histotype such as embryonic, atypic (crowded fetal), small cell undifferiantiated (SCUD) and/or macrotrabecular cells.
  • the present invention also relates to a kit suitable to determine the grade of a liver tumor from the sample obtained from a patient.
  • This kit is appropriate to carry out the method or process described in the present application.
  • the kit comprises a plurality of pairs of primers specific for a set of genes to be assayed, said set comprising from 2 to 16 genes, said 2 to 16 genes being chosen in the group consisting of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • kits comprises at least as many pairs of primers as genes to enable assaying each selected gene, and in particular the nucleotide target of this gene. Accordingly, each gene and in particular its nucleotide target is specifically targeted by a least one of these pairs of primers.
  • the kit comprises the same number of pairs of primers as the number of genes to assay and each primer pair specifically targets one of the genes, and in particular the nucleotide targets of one of these genes, and does not hybridize with the other genes of the set.
  • kits of the invention are defined to amplify the nucleotide targets of the sets of genes as described in the present invention. Therefore, the kit of the invention comprises from 2 to 16 pairs of primers which, when taken as a whole, are specific for said from 2 to 16 genes out of the 16 genes of Table 1.
  • the kit comprises or consists of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 pairs of primers specific for 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 out of the 16 genes of Table 1.
  • the kit comprises or consists of 16 pairs of primers specific for the 16 genes of Table 1 i.e., a primer pair specific for each of the following genes: AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • the kit is adapted to contain a pair of primers specific for each added or substituted gene(s).
  • the kit may, besides the pairs of primers specific for the genes of Table 1, contain additional pair(s) of primers.
  • the kit comprises at least one pair of primers (preferably one) for at least one invariant gene (preferably one or two) to be assayed for the determination of the expression profile of the genes, by comparison with the expression profile of the invariant gene.
  • the number of pairs of primers of the kit usually does not exceed 100, particularly 50, 30, 20, more particularly 16, and even more particularly is maximum 5, 6, 7, 8, 9 or 10.
  • kits of the invention it is understood that, for each gene, at least one pair of primers and preferably exactly one pair, enabling to amplify the nucleotide targets of this gene, is present.
  • the gene expression level is measured by amplification with only one pair of primers. It is excluded that amplification may be performed using simultaneously several pairs of primers for the same gene.
  • a pair of primers consists of a forward polynucleotide and a backward polynucleotide, having the capacity to match its nucleotide target and to amplify, when appropriate conditions and reagents are brought, a nucleotide sequence framed by their complementary sequence, in the sequence of their nucleotide target.
  • the pairs of primers present in the kits of the invention are specific for a gene i.e., each pair of primers amplifies the nucleotide targets of one and only one gene among the set. Therefore, it is excluded that a pair of primers specific for a gene amplifies, in a exponential or even in a linear way, the nucleotide targets of another gene and/or other nucleic acids contained in sample.
  • the sequence of a primer (whose pair is specific for a gene) is selected to be not found in a sequence found in another gene, is not complementary to a sequence found in this another gene and/or is not able to hybridize in amplification conditions as defined in the present application with the sequence of the nucleotide targets of this another gene.
  • the forward and/or backward primer(s) may be labelled, either by isotopic (such as radioactive) or non isotopic (such as fluorescent, biotin, fluororochrome) methods.
  • isotopic such as radioactive
  • non isotopic such as fluorescent, biotin, fluororochrome
  • each primer of the pair (forward and backward) has, independently from each other, the following features:
  • the various primers when the pairs of primers are used in a simultaneous amplification reaction carried out on the sample, the various primers have the capacity to hybridize with their respective nucleotide targets at the same temperature and in the same conditions.
  • the sequence of the primer is 100% identical to one of the strands of the sequence of the nucleotide target to which it must hybridize with, i.e. is 100% complementary to the sequence of the nucleotide target to which it must hybridize.
  • the identity or complementarity is not 100%, but the similarity is at least 80%, at least 85%, at least 90% or at least 95% with its complementary sequence in the nucleotide target.
  • the primer differs from its counterpart in the sequence of the sequence of the nucleotide target by 1, 2, 3, 4 or 5 mutation(s) (deletion, insertion and/or substitution), preferably by 1, 2, 3, 4 or 5 nucleotide substitutions.
  • the mutations are not located in the last 5 nucleotides of the 3′ end of the primer.
  • the primer which is not 100% identical or complementary, keeps the capacity to hybridize with the sequence of the nucleotide target, similarly to the primer that is 100% identical or 100% complementary with the sequence of the nucleotide target (in the hybridization conditions defined herein).
  • at least one of the primers (having at least 80% similarity as defined above) of the pair specific for a gene can not hybridize with the sequence found in the nucleotide targets of another gene of the set and of another gene of the sample.
  • the pairs of primers used for amplifying a particular set of genes are designed, besides some or all of the features explained herein, in order that the amplification products (or amplicons) of each gene have approximately the same size.
  • approximately is meant that the difference of size between the longest amplicon and the shortest amplicon of the set is less than 30% (of the size of the longest amplicon), preferably less than 20%, more preferably less than 10%.
  • the size of the amplicon is between 100 and 300 bp, such as about 100, 150, 200, 250 or 300 bp.
  • nucleotide sequences of the 16 genes of Table 1 are provided in the Figures, and may be used to design specific pairs of primers for amplification, in view of the explanations above.
  • primers that may be used to measure the expression of the genes of Table 1, in particular to amplify the nucleotide targets of the genes of Table 1, are the primers having the sequence provided in Table 6 or variant primers having at least 80% similarity (or more as defined above) with the sequences defined in Table 6. TABLE 6 Sequence of forward and backward primers of the 16 genes defined in Table 1. These primers may be used in any real- time PCR, in particular the SYBR green technique, except for the Taqman ® protocol.
  • the kit of the invention may further comprise one or many pairs of primers specific for one or many invariant genes, in particular specific for ACTG1, EFF1A1, PNN and/or RHOT2 genes.
  • the pair of primers specific for invariant gene(s) may be designed and selected as explained above for the pair of primers specific for the genes of the set of the invention.
  • the pairs of primers of the invariant genes are designed in order that their amplification product (or amplicon) has approximately the same size as the amplicon of the genes of the set to be assayed (the term approximately being defined as above, with respect to the longest amplicon of the set of genes).
  • primers that may be used to amplify the particular invariant genes are primers having the sequence provided in Table 7 or primers having at least 80% similarity (or more as defined above) with the sequences defined in Table 7. TABLE 7 Sequence of forward and backward primers specific for the invariant genes defined in Table 3. These primers may be used in real-time PCR, in particular the SYBR green technique, except for the Taqman ® protocol.
  • kits of the invention may also further comprise, in association with or independently of the pairs of primers specific for the invariant gene(s), reagents necessary for the amplification of the nucleotide targets of the sets of the invention and if any, of the nucleotide targets of the invariant genes.
  • kits of the invention may also comprise probes as disclosed herein in the context of sets of probes, compositions and arrays.
  • the kits also comprise the four dNTPs (nucleotides), amplification buffer, a polymerase (in particular a DNA polymerase, and more particularly a thermostable DNA polymerase) and/or salts necessary for the activity of the polymerase (such as Mg 2+ ).
  • kits may also comprise one or several control sample(s) i.e., at least one sample(s) representative of tumor with bad (i.e., poor) prognosis (in particular a HB C2 grade), at least one sample(s) representative of tumor with good prognosis (in particular a HB C1 grade), at least one sample of a normal adult liver and/or at least one sample of a fetal liver.
  • control sample(s) i.e., at least one sample(s) representative of tumor with bad (i.e., poor) prognosis (in particular a HB C2 grade), at least one sample(s) representative of tumor with good prognosis (in particular a HB C1 grade), at least one sample of a normal adult liver and/or at least one sample of a fetal liver.
  • kits may also comprise instructions to carry out the amplification step or the various steps of the method of the invention.
  • the invention is also directed to a set of probes suitable to determine the grade of a liver tumor from the sample obtained from a patient.
  • This set of probes is appropriate to carry out the method or process described in the present invention. It may also be part of the kit.
  • This set of probes comprises a plurality of probes in particular from 2 to 16 probes, these 2 to 16 probes being specific for genes chosen in the group consisting of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • the set of probes comprises at least as many probes as genes to assay.
  • the array comprises the same number of probes as the number of genes to assay.
  • the probes of the sets of the invention are selected for their capacity to hybridize to the nucleotide targets of the sets of genes as described in the present invention. Therefore, the set of probes of the invention comprise from 2 to 16 probes specific for 2 to 16 genes out of the 16 genes of Table 1. In particular, the sets of probes comprise or consist of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 probes specific of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 out of the 16 genes of Table 1.
  • the sets of probes comprise or consist of 16 probes specific for the 16 genes of Table 1 i.e., a probe specific of each of the following genes: AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • the specificity of the probes is defined according to the same parameters as those applying to define specific primers.
  • the set of probes is adapted to contain a probe specific for the added or substituted gene(s).
  • the set of probes may, besides the probes specific for the genes of Table 1, contain additional probe(s).
  • the number of probes of the set does usually not exceed 100, particularly 50, 30, 20, more particularly 16, and even more particularly is maximum 5, 6, 7, 8, 9 or 10.
  • the set of probes of the invention it is understood that for each gene corresponds at least one probe to which the nucleotide target of this gene hybridize to.
  • the set of probes may comprise several probes for the same gene, either probes having the same sequence or probes having different sequences.
  • a probe is a polynucleotide, especially DNA, having the capacity to hybridize to the nucleotide target of a gene.
  • Hybridization is usually carried out at a temperature ranging from 40 to 60° C. in hybridization buffer (see example of buffers below).
  • These probes may be oligonucleotides, PCR products or cDNA vectors or purified inserts.
  • the size of each probe is independently to each other from 15 and 1000 bp, preferably 100 to 500 bp or 15 to 500 bp, more preferably 50 to 200 bp or 15 to 100 bp.
  • the design of probes is well known in the art and in particular may be carried out by reference to Sambrook et al. (Molecular Cloning, A laboratory Manual, Third Edition; chapters 9 and 10 and in particular pages 10.1 to 10.10).
  • the probes may be optionally labelled, either by isotopic (radioactive) or non isotopic (biotin, fluororochrome) methods. Methods to label probes are disclosed in Sambrook et al. (Molecular Cloning, A laboratory Manual, Third Edition; chapter 8 and in particular page 9.3).
  • the probes are modified to confer them different physicochemical properties (such as by methylation, ethylation).
  • the probes may be modified to add a functional group (such as a thiol group), and optionally immobilized on bead (preferably glass beads).
  • the sequence of the probe is 100% identical to a part of one strand of the sequence of the nucleotide target to which it must hybridize, i.e. is 100% complementary to a part of the sequence of the nucleotide target to which it must hybridize.
  • the identity or complementarity is not 100% and the similarity is at least 80%, at least 85%, at least 90% or at least 95% with a part of the sequence of the nucleotide target.
  • the probe differs from a part of one strand of the sequence of the nucleotide target by 1 to 10 mutation(s) (deletion, insertion and/or substitution), preferably by 1 to 10 nucleotide substitutions.
  • a part of it is meant consecutive nucleotides of the nucleotide target, which correspond to the sequence of the probe.
  • the probe which is not 100% identical or complementary, keeps the capacity to hybridize, in particular to specifically hybridize, to the sequence of the nucleotide target, similarly to the probe which is 100% identical or 100% complementary with the sequence of the nucleotide target (in the hybridization conditions defined herein).
  • the size of the probes used to assay a set of genes is approximately the same for all the probes.
  • approximately is meant that the difference of size between the longest probe and the shortest probe of the set is less than 30% (of the size of the longest probe), preferably less than 20%, more preferably less than 10%.
  • the set of probes of the invention may further comprise at least one (preferably one) probe specific for at least one invariant gene (preferably one or two), in particular specific for ACTG1, EFF1A1, PNN and/or RHOT2 genes.
  • the probes specific for invariant gene(s) may be designed and selected as explained above for the probes specific for genes of the sets of the invention.
  • the probes specific of the invariant genes have approximately the same size as the probes specific of the genes of the set of be assayed (the term approximately being defined as above, with respect to the longest probes of the set of genes).
  • the invention is also directed to an array suitable to determine the grade of a liver tumor from the sample obtained from a patient.
  • This array is appropriate to carry out the method or process described in the present application.
  • An array is defined as a solid support on which probes as defined above, are spotted or immobilized.
  • the solid support may be porous or non-porous, and is usually glass slides, silica, nitrocellulose, acrylamide or nylon membranes or filters.
  • the arrays of the invention comprise a plurality of probes specific for a set of genes to be assayed.
  • the array comprises, spotted on it, a set of probes as defined above.
  • the invention also relates to a composition comprising a set of probes as defined above in solution.
  • the probes may be modified to confer them different physicochemical properties (such as methylation, ethylation).
  • the nucleotide targets (as defined herein and prepared from the sample) are linked to particles, preferably magnetic particles, for example covered with ITO (indium tin oxide) or polyimide.
  • the solution of probes is then put in contact with the target nucleotides linked to the particles.
  • the probe/target complexes are then detected, for example by mass spectrometry.
  • probes may be modified to add a functional group (such as a thiol group) and immobilized on beads (preferably glass beads). These probes immobilized on beads are put in contact with a sample comprising the nucleotide targets, and the probe/target complexes are detected, for example by capillary reaction.
  • a functional group such as a thiol group
  • kits comprising the sets of probes, the compositions or the arrays of the invention and preferably the primer pairs disclosed herein.
  • kits may also further comprise reagents necessary for the hybridization of the nucleotide targets of the sets of genes and/or of the invariant genes, to the probes (as such, in the compositions or on the arrays) and the washing of the array to remove unbound nucleotides targets.
  • kits also comprise reagents necessary for the hybridization, such as prehybridization buffer (for example containing 5 ⁇ SSC, 0.1% SDS and 1% bovine serum albumin), hybridization buffer (for example containing 50% formamide, 10 ⁇ SSC, and 0.2% SDS), low-stringency wash buffer (for example containing 1 ⁇ SSC and 0.2% SDS) and/or high-stringency wash buffer (for example containing 0.1 ⁇ SSC and 0.2% SDS).
  • prehybridization buffer for example containing 5 ⁇ SSC, 0.1% SDS and 1% bovine serum albumin
  • hybridization buffer for example containing 50% formamide, 10 ⁇ SSC, and 0.2% SDS
  • low-stringency wash buffer for example containing 1 ⁇ SSC and 0.2% SDS
  • high-stringency wash buffer for example containing 0.1 ⁇ SSC and 0.2% SDS.
  • kits may also comprise one or several control sample(s) i.e., at least one sample(s) representative for tumor with poor prognosis, at least one sample(s) representative of tumor with good prognosis, at least one sample of a normal adult liver and/or at least one sample of a fetal liver.
  • control sample(s) i.e., at least one sample(s) representative for tumor with poor prognosis, at least one sample(s) representative of tumor with good prognosis, at least one sample of a normal adult liver and/or at least one sample of a fetal liver.
  • control sample(s) i.e., at least one sample(s) representative for tumor with poor prognosis, at least one sample(s) representative of tumor with good prognosis, at least one sample of a normal adult liver and/or at least one sample of a fetal liver.
  • it may comprise the representation of a gene expression profile of such tumors.
  • the invention provides a kit as described above further comprising instructions to carry out the method or process of the invention.
  • the arrays and/or kits (either comprising pairs of primers or probes or arrays or compositions of the invention or all the components) according to the invention may be used in various aspects, in particular to determine the grade of a liver tumor from a patient, especially by the method disclosed in the present application.
  • the arrays and/or kits according to the invention are also useful to determine, depending upon the grade of the liver tumor, the risk for a patient to develop metastasis. Indeed, the classification of a liver tumor in the class with poor prognosis is highly associated with the risk of developing metastasis.
  • arrays and/or kits according to the invention are also useful to define, depending upon the grade of the liver tumor, the therapeutic regimen to apply to the patient.
  • the invention also relates to a support comprising the data identifying the gene expression profile obtained when carrying out the method of the invention.
  • FIG. 1 Identification of Two HB Subclasses by Expression Profiling.
  • A Schematic overview of the approach used to identify robust clusters of samples, including two tumor clusters (rC1 and rC2) and one non-tumor cluster (NL)
  • B Expression profiles of 982 probe sets (824 genes) that discriminate rC1 and rC2 samples (p ⁇ 0.001, two-sample t test). Data are plotted as a heatmap where red and green correspond to high and low expression in log 2 -transformed scale.
  • C Molecular classification of 25 HB samples and status of CTNNB1 gene and ⁇ -catenin protein.
  • C1 and C2 classification was based on rC1 and rC2 gene signature by using six different statistical predictive methods (CCP, LDA, 1NN, 3NN, NC and SVM) and the leave-one-out cross-validation. Black and gray squares indicate mutations of the CTNNB1 and AXIN1 genes. Immunohistochemical analysis of ⁇ -catenin in representative C1 and C2 cases is shown.
  • D Expression of representative Wnt-related and ⁇ -catenin target genes (p ⁇ 0.005, two-sample t test) in HB subclasses and non-tumor livers (NL).
  • E Classification of hepatoblastoma by expression profile of a 16-gene signature.
  • F Classification of normal human livers of children with HB (from 3 months to 6 years of age) (NT) or fetal livers at 17 to 35 weeks of gestation (FL) by expression profile of a 16-gene signature.
  • FIG. 2 Molecular HB subclasses are related to liver development stages.
  • A Distinctive histologic and immunostaining patterns of HB subclasses C1 and C2. From top to bottom: numbers indicate the ratio of mixed epithelial-mesenchymal tumors and of tumors with predominant fetal histotype in C1 and C2 subtypes; hematoxylin and eosin (H&E) and immunostaining of Ki-67, AFP and GLUL in representative samples. Magnification, ⁇ 400.
  • B Expression of selected markers of mature hepatocytes and hepatoblast/liver progenitors in HB subclasses and non-tumor livers.
  • FIG. 3 Validation of the 16-gene signature by qPCR in an independent set of 41 HBs.
  • Expression profiles of the 16 genes forming the HB classifier are shown as a heatmap that indicates high (red) and low (green) expression according to log 2 -transformed scale.
  • HB tumors, HB biopsies (b) and human fetal livers (FL) at different weeks (w) of gestation were assigned to class 1 or 2 by using the 16-gene expression profile, six different statistical predictive methods (CCP, LDA, 1NN, 3NN, NC and SVM) and leave-one-out cross-validation.
  • Black boxes in the rows indicate from top to bottom: human fetal liver, mixed epithelial-mesenchymal histology, predominant fetal histotype, and ⁇ -catenin mutation.
  • FIG. 4 Gene expression of the 16 genes of the prognostic liver cancer signature assessed by qPCR is presented as box-plot. The boxes represent the 25-75 percentile range, the lines the 10-90 percentile range, and the horizontal bars the median values.
  • FIG. 5 Expression level of the 16 liver prognostic signature genes shown case by case in 46 hepatoblastomas and 8 normal livers. C1 tumors (green), C2 tumors (red) and normal liver (white).
  • FIG. 6 Correlation between molecular HB subtypes and clinical outcome in 61 patients.
  • A Association of clinical and pathological data with HB classification in the complete set of 61 patients. Only significant correlations (Chi-square test) are shown. PRETEXT IV stage indicates tumorous involvement of all liver sections.
  • B Kaplan-Meier plots of overall survival for 48 patients that received preoperative chemotherapy. Profiling via the 16-gene expression signature was used to define C1 and C2 subclasses in tumors resected after chemotherapy, and differences between survival curves were assessed with the log-rank test.
  • C Overall survival of 17 HB patients for which pretreatment biopsies or primary surgery specimens were available. The signature was applied exclusively to tumor samples without prior therapy.
  • the predominant histotype is defined as either fetal or other (including embryonal, crowed-fetal, macrotrabecular or SCUD types).
  • Tumor stage is defined by PRETEXT stage (Perilongo et al., 2000) and/or distant metastasis at diagnosis and/or vascular invasion.
  • HR Hazard Ratio
  • CI Confidence Interval.
  • FIG. 7 Clinical, pathological and genetic characteristics of 61 HB cases.
  • SR standard risk
  • HR high risk according to SIOPEL criteria
  • NA not available
  • PRETEXT pre-treatment extent of disease according to SIOPEL
  • DOD dead of disease
  • * Vascular invasion was defined by radiological analysis
  • ** The predominant epithelial histotype variable categorized as “others” included embryonal, crowded fetal, macrotrabecular, and undifferentiated histotypes.
  • FIG. 8 Clinical, pathological and genetic characteristics of 66 HB samples; Tumor ID number indicates patient number. When more than one sample from the same patient was analyzed, the representative sample used for statistical analysis of clinical correlations is marked by an asterisk; b: biopsy.
  • HB74F fetal component of HB74
  • HB74e embryonal component of HB74.
  • Gender M, male; F, female; Y, yes; N, no; NA, not available.
  • Multifocality S, solitary nodules; M, multiple nodules.
  • FIG. 9 Correlation between molecular HB subtypes and clinical outcome in 86 patients.
  • A Association of clinical and pathological data with HB classification in the complete set of 86 patients. Only significant correlations (Chi-square test) are shown. PRETEXT IV stage indicates tumorous involvement of all liver sections.
  • B Kaplan-Meier plots of overall survival for 73 patients that received preoperative chemotherapy. Profiling via the 16-gene expression signature was used to define C1 and C2 subclasses in tumors resected after chemotherapy, and differences between survival curves were assessed with the log-rank test.
  • C Overall survival of 29 HB patients for which pretreatment biopsies or primary surgery specimens were available. The signature was applied exclusively to tumor samples without prior therapy.
  • the predominant histotype is defined as either fetal or other (including embryonal, crowed-fetal, macrotrabecular or SCUD types).
  • Tumor stage is defined by PRETEXT stage (Perilongo et al., 2000) and/or distant metastasis at diagnosis and/or vascular invasion.
  • HR Hazard Ratio
  • CI Confidence Interval.
  • FIG. 10 Correlation between molecular HCC subtypes and clinical outcome in 64 patients. Kaplan-Meier estimates of overall survival in 64 HCC patients using molecular classification with 16 genes, with the unsupervised clustering (centroid) (A) or unsupervised clustering (average) (B).
  • FIG. 11 Analysis of the probability of overall survival (OS) of 85 hepatoblastoma patients using Kaplan-Meier estimates.
  • Left pannel cases were classified by the discretization method into 3 classes using as cut-offs the 33 rd percentile and the 67 th percentile.
  • Middle pannel cases were classified into 2 classes using the 33 rd percentile.
  • Right pannel cases were classified into 2 classes using the 67 th percentile.
  • FIG. 12 Analysis of the probability of overall survival (OS) or disease-free survival (DFS) of 113* HCC patients using Kaplan-Meier estimates and log-rank test. Among the total series of 114 patients, survival data were not available for one case.
  • OS overall survival
  • DFS disease-free survival
  • HCC cases were classified into 3 classes by the discretization method using as cut-offs the 33 rd and the 67 th percentiles.
  • HCC cases were classified into 2 classes using different combinations of scores as described in Table F.
  • H HCC cases were classified into 2 classes using as cut-off the 67 th percentile.
  • K 92 HCC cases treated by partial hepatectomy (PH) were classified into 2 classes using as cut-off the 67 th percentile.
  • FIG. 13 Analysis of the probability of overall survival (OS) or disease-free survival (DFS) HCC patients using Kaplan-Meier estimates and log-rank test.
  • OS overall survival
  • DFS disease-free survival
  • RNA quality was checked with the Agilent 2100 Bioanalyzer (Agilent Technologies, Palo Alto, Calif.). Microarray experiments were performed according to the manufacturer's instructions. Affymetrix microarray data were normalized using RMA method (Irizarry et al., 2003). Class discovery was done as described elsewhere (Lamant et al., 2007).
  • transcriptome analysis was carried out using either an assortment of R system software packages (http://www.R-project.org, v2.3.0) including those of Bioconductor v1.8 (Gentleman et al., 2004) or original R code.
  • the variance of each probe set across samples was tested and compared to the median variance of all the probe sets, using the model: ((n ⁇ 1) ⁇ Var( probe set )/Var med ), where n refers to the number of samples.
  • the P-value for each probe set was obtained by comparison of this model to a percentile of Chi-square distribution with (n ⁇ 1) degrees of freedom.
  • the rCV was calculated for each probe set as follows. After ordering the intensity values of n samples from min to max, we eliminated the min and max values and we calculated the coefficient of variation (CV) for the remaining values.
  • Unsupervised selection of probe set lists was based on the two following criteria:
  • Step 2 Generation of a Series of 24 Dendrograms
  • Hierarchical clustering was performed by using the 8 rCV-ranked probe sets lists, 3 different linkage methods (average, complete and Ward's), and 1-Pearson correlation as a distance metric (package cluster v1.9.3). This analysis generated 24 dendrograms.
  • the intrinsic stability of each of the 24 dendrograms was assessed by comparing each dendrogram to the dendrograms obtained after data “perturbation” or “resampling” (100 iterations).
  • the comparison between dendrograms across all iterations yielded a mean ‘similarity score’ (see below).
  • the overall stability was assessed by calculating a mean similarity score, using all pairs of the 24 dendrograms.
  • CCP Compound Covariate Predictor
  • LDA Linear Discriminant Analysis
  • NNN 1-Nearest Neighbor
  • NNN 3-Nearest Neighbors
  • NC Nearest Centroid
  • SVM Support Vector Machines
  • KEGG pathway annotation was done by Onto-tools software (http://vortex.cs.wayne.edu/ontoexpress/servlet/UserInfo). We designated a significance threshold of each hypergeometric test at P ⁇ 0.001, and the condition that a GO term or pathway be represented by at least 3 Entrez Gene identifiers.
  • GSEA (Subramanian et al., 2005) was used to evaluate the correlation of a specific gene list with two different sample groups (phenotypes). Briefly, this method calculates an enrichment score after ranking all genes in the dataset based on their correlation with a chosen phenotype and identifying the rank positions of all the members of a defined gene set. We used the signal2noise ratio as a statistic to compare specific and random phenotypes in order to evaluate statistical differences.
  • Genomic DNA from 24 HBs and 3 non-tumor liver samples was analyzed using aCGH chips designed by the CIT-CGH consortium.
  • This array contains 3400 sequence-verified PAC/BAC clones spaced at approximately 1 Mb intervals, spotted in triplicate on Ultra Gaps slides (Corning Inc, Corning, N.Y.).
  • the aCGH chip was designed by CIT-CGH consortium (Olivier Delattre laboratory, Curie Institute, Paris; Charles Theillet laboratory, CRLC Val d'Aurelle, adjoin; Stanislas du Manoir laboratory, IGBMC, France and the company IntegraGenTM). DNAs were labeled by the random priming method (Bioprime DNA labelling system; Invitrogen, Cergy-Pontoise, France) with cyanine-5 (Perkin-Elmer, Wellesley, Mass.). Using the same procedure, we labeled control DNAs with cyanine-3.
  • probes were cohybridized on aCGH.
  • the aCGH slides were previously preblocked with a buffer containing 2.6 mg succinic anhydride/118 ml N-methyl-2-pyrrolidinone/32 ml sodium tetraborate decahydrate, pH 8.0 (Sigma-Aldrich, Lyon, France). After washing, arrays were scanned using a 4000B scan (Axon, Union City, Calif.).
  • Image analysis was performed with Genepix 5.1 software (Axon) and ratios of Cy5/Cy3 signals were determined.
  • the aCGH data were normalized using lowess per block method (Dudoit et al., 2002). Comparison between groups was done using chi-square test or Fisher's exact test, as appropriate.
  • Murine Genome Affymetrix U74v2 A and B arrays were used to investigate liver expression at embryonic day 18.5 (E18.5) and at 8 days after birth (PN8). Each time point consisted of a pool of livers from 3-5 animals analyzed in triplicate. Microarray experiments were performed according to the manufacturer's instructions.
  • MG Gene Expression Omnibus
  • RNA from 52 tumor samples including 11 samples analyzed on microarrays, see FIG. 8
  • RNAs purchased from BioChain Institute, Hayward, Calif. purchased from BioChain Institute, Hayward, Calif.
  • 1 ⁇ g of RNA was diluted at the final concentration of 100 ng/ ⁇ l, and reverse transcribed with the Superscript RT kit (Invitrogen, Carlsbad, Calif.) following the manufacturer's protocol.
  • Random primers (Promega, Charbonistics-les-Bains, France) were added at the final concentration of 30 ng/ ⁇ l and the final volume was 20 ⁇ l.
  • the cDNA was diluted 1:25, and 5 ⁇ l were used for each qPCR reaction.
  • Each reaction was performed in triplicate.
  • qPCR reactions were run on the Applied Biosystems 7900HT Fast Real-Time PCR System with a 384-well thermo-block, in the following conditions: 2 min at 50° C. to activate Uracil-N-glycosylase (UNG)-mediated erase of aspecific reaction; 10 min at 95° C. to activate the polymerase and inactivate the UNG; 40 cycles (15 sec at 95° C. denaturation step and 1 min at 60° C. annealing and extension); and final dissociation step to verify amplicon specificity.
  • UNG Uracil-N-glycosylase
  • AFP forward primer GCCAGTGCTGCACTTCTTCA
  • AFP reverse primer TGTTTCATCCACCACCAAGCT AFP probe: ATGCCAACAGGAGGCCATGCTTCA (for each polynucleotide, the sequence is given from 5′ to 3′)
  • ALDH2 forward primer TGCAGGATGGCATGACCAT
  • ALDH2 reverse primer TCTTGAACTTCAGGATCTGCATCA
  • ALDH2 probe CCAAGGAGGAGATCTTCGGGCCA
  • APCS forward primer AGCTGGGAGTCCTCATCAGGTA
  • APCS reverse primer CGCAGACCCTTTTTCACCAA
  • APCS probe TGCTGAATTTTGGATCAATGGGACACC APOC4 forward primer: TGAAGGAGCTGCTGGAGACA APOC4 reverse primer: CGGGCTCCAGAACCATTG APOC4 probe:
  • genes were mainly assigned to GO categories including mitosis regulation, spindle checkpoint, nucleotide biosynthesis, RNA helicase activity, ribosome biogenesis, and translational regulation.
  • Ki-67 immunostaining see FIG. 2A .
  • the remaining tumors were classified into C1 (rC1-related) and C2 (rC2-related) subclasses by applying a predictive approach based on the rC1/rC2 gene signature and using robust samples as training set ( FIG. 1C ).
  • Both groups exhibited similar, high rates of ⁇ -catenin mutations, and accordingly, immunohistochemistry (IHC) of ⁇ -catenin showed cytoplasmic and nuclear staining of the protein in the majority of HBs.
  • IHC immunohistochemistry
  • ⁇ -catenin localization was predominantly membranous and cytoplasmic in C1 tumors, whereas it showed frequent loss of membrane anchoring and intense nuclear accumulation in C2 tumors ( FIG. 1C ).
  • C2 tumors showed increased expression of MYCN, BIRC5 that encodes the anti-apoptotic factor Survivin, NPM1 (encoding nucleophosmin) and HDAC2.
  • MYCN MYCN
  • BIRC5 that encodes the anti-apoptotic factor Survivin
  • NPM1 encoding nucleophosmin
  • HDAC2 HDAC2
  • most C1 tumors prominently expressed the Wnt antagonist DKK3, BMP4, and genes previously found to be activated in liver tumors carrying mutant ⁇ -catenin (Boyault et al., 2007; Renard et al., 2007; Stahl et al., 2005).
  • liver functions are expressed in the perivenous area of adult livers, such as GLUL, RHBG, and two members of the cytochrome p450 family: CYP2E1 and CYP1A1 (Benhamouche et al., 2006; Braeuning et al., 2006) ( FIG. 1D ).
  • GSEA Gene Set Enrichment Analysis
  • C2 tumors also abundantly expressed hepatic progenitor markers such as KRT19 (encoding cytokeratin 19) and TACSTD1, also known as Ep-CAM ( FIG. 2B ).
  • liver development-related gene signature To better define the relationships between HB subclasses and phases of hepatic differentiation, we first generated a liver development-related gene signature by making use of publicly available mouse fetal and adult liver data sets (Otu et al., 2007). When applied to HB samples, this signature was able to distinguish by hierarchical clustering two HB groups closely matching the C1/C2 classification.
  • HB gene expression data With the orthologous genes expressed in mouse livers at embryonic days (E) 11.5 to 18.5, and at 8 days of birth. In unsupervised clustering, most C2 tumors co-clustered with mouse livers at early stages of embryonic development (E11.5 and E12.5), whereas C1 tumors gathered with mouse livers at late fetal and postnatal stages. Together, these data comfort the notion that tumor cells in C2 and C1 subtypes are arrested at different points of the hepatic differentiation program.
  • HB classifier signature derived from the top list of genes differentially expressed between rC1 and rC2 clusters.
  • a list of 16 top genes at p ⁇ 10 ⁇ 7 was selected to form a class predictor (Table 1). Most of these genes show drastic variations in expression level during liver development, and among them, BUB1 and DLG7 have been repeatedly identified as hESC markers (Assou et al., 2007).
  • the 16-gene expression profile was first investigated in rC1 and rC2 samples used as training set, and it predicted classification with 100% of accuracy in these samples, using either microarray or qPCR data.
  • C1/C2 classification in this new set of tumors was unrelated to CTNNB1 mutation rate.
  • C1 and C2 tumors displayed mesenchymal components, a predominant fetal histotype was found in 95% of tumors of the C1 subtype, whereas in 82% of C2 tumors, the major component displayed less differentiated patterns such as embryonal, crowded-fetal, macrotrabecular and SCUD types (p ⁇ 0.0001) ( FIG. 3 ).
  • HB molecular classification was addressed in a second set of patients (comprising the sample of the first set), comprising 53 (61%) C1 and 33 (39%) C2 cases.
  • HBs of the C2 subclass were tightly associated with features of advanced tumor stage, such as vascular invasion and extrahepatic metastasis ( FIG. 9A ). Accordingly, overall survival of these patients was markedly impaired.
  • metastasis extrahepatic metastasis (mainly lung); vascular invasion is determined by imagery; Pretext IV (involved an intrahepatic extent of the tumor to all hepatic sections); # multifocality (more than 2 tumor nodules); Ep: pure epithelial form - Mixed: mesenchymatous and epithelial mixed form; Fetal: well differentiated; non fetal: embryonic, atypic, SCUD and/or macrotrabecular cells.
  • hepatoblastoma encompass two major molecular subclasses of tumors that evoke early and late phases of prenatal liver development.
  • Aberrant activation of the canonical Wnt pathway represented a seminal event in both tumor types, with cumulated mutation rates of ⁇ -catenin, APC and AXIN over 80%.
  • Wnt signaling activated distinct transcriptional programs involved in tumor growth and invasiveness or in liver metabolism.
  • the C1 subclass recapitulates liver features at the latest stage of intrauterine life, both by expression profile and by mostly fetal morphologic patterns, while in the C2 subclass, transcriptional program and predominant embryonal histotype resemble earlier stages of liver development. Thus, despite frequent morphological heterogeneity in HB, these expression-based subclasses closely matched the histologic types found to be prevailing after microscopic examination of the entire tumor mass.
  • a salient feature of immature HBs is the characteristic interplay of sternness and proliferation found in aggressive tumors (Glinsky et al., 2005).
  • the C2-type expression profile was significantly enriched in hESC markers, including the mitotic cell cycle and spindle assembly checkpoint regulators cyclin B1, BUB1, BUB1B, and Aurora kinases. These mitotic kinases are centrosomal proteins that ensure proper spindle assembly and faithful chromosome segregation in mitosis.
  • ⁇ -catenin Mutational activation of ⁇ -catenin is a hallmark of HB, and accordingly, we found intracellular accumulation and nuclear localization of the protein in virtually all tumors, albeit with variable frequencies and intensities. Both immature and differentiated tumors overexpressed AXIN2 and DKK1, reflecting an attempt to activate a negative feedback loop aimed at limiting the Wnt signal.
  • the two HB subtypes showed significant differences in ⁇ -catenin immunoexpression, illustrated by concomitant nuclear accumulation and decreased membranous localization of the protein in poorly differentiated, highly proliferative HBs.
  • nuclear ⁇ -catenin might be related to the absence of membranous E-cadherin in immature HBs, as we reported previously (Wei et al., 2000), and to cross-talks with growth-stimulating pathways in less differentiated cells. In this context, increased dosage of Wnt signaling might induce migratory and invasive phenotype.
  • the expression signature afforded here enables direct appraisal of the global degree of tumor cell maturation, allowing to bypass these difficulties. Thus, it can improve the outcome prediction and clinical management of hepatoblastoma, by identifying cases with increased risk of developing metastasis, or conversely, by avoiding unnecessary over-treatment.
  • the present application identifies a 16-gene signature that distinguishes two HB subclasses and that is able to discriminate invasive and metastatic hepatoblastomas, and predicts prognosis with high accuracy.
  • the identification of this expression signature with dual capacities may be used in recognizing liver developmental stage and in predicting disease outcome.
  • This signature can be applied to improve clinical management of pediatric liver cancer and develop novel therapeutic strategies, and is therefore relevant for therapeutic targeting of tumor progenitor populations in liver cancer.
  • HCC Hepatocellular Carcinoma
  • Table 14 shows the correlation between some clinical variable and the classification of the tumors.
  • Variable C1 C2 p-value Tumor grade >2 (Edmonson) 13/29 21/23 ⁇ 0.0001 Moderately-poorly differentiated (OMS) 17/36 23/25 ⁇ 0.0001 Macrovascular Invasion 6/30 9/21 0.074 Microvascular Invasion 13/32 15/22 0.043 Recurrence 7/36 5/25 ns (ns: non-significant)
  • HBs hepatoblastomas
  • HCCs 114 hepatocellular carcinomas
  • the inventors have designed a methodology for classification based on the principle of discretization of continuous values which refers to the process of converting continuous variables to “discretized” or nominal sets of values.
  • the major advantage of the discretization method relies on the definition of a cut-off for codification of each qPCR value (either by the Taqman or by the SybrGreen method), which provides an intrinsic score to directly classify an individual sample. There is hence no requirement to compare a sample to a large series of samples.
  • the assigned subclass (such as C1 or C2 disclosed herein) is relative to the values obtained in a large number of cases.
  • the use of the average discretized values allows to tolerate missing values when analyzing the qPCR results (i.e. missed amplification of one of the genes for technical reasons).
  • ⁇ deltaCt values Using the qPCR data of the 16 genes normalized to the reference RHOT2 gene ( ⁇ deltaCt values), a cut-off (or threshold) has been defined for each gene.
  • the ⁇ deltaCt values are converted into discrete values “1” or “2” depending on an assigned cut-off.
  • the cut-offs In order to privilege the identification of samples that display strong overexpression of proliferation-related genes and/or strong downregulation of differentiation-related genes, the cut-offs have been defined as follows:
  • RNA was diluted at the final concentration of 100 ng/ ⁇ l, and reverse transcribed with the Superscript RT kit (Invitrogen) following the manufacturer's protocol. Random primers were added at the final concentration of 30 ng/ ⁇ l and the final volume was 20 ⁇ l.
  • the cDNA was diluted 1:25, and 5 ⁇ l were used for each qPCR reaction.
  • AFP 3.96139596
  • ALDH2 4.3590482
  • APCS 4.4691582
  • APOC4 2.03068712
  • AQP9 3.38391456
  • BUB1 ⁇ 1.41294708
  • C1S 4.24839464
  • CYP2E1 6.70659644
  • DLG7 ⁇ 3.3912188
  • DUSP9 2.07022648
  • E2F5 ⁇ 0.72728656
  • GHR ⁇ 0.1505569200
  • HPD 2.27655628
  • IGSF1 0.1075015200
  • NLE ⁇ 0.02343571999
  • RPL10A 6.19723876
  • the relative expression value is determined for each gene of the set of profiled genes. Each value is compared to the cut-off for the corresponding gene and is then discretized as a result of its position with respect to said cut-off.
  • the 8 proliferation-related genes are the following: AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE, and RPL10A.
  • the 8 differentiation-related genes are the following: ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR, and HPD.
  • a score of 2 is the maximal score for highly proliferating and poorly differentiated tumors, whereas well differentiated and slowly proliferating tumors will have a minimal score of 0.5.
  • RNA was diluted at the final concentration of 100 ng/ ⁇ l, and reverse transcribed with the Superscript RT kit (Invitrogen) following the manufacturer's protocol. Random primers were added at the final concentration of 30 ng/ ⁇ l and the final volume was 20 ⁇ l.
  • the cDNA was diluted 1:25, and 5 ⁇ l were used for each qPCR reaction.
  • qPCR reactions were run on the Applied Biosystems 7900HT Fast Real-Time PCR System with a 384-well thermo-block, and the conditions were the following:
  • UNG Uracil-N-glycosylase
  • AFP forward primer GCCAGTGCTGCACTTCTTCA
  • AFP reverse primer TGTTTCATCCACCACCAAGCT AFP
  • Taqman probe ATGCCAACAGGAGGCCATGCTTCA
  • RHOT2 forward primer CCCAGCACCACCATCTTGAC
  • RHOT2 reverse primer CCAGAAGGAAGAGGGATGCA
  • Taqman probe CAGCTCGCCACCATGGCCG
  • Raw data for each gene were normalized to the expression of the ROTH2 gene, providing the deltaCt values that were then used for tumor classification into subclasses using the discretization method.
  • the normalized qPCR values (deltaCt) of the 16 genes in 26 HCC samples analyzed by the Sybr Green approach is given in Table C.
  • the deltaCt values for 88 HCCs analyzed by the Taqman approach are given in Table D.
  • the ⁇ deltaCt values for each gene in each sample was used.
  • the cut-offs (or thresholds) selected for each gene using the Taqman method or the SybrGreen method are as follows: Table E of cut-offs for discretization values Gene name Cut-off for Taqman Cut-off for SybrGreen AFP ⁇ 1.2634010 ⁇ 2.3753035 ALDH2 4.014143 5.314302 APCS 5.6142907 6.399079 APOC4 ⁇ 0.7963158 4.656336 AQP9 4.2836011 5.446966 BUB1 ⁇ 1.2736579 ⁇ 3.634476 C1S 6.3514679 6.240002 CYP2E1 6.9562419 5.829384 DLG7 ⁇ 2.335694 ⁇ 4.614352 DUSP9 ⁇ 7.979559 ⁇ 1.8626715 E2F5 ⁇ 0.4400218 ⁇ 1.367846 GHR 1.0832632 1.169362 HPD 6.7480328 6.736329 IGSF1
  • the relative expression value is determined for each gene of the set of profiled genes. Each value is compared to the cut-off for the corresponding gene and is then discretized as a result of its position with respect to said cut-off.
  • the 8 proliferation-related genes are the following: AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE, and RPL10A.
  • the 8 differentiation-related genes are the following: ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR, and HPD.
  • a score of 2 is the theoretical maximal score for highly proliferating and poorly differentiated tumors, whereas well differentiated and slowly proliferating tumors will have a theoretical minimal score of 0.5.
  • cut-offs are identified to separate the samples into relevant subclasses. Three different cut-offs that correspond to the 30rd (0.66), 50th (0.8125) and 67th percentile (0.925) have been assessed, leading to 4 different classification methods.
  • Microvascular 0.071 0.001 0.009 37/26 9/21 The cases defined as Invasion (N/Y) possible are considered negative.
  • OS overall survival
  • DFS disease-free survival
  • the different analyses are illustrated in the Kaplan-Meier plots shown in FIG. 12 .
  • the discretization method of classification showed the same efficiency in the analysis of tumors obtained either from surgical resection (also called partial hepatectomy, PH) or from orthotopic liver transplantation (OLT), showing that the clinical management of the tumor had no impact on the classification.
  • the method described herein is able to classify HCC cases according to tumor grade and patient's survival, and represents a powerful tool at diagnosis to stratify the tumors according to the prognosis, and for further clinical management of HCC.
  • it may be an excellent tool for the decision of orthotopic liver transplantation, since the criteria used currently are limited and often poorly informative of the outcome.
  • genes 3 amplify the selected genes said genes being in equal number of each of the groups defined as overexpressed proliferation-related genes group and downregulated differentiation-related genes group (profiled genes within the group of 2 to 16 genes) and the reference gene (invariant gene) such as for example the RHOT2 gene 1:5 cDNA dilution, using either Taqman or SybrGreen qPCR technology.
  • Step one assignment of discretized values to each selected gene among proliferation-related genes and differentiation-related genes.
  • the DCt of AFP is ⁇ 4.0523
  • the cut-off for AFP for qPCR using Taqman technology is ⁇ 1.2634010 Given that ⁇ 4.0523 is lower than the cut-off, the assigned discretized value is 2.
  • Step two Determination of the average of discretized values for the 2 sets of 8 genes:
  • Step Three calculate the ratio proliferation/differentiation score.
  • Step 4 compare the result with the reference scores:
  • NA HC 140 03/06/2004 PH 5/08/2008 . 4.17 Y 30/06/2005 NA HC 141 06/02/2004 PH 12/03/2009 . 5.08 Y Dec. 2005 NA HC 142 14/20172002 PH 21/06/2006 21/06/2006 4.08 Y 24/03/2006 NA HC 143 04/03/2002 PH 26/01/2007 . 2.83 Y 2005 NA HC 144 27/06/2002 PH 17/06/2008 . 6.00 Y 16/03/2004 NA HC 145 14/11/2002 PH 30/07/2008 .

Abstract

The present invention concerns a method to determine the gene expression profile on a sample previously obtained from a patient diagnosed for a liver tumor, comprising assaying the expression of a set of genes in this sample and determining the gene expression profile (signature). In a particular embodiment, said method enables to determine the grade of liver tumor, such as hepatoblastoma (HB) or a hepatocellular carcinoma (HCC). The invention is also directed to kits comprising a plurality of pairs of primers or a plurality of probes specific for a set of genes, as well as to solid support or composition comprising a set of probes specific for a set of genes. These methods are useful to determine the grade of a liver tumor in sample obtained from a patient, to determine the risk of developing metastasis and/or to define the therapeutic regimen to apply to a patient.

Description

  • The present invention relates to a method to in vitro determine the grade of a liver tumor in a sample previously obtained from a patient, using a molecular signature based on the expression of a set of genes comprising at least 2, especially has or consist of 2 to 16 genes, preferably a set of 16 genes. In a particular embodiment, the method focuses on hepatoblastoma (HB) or hepatocellular carcinoma (HCC), in adults or in children. The invention is also directed to sets of primers, sets of probes, compositions, kits or arrays, comprising primers or probes specific for a set of genes comprising at least 2 genes, especially has or consists of 2 to 16 genes, preferably exactly 16 genes. Said sets, kits and arrays are tools suitable to determine the grade of a liver tumor in a patient.
  • The liver is a common site of metastases from a variety of organs such as lung, breast, colon and rectum. However, liver is also a site of different kinds of cancerous tumors that start in the liver (primary liver cancers). The most frequent is the Hepatocellular Carcinoma (HCC) (about 3 out of 4 primary liver cancers are this type) and is mainly diagnosed in adults. In the United States approximately 10,000 new patients are diagnosed with hepatocellular carcinoma each year. Less frequent liver tumours are cholangiocarcinoma (CC) in adults and hepatoblastoma (HB) in children.
  • The prognosis and treatment options associated with these different kinds of cancers is difficult to predict, and is dependent in particular on the stage of the cancer (such as the size of the tumor, whether it affects part or all of the liver, has spread to other places in the body or its aggressiveness). Therefore, it is important for clinicians and physicians to establish a classification of primary liver cancers (HCC or HB) to propose the most appropriate treatment and adopt the most appropriate surgery strategy. Some factors are currently used (degree of local invasion, histological types of cancer with specific grading, tumour markers and general status of the patient) but have been found to not be accurate and sufficient enough to ensure a correct classification.
  • As far as the HB is concerned, the PRETEXT (pre-treatment extent of disease) system designed by the International Childhood Liver Tumor Strategy Group (SIOPEL) is a non invasive technique commonly used by clinicians, to assess the extent of liver cancer, to determine the time of surgery and to adapt the treatment protocol. This system is based on the division of the liver in four parts and the determination of the number of liver sections that are free of tumor (Aronson et al. 2005; Journal of Clinical Oncology; 23 (6): 1245-1252). A revised staging system taking into account other criteria, such as caudate lobe involvement, extrahepatic abdominal disease, tumor focality, tumor rupture or intraperitoneal haemorrhage, distant metastases, lymph node metastases, portal vein involvement and involvement of the IVC (inferior vena cava) and/or hepatic veins, has been recently proposed (Roebuck; 2007; Pediatr Radiol; 37: 123-132). However, the PRETEXT system, even if reproducible and providing good prognostic value, is based on imaging and clinical symptoms, making this system dependent upon the technicians and clinicians. There is thus a need for a system, complementary to the PRETEXT system, based on genetic and molecular features of the liver tumors.
  • The present invention concerns a method or process of profiling gene expression for a set of genes, in a sample previously obtained from a patient diagnosed for a liver tumor. In a particular embodiment said method is designed to determine the grade of a liver tumor in a patient.
  • By “liver tumor” or “hepatic tumor”, it is meant a tumor originating from the liver of a patient, which is a malignant tumor (comprising cancerous cells), as opposed to a benign tumor (non cancerous) which is explicitly excluded. Malignant liver tumors encompass two main kinds of tumors: hepatoblastoma (HB) or hepatocellular carcinoma (HCC). These two tumor types can be assayed for the presently reported molecular signature. However, the present method may also be used to assay malignant liver tumors which are classified as unspecified (non-HB, non-HCC).
  • The present method may be used to determine the grade of a liver tumor or several liver tumors of the same patient, depending on the extent of the liver cancer. For convenience, the expression “a liver tumor” will be used throughout the specification to possibly apply to “one or several liver tumor(s)”. The term “neoplasm” may also be used as a synonymous of “tumor”.
  • In a particular embodiment, the tumor whose grade has to be determined is located in the liver. The presence of the tumor(s) in the liver may be diagnosed by ultrasound scan, x-rays, blood test, CT scans (computerised tomography) and/or MRI scans (magnetic resonance imaging).
  • In a particular embodiment, the tumor, although originating from the liver, has extended to other tissues or has given rise to metastasis.
  • In a particular embodiment, the patient is a child i.e., a human host who is under 20 years of age according to the present application. Therefore, in a particular embodiment, the liver tumor is a paediatric HB or a paediatric HCC. In another embodiment, the liver tumor is an adult HCC.
  • A grade is defined as a subclass of the liver tumor, corresponding to prognostic factors, such as tumor status, liver function and general health status. The present method of the invention allows or at least contributes to differentiating liver tumors having a good prognosis from tumors with a bad prognosis, in terms of evolution of the patient's disease. A good prognosis tumor is defined as a tumor with good survival probability for the patient (more than 80% survival at two years for HB and more than 50% survival at two years for HCC), low probability of metastases and good response to treatment for the patient. In contrast, a bad prognosis tumor is defined as a tumor with an advanced stage, such as one having vascular invasion or/and extrahepatic metastasis, and associated with a low survival probability for the patient (less than 50% survival in two years).
  • The method of the invention is carried out on a sample isolated from the patient who has previously been diagnosed for the tumor(s) and who, optionally, may have been treated by surgery. In a preferred embodiment, the sample is the liver tumor (tumoral tissue) or of one of the liver tumors identified by diagnosis imaging and obtained by surgery or a biopsy of this tumor. The tumor located in the liver tumor is called the primary tumor.
  • In another embodiment, the sample is not the liver tumor, but is representative of this tumor. By “representative”, it is meant that the sample is regarded as having the same features as the primary tumors, when considering the gene expression profile assayed in the present invention. Therefore, the sample may also consist of metastatic cells (secondary tumors spread into different part(s) of the body) or of a biological fluid containing cancerous cells (such as blood).
  • The sample may be fixed, for example in formalin (formalin fixed). In addition or alternatively, the sample may be embedded in paraffin (paraffin-embedded) or equivalent products. In particular, the tested sample is a formalin-fixed, paraffin-embedded (FFPE) sample.
  • One advantage of the method of the present invention is that, despite the possible heterogeneity of some liver tumors (comprising epithelial tumor cells at different stages of liver differentiation within the same tumor), the assay has proved to be reproducible and efficient on liver tumor biopsies obtained from any part of the whole tumor. Therefore, there is no requirement for the isolation of cells presenting particular features except from the fact that they are obtained from a liver tumor or are representative thereof, to carry out the gene expression profile assay.
  • In a particular embodiment, the tumor originates from a patient having a Caucasian origin, in particular European, North American, Australian, New-Zealander or Afrikaners.
  • In a first step, the method or process of the invention comprises assaying the expression level of a set of genes in a sample, in order to get an expression profile thereof.
  • By “expression of a set of genes” (or “gene expression”), it is meant assaying, in particular detecting, the product or several products resulting from the expression of a gene, this product being in the form of a nucleic acid, especially RNA, mRNA, cDNA, polypeptide, protein or any other formats. In a particular embodiment, the assay of the gene expression profile comprises detecting a set of nucleotide targets, each nucleotide target corresponding to the expression product of a gene encompassed in the set.
  • The expression “nucleotide target” means a nucleic acid molecule whose expression must be measured, preferably quantitatively measured. By “expression measured”, it is meant that the expression product(s), in particular the transcription product(s) of a gene, are measured. By “quantitative” it is meant that the method is used to determine the quantity or the number of copies of the expression products, in particular the transcription products or nucleotide targets, originally present in the sample. This must be opposed to the qualitative measurement, whose aim is to determine the presence or absence of said expression product(s) only.
  • A nucleotide target is in particular a RNA, and most particularly a total RNA. In a preferred embodiment, the nucleotide target is mRNA or transcripts. According to the methods used to measure the gene expression level, the mRNA initially present in the sample may be used to obtain cDNA or cRNA, which is then detected and possibly measured.
  • In an embodiment, the expression of the gene is assayed directly on the sample, in particular in the tumor. In an alternative embodiment, the expression products or the nucleotide targets are prepared from the sample, in particular are isolated or even purified. When the nucleotide targets are mRNA, a further step comprising or consisting in the retro-transcription of said mRNA into cDNA (complementary DNA) may also be performed prior to the step of detecting expression. Optionally, the cDNA may also be transcribed in vitro to provide cRNA.
  • During the step of preparation, and before assaying the expression, the expression product(s) or the nucleotide target(s) may be labelled, with isotopic (such as radioactive) or non isotopic (such as fluorescent, coloured, luminescent, affinity, enzymatic, magnetic, thermal or electrical) markers or labels.
  • It is noteworthy that steps carried out for assaying the gene expression must not alter the qualitative or the quantitative expression (number of copies) of the expression product(s) or of the nucleotide target(s), or must not interfere with the subsequent step comprising assaying the qualitative or the quantitative expression of said expression product(s) or nucleotide target(s).
  • The step of profiling gene expression comprises determining the expression of a set of genes. Such a set is defined as a group of genes that must be assayed for one test, and especially performed at the same time, on the same patient's sample. A set comprises at least 2 and has especially from 2 to 16 genes, said 2 to 16 genes being chosen from the 16 following genes: alpha-fetoprotein (AFP), aldehyde dehydrogenase 2 (ALDH2), amyloid P component serum (APCS), apolipoprotein C-IV (APOC4), aquaporin 9 (AQP9), budding uninhibited by benzimidazoles 1 (BUB1), complement componant 1 (C1S), cytochrome p450 2E1 (CYP2E1), discs large homolog 7 (DLG7), dual specificity phosphatase 9 (DUSP9), E2F5 transcription factor (E2F5), growth hormone receptor (GHR), 4-hydroxyphenylpyruvase dioxygenase (HPD), immunoglogulin superfamily member 1 (IGSF1), Notchless homolog 1 (NLE1) and the ribosomal protein L10a (RPL10A) genes.
  • A complete description of these 16 genes is given in Table 1. This table lists, from left to right, the symbol of the gene, the complete name of the gene, the number of the SEQ ID provided in the sequence listing, the Accession Number from the NCBI database on June 2008, the human chromosomal location and the reported function (when known).
  • A set of genes comprises at least 2 out the 16 genes of Table 1, and particularly at least or exactly 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 out of the 16 genes of Table 1. In a particular embodiment, the set comprises or consists of the 16 genes of Table 1 i.e. the set of genes comprises or consists of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes. Accordingly, unless otherwise stated when reference is made in the present application to a set of 2 to 16 genes of Table 1, it should be understood as similarly applying to any number of genes within said 2 to 16 range.
  • In other particular embodiments, the set of genes comprises or consists of one of the following sets: (a) the E2F5 and HPD genes, (b) the APCS, BUB1, E2F5, GHR and HPD genes, (c) the ALDH2, APCS, APOC4, BUB1, C1S, CYP2E1, E2F5, GHR and HPD genes, (d) the ALDH2, APCS, APOC4, AQP9, BUB1, C1S, DUSP9, E2F5 and RPL10A genes, or (e) the ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, E2F5, GHR, IGSF1 and RPL10A genes.
  • As indicated by the expression “comprises from 2 to 16 genes of Table 1”, the set may, besides the specific genes of Table 1, contain additional genes not listed in Table 1. This means that the set must comprises from 2 to 16 genes of Table 1, i.e. 2 to 16 genes of Table 1 (in particular 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, or 16 genes), and optionally comprises one or more additional genes. Said set may also be restricted to said 2 to 16 genes of Table 1.
  • Additional genes may be selected for the difference of expression observed between the various grades of liver cancer, in particular between a tumor of good prognosis and a tumor of poor prognosis.
    TABLE 1
    mRNA Accession Protein
    symbol Gene name SEQ ID No Location Function SEQ ID
    AFP alpha-fetoprotein 1 NM_001134 4q11-q13 plasma protein synthesized 2
    by the fetal liver
    ALDH2 aldehyde dehydrogenase 2 3 NM_000690 12q24.2 liver enzyme involved in 4
    family (mitochondrial) alcohol metabolism
    APCS amyloid P component, serum 5 NM_001639 1q21-q23 secreted glycoprotein 6
    AP0C4 apolipoprotein C-IV 7 NM_001646 19q13.2 secreted liver protein 8
    AQP9 aquaporin 9 9 NM_020980 15q22.1-22.2 water-selective membrane channel 10
    BUB1 BUB1 budding uninhibited 11 AF043294 2q14 kinase involved in spindle 12
    by benzimidazoles 1 homolog checkpoint
    (yeast)
    C1S complement component 1, s 13 M18767 12p13 component of the cleavage and 14
    subcomponent polyadenylation specificity
    factor complex
    CYP2E1 cytochrome P450, family 2, 15 AF182276 10q24.3-qter cytochrome P450 family member
    subfamily E, polypeptide 1 involved in drug metabolism
    DLG7 discs, large homolog7 17 NM_014750 14q22.3 cell cycle regulator involved 18
    (Drosophila) (DLGAP5) in kinetocore formation
    DUSP9 dual specificity phosphatase 9 19 NM_001395 Xq28 phosphatase involved in 20
    regulation of MAP Kinases
    E2F5 E2F transcription factor 5, 21 U15642 8q21.2 transcription factor involved in cell 22
    p130-binding cycle regulation
    GHR Growth hormone receptor 23 NM_000163 5p13-p12 transmembrane receptor for 24
    growth hormone
    HPD 4-hydroxyphenylpyruvate 25 NM_002150 12q24-qter enzyme involved in amino-acid 26
    dioxygenase degradation
    IGSF1 immunoglobulin superfamily, 27 NM_001555 Xq25 cell recognition and 28
    member 1 regulation of cell behavior
    NLE1 notchless homolog 1 29 NM_08096 17q12 unknown 30
    (Drosophila)
    RPL10A ribosomal protein L10a 31 NM_007104 6p21.3-p21.2 ribosomal protein of 60S subunit 32
  • The invention also relates to a set of genes comprising or consisting of the 16 genes of Table 1 (i.e., AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes), in which 1, 2, 3, 4 or 5 genes out of the 16 genes are substituted by a gene presenting the same features in terms of difference of expression between a tumor of a good prognosis and a tumor of poor prognosis.
  • In a particular embodiment, the number of genes of the set does not exceed 100, particularly 50, 30, 20, more particularly 16 and even more particularly is maximum 5, 6, 7, 8, 9 or 10.
  • When considering adding or substituting a gene or several genes to the disclosed set, the person skilled in the art will consider one or several of the following features:
      • (a) the added gene(s) and/or the substituted gene(s) of Table 1 must present the same features in terms of difference of expression between a tumor of a good prognosis and a tumor of poor prognosis as the genes of Table 1 when taken as a whole. Thus, the expression of the added gene or of the substituted gene in a tumor of a good prognosis is either overexpressed or underexpressed of a factor of at least 2, preferably of at least 5, and more preferably of at least 10, as compared to its expression in a tumor of poor prognosis.
      • (b) besides presenting the feature in a), the added gene and/or the substituted gene may also provide, in combination with the other genes of the set, discriminant results with respect to the grade of the liver tumors; this discrimination is reflected by the homogeneity of expression profile of this gene in the tumors of a good prognosis on the one hand, and the tumors of poor prognosis in the other hand; and
      • (c) finally, besides features of a) and/or b), the added gene and/or the substituted gene is optionally chosen among genes that are involved in liver differentiation, in particular having a specific expression in fetal liver, or genes that are involved in proliferation, for example in mitosis or associated with ribosomes.
  • Examples of genes which can be added or may replace genes of the set may be identified in following Table 2.
    TABLE 2
    list of genes according to p value.
    Gene mean mean ratio Parametric
    symbol rC1 rC2 rC2/rC1 p-value FDR Description
    IPO4 123.7 248.3 2.0 2.00E−07 0.00036 importin 4
    CPSF1 467.8 1010.7 2.2 2.00E-07 0.00036 cleavage and polyadenylation specific
    factor 1, 160 kDa
    MCM4 25.8 90.7 3.5 1.10E−06 0.00115 MCM4 minichromosome maintenance
    deficient 4 (S. cerevisise)
    EIF3S3 1319 2601.2 2.0 1.20E−06 0.00119 eukaryotic translation initiation factor 3,
    subunit 3 gamma, 40 kDa
    NCL 1319 2655.6 2.0 1.30E−06 0.00122 nucleolin
    CDC25C 35.7 99.3 2.8 1.40E−06 0.00124 cell division cycle 25C
    CENPA 28.2 78.4 2.8 1.50E−06 0.00124 centromere protein A, 17 kDa
    KIF14 24.7 54.2 2.2 1.50E−06 0.00124 kinesin family member 14
    IPW 145.7 397.6 2.7 1.90E−06 0.0015 imprinted in Prader-Willi syndrome
    KNTC2 26.8 65.1 2.4 2.20E−06 0.00157 kinetochore associated 2
    TMEM48 264 71.7 2.7 2.30E−06 0.00157 transmembrane protein 48
    BOP1 87.2 270.9 3.1 2.30E−06 0.00157 block of proliferation 1
    EIF3S9 170 372.4 2.2 2.30E−06 0.00157 eukaryotic translation initiation factor 3,
    subunit 9 eta, 116 kDa
    PH-4 340.9 168.2 0.5 2.40E−06 0.00158 hypoxia-inducible factor prolyl 4-
    hydroxylase
    SMC4L1 151.5 359.3 2.4 2.50E−06 0.0016 SMC4 structural maintenance of
    chromosomes 4-like 1 (yeast)
    TTK 23.7 74.2 3.1 2.60E−06 0.00161 TTK protein kinase
    LAMA3 696 136.3 0.2 2.80E−06 0.00168 laminin, alpha 3
    C10orf72 192.6 67.7 0.4 2.90E−06 0.00169 Chromosome 10 open reading frame 72
    TPX2 73.4 401.5 5.5 3.10E−06 0.00171 TPX2, microtubule-associated, homolog
    (Xenopus laevis)
    MSH2 75.5 212.1 2.8 3.20E−06 0.00171 mutS homolog 2, colon cancer,
    nonpolyposis type 1 (E. coli)
    DKC1 358.1 833.5 2.3 3.20E−06 0.00171 dyskeratosis congenita 1, dyskerin
    STK6 86.4 395.3 4.6 3.30E−06 0.00172 serine/threonine kinase 6
    CCT6A 200.5 526.6 2.6 3.50E−06 0.00173 chaperonin containing TCP1, subunit 6A
    (zeta 1)
    SULT1C1 67.5 314.8 4.7 3.50E−06 0.00173 sulfotransferase family, cytosolic, 1C,
    member 1
    ILF3 142.3 294.5 2.1 3.70E−06 0.00174 interleukin enhancer binding factor 3,
    90 kDa
    IMPDH2 916.9 2385.6 2.6 3.70E−06 0.00174 IMP (inosine monophosphate)
    dehydrogenase 2
    HIC2 63.4 208.8 3.3 3.90E−06 0.00179 hypermethylated in cancer 2
    AFM 1310.3 237.4 0.2 4.10E−06 0.00184 afamin
    MCM7 187.3 465.3 2.5 4.30E−06 0.00189 MCM7 minichromosome maintenance
    deficient 7 (S. cerevisiae)
    CNAP1 70.2 177.5 2.5 4.40E−06 0.00189 chromosome condensation-related SMC-
    associated protein 1
    CBARA1 958 475 0.5 4.60E−06 0.00194 calcium binding atopy-related
    autoantigen 1
    PLA2G4C 123.3 51.2 0.4 4.90E−06 0.00194 phospholipase A2, group IVC (cytosolic,
    calcium-independent)
    CPSF1 301.9 616 2.0 5.00E−06 0.00194 cleavage and polyadenylation specific
    factor 1, 160 kDa
    SNRPN 30.9 100.6 3.3 5.00E−06 0.00194 Small nuclear ribonucleoprotein
    polypeptide N
    RPL5 2754.8 4961 1.8 5.20E−06 0.00194 ribosomal protein L5
    C1R 1446.5 366.4 0.3 5.30E−06 0.00194 complement component 1, r
    subcomponent
    C16orf34 630.4 1109.6 1.8 5.30E−06 0.00194 chromosome 16 open reading frame 34
    PHB 309.3 915.1 3.0 5.30E−06 0.00194 prohibitin
    BZW2 387.4 946.4 2.4 5.40E−06 0.00194 basic leucine zipper and W2 domains 2
    ALAS1 1075.8 466.5 0.4 5.50E−06 0.00194 aminolevulinate, delta-, synthase 1
    FLJ20364 48.6 112.4 2.3 5.70E−06 0.00198 hypothetical protein FLJ20364
    RANBP1 593.7 1168.1 2.0 5.90E−06 0.00201 RAN binding protein 1
    SKB1 354.7 687.4 1.9 6.20E−06 0.00208 SKB1 homolog (S. pombe)
    ABHD6 402.2 196.9 0.5 6.50E−06 0.00213 abhydrolase domain containing 6
    CCNB1 60.4 330 5.5 6.60E−06 0.00213 cyclin B1
    NOL5A 246.9 716.2 2.9 7.00E−06 0.00213 nucleolar protein 5A (56 kDa with KKE/D
    repeat)
    RPL8 3805.7 7390.5 1.9 7.00E−06 0.00213 ribosomal protein L8
    BLNK 211.1 39.8 0.2 7.10E−06 0.00213 B-cell linker
    BYSL 167.3 269.7 1.6 7.10E−06 0.00213 bystin-like
    UBE1L 247.6 142.3 0.6 7.20E−06 0.00213 ubiquitin-activating enzyme E1-like
    CHD7 118.6 312 2.6 7.40E−06 0.00215 chromodomain helicase DNA binding
    protein 7
    DKFZp762E1 70.2 219.4 3.1 7.60E−06 0.00218 hypothetical protein DKFZp762E1312
    312 (HJURP)
    NUP210 178.4 284.9 1.8 7.70E−06 0.00218 nucleoporin 210 kDa
    PLK1 72.8 185.2 2.5 7.90E−06 0.0022 polo-like kinase 1 (Drosophila)
    ENPEP 116.2 29.4 0.3 8.00E−06 0.0022 glutamyl aminopeptidase
    (aminopeptidase A)
    HCAP-G 17.7 57.8 3.3 8.40E−06 0.00228 chromosome condensation protein G
    UGT2B4 1117.8 246.7 0.2 9.20E−06 0.00245 UDP glucuronosyltransferase 2 family,
    polypeptide B4
    C20orf27 129.7 245.3 1.9 9.30E−06 0.00245 chromosome 20 open reading frame 27
    C6orf149 178.7 491.1 2.7 9.40E−06 0.00245 chromosome 6 open reading frame 149
    (LYRM4)

    The Accession Numbers of the genes of Table 2. as found in NCBI database in June 2008, are the following: IPO4 (BC136759), CPSF1 (NM_013291), MCM4 (NM_005914.2; NM_182746.1; two accession numbers for the same gene correspond to 2 different isoforms of the gene), EIF3S3 (NM_003756.2), NCL (NM_005381.2), CDC25C (NM_001790.3), CENPA (NM_001809.3; NM_001042426.1), K1F14 (BC113742), IPW
    # (U12897), KNTC2 (AK313184), TMEM48 (NM_018087), BOP1 (NM_015201), EIF3S9 (NM_003751; NM_001037283). PH-4 (NM _177939), SMC4L1 (NM_005496; NM_001002800), TTK (AK315696), LAMA3 (NM_198129), C10orf72 (NM_001031746; NM_144984), TPX2 (NM_012112), MSH2 (NM_000251), DKC1 (NM_001363), STK6 (AY892410), CCT6A (NM_001762;
    # NM_001009186), SULT1C1 (AK313193), ILF3 (NM_012218; NM_004516), IMPDH2 (NM_000884), HIC2 (NM_015094), AFM (NM_001133), MCM7 (NM_005916; NM_182776), CNAP1(AK128354), CBARA1 (AK225695), PLA2G4C (NM_003706), CPSF1(NM_013291), SNRPN (BC000611), RPL5 (AK314720), C1R (NM_001733), C16orf34 (CH471112), PHB (AK312649), BZW2 (BC017794), ALAS1(AK312566),
    # FLJ20364 (NM_017785), RANBP1 (NM_002882), SKB1 (AF015913), ABHD6 (NM_020676), CCNB1 (NM_031966), NOL5A (NM_006392), RPL8 (NM_000973; NM_033301), BLNK (NM_013314; NM_001114094), BYSL (NM_004053), UBE1L(AY889910), CHD7 (NM_017780), DKFZp762E1312 (NM_018410), NUP210(NM_024923), PLK1(NM_005030), ENPEP(NM_001977),
    # HCAP-G(NM_022346), UGT2B4 (NM_021139), C20orf27 (NM_001039140) and C6orf149 (NM_020408).
  • In a particular embodiment of the invention, the set of genes of the invention is designed to determine the grade of hepatoblastoma, in particular paediatric hepatoblastoma. In another embodiment, the set of genes is designed to determine the grade of hepatocellular carcinoma, in particular paediatric HCC or adult HCC.
  • The expression of the genes of the set may be assayed by any conventional methods, in particular any conventional methods known to measure the quantitative expression of RNA, preferably mRNA.
  • The expression may be measured after carrying out an amplification process, such as by PCR, quantitative PCR (qPCR) or real-time PCR. Kits designed for measuring expression after an amplification step are disclosed below.
  • The expression may be measured using hybridization method, especially with a step of hybridizing on a solid support, especially an array, a macroarray or a microarray or in other conditions especially in solution. Arrays and kits of the invention, designed for measuring expression by hybridization method are disclosed below.
  • The expression of a gene may be assayed in two manners:
      • to determine absolute gene expression that corresponds to the number of copies of the product of expression of a gene, in particular the number of copies of a nucleotide target, in the sample; and
      • to determine the relative expression that corresponds to the number of copies of the product of expression of a gene, in particular the number of copies of a nucleotide target, in the sample over the number of copies of the expression product or the number of copies of a nucleotide target of a different gene (calculation also known as normalisation). This different gene is not one of the genes contained in the set to be assayed. This different gene is assayed on the same sample and at the same time as the genes of the set to be assayed, and is called an invariant gene or a normalizer. The invariant gene is generally selected for the fact that its expression is steady whatever the sample to be tested. The expression “steady whatever the sample” means that the expression of an invariant gene does not vary significantly between a normal liver cell and the corresponding tumor cell in a same patient and/or between different liver tumor samples in a same patient. In the present specification, a gene is defined as invariant when its absolute expression does not vary in function of the grade of the liver tumors, in particular does not vary in function of the grade of the HB or HCC tumor, and/or does not vary between liver tumor and normal liver cells.
  • In the present invention, the expression which is assayed is preferably the relative expression of each gene, calculated with reference to at least one (preferably 1, 2, 3 or 4) invariant gene(s). Invariant genes, suitable to perform the invention, are genes whose expression is constant whatever the grade of the liver tumors, such as for example ACTG1, EFF1A1, PNN and RHOT2 genes, whose features are summarized in Table 3. In a particular embodiment preferred, the relative expression is calculated with respect to at least the RHOT2 gene or with respect to the RHOT2 gene.
  • In another advantageous embodiment, the relative expression is calculated with respect to at least the PNN gene or with respect to the PNN gene. It may be calculated with respect to the RHOT2 and PNN genes.
  • The calculation of the absolute expression or of the relative expression of each gene of the set and of each invariant gene being assayed with the same method from the same sample, preferably at the same time, enables to determine for each sample a gene expression profile.
    TABLE 3
    Features of invariant genes. ACTG1, EEF1A1, PNN and RHOT2
    proteins are defined in SEQ ID NOs: 34, 36, 38 and 40 respectively.
    symbol Gene name SEQ 10* Accession No Location Function
    ACTG1 actin, gamma 1 33 NM_001614 17q25 cytoplasmic actin
    cytoskeleton in
    nonmuscle cells
    EEF1A1 eukaryotic translation 35 NM13 001 402 6q14.1 enzymatic delivery of
    elongation factor 1 aminoacyl tRNAs to
    alpha 1 the ribosome
    PNN pinin, desmosome 37 NM_002687 14q21.1 transcriptional
    associated protein corepressor, RNA
    splicing regulator
    RHOT2 ras homolog gene 39 NM_138769 16p13.3 Signaling by Rho
    family, member T2 GTPases,
    mitochondrial protein
  • An additional step of the method or process comprises the determination of the grade of said liver tumor, referring to the gene expression profile that has been assayed. In a particular embodiment of the invention, the method is designed to determine the grade of hepatoblastoma, in particular paediatric hepatoblastoma. In another embodiment, the method is designed to determine the grade of hepatocellular carcinoma, in particular paediatric HCC or adult HCC.
  • According to a particular embodiment of the invention, in the step of the method which is performed to determine the grade of the liver tumor, a gene expression profile or a signature (preferably obtained after normalization), which is thus specific for each sample, is compared to the gene expression profile of a reference sample or to the gene expression profiles of each sample of a collection of reference samples (individually tested) whose grade is known, so as to determine the grade of said liver tumor. This comparison step is carried out with at least one prediction algorithm. In a particular embodiment, the comparison step is carried out with 1, 2, 3, 4, 5 or 6 prediction algorithms chosen in the following prediction algorithms: Compound Covariate Predictor (CCP), Linear Discriminator Analysis (LDA), One Nearest Neighbor (1NN), Three Nearest Neighbor (3NN), Nearest Centroid (NC) and Support Vector Machine (SVM). These six algorithms are part of the “Biometric Research Branch (BRB) Tools” developed by the National Cancer Institut (NCI) and are available on http://linus.nci.nih.gov/BRB-ArrayTools.html. Equivalent algorithms may be used instead of or in addition to the above ones. Each algorithm classifies tumors within either of the two groups, defined as tumors with good prognosis (such as C1) or tumors with bad prognosis (such as C2); each group comprises the respective reference samples used for comparison, and one of these two groups also comprises the tumor to be classified.
  • Therefore, when 6 algorithms are used, the grade of a tumor sample may be assigned with certainty to the class of good prognosis or to the class of bad prognosis, when 5 or 6 of the above algorithms classified the tumor sample in the same group. In contrast, when less than 5 of the above algorithms classify a tumor sample in the same group, it provides an indication of the grade rather than a definite classification.
  • Reference samples which can be used for comparison with the gene expression profile of a tumor to be tested are one or several sample(s) representative for tumor with poor prognosis (such as C2), one or several sample(s) representative of tumor with good prognosis (such as C1), one or several sample(s) of a normal adult liver and/or one or several sample(s) of a fetal liver.
  • Table 4 lists the level of expression of each gene of Table 1 depending upon the status of the reference sample i.e., robust tumor with poor prognostic and robust tumor with good prognostic. Examples of methods to identify such robust tumors are provided in the examples. The present invention provides a new classification method in this respect, which is based on discretization of continuous values.
    TABLE 4
    Level of expression of the genes of Table 1, with respect
    to the status of the robust tumors
    Nucleotide Expression status in robust tumor
    target with poor prognosis with good prognosis
    AFP overexpressed underexpressed
    ALDH2 underexpressed overexpressed
    APCS underexpressed ovorexpressed
    APOC4 underexpressed overexpressed
    AQP9 underexpressed overexpressed
    BUB1 overexpressed underexpressed
    C1S underexpressed overexpressed
    CYP2E1 underexpressed overexpressed
    DLG7 overexpressed underexpressed
    DUSP9 overexpressed underexpressed
    E2F5 overexpressed underexpressed
    GHR underexpressed overexpressed
    HPD underexpressed overexpressed
    IGSF1 overexpressed underexpressed
    NLE1 overexpressed underexpressed
    RPL10A overexpressed underexpressed
  • Reference samples usually correspond to so-called “robust tumor” for which all the marker genes providing the signature are expressed (either under expressed or overexpressed) as expected i.e., in accordance with the results disclosed in Table 5, when tested in similar conditions, as disclosed in the examples hereafter.
  • A robust tumor having an overexpression of one or several gene(s) selected among ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR and HPD genes (these genes belong to the so-called group of differentiation-related genes), and/or an underexpression of one or several gene(s) selected among AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1 and RPL10A genes (these genes belong to the so-called group of proliferation-related genes), is an indicator of a robust liver tumor, in particular of a hepatoblastoma, with a good prognosis. A robust tumor having an overexpression of one or several gene(s) selected among AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1 and RPL10A genes, and/or an underexpression of one or several gene(s) among ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR and HPD genes, is an indicator of a robust liver tumor, in particular of a hepatoblastoma, with a poor prognosis. In the present application, a gene is said “underexpressed” when its expression is lower than the expression of the same gene in the other tumor grade, and a gene is said “overexpressed” when its expression is higher than the expression of the same gene in the other tumor grade.
  • In a particular embodiment, Table 5 provides the gene expression profiles of the 16 genes of Table 1 in 13 samples of hepatoblastoma (HB) including 8 samples that have been previously identified as rC1 subtype and 5 samples that have been previously identified as rC2 subtype. This Table can therefore be used for comparison, to determine the gene expression profile of a HB tumor to be classified, with the robust tumors disclosed (constituting reference samples), for a set of genes as defined in the present application. Said comparison involves using the classification algorithms which are disclosed herein, for both the selected reference samples and the assayed sample.
    TABLE 5
    Figure US20120040848A2-20120216-C00001

    Normalized qPCR data of 16 genes in 13 HB samples including 8 samples of the rC1 subtype and 5 samples of the rC2 subtype (in grey). The qpCR values have been obtained by measuring the expression of the 16 genes in 8 samples of the rC1 subtype and 5 samples of the rC2 subtype by the SYBR green method using the primers as disclosed in Table 6 below and in the conditions reported in the examples, and normalized by the ROTH2 gene (primers in Table 7).
  • The method of the present invention is also suitable to classify new tumor samples, and to use them as new reference samples. Therefore, the gene expression values of these new reference samples may be used in combination or in place of some of the values reported in Table 5.
  • In another embodiment of the invention, the step of determining the tumor grade comprises performing a method of discretization of continuous values of gene expression obtained on the set of genes the tested patients' samples. Discretization is generally defined as the process of transforming a continuous-valued variable into a discrete one by creating a set of contiguous intervals (or equivalently a set of cutpoints) that spans the range of the variable's values. Discretization has been disclosed for use in classification performance in Lustgarten J. L. et al, 2008.
  • The inventors have observed that discretization can be effective in determining liver tumor grade, especially for those tumors described in the present application, including Hepatoblastoma (HB) or Hepatocellular carcinoma (HCC).
  • The discretization method is especially disclosed in the examples where it is illustrated by using data obtained on tumor samples wherein these data are those obtained from profiling the 16 genes providing the large set of genes for expression profiling according to the invention. It is pointed out that the discretization method may however be carried out on a reduced number of profiled genes within this group of 16 genes, starting from a set consisting of 2 genes (or more genes) including one (or more) overexpressed proliferation-related genes chosen among AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1 and RPL10A and one down-regulated differentiation-related gene chosen among ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR, HPD, said genes being thus classified as a result of gene profiles observed on robust tumors with poor prognosis (according to the classification in Table 4 above). In particular embodiments of the discretization method, the number of assayed gene for expression profiling is 2, 4, 6, 8, 10, 12, 14 or 16 and the same number of genes in each category (either the group of overexpressed proliferation-related genes or the group of downregulated differentiation-related gene) is used to perform the method.
  • The invention thus relates to a method enabling the determination of the tumor grade on a patient's sample, which comprises a classification of the tumor through discretization according to the following steps:
      • measuring the expression and especially the relative (normalized) expression of each gene in a set of genes defined as the signature of the tumor, for example by quantitative PCR thereby obtaining data as Ct or preferably Delta Ct, wherein said set of genes is divided in two groups, a first group consisting of the proliferation-related genes and a second group consisting of the differentiation-related genes (as disclosed above),
      • comparing the values measured for each gene, to a cut-off value determined for each gene of the set of genes, and assigning a discretized value to each of said measured values with respect to said cut-off value, said discretized value being advantageously a “1” or a “2” value assigned with respect to the cut-off value of the gene and optionally, if two cut-offs values are used for one gene, a further discretized value such as a “1.5” or another value between “1” or “2” may be assigned for the measured values which are intermediate between the cut-offs values,
      • determining the average of the discretized values for the genes, in each group of the set of genes,
      • determining the ratio of the average for the discretized values for the proliferation-related genes on the average for the discretized values for the differentiation-related genes, thereby obtaining a score for the sample,
      • comparing the obtained score for the sample with one or more sample cut-off(s), wherein each cut-off has been assessed for a selected percentile,
      • determining the tumor grade as C1 or C2, as a result of the classification of the sample with respect to said sample cut-off.
  • The above defined ratio of average values may be alternatively calculated as the ratio of the average for the discresized values for the differentiation-related genes on the average for the discretized values for the proliferation-related genes, to obtain a score. If this calculation made is adopted the cut-offs values are inversed, i.e., are calculated as 1/xxx.
  • In order to carry out the discretization method of the invention, the data obtained on the assayed genes for profiling a patient's sample are preferably normalized with respect to one or more invariant gene(s) of the present invention, in order to prevent detrimental impact on the results that may arise from possible inaccuracy in the quantification of initial nucleic acid, especially RNA, in the sample.
  • Normalization with respect to one invariant gene only, especially when said invariant gene is RHOT2 gene has proved to be relevant in the results obtained by the inventors. Similarly normalization with respect to PNN gene would be an advantageous possibility because the gene does also not vary in expression.
  • In order to design a discretization method for the determination of tumor grade of an individual sample of a patient, according to the invention, cut-offs values have to be determined to allow the determination of the tumor grade. The cut-offs values can be determined experimentally by carrying out the following steps on expression profiling results obtained on a determined number of tumor samples:
      • defining a cut-off (threshold value) for each gene in the set of genes designed for the signature, said cut-off corresponding to the value of the absolute or preferably relative (i.e. normalized) expression of said gene at a selected percentile and said percentile being selected for each of two groups of genes defined in the set of genes. In order to do so, the set of profiled genes comprises the same number of genes within each of the 2 groups of genes consisting of the group of overexpressed proliferation-related genes encompassing AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1 and RPL10A and the group of down-regulated differentiation-related gene encompassing ALDH2, APCS, APOC4, AQP9, C15, CYP2E1, GHR, HPD (said groups being defined based on gene profiles on robust tumors with poor prognosis),
      • in each tumor sample assigning to each expression value (especially normalized expression value) obtained for each expression profiled gene in the sample, a discretized value which is codified with respect to the cut-off value determined for the same gene and in line with the defined contiguous intervals of continuous values, e.g. a discretized value of “1” or “2” if two intervals (categories) are defined or a discretized value of “1”, “1.5” (or another value between 1 and 2) or “2” if three intervals are defined, said assignment of discretized value being advantageously such that the “1” is assigned for expression values falling below the cut-off found for the differentiation-related genes and for expression values falling below the cut-off found for the proliferation-related genes, the “2” is assigned for expression values falling above the cut-off found for the differentiation-related genes and for expression values falling above the cut-off found for the proliferation-related genes, and optionally if a “1.5” is used it is assigned to values found between the cut-offs;
      • on each tumor sample, determining in each group (proliferation-related genes group or differentiation-related genes group) the average value of said assigned discretized values of profiled genes of the set of profiled genes;
      • determining a score for each sample, as the ratio between the average expression values of said genes in said two groups of genes in the set of profiled genes;
      • determining on the basis of the obtained scores for all the tumor samples, one or more cut-off value(s) for the sample, corresponding to the respective value(s) at one or more (especially 2 or 3) percentile(s), wherein said percentile(s) is (are) either identical or different from the percentiles(s) selected for the genes.
        When the cut-offs values for each gene of the set of genes for profiling have been obtained for a sufficient number of relevant samples and the cut-off value for the sample is determined on the basis of the same samples, these cut-offs can be adopted as reference cut-offs for the user who will be carrying out the analysis of any further patient's tumor sample, especially for the purpose of determining the tumor grade in a patient's sample, if the analysis is performed in identical or similar conditions as the conditions which led to the establishment of the cut-offs values.
  • Therefore the invention provides cut-offs values as reference cut-offs, in order to carry out the determination of tumor grade in particular testing conditions as those disclosed below and in the examples.
  • In a particular embodiment of the method of discretization, the cut-off for each gene is the value corresponding to a determined percentile, which can be different for each of the considered two groups of genes (proliferation-related genes on the one hand and differentiation-related genes on the other hand). The selected percentile (or quantile) is determined with respect to the fraction of tumors (such as ⅓ or more) harbouring some chosen features such as overexpression of proliferation-related genes and/or dowregulation of differentiation-related genes, in the two groups of genes of the set of genes. Especially, when one intends to assign more weight to tumors displaying strong overexpression of proliferation-related genes and/or strong downregulation of differentiation-related genes, the cut-off corresponds to a high quantile (above the 50th, preferably the 60th, or even above the 65th, such as the 67th and for example within the range of 55th and 70th) for said proliferation-related genes and the cut-off corresponds to a low quantile (below the 50th, preferably equal to or below the 40th for example the 33rd, and for example within the range of between 20th and 40th) of the differentiation-related genes. The cut-off for each group of genes and the cut-off for the sample may be determined with respect to the same percentile(s) or may be determined with respect to different percentile.
  • According to a particular embodiment of the invention, for HB tumors, the percentile which is chosen for the overexpressed proliferation-related genes is the 67th and the percentile which is chosen for the downregulated differentiation-related genes is the 33rd. According to a particular embodiment of the invention, for HC tumors, the percentile which is chosen for the overexpressed proliferation-related genes is the 60th and the percentile which is chosen for the downregulated differentiation-related genes is the 40rd.
  • Each percentile (or cut-off value corresponding to the percentile) defines a cutpoint and the discretized values for each gene are either “1” or “2” below or above said percentile. The values “1” and “2” are distributed with respect to the percentiles so as to create the highest difference in the values of the calculated ratio for the most different tumor grades. This is illustrated in the examples for the selected percentiles.
  • It has been observed that in a preferred embodiment of the invention, the relative values of the profiled genes are determined by real-time PCR (qPCR).
  • Conditions to carry out the real-time PCR are disclosed herein, especially in the examples, as conditions applicable to analyzed samples.
  • PCR primers and probes suitable for the performance of RT-PCR are those disclosed herein for the various genes.
  • In a particular embodiment of the invention, the analysed tumor is a hepatoblastoma and its grade is determined by discretization as disclosed above and illustrated in the examples, taking into account that:
      • the set of assayed genes for profiling is constituted of the 16 genes disclosed;
      • the invariant gene (of reference) is RHOT2;
      • the cut-offs value for each gene based on −dCt (minus delta Ct) measures) are:
        AFP: 3.96139596; ALDH2: 4.3590482; APCS: 4.4691582; APOC4: 2.03068712; AQP9: 3.38391456; BUB1: −1.41294708; C1S: 4.24839464; CYP2E1: 6.70659644; DLG7: −3.3912188; DUSP9: 2.07022648; E2F5: −0.72728656; GHR: −0.1505569200; HPD: 2.27655628; IGSF1: 0.1075015200; NLE: −0.02343571999; RPL10A: 6.19723876.
      • the cut-off value for the sample is 0.91 (for the 67th) and optionally a further the cut-off value for the sample is 0.615 (for the 33rd). In such a case, a sample with a score above 0.91 is classified into the C2 class and a sample with a score below 0.91 is classified into the C1 class. The reference to the cut-off at 0.615 may be used to refine the results for values between both cut-offs.
  • In another embodiment of the invention, the tumor is an hepatocellular carcinoma and its grade is determined by discretization as disclosed above and illustrated in the examples, taking into account that:
      • the set of assayed genes for profiling is constituted of the 16 genes disclosed;
      • the invariant gene (of reference) is RHOT2;
  • the cut-offs value for each gene based on −dCt (minus delta Ct) measures) are:
    Gene name Cut-off for Taqman Cut-off for SybrGreen
    AFP −1.2634010 −2.3753035
    ALDH2 4.014143 5.314302
    APCS 5.6142907 6.399079
    APQC4 −0.7963158 4.656336
    AQP9 4.2836011 5.446966
    BUB1 −1.2736579 −3.634476
    C1S 6.3514679 6.240002
    CYP2E1 6.9562419 5.829384
    DLG7 −2.335694 −4.614352
    DUSP9 −7.979559 −1.8626715
    E2F5 −0.4400218 −1.367846
    GHR 1.0832632 1.169362
    HPD 6.7480328 6.736329
    IGSF1 −4.8417785 7.6653982
    NLE −1.6167268 −1.82226
    RPL10A 6.2483056 5.731897
      • the cut-off value for the score of a sample based on the ration between the average of the discretized values of the “proliferation-related genes” on the “differentiation-related genes” are 0.66 determined as the 30th percentile of the score) and 0.925 (determined as the 67th percentile of the score) In such a case, a sample with a score above 0.925 is classified into the C2 class and a sample with a score below 0.66 is classified into the C1 class. The sample with a score (initial score) between 0.66 and 0.925 can be assigned to an intermediate class. It can alternatively be classified as C1 or C2 using a modified score corresponding to the average of the discretized values of the “proliferation-related genes”. A new cut-off value is determined for said genes, which is the cut-off value for the modified score (in the present case it is 1.3). This cut-off can be determined via a percentile (here the 60th) of the distribution of the modified scores, using the samples of the intermediate class. A sample (initially classified in the intermediate class) with a modified score below 1.3 can be re-classified into the C1 class, and a sample with a modified score above 1.3 can be re-classified into the C2 class.
  • It is observed that the refinement of the results which are between the cut-offs of the samples is advantageous for hepatocellular carcinoma in order to increase the relevancy of the information on the tumor grade.
  • Generally said refinement of the classification of the intermediate results in the HCC is obtained by performing the following steps:
  • a modified score is determined which corresponds to the average of the discretized values of the “proliferation-related genes” only for the sample. A new cut-off value is determined for said genes, which is the cut-off value for the modified score (in the present case it is 1.3). This cut-off can be determined via a percentile (here the 60th) of the distribution of the modified scores, using the samples of the intermediate class. A sample (initially classified in the intermediate class) with a modified score below the “proliferation cut-off” (for example 1.3) can be re-classified into the C1 class, and a sample with a modified score above the “proliferation cut-off” (for example 1.3) can be re-classified into the C2 class.
  • From the 16 genes expressed in liver cells listed in Table 1, a set comprising from 2 to 16 genes (or more generally a set as defined herein) may be used to assay the grade of tumor cells in a tumor originating from the liver. The results obtained, after determining the expression of each of the genes of the set, are then treated for classification according to the steps disclosed herein. The invention relates to each and any combination of genes disclosed in Table 1, to provide a set comprising from 2 to 16 of these genes, in particular a set comprising or consisting of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15 or 16 of these genes. In the designed set, one or many genes of Table 1 may be modified by substitution or by addition of one or several genes as explained above, which also enable to determine the grade of the liver tumor, when assayed in combination with the other genes.
  • In a preferred embodiment, the liver tumor is a paediatric HB, and the method or process of the invention enables to distinguish a first class, called C1, qualifying as a good prognosis tumor and a second class, called C2, qualifying as a poor prognosis tumor. The C1 grade is predominantly composed of fetal histotype cells (i.e., well differentiated and non proliferative cells). In contrast, the C2 grade presents cells other than the fetal histotype such as embryonic, atypic (crowded fetal), small cell undifferiantiated (SCUD) and/or macrotrabecular cells.
  • The present invention also relates to a kit suitable to determine the grade of a liver tumor from the sample obtained from a patient. This kit is appropriate to carry out the method or process described in the present application.
  • In a particular embodiment, the kit comprises a plurality of pairs of primers specific for a set of genes to be assayed, said set comprising from 2 to 16 genes, said 2 to 16 genes being chosen in the group consisting of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • By “plurality”, it is mean that the kit comprises at least as many pairs of primers as genes to enable assaying each selected gene, and in particular the nucleotide target of this gene. Accordingly, each gene and in particular its nucleotide target is specifically targeted by a least one of these pairs of primers. In a particular embodiment, the kit comprises the same number of pairs of primers as the number of genes to assay and each primer pair specifically targets one of the genes, and in particular the nucleotide targets of one of these genes, and does not hybridize with the other genes of the set.
  • The kits of the invention are defined to amplify the nucleotide targets of the sets of genes as described in the present invention. Therefore, the kit of the invention comprises from 2 to 16 pairs of primers which, when taken as a whole, are specific for said from 2 to 16 genes out of the 16 genes of Table 1. In particular, the kit comprises or consists of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 pairs of primers specific for 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 out of the 16 genes of Table 1. In a particular embodiment, the kit comprises or consists of 16 pairs of primers specific for the 16 genes of Table 1 i.e., a primer pair specific for each of the following genes: AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • When the set of genes has been modified by the addition or substitution of at least one gene as described above, the kit is adapted to contain a pair of primers specific for each added or substituted gene(s). As indicated by the term “comprises”, the kit may, besides the pairs of primers specific for the genes of Table 1, contain additional pair(s) of primers.
  • In a particular embodiment, the kit comprises at least one pair of primers (preferably one) for at least one invariant gene (preferably one or two) to be assayed for the determination of the expression profile of the genes, by comparison with the expression profile of the invariant gene.
  • The number of pairs of primers of the kit usually does not exceed 100, particularly 50, 30, 20, more particularly 16, and even more particularly is maximum 5, 6, 7, 8, 9 or 10.
  • In the kits of the invention, it is understood that, for each gene, at least one pair of primers and preferably exactly one pair, enabling to amplify the nucleotide targets of this gene, is present. When the kits provide several pairs of primers for the same gene, the gene expression level is measured by amplification with only one pair of primers. It is excluded that amplification may be performed using simultaneously several pairs of primers for the same gene.
  • As defined herein, a pair of primers consists of a forward polynucleotide and a backward polynucleotide, having the capacity to match its nucleotide target and to amplify, when appropriate conditions and reagents are brought, a nucleotide sequence framed by their complementary sequence, in the sequence of their nucleotide target.
  • The pairs of primers present in the kits of the invention are specific for a gene i.e., each pair of primers amplifies the nucleotide targets of one and only one gene among the set. Therefore, it is excluded that a pair of primers specific for a gene amplifies, in a exponential or even in a linear way, the nucleotide targets of another gene and/or other nucleic acids contained in sample. In this way, the sequence of a primer (whose pair is specific for a gene) is selected to be not found in a sequence found in another gene, is not complementary to a sequence found in this another gene and/or is not able to hybridize in amplification conditions as defined in the present application with the sequence of the nucleotide targets of this another gene.
  • In a particular embodiment, the forward and/or backward primer(s) may be labelled, either by isotopic (such as radioactive) or non isotopic (such as fluorescent, biotin, fluororochrome) methods. The label of the primer(s) leads to the labelling of the amplicon (product of amplification), since the primers are incorporated in the final product.
  • The design of a pair of primers is well known in the art and in particular may be carried out by reference to Sambrook et al. (Molecular Cloning, A laboratory Manual, Third Edition; chapter 8 and in particular pages 8.13 to 8.16). Various softwares are available to design pairs of primers, such as Oligo™ or Primer3.
  • Therefore, each primer of the pair (forward and backward) has, independently from each other, the following features:
      • their size is from 10 and 50 bp, preferably 15 to 30 bp; and
      • they have the capacity to hybridize with the sequence of the nucleotide targets of a gene.
  • In a particular embodiment, when the pairs of primers are used in a simultaneous amplification reaction carried out on the sample, the various primers have the capacity to hybridize with their respective nucleotide targets at the same temperature and in the same conditions.
  • Conventional conditions for PCR amplification are well known in the art and in particular in Sambrook et al. An example of common conditions for amplification by PCR is dNTP (200 mM), MgCl2 (0.5-3 mM) and primers (100-200 nM).
  • In a particular embodiment, the sequence of the primer is 100% identical to one of the strands of the sequence of the nucleotide target to which it must hybridize with, i.e. is 100% complementary to the sequence of the nucleotide target to which it must hybridize. In another embodiment, the identity or complementarity is not 100%, but the similarity is at least 80%, at least 85%, at least 90% or at least 95% with its complementary sequence in the nucleotide target. In a particular embodiment, the primer differs from its counterpart in the sequence of the sequence of the nucleotide target by 1, 2, 3, 4 or 5 mutation(s) (deletion, insertion and/or substitution), preferably by 1, 2, 3, 4 or 5 nucleotide substitutions. In a particular embodiment, the mutations are not located in the last 5 nucleotides of the 3′ end of the primer.
  • In a particular embodiment, the primer, which is not 100% identical or complementary, keeps the capacity to hybridize with the sequence of the nucleotide target, similarly to the primer that is 100% identical or 100% complementary with the sequence of the nucleotide target (in the hybridization conditions defined herein). In order to be specific, at least one of the primers (having at least 80% similarity as defined above) of the pair specific for a gene can not hybridize with the sequence found in the nucleotide targets of another gene of the set and of another gene of the sample.
  • In a particular embodiment, the pairs of primers used for amplifying a particular set of genes are designed, besides some or all of the features explained herein, in order that the amplification products (or amplicons) of each gene have approximately the same size. By “approximately” is meant that the difference of size between the longest amplicon and the shortest amplicon of the set is less than 30% (of the size of the longest amplicon), preferably less than 20%, more preferably less than 10%. As particular embodiments, the size of the amplicon is between 100 and 300 bp, such as about 100, 150, 200, 250 or 300 bp.
  • The nucleotide sequences of the 16 genes of Table 1 are provided in the Figures, and may be used to design specific pairs of primers for amplification, in view of the explanations above.
  • Examples of primers that may be used to measure the expression of the genes of Table 1, in particular to amplify the nucleotide targets of the genes of Table 1, are the primers having the sequence provided in Table 6 or variant primers having at least 80% similarity (or more as defined above) with the sequences defined in Table 6.
    TABLE 6
    Sequence of forward and backward primers of the 16 genes
    defined in Table 1. These primers may be used in any real-
    time PCR, in particular the SYBR green technique, except
    for the Taqman ® protocol.
    Product
    size
    Target (bp) Forward primer (5′-3′) Reverse primer (5′-3′)
    AFP 151 AACTATTGGCCTGTGGCGAG TCATCCACCACCAAGCTGC
    ALDH2 151 GTTTGGAGCCCAGTCACCCT GGGAGGAAGCTTGCATGATTC
    APCS 151 GGCCAGGAATATGAACAAGCC CTTCTCCAGCGGTGTGATCA
    APOC4 151 GGAGCTGCTGGAGACAGTGG TTTGGATTCGAGGAACCAGG
    AQP9 151 GCTTCCTCCCTGGGACTGA CAACCAAAGGGCCCACTACA
    BUB1 152 ACCCCTGAAAAAGTGATGCCT TCATCCTGTTCCAAAAATCCG
    C1S 141 TTGTTTGGTTCTGTCATCCGC TGGAACACATTTCGGCAGC
    CYP2E1 151 CAACCAAGAATTTCCTGATCCAG AAGAAACAACTCCATGCGAGC
    DLG7 151 GCAGGAAGAATGTGCTGAAACA TCCAAGTCTTTGAGAAGGGCC
    DUSP9 151 CGGAGGCCATTGAGTTCATT ACCAGGTCATAGGCATCGTTG
    E2F5 151 CCATTCAGGCACCTTCTGGT ACGGGCTTAGATGAACTCGACT
    GHR 151 CTTGGCACTGGCAGGATCA AGGTGAACGGCACTTGGTG
    HPD 151 ATCTTCACCAAACCGGTGCA CCATGTTGGTGAGGTTACCCC
    IGSF1 152 CACTCACACTGAAAAACGCCC GGGTGGAGCAATTGAAAGTCA
    NLE1 151 ATGTGAAGGCCCAGAAGCTG GAGAACTTCGGGCCGTCTC
    RPL10A 151 TATCCCCCACATGGACATCG TGCCTTATTTAAACCTGGGCC
  • The kit of the invention may further comprise one or many pairs of primers specific for one or many invariant genes, in particular specific for ACTG1, EFF1A1, PNN and/or RHOT2 genes. The pair of primers specific for invariant gene(s) may be designed and selected as explained above for the pair of primers specific for the genes of the set of the invention. In a particular embodiment, the pairs of primers of the invariant genes are designed in order that their amplification product (or amplicon) has approximately the same size as the amplicon of the genes of the set to be assayed (the term approximately being defined as above, with respect to the longest amplicon of the set of genes). Examples of primers that may be used to amplify the particular invariant genes are primers having the sequence provided in Table 7 or primers having at least 80% similarity (or more as defined above) with the sequences defined in Table 7.
    TABLE 7
    Sequence of forward and backward primers specific for the
    invariant genes defined in Table 3. These primers may be
    used in real-time PCR, in particular the SYBR green
    technique, except for the Taqman ® protocol.
    Product
    size
    Target (bp) Forward primer (5′-3′) Reverse primer (5′-3′)
    ACTG1 151 GATGGCCAGGTCATCACCAT ACAGGTCTTTGCGGATGTCC
    EFF1A1 151 TCACCCGTAAGGATGGCAAT CGGCCAACAGGAACAGTACC
    PNN 151 CCTTTCTGGTCCTGGTGGAG TGATTCTCTTCTGGTCCGACG
    RHOT2 151 CTGCGGACTATCTCTCCCCTC AAAAGGCTTTGCAGCTCCAC
  • The kits of the invention may also further comprise, in association with or independently of the pairs of primers specific for the invariant gene(s), reagents necessary for the amplification of the nucleotide targets of the sets of the invention and if any, of the nucleotide targets of the invariant genes.
  • The kits of the invention may also comprise probes as disclosed herein in the context of sets of probes, compositions and arrays. In particular, the kits also comprise the four dNTPs (nucleotides), amplification buffer, a polymerase (in particular a DNA polymerase, and more particularly a thermostable DNA polymerase) and/or salts necessary for the activity of the polymerase (such as Mg2+).
  • Finally, the kits may also comprise one or several control sample(s) i.e., at least one sample(s) representative of tumor with bad (i.e., poor) prognosis (in particular a HB C2 grade), at least one sample(s) representative of tumor with good prognosis (in particular a HB C1 grade), at least one sample of a normal adult liver and/or at least one sample of a fetal liver.
  • The kits may also comprise instructions to carry out the amplification step or the various steps of the method of the invention.
  • The invention is also directed to a set of probes suitable to determine the grade of a liver tumor from the sample obtained from a patient. This set of probes is appropriate to carry out the method or process described in the present invention. It may also be part of the kit.
  • This set of probes comprises a plurality of probes in particular from 2 to 16 probes, these 2 to 16 probes being specific for genes chosen in the group consisting of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • By “plurality”, it is mean that the set of probes comprises at least as many probes as genes to assay. In a particular embodiment, the array comprises the same number of probes as the number of genes to assay.
  • The probes of the sets of the invention are selected for their capacity to hybridize to the nucleotide targets of the sets of genes as described in the present invention. Therefore, the set of probes of the invention comprise from 2 to 16 probes specific for 2 to 16 genes out of the 16 genes of Table 1. In particular, the sets of probes comprise or consist of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 probes specific of 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14 or 15 out of the 16 genes of Table 1. In a particular embodiment, the sets of probes comprise or consist of 16 probes specific for the 16 genes of Table 1 i.e., a probe specific of each of the following genes: AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
  • The specificity of the probes is defined according to the same parameters as those applying to define specific primers.
  • When the set of genes has been modified by the addition or substitution of at least one gene as described above, the set of probes is adapted to contain a probe specific for the added or substituted gene(s). As indicated by the term “comprises”, the set of probes may, besides the probes specific for the genes of Table 1, contain additional probe(s).
  • The number of probes of the set does usually not exceed 100, particularly 50, 30, 20, more particularly 16, and even more particularly is maximum 5, 6, 7, 8, 9 or 10.
  • In the set of probes of the invention, it is understood that for each gene corresponds at least one probe to which the nucleotide target of this gene hybridize to. The set of probes may comprise several probes for the same gene, either probes having the same sequence or probes having different sequences.
  • As defined herein, a probe is a polynucleotide, especially DNA, having the capacity to hybridize to the nucleotide target of a gene. Hybridization is usually carried out at a temperature ranging from 40 to 60° C. in hybridization buffer (see example of buffers below). These probes may be oligonucleotides, PCR products or cDNA vectors or purified inserts. The size of each probe is independently to each other from 15 and 1000 bp, preferably 100 to 500 bp or 15 to 500 bp, more preferably 50 to 200 bp or 15 to 100 bp. The design of probes is well known in the art and in particular may be carried out by reference to Sambrook et al. (Molecular Cloning, A laboratory Manual, Third Edition; chapters 9 and 10 and in particular pages 10.1 to 10.10).
  • The probes may be optionally labelled, either by isotopic (radioactive) or non isotopic (biotin, fluororochrome) methods. Methods to label probes are disclosed in Sambrook et al. (Molecular Cloning, A laboratory Manual, Third Edition; chapter 8 and in particular page 9.3). In a particular embodiment, the probes are modified to confer them different physicochemical properties (such as by methylation, ethylation). In another particular embodiment, the probes may be modified to add a functional group (such as a thiol group), and optionally immobilized on bead (preferably glass beads).
  • In a particular embodiment, the sequence of the probe is 100% identical to a part of one strand of the sequence of the nucleotide target to which it must hybridize, i.e. is 100% complementary to a part of the sequence of the nucleotide target to which it must hybridize. In another embodiment, the identity or complementarity is not 100% and the similarity is at least 80%, at least 85%, at least 90% or at least 95% with a part of the sequence of the nucleotide target. In a particular embodiment, the probe differs from a part of one strand of the sequence of the nucleotide target by 1 to 10 mutation(s) (deletion, insertion and/or substitution), preferably by 1 to 10 nucleotide substitutions. By “a part of”, it is meant consecutive nucleotides of the nucleotide target, which correspond to the sequence of the probe.
  • In a particular embodiment, the probe, which is not 100% identical or complementary, keeps the capacity to hybridize, in particular to specifically hybridize, to the sequence of the nucleotide target, similarly to the probe which is 100% identical or 100% complementary with the sequence of the nucleotide target (in the hybridization conditions defined herein).
  • In a particular embodiment, the size of the probes used to assay a set of genes is approximately the same for all the probes. By “approximately” is meant that the difference of size between the longest probe and the shortest probe of the set is less than 30% (of the size of the longest probe), preferably less than 20%, more preferably less than 10%.
  • The set of probes of the invention may further comprise at least one (preferably one) probe specific for at least one invariant gene (preferably one or two), in particular specific for ACTG1, EFF1A1, PNN and/or RHOT2 genes. The probes specific for invariant gene(s) may be designed and selected as explained above for the probes specific for genes of the sets of the invention. In a particular embodiment, the probes specific of the invariant genes have approximately the same size as the probes specific of the genes of the set of be assayed (the term approximately being defined as above, with respect to the longest probes of the set of genes).
  • The invention is also directed to an array suitable to determine the grade of a liver tumor from the sample obtained from a patient. This array is appropriate to carry out the method or process described in the present application.
  • An array is defined as a solid support on which probes as defined above, are spotted or immobilized. The solid support may be porous or non-porous, and is usually glass slides, silica, nitrocellulose, acrylamide or nylon membranes or filters.
  • The arrays of the invention comprise a plurality of probes specific for a set of genes to be assayed. In particular, the array comprises, spotted on it, a set of probes as defined above.
  • The invention also relates to a composition comprising a set of probes as defined above in solution.
  • In a first embodiment, the probes (as defined above in the set of probes) may be modified to confer them different physicochemical properties (such as methylation, ethylation). The nucleotide targets (as defined herein and prepared from the sample) are linked to particles, preferably magnetic particles, for example covered with ITO (indium tin oxide) or polyimide. The solution of probes is then put in contact with the target nucleotides linked to the particles. The probe/target complexes are then detected, for example by mass spectrometry.
  • Alternatively, probes may be modified to add a functional group (such as a thiol group) and immobilized on beads (preferably glass beads). These probes immobilized on beads are put in contact with a sample comprising the nucleotide targets, and the probe/target complexes are detected, for example by capillary reaction.
  • The invention is also directed to kits comprising the sets of probes, the compositions or the arrays of the invention and preferably the primer pairs disclosed herein. These kits may also further comprise reagents necessary for the hybridization of the nucleotide targets of the sets of genes and/or of the invariant genes, to the probes (as such, in the compositions or on the arrays) and the washing of the array to remove unbound nucleotides targets.
  • In a particular embodiment, the kits also comprise reagents necessary for the hybridization, such as prehybridization buffer (for example containing 5×SSC, 0.1% SDS and 1% bovine serum albumin), hybridization buffer (for example containing 50% formamide, 10×SSC, and 0.2% SDS), low-stringency wash buffer (for example containing 1×SSC and 0.2% SDS) and/or high-stringency wash buffer (for example containing 0.1×SSC and 0.2% SDS).
  • The kits may also comprise one or several control sample(s) i.e., at least one sample(s) representative for tumor with poor prognosis, at least one sample(s) representative of tumor with good prognosis, at least one sample of a normal adult liver and/or at least one sample of a fetal liver. Alternatively, it may comprise the representation of a gene expression profile of such tumors.
  • Finally, the invention provides a kit as described above further comprising instructions to carry out the method or process of the invention.
  • The arrays and/or kits (either comprising pairs of primers or probes or arrays or compositions of the invention or all the components) according to the invention may be used in various aspects, in particular to determine the grade of a liver tumor from a patient, especially by the method disclosed in the present application.
  • The arrays and/or kits according to the invention are also useful to determine, depending upon the grade of the liver tumor, the risk for a patient to develop metastasis. Indeed, the classification of a liver tumor in the class with poor prognosis is highly associated with the risk of developing metastasis.
  • In another embodiment, the arrays and/or kits according to the invention are also useful to define, depending upon the grade of the liver tumor, the therapeutic regimen to apply to the patient.
  • The invention also relates to a support comprising the data identifying the gene expression profile obtained when carrying out the method of the invention.
  • BRIEF DESCRIPTION OF THE DRAWINGS
  • The colour version of the drawings as filed is available upon request to the European Patent Office.
  • FIG. 1. Identification of Two HB Subclasses by Expression Profiling.
  • (A) Schematic overview of the approach used to identify robust clusters of samples, including two tumor clusters (rC1 and rC2) and one non-tumor cluster (NL) (B) Expression profiles of 982 probe sets (824 genes) that discriminate rC1 and rC2 samples (p<0.001, two-sample t test). Data are plotted as a heatmap where red and green correspond to high and low expression in log2-transformed scale. (C) Molecular classification of 25 HB samples and status of CTNNB1 gene and β-catenin protein. C1 and C2 classification was based on rC1 and rC2 gene signature by using six different statistical predictive methods (CCP, LDA, 1NN, 3NN, NC and SVM) and the leave-one-out cross-validation. Black and gray squares indicate mutations of the CTNNB1 and AXIN1 genes. Immunohistochemical analysis of β-catenin in representative C1 and C2 cases is shown. (D) Expression of representative Wnt-related and β-catenin target genes (p<0.005, two-sample t test) in HB subclasses and non-tumor livers (NL). (E) Classification of hepatoblastoma by expression profile of a 16-gene signature. (F) Classification of normal human livers of children with HB (from 3 months to 6 years of age) (NT) or fetal livers at 17 to 35 weeks of gestation (FL) by expression profile of a 16-gene signature.
  • FIG. 2: Molecular HB subclasses are related to liver development stages. (A) Distinctive histologic and immunostaining patterns of HB subclasses C1 and C2. From top to bottom: numbers indicate the ratio of mixed epithelial-mesenchymal tumors and of tumors with predominant fetal histotype in C1 and C2 subtypes; hematoxylin and eosin (H&E) and immunostaining of Ki-67, AFP and GLUL in representative samples. Magnification, ×400. (B) Expression of selected markers of mature hepatocytes and hepatoblast/liver progenitors in HB subclasses and non-tumor livers.
  • FIG. 3: Validation of the 16-gene signature by qPCR in an independent set of 41 HBs. Expression profiles of the 16 genes forming the HB classifier are shown as a heatmap that indicates high (red) and low (green) expression according to log2-transformed scale. HB tumors, HB biopsies (b) and human fetal livers (FL) at different weeks (w) of gestation were assigned to class 1 or 2 by using the 16-gene expression profile, six different statistical predictive methods (CCP, LDA, 1NN, 3NN, NC and SVM) and leave-one-out cross-validation. Black boxes in the rows indicate from top to bottom: human fetal liver, mixed epithelial-mesenchymal histology, predominant fetal histotype, and β-catenin mutation.
  • FIG. 4: Gene expression of the 16 genes of the prognostic liver cancer signature assessed by qPCR is presented as box-plot. The boxes represent the 25-75 percentile range, the lines the 10-90 percentile range, and the horizontal bars the median values.
  • FIG. 5: Expression level of the 16 liver prognostic signature genes shown case by case in 46 hepatoblastomas and 8 normal livers. C1 tumors (green), C2 tumors (red) and normal liver (white).
  • FIG. 6. Correlation between molecular HB subtypes and clinical outcome in 61 patients. (A) Association of clinical and pathological data with HB classification in the complete set of 61 patients. Only significant correlations (Chi-square test) are shown. PRETEXT IV stage indicates tumorous involvement of all liver sections. (B) Kaplan-Meier plots of overall survival for 48 patients that received preoperative chemotherapy. Profiling via the 16-gene expression signature was used to define C1 and C2 subclasses in tumors resected after chemotherapy, and differences between survival curves were assessed with the log-rank test. (C) Overall survival of 17 HB patients for which pretreatment biopsies or primary surgery specimens were available. The signature was applied exclusively to tumor samples without prior therapy. (D) Multivariate analysis including 3 variables associated to patient's survival. The predominant histotype is defined as either fetal or other (including embryonal, crowed-fetal, macrotrabecular or SCUD types). Tumor stage is defined by PRETEXT stage (Perilongo et al., 2000) and/or distant metastasis at diagnosis and/or vascular invasion. HR, Hazard Ratio; CI, Confidence Interval.
  • FIG. 7: Clinical, pathological and genetic characteristics of 61 HB cases. SR: standard risk; HR: high risk according to SIOPEL criteria; NA: not available; PRETEXT: pre-treatment extent of disease according to SIOPEL; DOD: dead of disease; *: Vascular invasion was defined by radiological analysis; **: The predominant epithelial histotype variable categorized as “others” included embryonal, crowded fetal, macrotrabecular, and undifferentiated histotypes.
  • FIG. 8: Clinical, pathological and genetic characteristics of 66 HB samples; Tumor ID number indicates patient number. When more than one sample from the same patient was analyzed, the representative sample used for statistical analysis of clinical correlations is marked by an asterisk; b: biopsy. HB74F: fetal component of HB74; HB74e: embryonal component of HB74. Gender: M, male; F, female; Y, yes; N, no; NA, not available. Multifocality: S, solitary nodules; M, multiple nodules. Histology: E, epithelial; M, mixed; CF, crowded fetal; F, fetal; E, embryonal; M, macrotrabecular; PF, pure fetal; S, SCUD. PRETEXT β-catenin status: wt, wild-type; Δex3, in-frame deletion of part or all exon 3 sequence; FAP, familial polyposis kindred; AXIN1, Axin 1 nonsense mutation (R533stop, CGA to TGA).stage: I to IV according to SIOPEL (Aronson et al., 2005). Treatment protocol: S, standard risk; H, high risk according to SIOPEL. Outcome: A, alive free of disease; DOD, dead of disease; D, death unrelated to cancer; R, alive with recurrence of disease.
  • FIG. 9: Correlation between molecular HB subtypes and clinical outcome in 86 patients. (A) Association of clinical and pathological data with HB classification in the complete set of 86 patients. Only significant correlations (Chi-square test) are shown. PRETEXT IV stage indicates tumorous involvement of all liver sections. (B) Kaplan-Meier plots of overall survival for 73 patients that received preoperative chemotherapy. Profiling via the 16-gene expression signature was used to define C1 and C2 subclasses in tumors resected after chemotherapy, and differences between survival curves were assessed with the log-rank test. (C) Overall survival of 29 HB patients for which pretreatment biopsies or primary surgery specimens were available. The signature was applied exclusively to tumor samples without prior therapy. (D) Multivariate analysis including 3 variables associated to patient's survival. The predominant histotype is defined as either fetal or other (including embryonal, crowed-fetal, macrotrabecular or SCUD types). Tumor stage is defined by PRETEXT stage (Perilongo et al., 2000) and/or distant metastasis at diagnosis and/or vascular invasion. HR, Hazard Ratio; CI, Confidence Interval.
  • FIG. 10: Correlation between molecular HCC subtypes and clinical outcome in 64 patients. Kaplan-Meier estimates of overall survival in 64 HCC patients using molecular classification with 16 genes, with the unsupervised clustering (centroid) (A) or unsupervised clustering (average) (B).
  • FIG. 11: Analysis of the probability of overall survival (OS) of 85 hepatoblastoma patients using Kaplan-Meier estimates. Left pannel: cases were classified by the discretization method into 3 classes using as cut-offs the 33rd percentile and the 67th percentile. Middle pannel: cases were classified into 2 classes using the 33rd percentile. Right pannel: cases were classified into 2 classes using the 67th percentile.
  • FIG. 12: Analysis of the probability of overall survival (OS) or disease-free survival (DFS) of 113* HCC patients using Kaplan-Meier estimates and log-rank test.
    Among the total series of 114 patients, survival data were not available for one case.
  • Patients were treated either by partial hepatectomy (PH) or by orthotopic liver transplantation (OLT). Unless specified, the follow-up was closed at 146 months.
  • A: HCC cases were classified into 3 classes by the discretization method using as cut-offs the 33rd and the 67th percentiles.
  • B: 47 HCC cases previously classified into the intermediate class (33<p<67, see pannel A) were subdivided into 2 new subclasses using the 60th percentile of proliferation-related genes.
  • C: 92 HCC cases treated by partial hepatectomy (PH) were classified into 3 classes as in pannel A.
  • D: 21 HCC cases treated by orthotopic liver transplantation (OLT) were classified into 2 classes using as cut-off the 67th percentile.
  • E: HCC cases were classified into 2 classes using different combinations of scores as described in Table F.
  • F: HCC cases were classified into 2 classes using as cut-off the 33rd percentile.
  • G: HCC cases were classified into 2 classes using as cut-off the 50th percentile.
  • H: HCC cases were classified into 2 classes using as cut-off the 67th percentile.
  • I: 92 HCC cases treated by partial hepatectomy (PH) were classified into 2 classes using as cut-off the 33rd percentile.
  • J: 92 HCC cases treated by partial hepatectomy (PH) were classified into 2 classes using as cut-off the 50th percentile.
  • K: 92 HCC cases treated by partial hepatectomy (PH) were classified into 2 classes using as cut-off the 67th percentile.
  • L: Disease-free survival of 113 HCC cases after classification into 2 classes using as cut-off the 67th percentile. Follow-up was closed at 48 months. Data were not significant when the follow-up was closed at 146 months.
  • M: Disease-free survival of 92 HCC cases treated by PH, after classification into 2 classes using as cut-off the 67th percentile. Follow-up was closed at 48 months. Data were not significant when the follow-up was closed at 146 months.
  • FIG. 13: Analysis of the probability of overall survival (OS) or disease-free survival (DFS) HCC patients using Kaplan-Meier estimates and log-rank test.
  • EXAMPLES Experimental Procedures
  • A. Patients and Tissue Samples.
  • Sixty-six tumor specimens and biopsies from 61 patients with hepatoblastoma were collected from different hospitals in France (52 cases), Italy (6 cases), United Kingdom (1 case), Switzerland (1 case) and Slovakia (1 case). Forty-eight patients received chemotherapy treatment prior to surgery, most being enrolled in clinical trials of the International Childhood Liver Tumour Strategy Group (SIOPEL) (Perilongo et al., 2000). Samples from fresh tumors avoiding fibrotic and necrotic areas and from adjacent non tumor livers were snap frozen at the time of surgery and stored at −80° C. FIG. 7 describes patient characteristics and clinicopathological parameters.
  • Patients were children with median age of 2 years, and male:female ratio of 1.5. The median follow-up was 32 months; during this period, 15 patients died from disease. The histology of all tumor specimens was centrally reviewed by expert pathologist according to previously described criteria (Finegold et al., 2007; Zimmermann, 2005). Twenty-five tumors were analyzed on oligonucleotide microarrays and 24 of them, for which DNA was available, were subjected to aCGH analysis, while a second set of 41 tumors was analyzed by qPCR (FIG. 8). No difference was observed in significant clinical and pathological data as well as in the percentage of cases carrying β-catenin mutation between the two sets. This study has been approved by the Ethics Committee of Institut Pasteur, and informed consent of the families was obtained at each Medical Center, in accordance with European Guidelines for biomedical research and with national laws in each country.
  • B. Oligonucleotide Microarrays and Gene Expression Data Analysis
  • Twenty-five HB samples and 4 non-tumor samples including a pool of livers from 3 males and a second from 3 females were analyzed using Affymetrix HG-U133A oligonucleotide arrays. Total RNA was prepared using FastPrep® system (Qbiogene, Strasbourg, France) and RNeasy mini Kit (Qiagen, Courtaboeuf, France). RNA quality was checked with the Agilent 2100 Bioanalyzer (Agilent Technologies, Palo Alto, Calif.). Microarray experiments were performed according to the manufacturer's instructions. Affymetrix microarray data were normalized using RMA method (Irizarry et al., 2003). Class discovery was done as described elsewhere (Lamant et al., 2007). Pathway and Gene Ontology enrichment analyses were performed using GSEA method (Subramanian et al., 2005) and hypergeometric tests. For supervised tests and class prediction, we used Biometric Research Branch (BRB) ArrayTools v3.2.2 software, developed by R. Simon and A. Peng. Permutations of the measurements are then used to estimate the FDR (the percentage of genes identified by chance). Additionally, mouse fetal livers at E18.5 and postnatal livers at 8 days of birth were profiled on Affymetrix MG-U74A, B v2 arrays. Data were processed and analyzed as aforementioned.
  • Except when indicated, transcriptome analysis was carried out using either an assortment of R system software packages (http://www.R-project.org, v2.3.0) including those of Bioconductor v1.8 (Gentleman et al., 2004) or original R code.
  • B.1. Normalization
  • Raw data from Affymetrix HG-U133A 2.0 GeneChip™ microarrays were normalized in batch using robust multi-array average method (R package affy, v1.10.0) (Irizarry et al., 2003). Probe sets corresponding to control genes or having a “_x_” annotation were masked yielding a total of 19,787 probe sets available for further analyses.
  • B.2. Class Discovery
  • Step 1
  • Variance Test
  • The variance of each probe set across samples was tested and compared to the median variance of all the probe sets, using the model: ((n−1)×Var(probe set)/Varmed), where n refers to the number of samples. By using the same filtering tool of BRB ArrayTools software, the P-value for each probe set was obtained by comparison of this model to a percentile of Chi-square distribution with (n−1) degrees of freedom.
  • Robust Coefficient of Variation (rCV)
  • The rCV was calculated for each probe set as follows. After ordering the intensity values of n samples from min to max, we eliminated the min and max values and we calculated the coefficient of variation (CV) for the remaining values.
  • Unsupervised Probe Sets Selection
  • Unsupervised selection of probe set lists was based on the two following criteria:
  • (i) variance test at P<0.01,
  • (ii) rCV less than 10 and superior to a given rCV percentile. We used eight rCV percentile thresholds (60%; 70%; 80%; 90%; 95%; 97.5%; 99%; 99.5%), which yielded 8 probe set lists.
  • Step 2: Generation of a Series of 24 Dendrograms
  • Hierarchical clustering was performed by using the 8 rCV-ranked probe sets lists, 3 different linkage methods (average, complete and Ward's), and 1-Pearson correlation as a distance metric (package cluster v1.9.3). This analysis generated 24 dendrograms.
  • Step 3:
  • Stability Assessment
  • The intrinsic stability of each of the 24 dendrograms was assessed by comparing each dendrogram to the dendrograms obtained after data “perturbation” or “resampling” (100 iterations). Perturbation stands for the addition of random gaussian noise (μ=0, σ=1.5×median variance calculated from the data set) to the data matrix, and resampling for the random substitution of 5% of the samples by virtual sample's profiles, generated randomly. The comparison between dendrograms across all iterations yielded a mean ‘similarity score’ (see below). The overall stability was assessed by calculating a mean similarity score, using all pairs of the 24 dendrograms.
  • Similarity Score
  • To compare two dendrograms, we compared the two partitions in k clusters (k=2 to 8) obtained from these two dendrograms. To compare a pair of partitions, we used a similarity measure, which corresponds to the symmetric difference distance (Robinson and Foulds, 1981).
  • Step 4: Identification of Robust Clusters
  • We identified groups in which any pair of samples was co-classified in at least 22 of the 24 partitions, and considered only groups made of 4 samples or more. Then, for any pair of these groups, we calculated the mean number of co-classification of any sample in the first group with any sample in the second group. We aggregated the groups for which this score was at least 18 (over the 24 partitions).
  • B.3. Supervised Tests
  • We compared gene expression between two classes of samples by using the Student's t test with random variance model option (BRB ArrayTools software, version 3.4.0a, developed by Dr. Richard Simon and Amy Peng Lam, http://linus.nci.nih.gov/BRB-ArrayTools.html). False Discovery Rates were assessed by using 1000 random permutations of labels (Monte Carlo approach).
  • B.4. Classification
  • To classify samples according to gene expression profile, we used the Class prediction tool of BRB ArrayTools software using all 6 following algorithms: Compound Covariate Predictor (CCP), Linear Discriminant Analysis (LDA), 1-Nearest Neighbor (1NN), 3-Nearest Neighbors (3NN), Nearest Centroid (NC) and Support Vector Machines (SVM). Each sample was classified according to the majority of the 6 algorithms. Samples classified as C2 by at least 3 algorithms were classified accordingly.
  • B.5. Gene Ontology and Pathway Analysis
  • We used a hypergeometric test to measure the association between a gene (probe set) list and a gene ontology term (GO term), as in GO stats R package (R. Gentleman). To this end, we mapped the gene list and the GO terms to non-redundant Entrez Gene identifiers by using the annotation file HG-U133_Plus2.annot.csv (http://www.affymetrix.com, Dec. 14, 2006). GO terms and their relationships (parent/child) were downloaded from http://www.geneontology.org (version Dec. 31, 2006). The list of proteins associated to GO terms (table gene_association.goa_human) and mapping the Entrez Gene ids (table human.xrefs) were downloaded from ftp://ftp.ebi.ac.uk/pub/databases/GO/goa.
  • KEGG pathway annotation was done by Onto-tools software (http://vortex.cs.wayne.edu/ontoexpress/servlet/UserInfo). We designated a significance threshold of each hypergeometric test at P<0.001, and the condition that a GO term or pathway be represented by at least 3 Entrez Gene identifiers.
  • B.6. Gene Set Enrichment Analysis (gsea)
  • GSEA (Subramanian et al., 2005) was used to evaluate the correlation of a specific gene list with two different sample groups (phenotypes). Briefly, this method calculates an enrichment score after ranking all genes in the dataset based on their correlation with a chosen phenotype and identifying the rank positions of all the members of a defined gene set. We used the signal2noise ratio as a statistic to compare specific and random phenotypes in order to evaluate statistical differences.
  • C. Array-Based Comparative Genomic Hybridization (aCGH)
  • Genomic DNA from 24 HBs and 3 non-tumor liver samples was analyzed using aCGH chips designed by the CIT-CGH consortium. This array contains 3400 sequence-verified PAC/BAC clones spaced at approximately 1 Mb intervals, spotted in triplicate on Ultra Gaps slides (Corning Inc, Corning, N.Y.).
  • The aCGH chip was designed by CIT-CGH consortium (Olivier Delattre laboratory, Curie Institute, Paris; Charles Theillet laboratory, CRLC Val d'Aurelle, Montpellier; Stanislas du Manoir laboratory, IGBMC, Strasbourg and the company IntegraGen™). DNAs were labeled by the random priming method (Bioprime DNA labelling system; Invitrogen, Cergy-Pontoise, France) with cyanine-5 (Perkin-Elmer, Wellesley, Mass.). Using the same procedure, we labeled control DNAs with cyanine-3. After ethanol-precipitation with 210 μg of Human Cot-1 DNA (Invitrogen), resuspension in hybridization buffer (50% formamide), denaturation at 95° C. for 10 minutes and prehybridization at 37° C. for 90 minutes, probes were cohybridized on aCGH. The aCGH slides were previously preblocked with a buffer containing 2.6 mg succinic anhydride/118 ml N-methyl-2-pyrrolidinone/32 ml sodium tetraborate decahydrate, pH 8.0 (Sigma-Aldrich, Lyon, France). After washing, arrays were scanned using a 4000B scan (Axon, Union City, Calif.). Image analysis was performed with Genepix 5.1 software (Axon) and ratios of Cy5/Cy3 signals were determined. The aCGH data were normalized using lowess per block method (Dudoit et al., 2002). Comparison between groups was done using chi-square test or Fisher's exact test, as appropriate.
  • Status assignment (Gain/Loss) was performed using R package GLAD v1.6.0. Computation of recurrent minimal genomic alterations was done using slight modification of a previously described method (Rouveirol et al., 2006). For comparison between groups, we used the Fischer exact test. Complete aCGH data will be published elsewhere.
  • D. Mouse Microarray Analysis
  • Murine Genome Affymetrix U74v2 A and B arrays were used to investigate liver expression at embryonic day 18.5 (E18.5) and at 8 days after birth (PN8). Each time point consisted of a pool of livers from 3-5 animals analyzed in triplicate. Microarray experiments were performed according to the manufacturer's instructions.
  • Publicly available Affymetrix Mouse Genome (MG) 430 2.0 array liver expression data at embryonic time points E11.5, E12.5, E13.5, E14.5, and E16.5 days of gestation (Otu et al., 2007), were downloaded from the Gene Expression Omnibus (GEO) database (http://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE6998).
  • MG-U74v2, MG-430 2.0 and HG-133A 2.0 array intra- and cross-species probeset comparison was achieved by using the Affymetrix NetAffx analysis center and by choosing “Good Match” degree of specificity. Unification of sample replicates, multiple array data standardization and Heatmap visualization was done by using dCHIP v1.6 software. Comparison of fetal liver stages by supervised analysis was performed using BRB ArrayTools software as previously described, by classing E11.5 and E12.5 as “Early” and E14.5 and E16.5 as “Late” fetal liver stage. Supervised signature was applied to HB array data, and intensity cut-off=60 was chosen in order to remove probesets that did not reach such intensity level in at least one sample.
  • E. Quantitative PCR Analysis (qPCR)
  • For qPCR analysis, we used RNA from 52 tumor samples (including 11 samples analyzed on microarrays, see FIG. 8), and from 8 non-tumor livers and 5 human fetal livers (RNAs purchased from BioChain Institute, Hayward, Calif.).
  • RNA was extracted by using either Trizol, RNeasy kit (QIAGEN) or miRvana kit (Ambion), then quantified and quality-checked by Agilent technology. For each cDNA preparation, 1 μg of RNA was diluted at the final concentration of 100 ng/μl, and reverse transcribed with the Superscript RT kit (Invitrogen, Carlsbad, Calif.) following the manufacturer's protocol. Random primers (Promega, Charbonnières-les-Bains, France) were added at the final concentration of 30 ng/μl and the final volume was 20 μl.
  • The cDNA was diluted 1:25, and 5 μl were used for each qPCR reaction. We added 5 μl of 2×Sybr Green Master mix (Applied Biosystems) and 0.3 μl of each specific primer (final concentration 300 nM). Each reaction was performed in triplicate. qPCR reactions were run on the Applied Biosystems 7900HT Fast Real-Time PCR System with a 384-well thermo-block, in the following conditions: 2 min at 50° C. to activate Uracil-N-glycosylase (UNG)-mediated erase of aspecific reaction; 10 min at 95° C. to activate the polymerase and inactivate the UNG; 40 cycles (15 sec at 95° C. denaturation step and 1 min at 60° C. annealing and extension); and final dissociation step to verify amplicon specificity.
  • The lists of primers used for qPCR are provided in Table 6 and Table 7 above.
  • F. Immunohistochemistry (IHC)
  • IHC was carried out as reported previously (Wei et al., 2000). For antigen retrieval at 95° C., we used 1 mM EDTA (pH 8) for β-catenin and Ki-67 IHC, and 10 mM citrate buffer (pH 6) for AFP and GLUL IHC. We used monoclonal antibodies against β-catenin and GLUL (Cat. Nos. 610154 and 610517; BD Biosciences, Le Pont de Claix, France) and Ki-67 (M7240, Dako, Trappes, France) and polyclonal antibody against AFP (N1501, Dako). Reactions were visualized using the ChemMate Dako Envision Detection kit (Dako) and diaminobenzidine. Subcellular distribution and quantitative evaluation of immunostaining in the different histotypes were assessed by examining at least ten random high-power fields.
  • G. Clinical Data Analysis
  • We used the Chi-square test for comparisons between groups. Survival curves were calculated according to the Kaplan-Meier method, using the log-rank test to assess differences between curves. Variables independently related to survival were determined by stepwise forward Cox regression analysis. Follow-up was closed at February 2007 or at time of death. Statistical analysis was done with SPSS software v10.0 (SPSS Inc., Chicago, Ill.).
  • H. Examples of Other Pairs of Primers and Probes for the 16 Genes of Table 1 and the 4 Invariant Genes (Table 3) that can be Used in the Taqman® Method.
    AFP forward primer: GCCAGTGCTGCACTTCTTCA
    AFP reverse primer: TGTTTCATCCACCACCAAGCT
    AFP probe: ATGCCAACAGGAGGCCATGCTTCA
    (for each polynucleotide, the sequence is given
    from 5′ to 3′)
    ALDH2 forward primer: TGCAGGATGGCATGACCAT
    ALDH2 reverse primer: TCTTGAACTTCAGGATCTGCATCA
    ALDH2 probe: CCAAGGAGGAGATCTTCGGGCCA
    APCS forward primer: AGCTGGGAGTCCTCATCAGGTA
    APCS reverse primer: CGCAGACCCTTTTTCACCAA
    APCS probe: TGCTGAATTTTGGATCAATGGGACACC
    APOC4 forward primer: TGAAGGAGCTGCTGGAGACA
    APOC4 reverse primer: CGGGCTCCAGAACCATTG
    APOC4 probe: TGGTGAACAGGACCAGAGACGGGTG
    AQP9 forward primer: GCCATCGGCCTCCTGATTA
    AQP9 reverse primer: GTTCATGGCACAGCCACTGT
    AQP9 probe: TGTCATTGCTTCCTCCCTGGGACTG
    BUB1 forward primer: ACATCTGGTTTTCAGTGTGTTGAGA
    BUB1 reverse primer: GTTGCAGCAACCCCAAAGTAA
    BUB1 probe: TCAGCAACAAACCATGGAACTACCA
    GATCG
    C1S forward primer: TCCCAATGACAAGACCAAATTCT
    C1S reverse primer: AGAGCCCATAGGTCCCACACT
    C1S probe: CGCAGCTGGCCTGGTGTCCTG
    CYP2E1 forward CATGAGATTCAGCGGTTCATCA
    primer:
    CYP2E1 reverse GGTGTCTCGGGTTGCTTCA
    primer:
    CYP2E1 probe: CCTCGTGCCCTCCAACCTGCC
    DLG7 forward primer: GCTGGAGAGGAGACATCAAGAAC
    DLG7 reverse primer: CCTGGTTGTAGAGGTGAAAAAGTAATC
    DLG7 probe: TGCCAGACACATTTCTTTTGGTGGTAA
    CC
    DUSP9 forward primer: GGCCTACCTCATGCAGAAGCT
    DUSP9 reverse primer: GGGAGATGTTAGACTTCTTCCTCTTG
    DUSP9 probe: CACCTCTCTCTCAACGATGCCTATGA
    CCTG
    E2F5 forward primer: CCTGTTCCCCCACCTGATG
    E2F5 reverse primer: TTTCTGTGGAGTCACTGGAGTCA
    E2F5 probe: CCTCACACAGCCTTCCTCCCAGTCC
    GHR forward primer: CCCAGGTGAGCGACATTACA
    GHR reverse primer: CATCCCTGCCTTATTCTTTTGG
    GHR probe: CAGCAGGTAGTGTGGTCCTTTCCCCG
    HPD forward primer: CCCACGCTCTTCCTGGAA
    HPD reverse primer: TTGCCGGCTCCAAAACC
    HPD probe: TCATCCAGGGCCACAACCACCA
    IGSF1 forward primer: GACCATTGCCCTTGAAGAGTGT
    IGSF1 reverse primer: GAGAGGTTGATGAAGGAGAATTGG
    IGSF1 probe: ACCAAGAAGGAGAACCAGGCACCCC
    NLE1 forward primer: TGCCTCCTTTGACAAGTCCAT
    NLE1 reverse primer: CGCGTAGGGAAGCCAGGTA
    NLE1 probe: TGGGATGGGAGGAGGGGCA
    RPL10A forward primer TCGGCCCAGGTTTAAATAAGG
    RPL10A reverse primer CCACTTTGGCCACCATGTTT
    RPL10A Taqman probe AGTTCCCTTCCCTGCTCACACACAACG
    ACTG1 forward primer: GGCGCCCAGCACCAT
    ACTG1 reverse primer: CCGATCCACACCGAGTACTTG
    ACTG1 probe: ATCAAGATCATCGCACCCCCAGAGG
    EEF1A1 forward GCGGTGGGTGTCATCAAAG
    primer:
    EEF1A11 reverse TGGGCAGACTTGGTGACCTT
    primer:
    EEF1A11 probe: AGTGGACAAGAAGGCTGCTGGAGCTG
    PNN forward primer: GAATTCCCGGTCCGACAGA
    PNN reverse primer: TTTCGGTCTCTTTCACTTCTTGAA
    PNN probe: AGAGGTCTATATCAGAGAGTAGTCGA
    TCAGGCAAAAGA
    RHQT2 forward primer: CCCAGCACCACGATCTTCAC
    RHOT2 reverse primer: CCAGAAGGAAGAGGGATGCA
    RHOT2 Taqman probe: CAGCTCGCCACCATGGCCG

    Results
  • Identification of Two HB Subclasses by Gene Expression Profiling
  • For robust unsupervised classification, we generated and screened a series of 24 dendrograms to identify samples that co-clustered whatever the method and the gene list. We obtained two robust subgroups of tumors named robust Cluster 1 (rC1, n=8) and robust Cluster 2 (rC2, n=5) (FIG. 1A). Comparison of rC1 and rC2 expression profiles identified 824 genes (p<0.001, false discovery rate (FDR)=0.02) (FIG. 1B). KEGG pathway analysis pinpointed a strong enrichment of cell cycle related genes (p<10−11), most being up-regulated in rC2 tumors. These: genes were mainly assigned to GO categories including mitosis regulation, spindle checkpoint, nucleotide biosynthesis, RNA helicase activity, ribosome biogenesis, and translational regulation. Evidence that rC2 tumors were faster proliferating than rC1 tumors was further confirmed by Ki-67 immunostaining (see FIG. 2A).
  • The remaining tumors were classified into C1 (rC1-related) and C2 (rC2-related) subclasses by applying a predictive approach based on the rC1/rC2 gene signature and using robust samples as training set (FIG. 1C). Both groups exhibited similar, high rates of β-catenin mutations, and accordingly, immunohistochemistry (IHC) of β-catenin showed cytoplasmic and nuclear staining of the protein in the majority of HBs. However, β-catenin localization was predominantly membranous and cytoplasmic in C1 tumors, whereas it showed frequent loss of membrane anchoring and intense nuclear accumulation in C2 tumors (FIG. 1C).
  • We observed differential expression of a number of Wnt members and targets between subclasses. C2 tumors showed increased expression of MYCN, BIRC5 that encodes the anti-apoptotic factor Survivin, NPM1 (encoding nucleophosmin) and HDAC2. By contrast, most C1 tumors prominently expressed the Wnt antagonist DKK3, BMP4, and genes previously found to be activated in liver tumors carrying mutant β-catenin (Boyault et al., 2007; Renard et al., 2007; Stahl et al., 2005). Remarkably, most genes related to liver functions are expressed in the perivenous area of adult livers, such as GLUL, RHBG, and two members of the cytochrome p450 family: CYP2E1 and CYP1A1 (Benhamouche et al., 2006; Braeuning et al., 2006) (FIG. 1D).
  • Further evidence that the rC1 subclass was enriched in genes assigned to the hepatic perivenous program was provided by Gene Set Enrichment Analysis (GSEA), a computational method for assessing enrichment of a predefined gene list in one class as compared with another (Subramanian et al., 2005). Thus, Wnt/β-catenin signaling appears to activate different transcriptional programs in HB subtypes, likely reflecting different cellular contexts.
  • HB Subclasses Evoke Distinct Phases of Liver Development
  • Next, we sought to determine whether HB subclasses were associated with specific histological phenotypes. Mixed epithelial-mesenchymal tumors that represented 20% of cases were not significantly associated with C1 and C2 subclasses. By contrast, a tight association was found with the main epithelial component, which defines the cell type occupying more than 50% of tumor cross-sectional areas. Sixteen out of 18 C1 tumors displayed a predominant fetal phenotype, including 4 ‘pure fetal’ cases, whereas all C2 tumors showed a more immature pattern, with prevailing embryonal or crowded-fetal histotypes associated with high proliferation (Finegold, 1994) (p<0.0001) (FIG. 2A). Further relationship between molecular subclasses and hepatic developmental stages was provided by the finding that a number of mature hepatocyte markers were markedly downregulated in C2 compared to C1 tumors (Tables 1 and 2). Conversely, C2 tumors showed strong overexpression (35-fold) of the oncofetal AFP gene associated to high protein levels in tumor cells by IHC (FIG. 2A) and in patients' sera (r=0.79, p<0.0001). C2 tumors also abundantly expressed hepatic progenitor markers such as KRT19 (encoding cytokeratin 19) and TACSTD1, also known as Ep-CAM (FIG. 2B).
  • To better define the relationships between HB subclasses and phases of hepatic differentiation, we first generated a liver development-related gene signature by making use of publicly available mouse fetal and adult liver data sets (Otu et al., 2007). When applied to HB samples, this signature was able to distinguish by hierarchical clustering two HB groups closely matching the C1/C2 classification. Next, we integrated HB gene expression data with the orthologous genes expressed in mouse livers at embryonic days (E) 11.5 to 18.5, and at 8 days of birth. In unsupervised clustering, most C2 tumors co-clustered with mouse livers at early stages of embryonic development (E11.5 and E12.5), whereas C1 tumors gathered with mouse livers at late fetal and postnatal stages. Together, these data comfort the notion that tumor cells in C2 and C1 subtypes are arrested at different points of the hepatic differentiation program.
  • Identification of a 16-Gene Signature as HB Classifier
  • To investigate the relevance of molecular HB classification in an independent set of tumors, we defined a HB classifier signature derived from the top list of genes differentially expressed between rC1 and rC2 clusters. After qPCR assessment, a list of 16 top genes at p≦10−7 was selected to form a class predictor (Table 1). Most of these genes show drastic variations in expression level during liver development, and among them, BUB1 and DLG7 have been repeatedly identified as hESC markers (Assou et al., 2007). The 16-gene expression profile was first investigated in rC1 and rC2 samples used as training set, and it predicted classification with 100% of accuracy in these samples, using either microarray or qPCR data. The robustness of this signature was confirmed by correct classification into C1 and C2 subclasses of all 13 remaining tumors analyzed by microarray (FIG. 1E). Expression profiles of fetal livers and normal liver for these 16-gene signature were also assayed (FIG. 1F). This signature was therefore employed to classify a new, independent set of 41 HB samples by qPCR (FIGS. 4 and 5 and Table 8), resulting in 21 tumors categorized as C1 and 20 tumors as C2 subtype (FIG. 3).
  • Extending our previous observation, C1/C2 classification in this new set of tumors was unrelated to CTNNB1 mutation rate. Using qPCR, we also confirmed enhanced expression in C2 tumors of liver progenitor markers such as AFP, Ep-CAM, and KRT19, as well as MYCN (FIG. 3). Moreover, while a similar percentage of C1 and C2 tumors displayed mesenchymal components, a predominant fetal histotype was found in 95% of tumors of the C1 subtype, whereas in 82% of C2 tumors, the major component displayed less differentiated patterns such as embryonal, crowded-fetal, macrotrabecular and SCUD types (p<0.0001) (FIG. 3). To further assess the association of HB subclasses with liver development, 5 human fetal livers at different weeks of gestation were included in the qPCR studies. In unsupervised clustering, fetal livers at late (>35 weeks) and earlier (17 to 26 weeks) developmental stages were classified as C1 and C2 respectively, further supporting that HB subclasses reflect maturation arrest at different developmental phases.
    TABLE 8
    Gene expression of the prognostic signature for liver cancer by quantitative RT-PCR.
    C1 C2 NL Fold-change
    median min max median min max median min max C1/NL C2/NL C2/C1 C1/C2
    AFP 0.4 0.0 33.3 30.7 0.0 456.1 0.2 0.0 8.8 2.3 38.1 16.5 0.1
    ALDH2 87.1 13.2 356.7 15.0 2.2 74.4 240.4 151.6 387.6 0.3 0.1 0.2 5.2
    APCS 61.6 1.1 338.9 1.9 0.0 276.2 158.6 92.7 509.5 0.2 0.0 0.1 19.8
    APOC4 21.3 4.3 122.8 1.6 0.1 24.2 47.0 22.3 112.4 0.5 0.0 0.1 16.1
    AQP9 60.6 8.0 540.6 2.5 0.1 90.1 46.6 38.0 72.7 1.3 0.1 0.1 18.9
    BUB1 0.0 0.0 0.4 0.9 0.1 3.9 0.0 0.0 0.1 1.2 16.1 13.4 0.1
    C1S 51.1 14.9 277.2 7.5 1.3 96.0 223.4 129.3 565.3 0.2 0.0 0.2 5.7
    CYP2E1 583.2 97.7 3463.0 19.7 0.4 1504.0 1128.6 527.6 1697.0 0.7 0.0 0.0 51.6
    DLG7 0.0 0.0 0.0 0.1 0.0 0.5 0.0 0.0 0.0 1.7 12.4 7.3 0.1
    DUSP9 1.5 0.4 45.7 19.1 0.0 179.0 0.6 0.2 1.3 4.0 18.3 4.6 0.2
    E2F5 0.2 0.0 2.0 1.1 0.1 11.7 0.1 0.0 0.5 1.8 6.5 3.5 0.3
    GHR 5.2 0.0 54.0 0.5 0.0 2.4 35.2 20.8 54.5 0.1 0.0 0.1 8.6
    HPD 22.9 0.9 182.0 1.2 0.1 23.8 111.5 62.6 165.7 0.2 0.0 0.1 14.0
    IGSF1 0.1 0.0 1.7 1.7 0.0 19.8 0.1 0.0 0.1 2.2 22.4 10.2 0.1
    NLE 0.4 0.1 4.8 0.8 0.3 5.1 0.4 0.2 0.8 1.2 2.2 1.8 0.5
    RPL10A 73.3 12.0 230.4 98.2 11.9 432.8 86.9 54.1 159.9 0.8 1.1 1.5 0.7

    NL, non-tumor liver; C1, good prognosis hepatoblastomas; C2, bad prognosis hepatoblastomas. Shown are the median values of 46 hepatoblastomas from 41 patients, the minimal and maximal values in each class, and the fold changes between classes. Data are presented in arbitrary units after normalization of the raw quantitative PCR values with genes (ACTG1,
    # EFF1A1, PNN and RHOT2) that presents highly similar values in all samples. Gene expression of the 16 genes are presented on FIGS. 4 and 5.
  • The 16-Gene Signature as a Strong Independent Prognostic Factor
  • In a First Set of 61 Patients
  • The clinical impact of HB molecular classification was addressed in a first set of 61 patients (FIGS. 7 and 8), comprising 37 (61%) C1 and 24 (39%) C2 cases. Besides strong association with predominant immature histotypes, HBs of the C2 subclass were tightly associated with features of advanced tumor stage, such as vascular invasion and extrahepatic metastasis (FIG. 6A). Accordingly, overall survival of these patients was markedly impaired. Kaplan-Meier estimates of overall survival probability at 2-years were 50% for patients with C2 tumors and 90% for patients with C1 tumors (p=0.0001, log rank test), and similar trends were seen for disease-free survival probabilities (data not shown). Next, we examined whether pre-operative chemotherapy treatment given to 48 patients could affect tumor classification. These cases were evenly distributed among HB subclasses, with no significant association with molecular classification. Of note, available pretreatment biopsies were assigned to the same subclass as matched resected tumors in 3 out of 4 cases (see FIG. 3; HB112 and HB112b have been both classified as C1 grade, and HB114 and HB114b have been both classified as C2 grade). We examined the performance of the 16-gene signature on the 48 tumors resected after chemotherapy, and found significant difference in outcome between patients with C1 and C2 type HBs (p=0.0021, log rank test) (FIG. 6B). Remarkably, Kaplan-Meier analysis confirmed C2 subclass as a poor prognostic group in 17 cases for which pre-treatment biopsies or primary surgery specimens were available (p=0.0318, log rank test) (FIG. 6C).
  • We further assessed the prognostic validity of the 16-gene signature for all patients in multivariate analysis, using a Cox proportional hazards model with pathological and clinical variables associated to patients' survival. This analysis identified the signature as an independent prognostic factor, with better performance than tumor stage defined by PRETEXT stage, vascular invasion and extrahepatic metastases (FIG. 6D). Thus, this signature demonstrated strong prognostic relevance when compared to current clinical criteria.
  • In a Second Set of 86 Patients
  • The clinical impact of HB molecular classification was addressed in a second set of patients (comprising the sample of the first set), comprising 53 (61%) C1 and 33 (39%) C2 cases. Besides strong association with predominant immature histotypes, HBs of the C2 subclass were tightly associated with features of advanced tumor stage, such as vascular invasion and extrahepatic metastasis (FIG. 9A). Accordingly, overall survival of these patients was markedly impaired. Kaplan-Meier estimates of overall survival probability at 2-years were 60% for patients with C2 tumors and 94% for patients with C1 tumors (p=0.00001, log rank test), and similar trends were seen for disease-free survival probabilities (Table 9).
    Table 9
    N. of patients 61 C1+25 C2 = 86 P value
    Survival (all patients) Alive/Dead
    C1
    50/3 <0.00001
    C2 20/13
    DFS (all Datients) DFS/others
    C1
    48/5 <0.00001
    C2 18/15
    Survival (non-treated Patients) Alive/Dead
    C1
    12/0 0.0164
    C2 11/6
    DES (non-treated patients) DES/others
    C1
    12/0 0.0213
    C2 12/6

    Survival analysis (Kaplan Mejer, log rank test); DES: disease-free survival; Others: dead or alive with recurrent disease.
  • Next, we examined whether pre-operative chemotherapy treatment given to 73 patients could affect tumor classification. These cases were evenly distributed among HB subclasses, with no significant association with molecular classification. We examined the performance of the 16-gene signature on the 73 tumors resected after chemotherapy, and found significant difference in outcome between patients with C1 and C2 type HBs (p=0.0002, log rank test) (FIG. 9B). Remarkably, Kaplan-Meier analysis confirmed C2 subclass as a poor prognostic group in 29 cases for which pre-treatment biopsies or primary surgery specimens were available (p=0.0164, log rank test) (FIG. 9C).
  • We further assessed the prognostic validity of the 16-gene signature for all patients in multivariate analysis, using a Cox proportional hazards model with pathological and clinical variables associated to patients' survival. This analysis identified the signature as an independent prognostic factor, with better performance than tumor stage defined by PRETEXT stage, vascular invasion and extrahepatic metastases (FIG. 9D).
  • Finally, various clinical elements of 103 HB samples from 86 patients were compared with respect to their classification as C1 or C2 grade using the 16-gene signature (Table 10).
    TABLE 10
    Clinical correlations.
    N. of patients 61 + 25 = 86 p-value (chi-square)
    Gender ns
    Chemotherapy treatment Yes/No
    C1 47/6 ns
    C2 26/7
    Chemotherapy protocol STD/High
    C1
    30/13 0.007
    C2  9/16
    TUMOR STAGE Early/Advanced
    C1
    32/20 0.005
    C2 10/23
    Metastasis No/Yes
    C1
    43/10 0.004
    C2 17/16
    Vascular Invasion No/Yes
    C1
    36/15 0.005
    C2 13/20
    Advanced Pretext stage (IV) No/Yes
    C1
    42/9 ns
    C2 24/7
    Multifocality No/Yes
    C1
    36/17 ns
    C2 18/14
    Histology Ep/Mixed
    C1
    31/21 ns
    C2 20/13
    Main EDith ComD Fetal/NonFetal
    C1
    48/4 <0.0001
    C2  6/22

    STD: standard risks (cisplatine) - High:high risk (cisplatine/doxorubicine, intensified treatment); Tumor stage (defined as Vasc. Inv and/or metastasis and/or PRETEXT stage IV); metastasis: extrahepatic metastasis (mainly lung); vascular invasion is determined by imagery; Pretext IV (involved an intrahepatic extent of the tumor to all hepatic sections);
    # multifocality (more than 2 tumor nodules); Ep: pure epithelial form - Mixed: mesenchymatous and epithelial mixed form; Fetal: well differentiated; non fetal: embryonic, atypic, SCUD and/or macrotrabecular cells.
  • The above results carried out on a first set of 61 patients, and on a second completed set of 86 patients, demonstrate that the 16-gene signature, identified in the present application, is a strong prognostic relevance when compared to current clinical criteria.
  • Discussion
  • The present application demonstrates that, using integrated molecular and genetic studies, hepatoblastoma encompass two major molecular subclasses of tumors that evoke early and late phases of prenatal liver development. Aberrant activation of the canonical Wnt pathway represented a seminal event in both tumor types, with cumulated mutation rates of β-catenin, APC and AXIN over 80%. However, depending on tumor differentiation stage, Wnt signaling activated distinct transcriptional programs involved in tumor growth and invasiveness or in liver metabolism. Further comparisons of immature, embryonal-type HBs with the bulk of more differentiated, fetal-type tumors revealed a tight correlation between stage of hepatic maturation arrest and clinical behavior, notably vascular invasion and metastatic spread, and patients' survival.
  • Molecular Hb Subclasses are Determined by Liver Differentiation Stages
  • In this study, expression-based classification of HB was achieved through a highly reliable statistical method combining different unsupervised hierarchical clustering approaches. This method led to the selection of two robust tumor subgroups, and this robustness was confirmed using a new, independent set of samples and 16 relevant genes discriminating these tumor subgroups. These results demonstrated that the most significant differences between HB subclasses can be ascribed to distinct hepatic differentiation stages, as defined by comparison with expression profiles of mouse livers at early (E11.5-E12.5) and late (E14.5-E18.5) embryonic stages. These studies also provide biological relevance to early histologic classification that distinguished fetal and embryonal cells as major HB components (Weinberg and Finegold, 1983). The C1 subclass recapitulates liver features at the latest stage of intrauterine life, both by expression profile and by mostly fetal morphologic patterns, while in the C2 subclass, transcriptional program and predominant embryonal histotype resemble earlier stages of liver development. Thus, despite frequent morphological heterogeneity in HB, these expression-based subclasses closely matched the histologic types found to be prevailing after microscopic examination of the entire tumor mass.
  • These results, showing that childhood liver tumors recapitulate programs of their developing counterpart, are in line with recent studies using cross-species comparisons. It has been demonstrated that clinically distinct medulloblastoma subtypes can be identified by their similarity with precise stages of murine cerebellar development (Kho et al., 2004). Evidence for conserved mechanisms between development and tumorigenesis was also obtained in Wilms' tumor, the embryonic kidney malignancy, which shares expression of sternness and imprinted genes with murine metanephric blastema (Dekel et al., 2006). It was noticed that HBs, like Wilms' tumors, exhibit robust overexpression of a number of paternally expressed genes like DLK1, IGF2, PEG3, and PEG10 that are involved in growth induction processes and downregulated with differentiation during development.
  • Previous studies using stem cell markers and markers of hepatocytic and biliary lineages have described differential patterns among HB components that reflect sequential stages of liver development (Schnater et al., 2003). The present data extent these observations, and indicate that immature C2-type tumor cells evoke hepatic cancer progenitor cells, with distinctive overexpression of highly relevant markers such as cytokeratin 19 and Ep-CAM (Roskams, 2006). Recently, embryonic stem/progenitor cells have been isolated from human fetal livers, either by enrichment of blast-like cells in primary hepatoblast cultures or by immunoselection of Ep-CAM-positive epithelial cells (Dan et al., 2006; Schmeizer et al., 2007). These cell lines have self-renewal capacity and can differentiate into mature hepatocytes and cholangiocytes, and one of them also gives rise to various mesenchymal lineages (Dan et al., 2006). Whether HBs arise from transformation of these cell types is presently unknown. As malignant mesenchymal derivatives are frequently admixed with epithelial tissues in HB, it is tempting to speculate that this tumor occurs from a multipotent progenitor harboring characteristics of mesenchymal-epithelial transitional cells. Moreover, since no significant differences in gene expression profiles was noted here between pure epithelial and mixed epithelial-mesenchymal HBs, tumor cells likely kept intrinsic capacities to undergo epithelial-mesenchymal transition.
  • A salient feature of immature HBs is the characteristic interplay of sternness and proliferation found in aggressive tumors (Glinsky et al., 2005). The C2-type expression profile was significantly enriched in hESC markers, including the mitotic cell cycle and spindle assembly checkpoint regulators cyclin B1, BUB1, BUB1B, and Aurora kinases. These mitotic kinases are centrosomal proteins that ensure proper spindle assembly and faithful chromosome segregation in mitosis. Overexpression of these kinases or other components of the spindle checkpoint induces centrosome amplification and defects in chromosome segregation leading to chromosome number instability and aneuploidy (Marumoto et al., 2005; Zhou et al., 1998). Non-disjunctional events are involved in developmental syndromes (Hassold and Hunt, 2001), and might be responsible for increased rate of chromosomal imbalances evidenced here in C2-type HBs.
  • Context-Dependent Transcriptional Programs Driven by Wnt Signalling
  • Mutational activation of β-catenin is a hallmark of HB, and accordingly, we found intracellular accumulation and nuclear localization of the protein in virtually all tumors, albeit with variable frequencies and intensities. Both immature and differentiated tumors overexpressed AXIN2 and DKK1, reflecting an attempt to activate a negative feedback loop aimed at limiting the Wnt signal. However, the two HB subtypes showed significant differences in β-catenin immunoexpression, illustrated by concomitant nuclear accumulation and decreased membranous localization of the protein in poorly differentiated, highly proliferative HBs. Heterogeneous distribution of nuclear β-catenin within colorectal tumors has been linked to different levels of Wnt signaling activity, resulting from differential combinations of autocrine and paracrine factors (Fodde and Brabletz, 2007). Similarly, nuclear β-catenin might be related to the absence of membranous E-cadherin in immature HBs, as we reported previously (Wei et al., 2000), and to cross-talks with growth-stimulating pathways in less differentiated cells. In this context, increased dosage of Wnt signaling might induce migratory and invasive phenotype.
  • Major differences between the two HB subtypes were found here in expression levels of Wnt targets involved in liver functions. Recent studies have demonstrated that Wnt/β-catenin signaling governs liver metabolic zonation by controlling positively the perivenous gene expression program and negatively the periportal program (Benhamouche et al., 2006). In our study, overexpression of hepatic perivenous markers such as GLUL was prominent in differentiated HBs, while genes encoding periportal functions like GLS2 were downregulated. This profile is highly similar to those of human and murine HCCs expressing mutant β-catenin (Boyault et al., 2007; Stahl et al., 2005), and corresponds to an hepatic signature of Wnt target genes. Accordingly, the zonation-related profile was lessened in poorly differentiated HBs, and mutant β-catenin was found to activate a different, muscle-related expression program in the pediatric Wilms' tumor (Zirn et al., 2006).
  • Clinical Implications
  • The clinical behavior of many human solid tumors has been related to their differentiation status and proliferative rate. We show that HB does not depart from this rule, with strong correlation of molecular subclasses linked to hepatic differentiation with clinical tumor stage and patient's outcome. This correlation was mainly determined by differences in invasive and metastatic phenotypes between the two subclasses, but not by differences in tumor localization or tumor extension across liver sections, which defines the preoperative staging (PRETEXT) utilized to evaluate tumor resectability (Perilongo et al., 2000). Major differences in expression profiles of the two molecular HB subtypes led us to elucidate a 16-gene signature that proved highly efficient in stratification of HBs as well as normal livers according to hepatic developmental stage. Most importantly, this classifier also discriminated aggressive tumors, exhibited powerful survival predictor capacities in pre-treatment biopsies and surgical specimens, and demonstrated strong prognostic relevance when confronted to current clinical criteria in multivariate analysis. Although immature HBs have been associated to worse clinical outcome as opposed to differentiated HBs (Weinberg and Finegold, 1983), frequent cellular heterogeneity has hampered the use of histopathologic criteria for defining risk groups, excepted for a minority of cases showing ‘pure fetal’ or SCUD types. The expression signature afforded here enables direct appraisal of the global degree of tumor cell maturation, allowing to bypass these difficulties. Thus, it can improve the outcome prediction and clinical management of hepatoblastoma, by identifying cases with increased risk of developing metastasis, or conversely, by avoiding unnecessary over-treatment.
  • In conclusion, the present application identifies a 16-gene signature that distinguishes two HB subclasses and that is able to discriminate invasive and metastatic hepatoblastomas, and predicts prognosis with high accuracy. The identification of this expression signature with dual capacities may be used in recognizing liver developmental stage and in predicting disease outcome. This signature can be applied to improve clinical management of pediatric liver cancer and develop novel therapeutic strategies, and is therefore relevant for therapeutic targeting of tumor progenitor populations in liver cancer.
  • Analysis of 64 Hepatocellular Carcinoma (HCC) from 64 Patients
  • Real time RT-PCR (Taqman methodology) was performed on 67 HCC samples, as disclosed for HB samples above. The clinical characteristics of the 67 patients diagnosed with HCC as well as the features of the HCC samples are disclosed in Tables 11 and 12 below.
  • Amplification was carried out with primers of the 16-gene signature disclosed in Table 6. Data were normalized to the expression of the ROTH2 gene (primers disclosed in Table 7) and analyzed by the ΔCt method. Quantitative PCR data are disclosed in Table 13.
    TABLE 11
    features of the HCC samples obtained from 67 patients (pages 60 to 62)
    Tumor follow-up tumor grade tumor differentiation tumor vascular invasion recurrence or
    Id length (years) (Edmonson) according to OMS size macro micro metastasis
    HC1 0.07 3 moderately differentiated 120 NA absent no recurrence
    HC10 0.95 4 moderately/poorly differentiated 75 absent absent no recurrence
    HC11 11.10 NA NA 15 absent absent no recurrence
    HC12 0.05 NA Well differentiated 60 NA NA no recurrence
    HC14 1.00 NA moderately/poorly differentiated 80 NA NA no recurrence
    HC15 1.22 3 moderately differentiated 60 present present no recurrence
    HC17 10.96 2 Well differentiated 100 absent absent no recurrence
    HC18 0.39 3 moderately differentiated 140 present present NA
    HC20 15.40 NA Well differentiated 40 NA NA no recurrence
    HC21 0.70 NA NA 100 NA NA NA
    HC22 11.50 NA Well differentiated 45 absent absent no recurrence
    HC23 11.93 2 Well differentiated 50 absent absent no recurrence
    HC25 15.87 2 Well differentiated 140 absent absent NA
    HC27 0.10 NA Well differentiated 15 absent absent no recurrence
    HC28 0.10 NA moderately differentiated 120 NA present no recurrence
    HC3 3.33 2 Well differentiated 60 absent absent recurrence
    HC30 11.78 3 moderately differentiated 16 NA NA no recurrence
    HC32 0.66 2 Well differentiated 60 absent NA no recurrence
    HC34 14.72 2 Well differentiated 140 absent absent recurrence
    HC37 0.20 NA moderately differentiated 35 present present non
    HC38 1.12 NA NA 50 absent NA recurrence
    HC4 11.48 2 Well differentiated 100 absent absent no recurrence
    HC41 7.44 2 Well differentiated 30 NA absent recurrence
    HC42 10.58 3 moderately differentiated 130 possible; present no recurrence
    non certain
    HC43 10.20 NA moderately differentiated 15 NA NA no recurrence
    HC52 0.25 3 moderately differentiated 110 absent absent no recurrence
    HC58 8.30 2 moderately differentiated 100 absent absent no recurrence
    HC6 1.25 2 Well differentiated 90 absent present recurrence
    HC64 5.25 3 moderately differentiated 40 absent absent recurrence
    HC66 8.93 2-3 Well to moderately differentiated 75 absent absent no recurrence
    HC7 1.50 2-3 Well differentiated 100 present present recurrence
    HC8 8.48 3 moderately differentiated 30 absent absent no recurrence
    HC9 0.02 3-4 moderately/poorly differentiated 100 present present no recurrence
    HC101 1.00 2-3 Well to moderately differentiated 35 present present no recurrence
    HC102 0.10 NA Poorly differentiated 200 present present no recurrence
    HC103 1.82 2-3 Well to moderately differentiated 55 absent present recurrence
    HC104 0.17 2-3 Well to moderately differentiated 160 Possible; present no recurrence
    non certain
    HC105 0.56 3 moderately differentiated 40 present present recurrence
    HC106 1.70 3 moderately differentiated 80 present present no recurrence
    HC107 1.75 2 Well differentiated 60 absent absent no recurrence
    HC108 1.62 3 moderately differentiated 26 absent present no recurrence
    HC109 1.00 1-2 Well to very well differentiated 30 absent absent no recurrence
    HC110 1.00 3 moderately differentiated 30 present present no recurrence
    HC111 0.60 3 moderately differentiated 40 present present no recurrence
    HC1112 1.48 2-3 Well to moderately differentiated 18 absent absent no recurrence
    HC113 1.00 2-3 Well to moderately differentiated 50 present present no recurrence
    HC114 0.44 2 Well differentiated 36 absent absent no recurrence
    HC119 0.75 1 Well differentiated 90 absent absent no recurrence
    HC120 0.69 3 moderately differentiated 140 absent absent no recurrence
    HC121 1.00 2-3 Well to moderately differentiated 28 absent absent no recurrence
    HC122 0.93 1 Very well differentiated 40 absent absent no recurrence
    HC123 0.90 3 moderately differentiated 26 absent present no recurrence
    HC124 0.82 2-3 Well to moderately differentiated 20 absent present no recurrence
    HC125 0.60 3 moderately differentiated 150 Possible; present no recurrence
    non certain
    HC126 0.75 2 Well differentiated 20 present present recurrence
    HC127 0.40 3 moderately differentiated 43 probable probable no recurrence
    HC128 0.52 3 moderately differentiated 62 absent absent no recurrence
    HC129 0.30 3 moderately differentiated 25 absent present no recurrence
    HC131 0.42 1-2 Well differentiated 130 present present recurrence
    HC132 0.25 2-3 Well to moderately differentiated 115 present present recurrence
    HC133 0.44 2 Well to moderately differentiated 110 absent present no recurrence
    HC134 0.10 3 moderately differentiated 30 absent present no recurrence
    HC135 0.14 3 moderately differentiated 38 absent Possible; no recurrence
    non certain
    HC136 0.26 2-3 Well to moderately differentiated 120 absent present no recurrence

    N.A: non available;

    macro: macrovacular invasion;

    micro: microvacular invasion
  • TABLE 12
    features of the HCC samples obtained from 67 patients, and
    features of patients (pages 63 and 64)
    Chronic Other
    Tumor Score METAVIR viral Viral etiology etiolo-
    ID Activity Fibrosis hepatitis HBV HCV alcohol gies
    HC1 NA 4 no no no yes
    HC10 NA 4 yes yes no no
    HC11 NA NA yes yes yes no
    HC12 NA NA yes yes no no
    HC14 NA NA yes no yes yes
    HC15 3 3 no no no yes
    HC17 NA 3 yes yes no no
    HC18 2 4 no no no yes
    HC20 NA NA no no no yes
    HC21 NA NA no no no yes
    HC22 NA NA no no no yes
    HC23 NA 0 no no no no
    HC25 0 0 no no no no
    HC27 NA NA yes no yes no
    HC28 0 0 no no no no
    HC3 NA 4 yes no yes no
    HC30 NA 4 no no no yes
    HC32 NA 4 yes no yes no
    HC34 NA 0 no no no no
    HC37 NA NA no no no yes
    HC38 NA 4 yes no yes no
    HC4 NA 1 no no no no
    HC41 NA 4 yes no yes no
    HC42 2 1 yes yes no no
    HC43 NA NA yes no yes no
    HC52 NA 4 yes yes no no
    HC58 2 3 yes no yes no
    HC6 NA 1 no no no yes Hemochro
    HC64 2 2 yes no yes no
    HC66 NA 4 yes yes no yes
    HC7 2 3 no no no yes
    HC8 NA 4 yes no yes no
    HC9 1 3 no no no yes
    HC101 2 4 yes yes yes yes
    HC102 1 1 yes yes yes no
    HC103 3 4 yes yes no no
    HC104 0 1 no no no no
    HC105 2 4 yes no yes no
    HC106 1 4 yes yes no no
    HC107 0 0-1 no no no yes
    HC108 1 1 yes no yes no
    HC109 2 4 no no no yes NASH
    HC110 1 4 yes no yes yes
    HC111 1 4 no no no yes
    HC112 2 2 no no no no NASH
    HC113 1 4 yes no yes no
    HC114 2 3 no no no yes
    HC119 2 1 no no no no NASH
    HC120 2 3 yes yes no no
    HC121 2 4 yes no yes no
    HC122 0 1 no no no no
    HC123 2 4 yes no yes yes
    HC124 1 4 yes yes no no
    HC125 2 4 no no no yes NASH
    HC126 1 4 yes yes no no
    HC127 2 4 yes no yes no
    HC128 1 1 no no no no NASH
    HC129 2 4 no no no yes
    HC131 0 1 no no no no
    HC132 1 1 yes yes no no
    HC133 2 2 no no no yes
    HC134 2 3 yes no yes no
    HC135 1 2 yes yes no no
    HC136 0 1 no no no no

    N.A: non available; HBV: hepatitis B virus; HCV; hepatitis C virus; hemochro: hemochromatosis; NASH non alcoholic steatohepatitis.
  • TABLE 13
    Quantitative PCR data of the 16-gene signature normalized to the expression of the ROTH2 gene (pages 65 to 68)
    HC1 HC3 HC4 HC6 HC7 HC8 HC9 HC10 HC11
    AFP -2.212911 -3.865709 -7.6758115 -7.9469815 5.311541 2.0890815 -70483095 2.3869635 0.6488335
    ALDH2 6.2372335 6.230074 2.186358 5.4231035 4.0446765 3.9297005 3.0017225 0.95212 5.958108
    AP0C4 0.614689 0.95786 -1.608247 0.9614255 -3.550537 -0.6776965 -9.6721075 NA 1.076151
    APCS 7.0721355 7.52919 5.845683 7.3704745 5.1967915 6.567126 -0.017488 -1.0272875 7.7638255
    AQP9 6.047695 6.7334475 3.759528 7.006052 6.747103 3.1082155 3.7536735 1.3400495 6.122144
    BUB1 -3.841505 -0.147459 -4.221132 -0.5252045 -0.299039 -1.214781 2.980029 -1.864677 -2.362454
    C1S 8.163492 8.7963405 5.8997645 8.162856 4.062593 7.2991535 4.830331 2.639902 8.319293
    CYP2E1 10.3093235 10.428074 7.1147515 10.1334265 11.024027 7.7910075 0.5825245 3.604805 9.575619
    DLG7 -5.30317 -2.057513 -4.4226465 -1.6282005 -1.169221 -2.80866 1.3733475 NA -2.8432205
    DUSP9 -11.616567 -8.8462855 -9.4268185 -10.22051 -6.6521625 -9.6946695 -9.5262655 NA NA
    E2F5 0.05328 -1.909804 -1.7432195 0.024339 -0.2833465 -0.0193165 0.711082 -1.344368 -0.736822
    GHR 2.655512 2.069524 -2.0012965 1.887805 -1.7428205 2.342442 -2.3242195 -0.4900285 4.757848
    HPD 9.449416 8.549803 9.415253 8.5958965 6.183977 5.329776 -0.011478 2.932809 9.029214
    IGSF1 -6.46034 -7.249974 NA -7.1580385 -3.192514 -2.806768 -4.026769 NA -7.6390015
    NLE1 -1.159417 -1.5801355 -3.1459935 0.6940375 -0.3919565 -1.579419 -0.80375 NA -1.9328755
    RPL10A 6.6225235 6.0562915 4.4121905 6.8637555 7.1381125 6.2574845 6.3016635 9.1966395 7.379063
    HC12 HC15 HC17 HC18 HC20 HC21 HC22 HC23 HC25
    AFP -6.538312 6.14089 7.1950405 -6.856588 -0.65281 -4.3070475 -4.418018 -5.538438 -3.90298
    ALDH2 4.6271565 4.5178635 2.6522585 1.840894 6.287083 2.175112 5.331214 5.853486 6.162477
    AP0C4 -1.221393 -5.156026 -2.395651 -3.84764 3.2094885 -6.2591235 0.5455545 0.5708905 1.834891
    APCS 6.942673 3.380102 4.5167035 4.916924 8.2117635 5.9159775 6.6835035 6.9009145 8.798759
    AQP9 4.1878425 2.373344 2.8711295 3.6093495 7.354605 1.1452535 5.7992305 6.651868 8.758959
    BUB1 -3.293346 0.8830545 1.0884485 -0.063545 -1.4635025 0.0802935 -2.173361 -2.5475915 -2.5679685
    C1S 6.850023 7.1343975 6.035123 4.263272 8.471663 5.7190985 7.2514145 8.2212235 8.5606875
    CYP2E1 7.284587 4.9390935 6.037085 5.811062 10.2536915 1.2878015 8.0876755 9.047509 10.814935
    DLG7 -4.7199665 -0.1414205 0.666284 -1.512286 -2.1165725 -0.322455 -3.3904095 -3.848364 -3.34202
    DUSP9 NA -4.4342765 -3.163581 -8.7756845 -9.6208445 -7.8162765 -10.827291 NA -7.1111525
    E2F5 -2.4002515 1.399564 1.206766 -2.426129 -1.1944835 -0.0686475 -0.7133385 -1.4330655 0.049846
    GHR 2.2402875 0.2426 -2.353691 -2.9035 4.5756335 0.71981 2.416651 3.7226655 1.9012935
    HPD 9.656029 4.473096 0.6808655 5.7101575 10.6864405 4.0108195 9.8859985 9.583194 9.1845675
    IGSF1 -7.466951 0.0722075 -6.0490105 -2.4248235 NA -2.954514 -5.6986975 -7.200325 NA
    NLE1 -1.64183 -0.321593 -0.386649 -1.3815525 -1.118745 -1.618369 -1.9449755 -1.823275 -1.770127
    RPL10A 5.178571 6.8777395 7.068098 5.9464565 7.542193 6.309556 7.194012 5.9526365 7.4507165
    HC26 HC27 HC28 HC30 HC32 HC34 HC37 HC38 HC41
    AFP -5.69175 -0.626755 NA 6.4370325 0.0037145 -6.6945705 -1.3519745 4.053435 -2.7156435
    ALDH2 5.0135775 5.6309605 1.913778 3.8476295 6.802666 5.11617 5.808058 4.596143 6.3503265
    AP0C4 0.2581675 1.53158 -6.0251725 0.2797975 2.574347 0.5860455 -0.0768065 -0.129322 2.281983
    APCS 7.2072275 7.2809855 1.0475505 7.1142435 7.500133 7.134934 6.755895 5.045701 5.612517
    AQP9 3.8645965 5.4736555 0.9613895 5.0250435 7.530391 6.9427395 6.3416265 6.0302545 7.8444565
    BUB1 0.545363 -0.8889165 -5.7426525 -0.190936 -5.1317805 -1.2674215 -2.4955985 0.321483 -0.587016
    C1S 7.2351705 8.172076 4.910584 7.5279395 7.854502 7.719763 6.921051 6.101331 6.88808
    CYP2E1 0.671071 8.6350095 3.6858305 7.5682115 9.4408715 8.545814 10.1686795 8.1123675 9.5090495
    DLG7 -0.9710395 -2.3158215 NA -0.189092 -5.7080765 -2.339621 -2.6534895 -1.4386515 -1.840185
    DUSP9 -8.5287915 -10.241011 NA -9.0027 -9.73163 -9.9728495 NA -5.2298755 -8.727439
    E2F5 -1.1845665 -0.4045835 -4.334386 1.0623035 -0.054818 -1.4281575 -1.2212655 -0.037887 0.466649
    GHR 1.964045 2.623084 -1.9788575 2.635437 2.0027475 1.563203 2.9415775 0.2025015 1.428749
    HPD 7.6403735 9.597772 3.3142495 7.537 9.0015185 8.3685675 10.367265 7.547286 8.0015745
    IGSF1 -5.4960635 -5.588995 NA -2.651022 NA -10.112616 -7.5570255 -0.680358 -7.243446
    NLE1 -1.851733 -1.851285 -2.4559905 -1.2674865 -1.208576 -1.934745 -1.9881245 -2.1250395 -0.15624
    RPL10A 5.9670715 7.6623025 5.521873 7.5046195 8.8437815 6.594006 6.901637 5.1574215 7.7043325
    HC42 HC43 KC44 HC52 HC58 HC60 HC64 HC66 HC101
    AFP -5.216493 -1.7983435 -0.564605 10.3337105 1.891958 7.624821 5.0266755 3.156328 -6.873135
    ALDH2 4.4086495 5.457548 7.1344115 2.1920375 2.1172735 3.6860195 4.992107 3.8408415 4.339036
    AP0C4 -0.627239 -0.7055185 0.499817 -8.124407 -11.8524 -0.545509 0.7860345 -0.6773785 -0.5787185
    APCS 4.1054755 7.607914 7.567581 5.9818015 -4.1106695 8.100997 7.4148835 8.2106815 6.288568
    AQP9 6.063786 4.7175855 6.058158 -0.4848805 -2.817265 6.8503395 7.0526325 6.2767975 4.6233735
    BUB1 -2.224818 -2.8634735 -3.5668895 -1.2986035 1.9395175 -0.576028 -1.367463 -1.1272665 0.081457
    C1S 6.3060565 7.9862115 8.547705 5.6337865 3.691331 8.167253 7.1364365 8.026875 7.321092
    CYP2E1 9.1411555 8.760714 9.1133175 1.7693015 -4.3317445 9.1875325 9.682147 8.601088 5.806032
    DLG7 -3.2531575 -4.2390495 -4.814388 -2.599359 0.1957495 -2.2644225 -2.386875 -2.7680135 -1.3084655
    DUSP9 NA -10.525647 NA -3.8059605 -3.656912 -6.618755 -7.3184655 -11.5673955 -8.828389
    E2F5 -0.3673235 -0.894345 -1.894272 0.4419525 0.804087 -0.432422 -0.2876185 -0.968982 -1.871516
    GHR -1.2545195 3.2916395 4.5598275 -1.843696 -3.7242975 -1.4079225 0.349645 -1.2501855 0.1466275
    HPD 8.2669835 8.997825 9.158005 2.481945 1.8257985 8.4643875 8.6027575 8.5231325 5.7252795
    IGSF1 -2.899766 -5.5544715 -5.769786 2.254168 1.3471695 -0.7884805 -3.3382005 -9.185554 -4.1394545
    NLE1 -0.9401045 -1.8422595 -2.0303285 -1.9474305 -1.209522 -1.9133155 -1.817699 -1.962008 -1.4546305
    RPL10A 5.577659 5.480403 5.8488475 5.6154705 6.0601515 5.7041285 6.4617635 5.415169 6.144011
    HC102 KC103 HC104 HC105 HC106 HC107 HC108 HC109 HC110
    AFP -4.119697 1.6193685 5.5094265 2.3444245 -3.42054 -4.136209 -4.500336 -4.833024 -3.5240185
    ALDH2 2.476355 3.889904 4.936239 4.239726 6.1642895 6.7443095 3.6076385 5.8617665 3.6707715
    AP0C4 -5.453696 -0.54698 -0.5059805 -3.577778 -0.7836775 4.4534435 -2.478085 0.729565 -0256479
    APCS -2.3952165 6.014572 5.624234 7.703333 7.8462545 9.2080655 7.275462 6.222909 5.043319
    AQP9 0.0196725 7.151639 0.501258 4.2748785 5.85931 8.8878655 4.4353395 6.4504115 4.5999895
    BUB1 -0.5553155 -2.086008 -1.311194 0.945674 -4.8909655 -1.7415115 -0.3807995 -2.2918285 -1.449943
    C1S 5.939374 5.965432 6.716137 7.774455 8.060072 9.2061165 7.1031155 7.406001 6.9163195
    CYP2E1 -2.8566735 8.266311 9.0888685 5.698899 9.9949555 9.3234825 3.889942 8.7101925 7.1 45766
    DLG7 -2.1385165 -2.957914 -1.821739 -0.814912 -6.2678815 -1.357756 -2.2445545 -3.222524 -2.333076
    DUSP9 -8.6628475 -12.521336 -5.396553 -5.4214725 -11.174152 -6.6136855 -8.0946735 -10.4709205 -11.616244
    E2F5 0.830934 -1.8003215 -2.305498 2.0730715 -2.208171 2.78876 0.0923905 -1.9924345 -2.512512
    GHR 0.947389 0.636723 1.6860905 0.682142 5.342392 2.935929 1.6363755 2.9233285 1.0803015
    HPD 0.568809 6.717282 8.46781 2.288109 9.4440475 10.460972 2.9674235 7.8859205 8.1908235
    IGSF1 -2.708733 -9.802921 0.1438735 -1.422332 -7.401009 NA -7.967992 -10.0122565 -8.1469415
    NLE1 -1.1534675 -2.594702 -1.610158 -0.471391 -1.968983 -0.000835 -0.932052 -2.6102395 -2.3529485
    RPL10A 5.283399 4.423835 6.21159 6.315756 5.769397 8.6686655 5.818028 5.541229 5.245476
    HC111 HC112 HC113 HC114 HC119 HC120 HC121 HC122 HC123
    AFP -1.883473 -2.8803905 1.208649 -5.4433695 1.0580855 -4.0065425 -4.254961 -2.3763095 0.821555
    ALDH2 3.8304065 4.8726745 4.407016 4.7113965 6.159706 4.257398 4.556431 6.2844515 4.220769
    AP0C4 -1.130067 -0.7777655 -2.366969 -0.833543 1.894453 -3.5241745 -2.167313 1.279577 -0.68167
    APCS 5.976754 6.764675 5.197177 6.723142 9.375177 5.6838965 6.2688205 6.9942545 5.778659
    AQP9 4.1657805 5.2735435 2.681192 4.445291 7.6266135 6.8239115 4.38702 6.8198535 6.410177
    BUB1 0.621548 0.3135015 -3.4825665 -1.7431855 -0.797564 -0.0740105 -2.4486685 -6.0183915 -1.190323
    C1S 6.278164 7.455794 6.338901 7.866014 9.1461175 8.5708615 8.118416 7.7653135 5.383781
    CYP2E1 4.46942 2.5741475 6.443846 7.3429245 7.095824 7.6044515 7.765037 9.450349 8.528543
    DLG7 -0.769283 -0.9196845 -4.5602875 -3.1500875 -1.712686 -1.9563135 -2.852561 -7.228946 -2.929576
    DUSP9 -9.137462 -10.105965 -7.8299455 -11.804112 -9.106547 -5.8119685 -9.706684 -9.9054825 -11.584458
    E2F5 1.045678 0.0373705 -2.82243 -0.0450475 -0.0248045 1.229768 -0.910943 -3.5033365 -0.646839
    GHR 1.1576425 2.5391085 2.16232 2.5053965 3.7649595 3.196589 2.2774645 2.400201 -1.810364
    HPD 7.245347 7.714358 6.685692 6.835254 9.220498 8.5127155 7.480725 8.7301975 4.7774665
    IGSF1 -1.86965 -3.4428695 -2.045068 -5.1813245 -5.39017 -9.404196 -5.980435 -8.6480295 -5.1400615
    NLE1 -1.012752 -1.119237 -2.156348 -1.3170345 -0.400823 -1.1096815 -1.758163 -2.2430545 -1.5951645
    RPL10A 5.568205 6.1905075 5.8884625 5.795905 7.954231 6.4517175 6.4042545 5.199782 4.7323885
    HC124 HC125 HC126 HC127 HC128 HC129 HC131 HC132 HC133
    AFP 3.9525335 -4.806564 -5.899437 -0.0390765 5.8636305 -3.430757 -1.491189 5.4265205 -5.1621395
    ALDH2 4.027289 4.5451465 5.02839 2.41699 5.085525 4.6298475 5.425994 3.105643 4.2462915
    AP0C4 -0.0499065 2.6326775 0.407895 0.8680995 -0.626498 -1.863955 2.4702 -6.9974515 0.63156
    APCS 5.391271 6.5321595 5.2838365 4.846116 5.087517 4.8448705 8.6617295 -3.2748865 7.145861
    AQP9 4.463488 8.370224 3.6163545 1.8613935 4.3184915 2.870839 7.4772145 3.9244375 6.05182
    BUB1 -1.592563 1.1627945 -2.6943025 -2.048769 -1.3297375 -2.3688215 -0.727709 0.2895395 -4.9277675
    C1S 5.151686 8.4244055 7.1365955 6.3641695 6.828468 7.302922 7.525072 4.390082 7.3188145
    CYP2E1 9.520436 9.426232 5.226091 6.1813065 7.4344035 2.692798 8.98645 7.0455735 8.1908895
    DLG7 -2.03781 0.3286545 -3.944339 -2.96212 -2.6299155 -3.6405185 -1.461713 -1.5572645 -5.5447335
    DUSP9 -8.81055 -9.3740615 -8.7174575 -8.672372 -8.499355 -7.0627455 -8.415907 -3.3843145 -8.022457
    E2F5 0.574165 -0.028878 -3.271927 -2.162802 -4.393094 -0.470421 0.154573 1.9018925 -2.6341525
    GHR 2.2369305 0.697866 1.824385 0.129431 1.9716885 2.332961 4.009655 1.7710325 2.2298335
    HPD 7.832169 5.7813 1.865621 3.4481965 5.7052855 5.502918 8.960383 2.3653865 6.1281315
    IGSF1 -1.4450915 -10.2234745 -7.659377 -3.1503205 -2.72995 -5.692623 -7.5832005 -1.947055 NA
    NLE1 -0.1499775 -0.405397 -2.033278 -2.205965 -1.949352 -1.683808 -1.5313675 0.2035885 -1.4173895
    RPL10A 6.691521 7.1196575 5.389272 4.3385115 6.6181545 4.8697295 6.775249 6.7796075 5.762015
    AFP HC134 HC135 HC136
    ALDH2 2.8738695 -0.909107 -0.4105125
    AP0C4 4.061101 2.7442165 6.0408575
    APCS -0.1134065 -0.7630605 0.7390785
    AQP9 7.5103485 0.959726 7.150737
    BUB1 5.550642 4.0595615 5.996196
    C1S 1.7425995 -1.2018365 -4.288554
    CYP2E1 8.4609335 4.667223 8.243333
    DLG7 7.859701 4.30592 9.042865
    DUSP9 0.8148735 -2.250305 -5.5267715
    E2F5 -4.96739 -5.794605 -10.9307725
    GHR 3.1030595 0.986165 -2.4040865
    HPD 1.3138565 -0.6955465 4.013948
    IGSF1 7.231144 6.7262275 8.223611
    NLE1 -0.3848995 -4.394354 -7.4962365
    RPL10A 0.794433 -0.9780515 -2.426321
    AFP 7.7140665 6.689595 5.5069335

    NA: non available
  • Data were then analyzed by unsupervised clustering (dCHIP software) using 2 methods: average and centroid. Tumors were clustered into 2 groups, C1 and C2. Most of the samples have been attributed the same classification using the 2 methods, except for 6 samples (9%) that have been attributed a different classification (Table 15).
  • Clinical Parameters Associated to the C1 and C2 Molecular Subclasses
  • The clinico-pathological parameters of patients and tumors were compared between the two groups C1 and C2, using student's t test and Kaplan-Meier estimates. Since some data are not available for 3 patients, the following statistical studies were performed on 64 tumors.
  • Survival Analysis
  • There is a strong correlation of the molecular classification into C1 and C2 with patient's survival by using both classifications (Log rank: Centroid p=0.020 and Average p=0.024) (FIG. 10). In this figure, censored cases indicate the end of the follow-up (the last visit) for individual cases. Probability of survival at two years is 78% for C1 subclass and 39% for C2 subclass (the follow-up may be less than 2 years for some patients).
  • Association of HCC Classification with Clinical Variables
  • Table 14 shows the correlation between some clinical variable and the classification of the tumors.
    TABLE 14
    Variable C1 C2 p-value
    Tumor grade >2 (Edmonson) 13/29 21/23 <0.0001
    Moderately-poorly differentiated (OMS) 17/36 23/25 <0.0001
    Macrovascular Invasion  6/30  9/21 0.074
    Microvascular Invasion 13/32 15/22 0.043
    Recurrence 7/36  5/25 ns

    (ns: non-significant)
  • TABLE 15
    Classification of samples by unsupervised clustering
    (dCHIP software): average and centroid methods.
    Tumor ID average centroid comparison
    HC1 C1 C1 Same
    HC10 C2 C2 Same
    HC11 C1 C1 Same
    HC12 C1 C1 Same
    HC14 C1 C1 Same
    HC15 C2 C2 Same
    HC17 C2 C2 Same
    HC18 C2 C2 Same
    HC20 C1 C1 Same
    HC21 C2 C2 Same
    HC22 C1 C1 Same
    HC23 C1 C1 Same
    HC25 C1 C1 Same
    HC26 C1 C2 Different
    HC27 C1 C1 Same
    HC28 C2 C2 Same
    HC3 C1 C1 Same
    HC30 C2 C2 Same
    HC32 C1 C1 Same
    HC34 C1 C1 Same
    HC37 C1 C1 Same
    HC38 C2 C2 Same
    HC4 C1 C1 Same
    HC41 C1 C1 Same
    HC42 C2 C1 Different
    HC43 C1 C1 Same
    HC44 C1 C1 Same
    HC52 C2 C2 Same
    HC58 C2 C2 Same
    HC6 C1 C1 Same
    HC60 C2 C2 Same
    HC64 C2 C2 Same
    HC66 C1 C1 Same
    HC7 C2 C2 Same
    HC8 C2 C2 Same
    HC9 C2 C2 Same
    HC101 C1 C2 Different
    HC102 C2 C2 Same
    HC103 C1 C1 Same
    HC104 C2 C2 Same
    HC105 C2 C2 Same
    HC106 C1 C1 Same
    HC107 C1 C1 Same
    HC108 C1 C1 Same
    HC109 C1 C1 Same
    HC110 C1 C1 Same
    HC111 C2 C2 Same
    HC112 C1 C2 Different
    HC113 C2 C2 Same
    HC114 C1 C1 Same
    HC119 C1 C1 Same
    HC120 C1 C1 Same
    HC121 C1 C1 Same
    HC122 C1 C1 Same
    HC123 C2 C1 Different
    HC124 C2 C2 Same
    HC125 C1 C1 Same
    HC126 C1 C1 Same
    HC127 C2 C2 Same
    HC128 C2 C2 Same
    HC129 C1 C2 Different
    HC131 C1 C1 Same
    HC132 C2 C2 Same
    HC133 C1 C1 Same
    HC134 C2 C2 Same
    HC135 C2 C2 Same
    HC136 C1 C1 Same
  • In a second analysis, the global set of 64 tumors was analyzed independently of the C1/C2 classification, for parameters associated to survival. Results are presented in Table 16.
    TABLE 16
    Variable Log rank
    Tumor grade >2 0.108
    Mod-poor Duff. Degree 0.400
    Macrovasc. mv. 0.004
    Microvasc. mv. 0.026
    recurrence ns
    Tumor size 2cm 0.397
    Score METAVIR Activity ns
    Score METAVIR Fibrosis 0.038
    <2 vs. ≧ 2 (variable 3)
    Chronic hepatitis 0.948
    HBV 0.093
    HCV 0.352
    Alcohol 0.225

    (ns: non-significant)
  • These results demonstrate that the methods and the signatures of the invention are able to determine the grade not only of HB tumors but also of HCC tumors. The inventors have shown that hierarchical clustering is an efficient method for classification of tumor grade especially for HB. For HCC, this method may be less sufficient (less robust) when the amplitude of variation of expression results of the genes is less important than for HB.
  • Classification of Hepatoblastomas and Hepatocellular Carcinomas Using the Method of Discretization of Continuous Values.
  • 85 hepatoblastomas (HBs) and 114 hepatocellular carcinomas (HCCs) including to the samples used in the above examples have been analyzed by quantitative PCR using the 16-gene signature and have been classified by the method of discretization of continuous values in order to determine their tumor grade.
  • Description of the Methodology for Classification
  • The inventors have designed a methodology for classification based on the principle of discretization of continuous values which refers to the process of converting continuous variables to “discretized” or nominal sets of values.
  • The major advantage of the discretization method relies on the definition of a cut-off for codification of each qPCR value (either by the Taqman or by the SybrGreen method), which provides an intrinsic score to directly classify an individual sample. There is hence no requirement to compare a sample to a large series of samples. In contrast, in other classification methods, the assigned subclass (such as C1 or C2 disclosed herein) is relative to the values obtained in a large number of cases. Moreover, the use of the average discretized values allows to tolerate missing values when analyzing the qPCR results (i.e. missed amplification of one of the genes for technical reasons).
  • Using the qPCR data of the 16 genes normalized to the reference RHOT2 gene (−deltaCt values), a cut-off (or threshold) has been defined for each gene. The −deltaCt values are converted into discrete values “1” or “2” depending on an assigned cut-off. In order to privilege the identification of samples that display strong overexpression of proliferation-related genes and/or strong downregulation of differentiation-related genes, the cut-offs have been defined as follows:
  • for the 8 proliferation-related genes (AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE1, RPL10A), all −DeltaCts with a value above the 67th percentile have been assigned discretized value “2”, otherwise the assigned value was “1”.
  • for the 8 differentiation-related genes (ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR, HPD), all −deltaCts with a value below the 33rd percentile have been assigned discretized value “1”, otherwise the assigned value was “2”.
  • Classification of 85 Hepatoblastomas (HB)
  • RNA Preparation and Quantitative PCR
  • RNA was extracted by using either Trizol, RNeasy kit (QIAGEN) or miRvana kit (Ambion), then quantified and quality-checked by Agilent technology.
  • For quantitative PCR analysis, the Sybr Green approach was used as described in point E. above. For each cDNA preparation, 1 μg of RNA was diluted at the final concentration of 100 ng/μl, and reverse transcribed with the Superscript RT kit (Invitrogen) following the manufacturer's protocol. Random primers were added at the final concentration of 30 ng/μl and the final volume was 20 μl. The cDNA was diluted 1:25, and 5 μl were used for each qPCR reaction. We added 5 μl of 2×Sybr Green Master mix (Applied Biosystems) and 0.3 μl of each specific primer (disclosed in point H. above) (final concentration 300 nM). Each reaction was performed in triplicate. qPCR reactions were run on the Applied Biosystems 7900HT Fast Real-Time PCR System with a 384-well thermo-block, and the conditions were the following:
  • 2 min at 50° C. to activate Uracil-N-glycosylase (UNG)-mediated erase of a specific reaction
  • 10 min at 95° C. to activate the polymerase and inactivate the UNG
  • 40 cycles:
  • 15 sec at 95° C. denaturation step
  • 1 min at 60° C. annealing and extension
  • Final dissociation step to verify amplicon specificity.
  • The normalized qPCR (deltaCt) values of the 85 HB samples are given in Table A.
  • Analysis of qPCR Data.
  • Assignment of a discretized value for the 8 proliferation-related genes (“AFP” “BUB1” “DLG7” “DUSP9” “E2F5” “IGSF1” “NLE” “RPL10A”) was based on the 67th quantile (i.e. percentile), given that around ⅓ of HB cases overexpress proliferation genes, which is correlated with tumor aggressiveness and poor outcome. Assignment of a discretized value for the 8 differentiation-related genes (“ALDH2” “APCS” “APOC4” “AQP9” “C1S” “CYP2E1” “GHR” “HPD”) was based on the 33rd quantile, given that around ⅓ of HB cases underexpress differentiation genes, which is correlated with tumor aggressiveness and poor outcome.
  • The cut-offs (or thresholds) selected for the −deltaCT value of each gene were determined after considering said chosen percentiles for each group of genes are as follows:
  • AFP: 3.96139596; ALDH2: 4.3590482; APCS: 4.4691582; APOC4: 2.03068712; AQP9: 3.38391456; BUB1: −1.41294708; C1S: 4.24839464; CYP2E1: 6.70659644; DLG7: −3.3912188; DUSP9: 2.07022648; E2F5: −0.72728656; GHR: −0.1505569200; HPD: 2.27655628; IGSF1: 0.1075015200; NLE: −0.02343571999; RPL10A: 6.19723876
  • For the sample, the relative expression value is determined for each gene of the set of profiled genes. Each value is compared to the cut-off for the corresponding gene and is then discretized as a result of its position with respect to said cut-off.
  • The next step consisted in assigning a discretized score to each sample as follows:
  • 1—the average of the “discretized” values of the 8 proliferation-related genes was determined. The 8 proliferation-related genes are the following: AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE, and RPL10A.
  • 2—the average of the “discretized” values of the 8 differentiation-related genes was determined. The 8 differentiation-related genes are the following: ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR, and HPD.
  • 3—The score for each sample was determined as the ratio between the average of proliferation-related genes and the average of differentiation-related genes.
  • According to this calculation, a score of 2 is the maximal score for highly proliferating and poorly differentiated tumors, whereas well differentiated and slowly proliferating tumors will have a minimal score of 0.5.
  • Based on the scores assigned to the 85 HB samples analyzed, cut-offs were identified to separate the samples into relevant subclasses. Two different cut-offs that correspond to the 33rd (0.615), and 67th percentile (0.91) have been assessed, leading to the definition of either 2 or 3 subclasses. These data together with the clinical data of 85 HB cases are given in the Table B.
  • Statistical Analysis of Clinical Correlations
  • All statistical correlations were analyzed using the discrete classification into 2 subclasses with the 67th percentile (see 3rd column of the table given in Table B).
    Samples with Samples with p-values
    score <67th score >67th (chi-
    Characteristics percentile percentile square test)
    Previous C1/02 52/5   2/26 1.0739e−14
    classification
    Gender Male/Female 28/29  7/21 0.03368
    PRETEXT.stage 30/25 11/15 0.30367
    I-II/III-IV
    Distant Metastasis 45/12 15/13 0.015808
    No/Yes
    Vascular invasion
    38/17 11/17 0.0090345
    No/Yes
    Multifocality No/Yes 38/18 15/13 0.20088
    Histology 34/22 16/22 0.75303
    Epithelial/Mesenchymal
    β-catenin mutation  8/45  8/16 0.067697
    No/Yes
    Main epithelial 49/7  5/21 2.33206e−9
    component
    Fetal/Other*

    *Other = embryonal, macrotrabecular, crowded fetal
  • The best correlation of the discrete classification was observed with the previous classification into C1 and C2 classes, followed by the main epithelial histological component. The correlation with patients' survival is also excellent, as shown by using the Kaplan-Meier estimates and the log-rank test. Illustrative Kaplan-Meier curves are given in FIG. 11 for specific cancer-related survival, using different percentiles to classify the tumors.
  • In conclusion, this study shows that the discretization method allows to classify hepatoblastoma as efficiently as the previously described method.
  • A similar approach was therefore applied to the analysis of hepatocellular carcinoma.
  • Analysis of 114 Hepatocellular Carcinomas (HC)
  • RNA Preparation
  • RNA was extracted by using either Trizol, RNeasy kit (QIAGEN) or miRvana kit (Ambion), then quantified and quality-checked by Agilent technology.
  • For each cDNA preparation, 1 μg of RNA was diluted at the final concentration of 100 ng/μl, and reverse transcribed with the Superscript RT kit (Invitrogen) following the manufacturer's protocol. Random primers were added at the final concentration of 30 ng/μl and the final volume was 20 μl. The cDNA was diluted 1:25, and 5 μl were used for each qPCR reaction. We added 5 μl of 2×Sybr Green Master mix or the Taqman Master mix (Applied Biosystems) and specific primers (and probes when using Taqman chemistry) at the concentration indicated by the manufacturer. Each reaction was performed in triplicate. qPCR reactions were run on the Applied Biosystems 7900HT Fast Real-Time PCR System with a 384-well thermo-block, and the conditions were the following:
  • 2 min at 50° C. to activate Uracil-N-glycosylase (UNG)-mediated erase of aspecific reaction (omit if using the Taqman approach)
  • 10 min at 95° C. to activate the polymerase and inactivate the UNG
  • 40 cycles:
  • 15 sec at 95° C. denaturation step
  • 1 min at 60° C. annealing and extension
  • Final dissociation step to verify amplicon specificity (omit if using the Taqman approach)
  • Quantitative PCR
  • Real time RT-PCR was performed for 16 genes on 114 HCC samples using two different technologies:
  • Sybr Green as described above for hepatoblastoma (26 samples).
  • Taqman methodology (88 samples) using primers and probes designed and publicly released by Applied Biosystems company.
  • Examples
  • AFP forward primer: GCCAGTGCTGCACTTCTTCA
    AFP reverse primer: TGTTTCATCCACCACCAAGCT
    AFP Taqman probe: ATGCCAACAGGAGGCCATGCTTCA
    RHOT2 forward primer: CCCAGCACCACCATCTTGAC
    RHOT2 reverse primer: CCAGAAGGAAGAGGGATGCA
    RHOT2 Taqman probe: CAGCTCGCCACCATGGCCG
  • Each reaction was performed in triplicate for Sybr Green protocol and in duplicate for the taqman protocol. qPCR reactions were run on the Applied Biosystems 7900HT Fast Real-Time PCR System with a 384-well thermo-block.
  • Raw data for each gene were normalized to the expression of the ROTH2 gene, providing the deltaCt values that were then used for tumor classification into subclasses using the discretization method.
  • The normalized qPCR values (deltaCt) of the 16 genes in 26 HCC samples analyzed by the Sybr Green approach is given in Table C. The deltaCt values for 88 HCCs analyzed by the Taqman approach are given in Table D.
  • Analysis of qPCR Data.
  • The −deltaCt values for each gene in each sample was used. The cut-offs (or thresholds) selected for each gene using the Taqman method or the SybrGreen method are as follows:
    Table E of cut-offs for discretization values
    Gene name Cut-off for Taqman Cut-off for SybrGreen
    AFP −1.2634010 −2.3753035
    ALDH2 4.014143 5.314302
    APCS 5.6142907 6.399079
    APOC4 −0.7963158 4.656336
    AQP9 4.2836011 5.446966
    BUB1 −1.2736579 −3.634476
    C1S 6.3514679 6.240002
    CYP2E1 6.9562419 5.829384
    DLG7 −2.335694 −4.614352
    DUSP9 −7.979559 −1.8626715
    E2F5 −0.4400218 −1.367846
    GHR 1.0832632 1.169362
    HPD 6.7480328 6.736329
    IGSF1 −4.8417785 7.6653982
    NLE −1.6167268 −1.82226
    RPL10A 6.2483056 5.731897
  • For the sample, the relative expression value is determined for each gene of the set of profiled genes. Each value is compared to the cut-off for the corresponding gene and is then discretized as a result of its position with respect to said cut-off.
  • The next step consisted in assigning a score to each sample as follows:
  • 1—the average of the “discretized” values of the 8 proliferation-related genes was determined. The 8 proliferation-related genes are the following: AFP, BUB1, DLG7, DUSP9, E2F5, IGSF1, NLE, and RPL10A.
  • 2—the average of the “discretized” values of the 8 differentiation-related genes was determined. The 8 differentiation-related genes are the following: ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, GHR, and HPD.
  • 3—The score for each sample was determined as the ratio between the to average of proliferation-related genes and the average of differentiation-related genes.
  • According to this calculation, a score of 2 is the theoretical maximal score for highly proliferating and poorly differentiated tumors, whereas well differentiated and slowly proliferating tumors will have a theoretical minimal score of 0.5.
  • Based on the scores assigned to the 114 samples analyzed, cut-offs are identified to separate the samples into relevant subclasses. Three different cut-offs that correspond to the 30rd (0.66), 50th (0.8125) and 67th percentile (0.925) have been assessed, leading to 4 different classification methods.
    TABLE F
    of discretized values for 114 HCCs using 3 different thresholds
    and 4 combinations
    Method 1
    3-class:
    (1): <q30 Method 2 Method 3 Method 4
    (2): q30 2-class: 2-class: 2-class: Over- Follow-
    q67; (1): <q30 (1): <q67 (1): <q50; all.survi- up
    Sample score (3): >g67 (2): >q30 (2): >q67 (2): >q50 val (years)
    HC 001 0.6875 2 2 1 1 1 0.07
    HC 003 0.6875 2 2 1 1 1 3.33
    HC 004 0.7272727 2 2 1 1 0 11.48
    HC 006 0.8125 2 2 1 2 1 1.25
    HC 007 1.4545455 3 2 2 2 1 1.5
    HC 008 1.0769231 3 2 2 2 1 8.48
    HC 009 1.75 3 2 2 2 1 0.02
    HC 010 1.5 3 2 2 2 1 0.95
    HC 011 0.6428571 1 1 1 1 0 12.2
    HC 012 0.5714286 1 1 1 1 1 0.05
    HC 014 0.625 1 1 1 1 1 1
    HC 015 1.6 3 2 2 2 1 1.22
    HC 017 1.875 3 2 2 2 0 10.96
    HC 018 1.5 3 2 2 2 1 0.39
    HC 020 0.7857143 2 2 1 1 0 15.4
    HC 021 1.5555556 3 2 2 2 1 0.7
    HC 022 0.5625 1 1 1 1 0 11.5
    HC 023 0.5 1 1 1 1 0 11.93
    HC 025 0.7142857 2 2 1 1 1 15.87
    HC 026 0.7142857 2 2 1 1 1 0.83
    HC 027 0.8125 2 2 1 2 1 0.1
    HC 028 1 3 2 2 2 1 0.1
    HC 030 1 3 2 2 2 1 12.4
    HC 032 0.7857143 2 2 1 1 1 0.66
    HC 034 0.625 1 1 1 1 0 15.7
    HC 037 0.5714286 1 1 1 1 1 0.2
    HC 038 1.0769231 3 2 2 2 1 1.12
    HC 041 0.8666667 2 2 1 2 1 7.44
    HC 042 0.8791209 2 2 1 2 0 10.58
    HC 043 0.5 1 1 1 1 0 10.9
    HC 052 1.3333333 3 2 2 2 NA 0.25
    HC 058 1.875 3 2 2 2 0 8.3
    HC 060 1 3 2 2 2 NA NA
    HC 064 0.8666667 2 2 1 2 1 5.25
    HC 066 0.7142857 2 2 1 1 0 8.93
    HC 101 0.9230769 2 2 1 2 0 2.5
    HC 102 1.625 3 2 2 2 0 0.1
    HC 103 0.75 2 2 1 1 0 1.82
    HC 104 0.8666667 2 2 1 2 0 2.1
    HC 105 1.4545455 3 2 2 2 0 0.56
    HC 106 0.5 1 1 1 1 0 2
    HC 107 0.8571429 2 2 1 2 0 1.75
    HC 108 1 3 2 2 2 0 1.62
    HC 109 0.5 1 1 1 1 0 1.3
    HC 110 0.6923077 2 2 1 1 0 1.95
    HC 111 1.1818182 3 2 2 2 1 0.7
    HC 112 0.8666667 2 2 1 2 0 1.48
    HC 113 1.1 3 2 2 2 1 1
    HC 114 0.6666667 2 2 1 1 0 0.44
    HC 115 0.875 2 2 1 2 0 0.75
    HC 116 0.9333333 3 2 2 2 0 0.69
    HC 117 0.6 1 1 1 1 0 1.2
    HC 118 0.5 1 1 1 1 0 0.93
    HC 119 0.8461538 2 2 1 2 0 1.2
    HC 120 1 3 2 2 2 0 0.82
    HC 121 0.9285714 3 2 2 2 0 0.6
    HC 122 0.6666667 2 2 1 1 0 0.75
    HC 123 1 3 2 2 2 0 0.8
    HC 124 0.7857143 2 2 1 1 0 0.52
    HC 125 0.8181818 2 2 1 2 0 0.9
    HC 126 0.8125 2 2 1 2 0 0.42
    HC 127 1.6 3 2 2 2 0 0.25
    HC 128 0.6095238 1 1 1 1 0 0.44
    HC 129 1 3 2 2 2 1 0.15
    HC 130 1.7777778 3 2 2 2 0 0.14
    HC 131 0.5625 1 1 1 1 0 0.26
    HC 137 1.2222222 3 2 2 2 0 5.67
    HC 138 0.75 2 2 1 1 0 5.58
    HC 139 1.3333333 3 2 2 2 0 6
    HC 140 0.5714286 1 1 1 1 0 4.17
    HC 141 0.6153846 1 1 1 1 0 5.08
    HC 142 0.8888889 2 2 1 2 1 4.08
    HC 143 1.375 3 2 2 2 0 2.83
    HC 144 0.6153846 1 1 1 1 0 6
    HC 145 0.8 2 2 1 1 0 5.58
    HC 146 0.9 2 2 1 2 0 4.33
    HC 147 0.6666667 2 2 1 1 0 3.83
    HC 148 1.1 3 2 2 2 0 3.08
    HC 149 1.2222222 3 2 2 2 1 3.42
    HC 150 0.6666667 2 2 1 1 0 5.42
    HC 151 0.6153846 1 1 1 1 0 2.25
    HC 152 0.6428571 1 1 1 1 1 3.67
    HC 153 0.6923077 2 2 1 1 1 4.83
    HC 154 1.375 3 2 2 2 1 2.21
    HC 155 0.8181818 2 2 1 2 0 4.1
    HC 156 1.4 3 2 2 2 1 2.31
    HC 157 1 3 2 2 2 1 3.59
    HC 159 0.7272727 2 2 1 1 1 2.42
    HC 161 0.6 1 1 1 1 0 4.47
    HC 162 1.1111111 3 2 2 2 0 3.49
    HC 163 0.6 1 1 1 1 1 2.21
    HC 164 0.6428571 1 1 1 1 0 4.54
    HC 165 0.6428571 1 1 1 1 0 4.72
    HC 168 0.6 1 1 1 1 0 6
    HC 169 0.6 1 1 1 1 1 2.78
    HC 170 0.5625 1 1 1 1 0 5.29
    HC 171 0.8181818 2 2 1 2 0 4.57
    HC 172 0.8333333 2 2 1 2 0 3.9
    HC 173 0.6428571 1 1 1 1 0 4.21
    HC 176 0.6428571 1 1 1 1 0 4.57
    HC 177 0.6666667 2 2 1 1 0 5.42
    HC 178 0.7142857 2 2 1 1 0 2.5
    HC 179 0.8181818 2 2 1 2 0 5.17
    HC 180 0.8571429 2 2 1 2 1 3.58
    HC 181 1 3 2 2 2 0 6.83
    HC 182 0.5625 1 1 1 1 0 3.5
    HC 183 0.7333333 2 2 1 1 1 4.08
    HC 184 0.9230769 2 2 1 2 1 2.08
    HC 185 0.7692308 2 2 1 1 0 2.25
    HC 186 0.9285714 3 2 2 2 1 2.17
    HC 187 0.6428571 1 1 1 1 0 7.67
    HC 188 0.7142857 2 2 1 1 0 4.67
    HC 189 0.8666667 2 2 1 2 1 3.25
    HC 190 0.7619048 2 2 1 1 0 5.58
  • Samples were separated into the corresponding subgroups, and subsequent analysis was carried out using the 4 classification methods. Survival for each group was determined using the Kaplan-Meier estimates and the log-rank test.
  • Statistical Analysis of Clinical Correlations with the Subclasses for 114 HCCs
  • A complete table with all clinical and pathological data collected for 114 HCC patients is given in Table G. The different parameters are represented as follows:
    TABLE H
    Clinical and pathological parameters and molecular
    classification of 114 HB cases.
    Characteristics
    Etiology*
    Alcohol   40 (36%)
    HCV   26 (23%)
    HBV   23 (20%)
    Hemochromatosis   6 (5%)
    NASH   6 (5%)
    Unknown   23 (20%)
    Treatment (SR, OLT) 93/21
    Chronic viral hepatitist   46 (41%)
    Liver cirrhosis   44 (48%)
    Tumor characteristics
    Macrovascular invasion   20 (25%)
    Microvascular invasion   47 (50%)
    Mean tumor size, cm (range)  7.9 (1.5-22)
    Multifocality   46 (48%)
    Histology:
    Edmonson Tumor grade(1/2/3/4) 7/35/47/5
    OMS Tumor differentiation (W/M/P) 51/55/6
    Classification with 16-genes by discretization
    40th Percentile (C1/C2) 30/84
    50th Percentile (C1/C2) 55/59
    67th Percentile (C1/C2) 77/37
    Mean follow-up, months (range) 43.6 (0.26-146)
    Tumor recurrence   43 (40%)
    Alive/DOD 75/38

    Abbreviations:

    HCV, hepatitis C virus;

    HBV, hepatitis B virus;

    NASH, Nonalcoholic steatohepatitis;

    SR, surgical resection;

    OLT, orthotopic liver transplantation;

    W, well differentiated;

    M, moderately differentiated;

    P, poorly differentiated;

    NA, not available;

    DOD, dead of cancer.

    *12 cases have more than one etiological agent and data were not available for 2 Gases.

    Data were not available for all cases. Percentages were deduced from available data.
  • In a second step, the intrinsic parameters of the tumors correlated with patients' survival were analyzed. In this series of tumors, only tumor grade (Edmonson) and vascular invasion were significantly correlated with survival.
    TABLE I
    Summary of the clinical variables associated to overall survival
    (Kaplan-Meier curves and log-rank test). This Table does not
    take into account the molecular classification
    N. N. patients Log
    Variable patients Log rank With PH rank
    Edmonson Tumor grade 94 0.028 73 0.032
    (1-2/3-4)
    Tumor diff. OMS 111 0.406 90 0.647
    (Well/Moderate-poorly duff.)
    High proliferation: >10 45 0.054 34 0.402
    Mitosis in 10 fields 40×
    (N/Y)
    Macrovascular Invasion 79 0.001 59 0.010
    (N/Y)
    Microvascular Invasion 92 0.007 72 0.050
    (N/Y)
    Tumor size≧10 cm 113 0.298 92 0.314

    Classification by Discretization of Continuous Values
  • The clinico-pathological parameters were compared between the tumor groups using student's t test and chi-square test. Survival was analyzed by using Kaplan-Meier curves and log rank test. A special attention was given to the classification with the 67th percentile. Follow-up was closed at 146 months for overall survival (OS) and at 48 months for disease-free survival (DFS).
    TABLE J
    Association of 16-gene classification by discretization with clinical
    and pathological data (chi-square test). Abbreviations: P33, 33rd
    percentile, P50 50th percentile and P67, 67th percentile.
    p-value P67
    Variable P33 P50 P67 C1 C2 comments
    Edmonson Tumor 0.006 <0.001 <0.001 38/27 4/25 20 cases with
    grade: grade 1 missing values
    and 2 (well
    differentiated) vs.
    3 and 4
    (moderately and
    poorly diff.)
    Tumor 0.006 0.001 <0.001 45/32 6/29 2 cases with missing
    differentiation values
    OMS
    (Well/Moderate-
    versus poorly
    differentiated)
    High proliferation: 0.021 0.001 0.001 22/7   4/12
    >10 mitosis in 10
    fields 40× (N/Y)
    Macrovascular 0.097 0.033 0.008 44/8  16/12 The cases defined as
    Invasion (N/Y) possible are
    considered negative.
    Microvascular 0.071 0.001 0.009 37/26  9/21 The cases defined as
    Invasion (N/Y) possible are
    considered negative.
    Tumor size ns ns 0.015 57/20 19/18 Different cut-offs
    </≧10 cm assessed:
    2, 3, 5 and 10 cm
    Multifocality (N/Y) ns ns ns 35/30 15/16
    Macronodules of ns ns ns 24/9  12/4 
    regeneration
    Norm Liver A0F0- ns ns ns 48/17 27/7 
    A0F1
    Cirrhosis AXF4 ns ns ns 31/29 17/15
    (N/Y)
    Score METAVIR 0.053 0.044 ns 19/32  5/20
    Activity >0 (N/Y)
    Score METAVIR ns 0.20 ns 31/20 15/10
    Activity >1 (N/Y)
    Score METAVIR 0.041 ns ns  5/48  2/27
    Fibrosis >0 (N/Y)
    Score METAVIR ns ns ns 19/35  7/22
    Fibrosis >1 (N/Y)
    Score METAVIR ns ns ns 24/30  8/21
    Fibrosis >2 (N/Y)
    Score METAVIR ns ns ns 26/28 15/14
    Fibrosis >3 (N/Y)
    Chronic viral 0.047 ns ns 48/29 18/17
    hepatitis (N/Y)
    HBV (N/Y) 0.075 ns ns 62/15 27/8 
    HCV (N/Y) ns ns ns 61/16 25/10
    Alcohol (N/Y) ns ns ns 47/30 25/10
    Recurrence (N/Y) ns ns ns 41/32 24/11 HCC034 and
    HCC030 censored
    Survival (N/Y) 0.050 0.023 0.031 56/21 19/17 HCC025 and
    HCC030 censored
    DFS (N/Y) ns ns ns 35/42 15/21 HCC025 and
    HCC030 censored
  • In conclusion, these data show significant correlations between molecular classification using the 3 methods and the following parameters: Tumor grade (Edmonson), tumor differentiation (OMS), proliferation rate, vascular invasion and survival. In contrast, the classifications were not correlated with etiological factors (viral hepatitis, alcohol, etc. . . . ), with the state of the disease in adjacent, non tumoral livers or with tumor recurrence.
  • The data suggest that classification using the 67th percentile seems to be the most adequate and is strongly recommended to classify HCCs.
  • Multivariate Analysis
  • To further determine the efficiency of the molecular classification using the 67th percentile, we performed multivariate analysis with the Cox regression test on two sets of patients for which all data were available:
  • 91 patients that received either surgical resection or orthoptic liver transplantation (OLT)
  • 71 patients that received surgical resection.
  • Different variables associated to survival in the clinical settings have been included in the multivariate analysis: 1) Edmonson grade, 2) microvascular invasion and 3) Molecular classification using the 67th percentile.
    TABLE K
    Multivariate test (Cox regression).
    N
    patients variable HR 95% CI p-value
    91 Molec classsif (p67) 2.534 (1.214-5.289) 0.016
    (surgical Edmonson Tumor grade 1.690 (0.747-3.823) 0.205
    resections 1-2/3-4)
    and OLT)
    Microvascular Invasion 2.451 (1.105-5435) 0.024
    (N/Y)
    71 Molec classsif (p67) 2.646 (1.1156.278) 0.032
    (only Edmonson Tumor grade (1- 2.697 (1.103-6.592) 0.026
    surgical 213-4)
    resections)
    Microvascular Invasion 1.681 (0.648-4.359) 0.282
    (N/Y)

    Correlation of the Molecular Classifications with Survival
  • For overall survival (OS) and disease-free survival (DFS), we compared the efficiency of the 3 methods of discretization that separate the samples into 2 subclasses. Independent studies were made for patients that received surgical resection and for patients that received orthoptic liver transplantation (OLT). The ability of the 16-gene signature to discriminate between recurrent and non-recurrent tumors was also assessed.
    Table L
    Summary of survival analysis using Kaplan-Meier
    curves and log-rank test
    Analysis N. patients Classif. method Log rank
    OS 113 P33 0.037
    113 P50 0.005
    113 P67 0.002
    DFS 113 P33 0.078
    113 P50 0.019
    113 P67 0.072
    recurrence 108 p33* 0.134*
    108 p50* 0.115*
    108 P67 1.000
    Analysis of 92 cases that received surgical resection
    OS
    92 P33 0.032
    92 P50 0.009
    92 P67 0.013
    DFS 92 P40 ns
    92 P50 ns
    92 P67 ns
    recurrence 88 P33 ns
    88 P50 ns
    88 P67 ns

    Abbreviations: OS, overall survival; DFS, disease free survival

    *There is a trend but it is not significant and it is lost in the P60 analysis
  • The different analyses are illustrated in the Kaplan-Meier plots shown in FIG. 12. The discretization method of classification showed the same efficiency in the analysis of tumors obtained either from surgical resection (also called partial hepatectomy, PH) or from orthotopic liver transplantation (OLT), showing that the clinical management of the tumor had no impact on the classification.
  • In conclusion, the method described herein is able to classify HCC cases according to tumor grade and patient's survival, and represents a powerful tool at diagnosis to stratify the tumors according to the prognosis, and for further clinical management of HCC. In particular, it may be an excellent tool for the decision of orthotopic liver transplantation, since the criteria used currently are limited and often poorly informative of the outcome.
  • Protocol for Applying the Method to a New Sample
  • The following protocol is designed according to the invention:
  • 1—extract total RNA from the tumor specimen using well established technologies.
  • 2—synthesize cDNA synthesis (suggested conditions: 1 μg RNA and 300 ng of random hexamers for a 20 μl-reaction)
  • 3—amplify the selected genes said genes being in equal number of each of the groups defined as overexpressed proliferation-related genes group and downregulated differentiation-related genes group (profiled genes within the group of 2 to 16 genes) and the reference gene (invariant gene) such as for example the RHOT2 gene 1:5 cDNA dilution, using either Taqman or SybrGreen qPCR technology.
  • 4—determine the Delta Ct (DCt) value for each gene
  • 5—compare the value with the threshold of reference (for HB or for HC) in order to assign a discretized value of “1” or “2”.
  • 5—determine the average of discretized values in each group, i.e., for the selected proliferation-related genes (up to 8) separately for and the selected differentiation-related genes (up to 8) and determine the ratio of these 2 average values which is the score of the sample.
  • 6—compare the result with the reference scores corresponding to the following cut-offs:
  • C1
  • |30rd=0.6667
  • |50th=0.8125
  • |67th=0.925
  • C2
  • Example
  • For patient X having an HC tumor a Taqman qPCR is performed.
  • Step one: assignment of discretized values to each selected gene among proliferation-related genes and differentiation-related genes.
  • Example
  • The DCt of AFP is −4.0523
  • The cut-off for AFP for qPCR using Taqman technology is −1.2634010 Given that −4.0523 is lower than the cut-off, the assigned discretized value is 2.
  • Step two: Determination of the average of discretized values for the 2 sets of 8 genes:
  • AFP=2; BUB1=1; DLG7=2; DUSP9=2; E2F5=2; IGSF1=1; NLE=2; RPL10A=1;
  • Average of Proliferation-Related Genes: (2+1+2+2+2+1+2+1)/8=1.625
  • ALDH2=1; APCS=1; APOC4=1; AQP9=1; C1S=2; CYP2E1=2; GHR=1; HPD=2;
  • Average of Differentiation-Related Genes: (1+1+1+1+2+2+1+2)/8=1.375
  • Step Three: calculate the ratio proliferation/differentiation score.
  • In this example: 1.625/1.375=1.18182
  • Step 4: compare the result with the reference scores:
  • C1
  • |30rd percentile=0.6667
  • |50th percentile=0.8125
  • |67th percentile=0.925
  • C2
  • Classification based on the value of the ratio=1.18182.
  • As the value is above the 67th percentile, the assigned class is C2.
    TABLE A
    id AFP ALDH2 APCS AP0C4 AQP9 BUB1 C1S CYP2E1
    HB1 −7.684892 −4.592702 −0.660189 −2.651319 -4.194894 -1.068025 -1.394659 -3.334692
    HB100 −7.682724 −3.849128 −0.372566 0.297278 −0.305738 0.65983 −2.572264 −7.352142
    HB101 1.801478 −7.157316 −1.166513 −4.924476 −8.067838 6.222865 −5.284734 −11.757699
    HB102 −7.761115 −5.696697 −1.044129 −2.374592 −3.447046 2.724363 −3.657616 −5.769417
    HB103 2.908026 −2.580629 −2.748625 −2.55635 1.480624 3.891875 −2.819372 0.454623
    HB106 0.294848 −7.534485 −1.424535 −5.377043 −7.886612 4.855797 −6.80698 −11.496242
    HB107 0.719866 −6.546079 −9.18522 −3.425075 −6.189664 3.901806 −5.609115 −10.6711555
    HB11 1.492805 −3.560021 −5.094387 −1.031623 −8.42849 2.086834 −6.166353 −9.043371
    HB112 4.155252 −6.486961 −0.154814 −4.48155 −5.634596 3.762347 −7.88579 −8.960815
    HB114 6.2971 −3.966456 5.02266 0.604275 3.037682 4.23408 −5.29691 −0.313326
    HB118 0.318307 −4.311795 −5.146409 −3.787568 −5.428442 2.329959 −5.284827 −7.342423
    HB121 −0.971033 −6.879043 −8.355819 −4.679393 −6.361435 2.329708 −6.559457 −8.87105
    HB122 2.188721 −6.220957 −7.7399 −3.410743 −5.745306 3.309004 −6.327656 −8.906339
    HB125 2.929931 −4.053616 −4.882212 −2.32494 −3.352398 5.067815 −4.255762 −7.887455
    HB126 2.458273 −5.577951 −6.518289 −3.182407 −5.243351 5.270089 −5.814672 −8.188307
    HB129 −4.930877 −2.124281 −0.744262 1.154663 −0.846572 0.421372 −2.925458 −4.708874
    HB130 −4.86199 −1.139837 −1.398588 0.115559 −1.313951 1.669543 −2.37235 0.175598
    HB131 5.545406 −1.714367 −1.045683 2.628822 1.903853 1.972112 −2.306818 0.069456
    HB132 2.654369 −3.71955 −6.543987 −3.876868 −4.7099 4.043489 −4.801651 −7.725089
    HB136 5.005516 −3.234557 −4.827283 2.471208 −0.502385 −1.945351 −4.324749 −4.844765
    HB140 2.835457 −7.041546 −6.88604 −5.561912 −5.089682 4.140594 −6.023758 −10.477228
    HB142 5.200474 −4.919616 2.416807 2.058522 −3.396171 1.380591 −5.965126 1.196438
    HB145 3.58286 −5.186236 −5.18731 NA −5.118895 5.58416 −5.786933 −7.880334
    HB146 −1.290056 −5.422341 −5.973879 −3.869993 −5.908024 0.982626 −4.124487 −8.751883
    HB147 −9.442257 −3.655303 −0.362122 1.179633 −2.349782 −1.51351 −2.756099 0.30832
    HB148 −3.566401 −5.382548 −6.721533 −2.380348 −6.951359 1.183916 −4.188648 −7.101147
    HB150 2.356994 −5.56181 −5.496186 −4.45536 −5.603247 5.136577 −5.435261 −8.522001
    HB153 −2.086302 -4.364035 -4.049735 -1.1908 -4.342186 2.437297 -6.055092 -7.522683
    HB155 −1.951256 −5.140738 −7.17357 −0.801318 4.538929 4.038538 −5.939438 3.058475
    HB156 −6.523604 −4.658012 −5.112322 −1.499462 −1.13031 1.970226 −4.763811 −8.138508
    HB157 −8.747252 −3.193287 −0.914511 0.563787 −0.139273 0.648195 −3.089302 −2.404646
    HB160 4.40621 −0.878277 −2.381785 −1.9527 0.770799 4.516203 −2.89522 1.197611
    HB162 −1.127062 −5.142195 −6.564426 −2.432348 −5.179601 3.27157 −4.959578 −9.351464
    HB165 −1.015428 −1.578048 −1.612095 −1.677494 1.921123 −0.416058 −4.579384 −0.458984
    HB167 −7.323435 −5.692388 −6.461153 −2.470512 −4.912208 −0.369976 −4.949694 −10.583324
    HB170 −0.980072 −5.786627 −7.265156 −3.690367 −5.952908 1.548967 −6.61768 −8.574004
    HB171 2.310988 −5.687635 −7.127181 −3.794631 −5.898635 2.05689 −6.420469 −8.856566
    HB172 4.547243 −0.385469 −1.804453 −1.833478 2.11442 4.373205 −3.929151 1.277285
    HB173 1.889759 −5.184791 −4.471618 −2.235657 −5.743057 2.116789 −4.966413 −7.319851
    HB175 −2.0436 −6.05152 −8.152949 −2.996302 −3.829205 3.036838 −5.151913 −9.108766
    HB184 −6.561121 −2.895788 −5.35813 −1.653786 0.293844 −0.082754 −3.084271 −3.362889
    HB20 4.752153 −4.811256 −5.712608 −2.133951 −5.361771 5.572378 −4.283688 −8.390209
    HB28 −4.001793 −4.719296 −7.514733 −2.385516 −3.869707 0.599685 −5.187286 −9.373678
    HB3 0.027392 −4.565046 −4.462833 −2.255273 −4.14636 4.676108 −5.373064 −6.610781
    HB33 −7.497741 −3.066759 −5.881277 0.250334 0.950966 0.500246 −3.829096 −6.510795
    HB39 −8.613403 −3.166427 3.421734 1.699859 −0.944463 −0.146929 −1.480822 −0.727464
    HB48 −4.768603 −3.632136 −4.882397 −2.170561 −4.965403 1.366439 −3.944489 −9.061667
    HB49 1.818606 −5.933777 −5.948111 −4.936781 −5.434931 4.576628 −5.318794 −9.381172
    HB5 −2.282703 −6.147963 −7.059143 −4.107155 −7.593099 2.501017 −6.573836 −9.813634
    HB54 1.132255 −4.844075 −5.655802 −2.937193 −4.595442 3.040468 −4.999207 −8.199672
    HB59 1.334928 −6.792009 −7.221196 −5.590302 −6.300828 1.42553 −5.648808 −9.279234
    HB6 −1.610623 −7.099329 −7.979286 −5.729452 −5.2647225 2.920021 −5.482511 −10.151809
    HB60 −0.594337 −5.206398 −6.67766 −1.663871 −2.889326 3.97632 −5.504179 −6.743858
    HB61 −5.058775 −6.113525 −5.991888 −3.527984 −5.387419 3.269827 −6.119246 −8.943929
    HB62 −1.989342 −4.487171 −6.502588 −0.923844 −4.712471 3.449967 −4.22945 −7.087853
    HB63 −0.891056 −4.153057 −5.680458 −2.637115 −5.710062 4.49543 −2.939154 −9.095241
    HB65 3.025127 −4.346225 −5.338104 −1.175748 −1.226393 −0.613979 −5.196916 −4.645702
    HB66 -1.861761 -4.166485 -5.897819 -2.09279 -3.003258 4.774807 -4.585607 -6.839392
    HB68 −4.313608 −6.550704 −6.762513 −3.66757 −5.982654 4.060667 −5.956246 −8.393607
    HB69 −1.820363 −9.245314333 −8.965648 −7.384871667 −9.430164667 −2.026701667 −8.961309 −12.31658
    HB7 1.334084 −4.488213 −5.853708 −2.13753 −5.142938 4.894117 −4.082335 −8.118103
    HB70 2.021391 −5.678476 −7.496267 −5.781771 −4.346458 2.174971 −7.066038 −8.392057
    HB72 −11.99570467 3.978023333 −1.371737333 −2.543168667 −6.278723667 −5.504070333 −7.162789667 −8.103601333
    HB73 −10.69629133 −8.263771333 −4.869197667 −2.900671333 −5.802080667 −5.324255333 −8.090371 −9.754354333
    HB74F 3.831288 −7.73216 −4.940396 −6.3439 −6.355995 6.130615 −5.584023 −10.472842
    HB75 0.474553 −6.309769 −2.777247 −4.334006 −6.807299 4.545387 −5.115577 −10.418948
    HB77 2.915987 −5.645872 −6.698372 −2.284956 −5.392377 4.544876 −5.559466 −8.695429
    HB78 −3.945686 −2.82555 −2.986284 −1.790335 −0.938738 4.523136 −2.620165 −5.945013
    HB79 −0.781193 −5.652768 −5.454157 −3.953162 −5.051444 0.254305 −5.44242 −9.05667
    HB8 −6.696169 −3.108913 0.498461 1.361801 −3.322642 0.055848 −0.348492 −1.877119
    HB80 −8.8331005 −4.713883 −2.9124615 −2.810437 −0.838727 −0.7226515 −2.5925445 −5.408417
    HB81 −4.851198667 −10.55296467 −10.55292033 −7.621321667 −10.19195633 −2.962795333 −10.17992067 −12.72629433
    HB82 −1.942166 −5.620028 −5.739178 −3.972123 −6.520482 0.934055 −3.737063 −8.932744
    HB83 −4.169107 −9.660034667 −9.382586667 −8.05219 −10.951863 −3.521245667 −10.12345167 −9.850559667
    HB86 −6.283735 −5.287677 0.896101 −1.494853 −2.934412 −0.46896 −2.879366 −5.76077
    HB89 2.996384 −7.323446 −7.464817 −5.120874 −5.856518 4.907738 −6.676481 −9.415603
    HB9 −3.679937 −4.761778 −6.571455 −2.775269 −6.201772 2.209541 −3.895565 −8.86438
    HB90 2.024206 −8.47846 −1.33932 −6.745716 −6.677122 5.899195 −8.114672 −10.459034
    HB93 −4.610162 −5.583852 −5.277197 −1.990982 −2.698011 −1.085743 −4.488914 −3.388975
    HB94 1.79868 −5.621254 −7.718202 −6.940586 −6.67335 3.551727 −6.54809 −8.572742
    HB95 −0.444835 −5.745006 −8.404602 −5.637613 −6.396063 6.671045 −5.701559 −10.554918
    HB96 −4.775396 −6.402052 −6.123253 −4.340961 −5.066688 3.365736 −6.521753 −9.090145
    HB97 −6.841231 −6.21691 −6.275051 −3.638382 −3.617558 2.362203 −6.58495 −5.781372
    HB98 −4.911783 −2.946932 6.478933 4.211147 0.395926 2.311268 −2.827802 0.584022
    HB99 −4.551378 −1.14591 −5.549696 −1.796859 1.62906 2.600714 −2.483835 −3.848236
    HB1 4.140368 −5.212318 −0.812424 1.207583 3.840983 −0.715134 −0.812792 −8.675945
    HB100 4.399124 −5.749706 0.27698 1.907294 −0.113253 −2.800323 0.547899 −6.153046
    HB101 7.086329 −0.641871 0.737702 −3.913751 −4.340259 7.086329 0.191689 −6.757648
    HB102 7.380694 −4.303866 1.144778 0.2784 −0.284245 −2.545668 0.856607 −6.803817
    HB103 5.997143 0.880421 3.697478 1.249386 −2.713306 1.392197 −0.453035 −4.535615
    HB106 6.79755 −1.540745 0.77722 −4.155098 −5.747164 2.274385 0.291903 −6.637275
    HB107 5.239962 −1.184244 3.145996 −1.891404 −4.433271 3.119114 −0.053334 −6.319917
    HB11 3.688558 −1.412987 −0.179621 −0.149048 −1.897658 2.297186 −0.19686 −5.623341
    HB112 6.035002 −2.179125 −0.998979 −3.575994 −4.671755 −0.776138 −2.252113 −7.8479
    HB114 6.2971 2.615827 0.886564 0.002487 1.919397 2.50863 1.785623 −7.055851
    HB118 3.935101 2.405105 2.275962 −0.451819 −4.812319 2.339813 0.486307 −5.904633
    HB121 3.458157 −2.1882 1.247645 −1.155575 −5.938235 3.750147 1.867907 −5.131548
    HB122 3.562777 1.229723 2.386559 −1.961029 −5.590919 2.406687 1.976893 −5.368023
    HB125 5.700252 0.274642 2.864883 0.118717 −3.155289 2.138032 −0.470879 −3.478449
    HB126 6.32602 0.274197 3.089709 −1.334371 −5.227705 2.726599 0.54385 −4.787822
    HB129 4.474485 −3.829751 1.158283 3.025728 1.984295 −0.074354 1.326073 −5.682215
    HB130 5.297728 −2.554008 2.251163 3.317556 0.885962 0.039307 1.389742 −4.829542
    HB131 5.801168 2.269272 2.226921 1.235598 2.035452 5.621114 1.777334 −4.96776
    HB132 8.18041 0.433104 4.507503 −0.157093 −2.441422 5.855213 2.895208 −3.579579
    HB136 1.140686 0.10165 −2.336947 0.261203 0.124159 3.807218 −0.676358 −7.113232
    HB140 9.015818 −0.401264 2.325356 −3.379816 −3.148068 3.156456 0.80129 −7.308986
    HB142 6.203192 4.554631 3.03661 2.598877 4.150455 8.782461 1.428955 −6.630178
    HB145 6.734264 1.908734 2.518779 −1.358174 −5.181668 4.610406 1.707345 −4.6775
    HB146 0.991164 −0.681828 0.1227 −0.510651 −4.471483 0.777004 0.176935 −5.992209
    HB147 −1.376061 −4.733546 −2.588397 1.772494 −1.944032 −2.698708 −0.565682 −7.527854
    HB148 1.7033 −1.806502 −0.663069 −1.376372 −5.121145 −0.683001 −0.431826 −6.201895
    HB150 5.800233 0.8436 2.758596 −1.181738 −5.492037 2.891937 0.439392 −4.69542
    HB153 3.096912 −2.657862 0.449197 −0.480929 −4.261986 3.34336 1.423023 −5.963837
    HB155 4.360922 −1.23259 0.752365 −3.062474 0.657144 −1.091013 0.911424 −5.964497
    HB156 2.483547 −1.214228 0.687246 −1.107338 −3.806189 −1.181305 0.159847 −5.65452
    HB157 0.181175 −4.1451 0.297747 1.940187 −3.850885 −1.38623 0.041349 −5.820536
    HB160 6.224569 2.906158 4.403545 2.633949 −2.138569 3.355814 −0.100123 −4.568688
    HB162 4.25017 −1.453283 1.117439 −0.163468 −4.733881 1.809885 −0.022627 −4.822098
    HB165 −0.010488 1.837305 0.47467 −2.953007 −0.655058 −1.791164 −0.933062 −5.535221
    HB167 0.509668 −1.707485 0.198742 0.269552 −4.442331 −1.197651 −0.240385 −5.755341
    HB170 2.567207 1.148738 1.360144 −2.397242 −4.944439 2.424619 −0.463297 −5.539725
    HB171 2.278353 1.67404 2.062277 −1.193735 −4.984552 2.19098 0.230044 −4.81411
    HB172 6.060459 2.366999 3.689341 2.93017 −1.316921 2.571021 −0.153162 −3.812616
    HB173 2.779999 1.921427 3.05205 −0.20919 −4.475376 0.418818 0.678606 −4.361307
    HB175 4.414558 −1.623242 1.49 −0.662783 −4.684446 3.524049 1.78088 −5.173616
    HB184 1.361379 −1.542307 −0.588812 1.814793 −2.048922 −0.326393 0.097971 −4.663763
    HB20 9.423325 −0.34174 2.066057 −0.975735 −3.695854 4.361484 1.157495 −5.27136
    HB28 1.922989 −2.304861 1.222545 −0.120436 −5.154703 −0.192738 1.819854 −5.824864
    HB3 7.285685 0.65201 2.301029 −0.049158 0.117373 4.46221 1.743745 −6.911792
    HB33 1.659659 −4.338262 −0.148233 1.134133 −4.625204 −2.34198 1.272614 −5.63922
    HB39 2.485354 −4.927491 −1.241931 1.694781 −0.33289 −2.652634 −0.149609 −6.579218
    HB48 1.583391 −3.620772 −0.089081 1.342382 −2.330218 0.686163 1.169838 −6.508074
    HB49 5.652893 2.41148 3.776672 −1.220476 −5.746779 4.727596 2.190021 −4.286949
    HB5 3.674234 −2.082424 0.98073 −1.943451 −6.561791 1.592167 0.449005 −6.230808
    HB54 3.556268 3.982183 3.025795 −0.158057 −4.638333 3.623678 1.995039 −5.061096
    HB59 5.127336 0.250753 3.459226 −2.269072 −4.727738 6.045093 1.466312 −6.48303
    HB6 6.733353 −0.246309 3.812183 −2.459856 −3.728987 0.835057 2.205872 −7.208765
    HB60 5.188517 2.869544 3.228365 −0.276338 −4.031974 2.026116 2.577353 −4.502382
    HB61 5.827933 −5.51457 1.00606 −3.272672 −4.816797 −0.203871 0.753758 −6.140918
    HB62 4.328277 0.708512 1.218963 1.021692 −3.265138 0.731519 2.223877 −5.334147
    HB63 5.003075 −1.082094 0.951357 1.316553 2.000601 4.964996 1.31674 −6.741518
    HB65 2.978487 −0.087486 −1.274388 0.080222 −2.417946 1.06702 −1.371523 −6.195428
    HB66 8.039274 −0.423313 2.141981 −1.148424 −1.349111 −0.305017 1.586659 −5.393141
    HB68 7.010986 −0.530541 2.520261 0.232431 −1.779051 −0.603113 2.342104 −4.959414
    HB69 3.071106 −0.626059667 3.421015 −5.118794333 −6.824055667 11.819556 −0.603036 −2.847600667
    HB7 8.076437 −0.833011 1.354912 −0.884629 −2.106592 2.978739 2.384133 −5.458546
    HB70 4.083519 3.896364 2.616204 −3.614294 −6.063097 2.060379 1.506083 −4.669554
    HB72 −1.688566667 −8.976227 −1.809694 −1.750672 −3.40203 −6.090071333 −2.505424 −5.054027
    HB73 −2.068555667 −9.537516 −1.965151 −0.544775 −5.542041333 −7.013002667 −3.078154667 −5.580986333
    HB74F 8.986048 0.497828 4.585503 −2.916191 −3.041943 7.759608 1.654283 −6.380865
    HB75 7.231393 −2.411839 0.378995 −1.925637 −5.055106 2.61456 1.017432 −5.77539
    HB77 9.66177 −0.139299 2.727198 −1.675013 −4.079932 2.793758 2.146337 −4.964228
    HB78 5.293419 −0.185629 1.735594 0.020191 −3.984125 −2.010153 −0.114956 −3.94071
    HB79 1.90306 1.145681 1.319285 −1.978228 −5.757335 0.01942 −0.194167 −5.016158
    HB8 1.950257 −4.043236 −1.814636 2.280516 1.100353 0.314694 0.29834 −7.823095
    HB80 2.660644 −4.9166885 −0.374031 0.675995 −0.4253495 −4.2048885 −0.8782055 −7.919531
    HB81 2.155925333 −5.738363 0.932455333 −5.565798 −8.171378 −1.999123333 −2.092100667 −4.795482
    HB82 1.47049 −3.938165 −0.549544 −1.023595 −3.267403 8.008069 0.067941 −7.635394
    HB83 2.492243 −4.003930333 4.737920667 −4.561133333 −6.966227667 −0.028684333 −0.855054667 1.789090833
    HB86 3.219092 −5.894534 −0.496662 0.35847 −0.121981 −2.31061 0.046472 −8.510995
    HB89 8.255339 1.284916 3.638735 −2.665258 −5.177704 3.273649 1.279167 −5.898171
    HB9 4.940411 −1.989636 0.700504 −0.698988 −3.255601 2.609339 1.300875 −6.54224
    HB90 6.54891 1.104162 1.408459 −5.754423 −7.507485 4.45026 1.52717 −6.250036
    HB93 3.902565 −7.483471 −0.488108 0.969648 −1.415501 −1.818147 −0.829773 −7.824402
    HB94 8.669386 −1.132305 0.490788 8.498726 −6.819645 7.800646 −0.149162 −5.793072
    HB95 6.921267 −1.620869 2.726241 −2.193777 −5.454765 1.364738 0.279802 −5.172451
    HB96 6.685021 −0.591271 1.973021 −4.924202 −4.91283 1.722505 1.829525 −5.638435
    HB97 6.474525 −5.800537 1.05047 −0.911789 −4.571465 −4.308964 −0.87035 −6.60257
    HB98 6.837198 −2.065483 2.482301 1.17723 −0.98407 −0.701098 1.175939 −5.166874
    HB99 6.353711 −4.201828 1.467552 1.703655 −0.109186 −0.822266 1.226265 −3.572067
  • TABLE B
    67th percentile- percentile-
    related related previous 16 gene
    tumor score score score based clas- AFP at diagnosis
    Figure US20120040848A2-20120216-P00899
    Treatment PRETEXT
    ID (ratio) (2-classes) (3-classes) sification Gender Age months ng/mL treatment protocol stage
    HB122 0.5 1 1 C1 M 10 8000 Y H I
    HB126 0.5 1 1 C1 F 12 153840 Y S II
    HB145 0.5 1 1 C1 M 7 56000 Y S II
    HB150 0.5 1 1 C1 F 5 82000 Y S III
    HB175 0.5 1 1 C1 M 9 220000 Y S I
    HB20 0.5 1 1 C1 F 50 880 Y S II
    HB49 0.5 1 1 C1 F 15 11000 Y S II
    HB54 0.5 1 1 C1 M 10 180 N N I
    HB70 0.5 1 1 C1 F 42 812 Y S II
    HB77 0.5 1 1 C1 F 9 204000 Y S II
    HB89 0.5 1 1 C1 M 13 448 Y S I
    HB95 0.5 1 1 C1 M 28 1000000 Y H IV
    HB118 0.53333333 1 1 C1 M 17 14500 Y S NA
    HB132 0.53333333 1 1 C1 F 23 2078 Y NA III
    HB121 0.5625 1 1 C1 F 14 296000 Y S III
    HB140 0.5625 1 1 C1 M 3 22758 Y S II
    HB162 0.5625 1 1 C1 F 9 960000 Y S III
    HB171 0.5625 1 1 C1 F 17 300 Y S II
    HB173 0.5625 1 1 C1 F 27 66810 Y S I
    HB59 0.5625 1 1 C1 F 24 5643 Y S II
    HB6 0.5625 1 1 C1 M 24 320000 Y S II
    HB74F 0.5625 1 1 C1 M 96 325 N N I
    HB96 0.5625 1 1 C1 M 101 2265000 Y H IV
    HB60 0.57142857 1 1 C1 F 30 1990800 Y H II
    HB7 0.57142857 1 1 C1 M 33 45000 Y S I
    HB101 0.6 1 1 C1 M 42 67747 Y S III
    HB106 0.6 1 1 C1 F 11 320000 Y H IV
    HB90 0.6 1 1 C1 F 74 300 N N II
    HB62 0.61538462 1 2 C1 M 16 1708400 Y H IV
    HB107 0.625 1 2 C1 M 30 16000 Y H IV
    HB170 0.625 1 2 C1 M 20 123000 Y H III
    HB5 0.625 1 2 C1 M 84 300000 Y H III
    HB125 0.64285714 1 2 C1 F 15 360000 Y H IV
    HB75 0.66666667 1 2 C1 M 21 131000 Y S II
    HB9 0.66666667 1 2 C1 F 16 84000 Y NA III
    HB94 0.66666667 1 2 C1 M 29 1270 Y S I
    HB61 0.6875 1 2 C1 F 126 346000 Y NA IV
    HB69 0.6875 1 2 C1 M 25 1163 Y S I
    HB79 0.6875 1 2 C1 M 144 1200 Y S II
    HB3 0.69230769 1 2 C1 F 22 3192 Y S I
    HB66 0.69230769 1 2 C1 M 6 1000000 Y S III
    HB68 0.71428571 1 2 C1 F 11 119320 Y S III
    HB146 0.73333333 1 2 C1 F 11 NA N N NA
    HB155 0.75 1 2 C2 M 9 849500 Y S II
    HB63 0.75 1 2 C1 M 204 NA N N III
    HB11 0.76923077 1 2 C1 F 18 626100 Y H IV
    HB153 0.78571429 1 2 C1 F 27 1000000 Y H IV
    HB28 0.8125 1 2 C1 M 34 172500 Y NA II
    HB83 0.8125 1 2 C1 M 15 285 Y S II
    HB156 0.85714286 1 2 C2 F 2 468000 Y S III
    HB112 0.86666667 1 2 C1 M 36 725 Y S II
    HB82 0.86666667 1 2 C1 M 120 179000 N N II
    HB97 0.86666667 1 2 C1 F 42 700000 Y H IV
    HB81 0.875 1 2 C1 M 22 322197 Y H III
    HB103 0.9 1 2 C2 F 57 750000 Y H IV
    HB114 0.9 1 2 C2 F 21 8783 Y S II
    HB142 0.90909091 1 2 C2 F 48 605000 Y H III
    HB148 0.93333333 2 3 C1 M 17 200730 Y S II
    HB167 0.93333333 2 3 C2 M 34 1500000 Y H NA
    HB73 0.9375 2 3 C2 F 24 667786 Y H III
    HB131 1 2 3 C2 M 6 7511 Y H II
    HB65 1 2 3 C2 M 6 1740 N N III
    HB78 1 2 3 C1 M 126 376000 Y S II
    HB72 1.07142857 2 3 C2 F 16 1412000 Y S III
    HB48 1.07692308 2 3 C2 M 72 35558 Y H IV
    HB102 1.09090909 2 3 C2 M 41 1331000 N N II
    HB160 1.125 2 3 C2 M 45 342000 Y H II
    HB172 1.125 2 3 C2 M 50 64170 Y H II
    HB99 1.22222222 2 3 C2 M 72 277192 N N IV
    HB130 1.25 2 3 C2 F 19 1980000 Y H II
    HB98 1.25 2 3 C2 M 60 1285000 Y H III
    HB136 1.3 2 3 C2 M 6 31828 Y S III
    HB165 1.3 2 3 C2 M 13 18600 Y S II
    HB1 1.36363636 2 3 C2 F 43 3000 Y H IV
    HB93 1.36363636 2 3 C2 M 22 107000 Y S III
    HB129 1.375 2 3 C2 M 96 14000 N N I
    HB33 1.4 2 3 C2 M 12 765890 Y H IV
    HB100 1.44444444 2 3 C2 M 48 576000 N N III
    HB184 1.44444444 2 3 C2 M 41 912500 Y H IV
    HB157 1.55555556 2 3 C2 M 7 356000 Y H NA
    HB80 1.6 2 3 C2 M 180 37000 Y H III
    HB86 1.66666667 2 3 C2 M 0.08 74000 N N III
    HB8 1.75 2 3 C2 F 8 44610 Y NA II
    HB147 2 2 3 C2 F 9 2355000 Y S II
    HB39 2 2 3 C2 F 11 862067 Y S III
    Main Epi-
    thelial beta-
    tumor Distant Vascular Multi- Histol- com- catenin Follow-up Surgery Follow-up
    ID Metastasis invasion focality ogy ponent status (months) Outcome Type speOS (years)
    HB126 N N S Mx F mut 18 A R 0 1.5
    HB145 N N S Mx F mut 17 A R 0 1.416666667
    HB150 N N S Mx F mut 14 A R 0 1.166666667
    HB175 N N M Mx F NA 6 A R 0 0.5
    HB20 N N M Mx F mut 7 A R 0 0.583333333
    HB49 N N S Ep F mut 42 A R 0 3.5
    HB54 N N S Ep F mut 6 D R 0 0.5
    HB70 N N S Ep PF mut 49 A R 0 4.083333333
    HB77 N N S Ep PF mut 53 R R 0 4.416666667
    HB89 N N S Ep F mut 37 A R 0 3.083333333
    HB95 N N S Ep F mut 33 A R 0 2.75
    HB118 Y Y M Mx F mut 32 A LT 0 2.666666667
    HB132 N N S Mx F mut 121 A R 0 10.08333333
    HB121 N N M Mx F mut 18 A R 0 1.5
    HB140 N N S Mx F mut 22 A R 0 1.833333333
    HB162 N N S Mx F mut 13 A R 0 1.083333333
    HB171 N N S Ep F mut 9 A R 0 0.75
    HB173 N N S Ep F NA 11 A R 0 0.916666667
    HB59 N N S Ep PF mut 72 A R 0 6
    HB6 N Y S Ep F mut 48 A R 0 4
    HB74F N Y S Ep F mut 35 A R 0 2.916666667
    HB96 N Y M Ep F mut 23 R LT 0 1.916666667
    HB60 N Y S Ep F wt 63 A R 0 5.25
    HB7 N Y S Mx F mut 46 A R 0 3.833333333
    HB101 N N S Ep F mut 20 A R 0 1.666666667
    HB106 N N S Mx F mut 25 A R 0 2.083333333
    HB90 N N S Ep F mut 35 A R 0 2.916666667
    HB62 N N S Mx F mut 69 A R 0 5.75
    HB107 Y Y M Ep F mut 25 A LT 0 2.083333333
    HB170 Y Y M Ep F wt (FAP) 15 A R 0 1.25
    HB5 Y Y M Ep F mut 24 DOD R 1 2
    HB125 Y N M Mx F mut 17 A LT 0 1.416666667
    HB75 N Y S Mx F mut 41 A R 0 3.416666667
    HB9 N N S Ep PF mut 91 A R 0 7.583333333
    HB94 N N S Ep PF wt 29 A R 0 2.416666667
    HB61 Y Y M Mx F mut 5 DOD R 1 0.416666667
    HB69 N N S Ep PF wt 55 A R 0 4.583333333
    HB79 N N M Ep M mut 39 A LT 0 3.25
    HB3 N N S Ep F wt 55 A R 0 4.583333333
    HB66 N N S Ep F mut 68 A R 0 5.666666667
    HB68 N N S Mx E mut 52 A R 0 4.333333333
    HB146 N NA S NA NA NA 1 D R 0 0.083333333
    HB155 N N S Mx CF mut 8 A R 0 0.666666667
    HB63 N Y M Mx F mut 96 A R 0 8
    HB11 Y Y M Mx F mut 21 DOD R 1 1.75
    HB153 Y N M Mx CF mut 8 A LT 0 0.666666667
    HB28 N N S Ep F wt 120 A R 0 10
    HB83 N N S Ep PF mut 53 A R 0 4.416666667
    HB156 N N NA Ep F NA 6 A R 0 0.5
    HB112 N N S Ep F wt 32 A R 0 2.666666667
    HB82 N N S Ep F mut 63 A R 0 5.25
    HB97 N Y M Ep F mut 30 A R 0 2.5
    HB81 Y Y M Ep F mut 36 A R 0 3
    HB103 Y Y M Ep M mut 9 DOD M 1 0.75
    HB114 N N S Mx E mut 23 A P 0 1.916666667
    HB142 Y Y S Ep NA mut 16 A R 0 1.333333333
    HB148 N N S Mx F mut 11 A R 0 0.916666667
    HB167 Y Y M Ep F mut 2 A R 0 0.166666667
    HB73 Y Y S Ep E mut 16 DOD R 1 1.333333333
    HB131 Y N S Ep E wt 1 DOD R 1 0.083333333
    HB65 N N M Mx E wt 2 DOD R 1 0.166666667
    HB78 N Y M Ep CF wt 32 A R 0 2.666666667
    HB72 Y Y M Mx E mut 9.5 DOD R 1 0.791666667
    HB48 N Y M Ep CF mut 9 DOD R 1 0.75
    HB102 N N S Ep CF mut 4 D B 0 0.333333333
    HB160 Y Y S Mx E NA 14 R R 0 1.166666667
    HB172 Y Y M Mx F/E NA 10 A R 0 0.833333333
    HB99 Y Y M Ep E mut 7 DOD B 1 0.583333333
    HB130 Y N S Mx NA mut 62 A R 0 5.166666667
    HB98 Y Y S Ep M wt (FAP) 30 A M 0 2.5
    HB136 N N S Mx F wt 34 A R 0 2.833333333
    HB165 N N M Mx F/E mut 4 A R 0 0.333333333
    HB1 Y Y M Ep E wt (FAP) 12 DOD R 1 1
    HB93 N Y M Mx E mut 33 A LT 0 2.75
    HB129 N N S Mx E wt (FAP) 54 DOD R 1 4.5
    HB33 N Y M Ep CF wt(AX1N1) 3.5 DOD R 1 0.291666667
    HB100 N N S Ep F mut 20 A B 0 1.666666667
    HB184 Y Y M Ep E NA 14 DOD LT 1 1.166666667
    HB157 Y N M Ep CF mut 5 R LT 0 0.416666667
    HB80 Y Y S Ep CF mut 14 DOD R 1 1.166666667
    HB86 N Y S Ep E mut 57 A R 0 4.75
    HB8 N Y S Ep E mut 135 A R 0 11.25
    HB147 N N S Mx F NA 12 A R 0 1
    HB39 N Y S Mx NA mut 66 A R 0 5.5
  • TABLE C
    Gene
    Name AFP ALDH2 APCS AP0C4 AQP9 BUB1 C1S CYP2E1 DLG7
    HC161 2.079447 −5.920384 −6.086912 −7.366206 −7.320175 4.176845 −6.502865 9.12672475 5.322878
    HC162 4.056751 −3.64102 −4.586098 −5.663246 −4.233021 3.559124 −4.64283 −4.136919 5.950173
    HC163 3.323238 −6.086663 −6.399079 −4.052853 −6.010302 4.772507 −6.776158 −8.515956 5.551408
    HC164 3.075226 −6.146711 −7.241796 −3.371322 −5.446966 3.634476 −7.462807 −5.829384 3.98399
    HC165 2.685177 −7.0470725 −6.294538 −7.242275 −6.94561 4.029514 −5.926596 −3.033642 5.723743
    HC168 1.501031 −6.016314 −6.696324 −5.130347 −5.64774 3.305894 −6.883263 −4.411302 4.362859
    HC169 2.880925 −6.024682 −6.87168 −4.19185 −6.058572 4.09117 −6.767215 −8.63753 4.614352
    HC170 2.3753035 −6.6226955 −8.3702955 −5.4072375 −5.6954625 5.5639145 −8.0538815 −9.7948605 6.6275145
    HC171 3.001804 −2.573977 −4.213123 −4.040859 −4.992701 3.583809 −5.226561 1.25382 3.874142
    HC172 1.164528 −5.314302 −6.094852 −4.127298 −3.890072 3.991173 −6.240002 2.279678 5.651484
    HC173 4.694127 −6.373823 −5.51865 −6.056863 −6.314031 4.30288 −4.863168 −8.649852 5.564261
    HC176 4.066485 −5.552505 −5.444218 −5.551191 −5.815727 6.073568 −5.850428 −9.402043 6.051409
    HC177 2.692613 −5.43842 −3.091896 −4.656336 −5.907612 3.452047 −6.412596 −10.50172 4.083836
    HC178 −0.554213 −5.646708 −7.296414 −4.588115 −5.579087 3.125179 −6.556397 −6.591304 4.755443
    HC179 1.910595 −4.139932 −8.136252 −6.036987 −2.847761 3.895205 −4.943672 −5.283326 5.054346
    HC180 3.212685 −5.831134 −7.519348 −5.962761 −6.611712 1.5179 −6.130592 −9.203789 2.22658
    HC181 6.030393 −4.04397 −2.03808 −0.956533 −2.850753 5.430957 −4.712002 −2.555649 5.031845
    HC182 3.376941 −7.072651 −7.74873 −5.2003 −5.445893 6.665657 −7.899793 −10.089271 7.487442
    HC183 3.149578 −4.684626 −7.045155 −3.800078 −7.042931 2.40337 −6.412624 −9.657513 3.396236
    HC184 −0.093476 5.985909 −7.203484 5.482853 −6.208594 1.558788 −6.347367 −9.658434 2.407985
    HC185 1.405595 −4.748444 −5.89589 −3.780913 −2.802368 4.37289 −5.800822 −5.410746 4.6459
    HC186 1.666457 −5.52819 −7.953401 −3.287374 −3.805233 1.040678 −7.309734 −6.699831 2.197157
    HC187 3.652111 −4.151991 −7.459358 −6.247812 −5.346647 4.211928 −6.33068 −8.629261 4.520672
    HC188 0.355562 −5.261937 −7.83848 −4.759525 −4.839348 5.111208 −7.787661 −4.575966 5.635841
    HC189 1.239891 −4.501697 −8.737075 −6.152778 −6.402122 5.0291015 −6.951675 −5.450079 4.419359
    HC190 3.306642 −4.365515 −7.399538 −4.721411 −6.178224 3.016906 −4.970499 −5.850237 9.264351
    Gene
    Name DUSP9 E2F5 GHR HPD IGSF1 NLE RPL10A
    HC161 3.702615 1.025512 −0.817005 −7.653863 14.149408 5.1985405 −5.81852
    HC162 1.738977 1.432598 −0.231753 −6.700146 14.781699 1.231146 −5.9665735
    HC163 4.00436 1.072797 −2.746621 −6.213082 8.2477055 2.203781 −5.49725
    HC164 4.25604 2.567639 −3.606813 −6.079645 12.649441 1.946926 −5.171041
    HC165 1.788757 1.157215 −1.197022 −7.969042 14.270796 2.620134 −6.219366
    HC168 5.625335 2.2963 −1.169362 −7.52548 8.041574 2.337152 −5.42627
    HC169 3.838008 1.60884 −2.921191 −6.51064 8.136143 2.099644 −5.731897
    HC170 1.8626715 1.6955475 −3.9034625 −7.4271305 7.756398 2.6917235 −5.8132855
    HC171 5.349357 2.074272 −1.437519 −5.297939 6.325863 3.057537 −3.95361
    HC172 5.592005 1.291773 −0.040049 −6.989866 6.998259 3.186024 −3.946432
    HC173 4.718896 1.367846 −2.3934 −7.781412 9.1259525 1.82226 −4.957916
    HC176 2.248373 2.709599 −3.2392 −7.594156 7.5288985 1.817325 −5.042318
    HC177 −0.297108 2.149313 −2.166834 −7.847734 5.8240705 1.530536 −5.640103
    HC178 4.943904 1.038474 −1.620902 −5.659262 5.416822 1.855914 −4.954215
    HC179 1.464274 1.372578 −0.386778 −6.31274 7.244471 1.887378 −5.218281
    HC180 0.161194 −0.215954 −0.371454 −6.978048 5.185486 1.004282 −6.187635
    HC181 4.322323 2.990459 2.18165 −0.651095 4.292234 4.670446 −2.978533
    HC182 2.395117 2.329727 −4.420263 −7.357922 7.932783 2.869667 −5.574881
    HC183 3.7002215 −0.85541 0.078707 −7.143723 11.999761 0.63414 −6.105039
    HC184 2.266351 6.244093 0.670045 −6.27671 6.935964 1.564672 −6.568913
    HC185 1.811225 2.225761 −1.246884 −7.344763 10.1413645 1.39443 −5.015711
    HC186 −2.717975 1.183123 −2.657936 −7.680597 8.921477 1.289946 −6.631908
    HC187 −0.066629 −2.0378 1.078709 −8.251018 7.478678 1.655093 −5.763416
    HC188 1.839584 0.638515 −1.989428 −6.736329 12.8628775 2.27923 −4.743699
    HC189 6.509026 −0.7698 −2.238756 −8.600128 11.305903 −0.437812 −7.061492
    HC190 0.70722 4.181534 −0.773062 −4.881306 2.422048 −5.53509
  • TABLE D
    Table of normalized qPCR data (deltaCt values) of 88 HCCs analyzed by the Taqman method
    Gene
    name AFP ALDH2 AP0C4 APCS AQP9 BUB1 C1S CYP2E1
    HC 001 2.212911 −6.2372335 −0.614689 −7.0721355 −6.047695 3.841505 −8.163492 −10.3093235
    HC 003 3.865709 −6.230074 −0.95786 −7.52919 −6.7334475 0.147459 −8.7963405 −10.428074
    HC 004 7.6758115 −2.186358 1.608247 −5.845683 −3.759528 4.221132 −5.8997645 −7.1147515
    HC 006 7.9469815 −5.4231035 −0.9614255 −7.3704745 −7.006052 0.5252045 −8.162856 −10.1334265
    HC 007 −5.311541 −4.0446765 3.550537 −5.1967915 −6.747103 0.299039 −4.062593 −11.024027
    HC 008 −2.0890815 −3.9297005 0.6776965 −6.567126 −3.1082155 1.214781 −7.2991535 −7.791007S
    HC 009 7.0483095 −3.0017225 9.6721075 0.017488 −3.7536735 −2.980029 −4.830331 −0.5825245
    HC 010 −2.3869635 −0.95212 0 1.0272875 −1.3400495 1.864677 −2.639902 −3.604805
    HC 011 −0.6488335 −5.958108 −1.076151 −7.7638255 −6.122144 2.362454 −8.319293 −9.575619
    HC 012 6.538312 −4.6271565 1.221393 −6.942673 −4.1878425 3.293346 −6.850023 −7.284587
    HC 014 2.987769 −5.194577 −1.3542145 −6.5396565 −6.8623455 1.363697 −6.8939375 −10.7465595
    HC 015 −6.14089 −4.5178635 5.156026 −3.380102 −2.373344 −0.8830545 −7.1343975 −4.9390935
    HC 017 −7.1950405 −2.6522585 2.395651 −4.5167035 −2.8711295 −1.0884485 −6.035123 −6.037085
    HC 018 6.856588 −1.840894 3.84764 −4.916924 −3.6093495 0.063545 −4.263272 −5.811062
    HC 020 0.65281 −6.287083 −3.2094885 −8.2117635 −7.354605 1.4635025 −8.471663 −10.2536915
    HC 021 4.3070475 −2.175112 6.2591235 −5.9159775 −1.1452535 −0.0802935 −5.7190985 −1.2878015
    HC 022 4.418018 −5.331214 −0.5455545 −6.6835035 −5.7992305 2.173361 −7.2514145 −8.0876755
    HC23 5.538438 −5.853486 −0.5708905 −6.9009145 −6.651868 2.5475915 −8.2212235 −9.047509
    HC 025 3.90298 −6.162477 −1.834891 −8.798759 −8.758959 2.5679685 −8.5606875 −10.814935
    HC 026 5.69175 −5.0135775 −0.2581675 −7.2072275 −3.8645965 −0.545363 −7.2351705 −0.671071
    HC 027 0.626755 −5.6309605 −1.53158 −7.2809855 −5.4736555 0.8889165 −8.172076 −8.6350095
    HC 028 0 −1.913778 6.0251725 −1.0475505 −0.9613895 5.7426525 −4.910584 −3.6858305
    HC 030 −6.4370325 −3.8476295 −0.2797975 −7.1142435 −5.0250435 0.190936 −7.5279395 −7.5682115
    HC 032 −0.0037145 −6.802666 −2.574347 −7.500133 −7.530391 5.1317805 −7.854502 −9.4408715
    HC 034 6.6945705 −5.11617 −0.5860455 −7.134934 −6.9427395 1.2674215 −7.719763 −8.545814
    HC 037 1.3519745 −5.808058 0.0768065 −6.755895 −6.3416265 2.4955985 −6.921051 −10.1686795
    HC 038 −4.053435 −4.596143 0.129322 −5.045701 −6.0302545 −0.321483 −6.101331 −8.1123675
    HC 041 2.7156435 −6.3503265 −2.281983 −5.612517 −7.8444565 0.587016 −6.88808 −9.5090495
    HC 042 5.216493 −4.4086495 0.627239 −4.1054755 −6.063786 2.224818 −6.3060565 −9.1411555
    HC 043 1.7983435 −5.457548 0.7055185 −7.607914 −4.7175855 2.8634735 −7.9862115 −8.760714
    HC 052 −10.3337105 −2.1920375 8.124407 −5.9818015 0.4848805 1.2986035 −5.6337865 −1.7693015
    HC 058 −1.891958 −2.1172735 11.8524 4.1106695 2.817265 −1.9395175 −3.691331 4.3317445
    HC 060 −7.624821 −3.6860195 0.545509 −8.100997 −6.8503395 0.576028 −8.167253 −9.1875325
    HC 064 −5.0266755 −4.992107 −0.7860345 −7.4148835 −7.0526325 1.367463 −7.1364365 −9.682147
    HC 066 −3.156328 −3.8408415 0.6773785 −8.2106815 −6.2767975 1.1272665 −8.026875 −8.601088
    HC101 6.873135 −4.339036 0.5787185 −6.288568 −4.6233735 −0.081457 −7.321092 −5.806032
    HC102 4.119697 −2.476355 5.453696 2.3952165 −0.0196725 0.5553155 −5.939374 2.8566735
    HC103 −1.6193685 −3.889904 0.54698 −6.014572 −7.151639 2.086008 −5.965432 −8.266311
    HC104 −5.5094265 −4.936239 0.5059805 −5.624234 −0.501258 1.311194 −6.716137 −9.0888685
    HC105 −2.3444245 −4.239726 3.577778 −7.703333 −4.2748785 −0.945674 −7.774455 −5.698899
    HC106 3.42054 −6.1642895 0.7836775 −7.8462545 −5.85931 4.8909655 −8.060072 −9.9949555
    HC107 4.136209 −6.7443095 −4.4534435 −9.2080655 −8.8878655 1.7415115 −9.2061165 −9.3234825
    HC108 4.500336 −3.6076385 2.478085 −7.275462 −4.4353395 0.3807995 −7.1031155 −3.889942
    HC109 4.833024 −5.8617665 −0.729565 −6.222909 −6.4504115 2.2918285 −7.406001 −8.7101925
    HC110 3.5240185 −3.6707715 0.256479 −5.043319 −4.5999895 1.449943 −6.9163195 −7.145766
    HC111 1.883473 −3.8304065 1.130067 −5.976754 −4.1657805 −0.621548 −6.278164 −4.46942
    HC112 2.8803905 −4.8726745 0.7777655 −6.764675 −5.2735435 −0.3135015 −7.455794 −2.5741475
    HC113 −1.208649 −4.407016 2.366969 −5.197177 −2.681192 3.4825665 −6.338901 −6.443846
    HC114 5.4433695 −4.7113965 0.833543 −6.723142 −4.445291 1.7431855 −7.866014 −7.3429245
    HC119 −1.0580855 −6.159706 −1.894453 −9.375177 −7.6266135 0.797564 −9.1461175 −7.095824
    HC120 4.0065425 −4.257398 3.5241745 −5.6838965 −6.8239115 0.0740105 −8.5708615 −7.6044515
    HC121 4.254961 −4.556431 2.167313 −6.2688205 −4.38702 2.4486685 −8.118416 −7.765037
    HC122 2.3763095 −6.2844515 −1.279577 −6.9942545 −6.8198535 6.0183915 −7.7653135 −9.450349
    HC123 −0.821555 −4.220769 0.68167 −5.778659 −6.410177 1.190323 −5.383781 −8.528543
    HC124 −3.9525335 −4.027289 0.0499065 −5.391271 −4.463488 1.592563 −5.151686 −9.520436
    HC125 4.806564 −4.5451465 −2.6326775 −6.5321595 −8.370224 −1.1627945 −8.4244055 −9.426232
    HC126 5.899437 −5.02839 −0.407895 −5.2838365 −3.6163545 2.6943025 −7.1365955 −5.226091
    HC127 0.0390765 −2.41699 −0.8680995 −4.846116 −1.8613935 2.048769 −6.3641695 −6.1813065
    HC128 −5.8636305 −5.085525 0.626498 −5.087517 −4.3184915 1.3297375 −6.828468 −7.4344035
    HC129 3.430757 −4.6298475 1.863955 −4.8448705 −2.870839 2.3688215 −7.302922 −2.692798
    HC131 1.491189 −5.425994 −2.4702 −8.6617295 −7.4772145 0.727709 −7.525072 −8.98645
    HC132 −5.4265205 −3.105643 6.9974515 3.2748865 −3.9244375 −0.2895395 −4.390082 −7.0455735
    HC133 5.1621395 −4.2462915 −0.63156 −7.145861 −6.05182 4.9277675 −7.3188145 −8.1908895
    HC134 −2.8738695 −4.061101 0.1134065 −7.5103485 −5.550642 −1.7425995 −8.4609335 −7.859701
    HC135 0.909107 −2.7442165 0.7630605 −0.959726 −4.0595615 1.2018365 −4.667223 −4.30592
    HC136 0.4105125 −6.0408575 −0.7390785 −7.150737 −5.996196 4.288554 −8.243333 −9.042865
    HC137 −4.378388 −3.2913795 3.209294 −4.421328 −0.5225755 4.2185175 −5.647363 −5.532515
    HC138 2.4762965 −4.8248625 1.154563 −4.883388 −3.440722 3.408251 −6.459976 −7.2458685
    HC139 2.7547595 −2.9782295 3.0252085 −5.3858735 −5.0157665 0.9503045 −6.0281485 −1.1920485
    HC140 6.3489955 −4.644452 −1.006979 −2.1507335 −5.3387635 4.075603 −6.7373815 6.646618
    HC141 2.4010865 −4.8883675 0.787009 −4.7365085 −4.1224775 4.2728925 −6.8664705 −2.6765195
    HC142 4.5984525 −3.7946485 2.8271835 −4.9243665 −3.1411815 4.0713025 −6.3482925 2.654871
    HC143 −4.0727165 −2.59764 1.855993 −4.8795135 −2.222047 1.6908025 −4.948264 −3.1057735
    HC144 4.7344185 −4.3542505 −1.002913 −0.432856 −5.16696 2.510931 −5.3365195 −4.456082
    HC145 8.5175565 −3.375805 0.8672075 −5.0765195 −4.091142 3.9700095 −6.960951 0.8009
    HC146 5.741507 −3.5738745 1.2439275 −5.1950135 −3.4305425 2.9843625 −5.666896 −0.913546
    HC147 6.0474775 −3.0470955 0.2246755 −5.6213855 −5.257189 2.7534355 −5.349428 −6.933909
    HC148 −1.306432 −4.0108565 0.267747 −6.3544915 −3.1846315 1.1995135 −6.2066555 −4.1428355
    HC149 −3.9190605 −3.3456535 2.735403 −1.9099995 −1.1810265 2.704253 −5.707004 −5.9300895
    HC150 6.1556695 −2.9923905 −1.9485835 −5.821769 −6.3127705 2.452404 −4.984573 −7.3184395
    HC151 5.5488065 −4.234966 1.372415 −5.8812085 −4.0297925 3.4239945 −7.2861515 −2.304461
    HC152 4.917902 −3.97386 −4.005999 −6.5072455 −7.124415 2.5576145 −5.752235 −9.98327
    HC153 5.6708455 −5.004032 −3.204075 −3.8195495 −6.2020215 1.9670395 −5.979251 −7.7421455
    HC154 6.699114 −2.0392575 9.6136985 0.885791 −0.68511 1.755108 −0.7395055 2.544628
    HC155 6.238831 −3.802053 2.0022335 −6.3105565 −2.974712 4.2276825 −7.058571 −4.1514335
    HC156 −1.582839 −3.5688085 0.917505 −3.9333845 −4.163765 1.0763025 −4.6064345 −8.4802835
    HC157 3.657864 −4.2315665 2.513598 −7.2096625 −4.573216 −0.284071 −5.856564 −7.9837885
    HC159 3.4650565 −2.6801805 2.2596385 −4.0834345 −4.42904 3.44645 −5.923485 −7.778452
    Gene
    name AFP ALDH2 AP0C4 APCS AQP9 BUB1 C1S CYP2E1
    HC 001 5.30317 11.616567 −0.05328 −2.655512 −9.449416 6.46034 1.159417 −6.6225235
    HC 003 2.057513 8.8462855 1.909804 −2.069524 −8.549803 7.249974 1.5801355 −6.0562915
    HC 004 4.4226465 9.4268185 1.7432195 2.0012965 −9.415253 0 3.1459935 −4.4121905
    HC 006 1.6282005 10.22051 −0.024339 −1.887805 −8.5958965 7.1580385 −0.6940375 −6.8637555
    HC 007 1.169221 6.6521625 0.2833465 1.7428205 −6.183977 3.192514 0.3919565 −7.1381125
    HC 008 2.80866 9.6946695 0.0193165 −2.342442 −5.329776 2.806768 1.579419 −6.2574845
    HC 009 −1.3733475 9.5262655 −0.711082 2.3242195 0.011478 4.026769 0.80375 −6.3016635
    HC 010 0 0 1.344368 0.4900285 −2.932809 0 0 −9.1966395
    HC 011 2.8432205 0 0.736822 −4.757848 −9.029214 7.6390015 1.9328755 −7.379063
    HC 012 4.7199665 0 2.4002515 −2.2402875 −9.656029 7.466951 1.64183 −5.178571
    HC 014 3.3543285 7.7629895 1.5332515 −1.09511 −9.5837645 8.5836025 1.47219 −5.831244
    HC 015 0.1414205 4.4342765 −1.399564 −0.2426 −4.473096 −0.0722075 0.321593 −6.8777395
    HC 017 −0.666284 3.163581 −1.206766 2.353691 −0.6808655 6.0490105 0.386649 −7.068098
    HC 018 1.512286 8.7756845 2.426129 2.9035 −5.7101575 2.4248235 1.3815525 −5.9464565
    HC 020 2.1165725 9.6208445 1.1944835 −4.5756335 −10.6864405 0 1.118745 −7.542193
    HC 021 0.322455 7.8162765 0.0686475 −0.71981 −4.0108195 2.954814 1.618369 −6.309556
    HC 022 3.3904095 10.82729 10.7133385 −2.416651 −9.8859985 5.6986975 1.9449755 −7.194012
    HC23 3.848364 0 1.4330655 −3.7226655 −9.583194 7.200325 1.823275 −5.9526365
    HC 025 3.34202 7.1111525 −0.049846 −1.9012935 −9.1845675 0 1.770127 −7.4507165
    HC 026 0.9710395 8.5287915 1.1845665 −1.964045 −7.6403735 5.4960635 1.851733 −5.9670715
    HC 027 2.3158215 10.241011 0.4045835 −2.623084 −9.597772 5.588995 1.851285 −7.6623025
    HC 028 0 0 4.334386 1.9788575 −3.3142495 0 2.4559905 −5.521873
    HC 030 0.189092 9.0027 −1.0623035 −2.635437 −7.537 2.651022 1.2674865 −7.5046195
    HC 032 5.7080765 9.73163 0.054818 −2.0027475 −9.0015185 0 1.208576 −8.8437815
    HC 034 2.339621 9.9728495 1.4281575 −1.563203 −8.3685675 10.112616 1.934745 −6.594006
    HC 037 2.6534895 0 1.2212655 −2.9415775 −10.367265 7.5570255 1.9881245 −6.901637
    HC 038 1.4386515 5.2298755 0.037887 −0.2025015 −7.547286 0.680358 2.1250395 −5.1574215
    HC 041 1.840185 8.727439 −0.466649 −1.428749 −8.0015745 7.243446 0.15624 −7.7043325
    HC 042 3.2531575 0 0.3673235 1.2545195 −8.2669835 2.899766 0.9401045 −5.577659
    HC 043 4.2390495 10.525647 0.894345 −3.2916395 −8.997825 5.5544715 1.8422595 −5.480403
    HC 052 2.599359 3.8059605 −0.4419525 1.843696 −2.481945 −2.254168 1.9474305 −5.6154705
    HC 058 −0.1957495 3.656912 −0.804087 3.7242975 −1.8257985 −1.3471695 1.209522 −6.0601515
    HC 060 2.2644225 6.618755 0.432422 1.4079225 −8.4643875 0.7884805 1.9133155 −5.7041285
    HC 064 2.386875 7.3184655 0.2876185 −0.349645 −8.6027575 3.3382005 1.817699 −6.4617635
    HC 066 2.7680135 11.5673955 0.968982 1.2501855 −8.5231325 9.185554 1.962008 −5.415169
    HC101 1.3084655 8.828389 1.871516 −0.1466275 −5.7252795 4.1394545 1.4546305 −6.144011
    HC102 2.1385165 8.6628475 −0.830934 −0.947389 −0.568809 2.708733 1.1534675 −5.283399
    HC103 2.957914 12.521336 1.8003215 −0.636723 −6.717282 9.802921 2.594702 −4.423835
    HC104 1.821739 5.396553 2.305498 −1.6860905 −8.46781 −0.1438735 1.610158 −6.21159
    HC105 0.814912 5.4214725 −2.0730715 −0.682142 −2.288109 1.422332 0.471391 −6.315756
    HC106 6.2678815 11.174152 2.208171 −5.342392 −9.4440475 7.401009 1.968983 −5.769397
    HC107 1.357756 6.6136855 −2.78876 −2.935929 −10.460972 0 0.000835 −8.6686655
    HC105 2.2445545 8.0946735 −0.0923905 −1.6363755 −2.9674235 7.967992 0.932052 −5.818028
    HC109 3.222524 10.4709205 1.9924345 −2.9233285 −7.8859205 10.0122565 2.6102395 −5.541229
    HC110 2.333076 11.616244 2.512512 −1.0803015 −8.1908235 8.1469415 2.3529485 −5.245476
    HC111 0.769283 9.137462 −1.045678 −1.1576425 −7.245347 1.86965 1.012752 −5.568205
    HC112 0.9196845 10.105965 −0.0373705 −2.5391085 −7.714358 3.4428695 1.119237 −6.1905075
    HC113 4.5602875 7.8299455 2.82243 −2.16232 −6.685692 2.045068 2.156348 −5.8884625
    HC114 3.1500875 11.804112 0.0450475 −2.5053965 −6.835254 5.1813245 1.3170345 −5.795905
    HC119 1.712686 9.106547 0.0248045 −3.7649595 −9.220498 5.39017 0.400823 −7.954231
    HC120 1.9563135 5.8119685 −1.229768 −3.196589 −8.5127155 9.404196 1.1096815 −6.4517175
    HC121 2.852561 9.706684 0.910943 −2.2774645 −7.480725 5.980435 1.758163 −6.4042545
    HC122 7.228946 9.9054825 3.5033365 −2.400201 −8.7301975 8.6480295 2.2430545 −5.199782
    HC123 2.929576 11.584458 0.646839 1.810364 −4.7774665 5.1400615 1.5951645 −4.7323885
    HC124 2.03781 8.81055 −0.574165 −2.2369305 −7.832169 1.4450915 0.1499775 −6.691521
    HC125 −0.3286545 9.3740615 0.028878 −0.697866 −5.7813 10.2234745 0.405397 −7.1196575
    HC128 3.944339 8.7174575 3.271927 −1.824385 −1.865621 7.659377 2.033278 −5.389272
    HC127 2.96212 8.672372 2.162602 −0.129431 −3.4481965 3.1503205 2.205965 −4.3385115
    HC128 2.6299155 8.499355 4.393094 −1.9716885 −5.7052855 2.72995 1.949352 −6.6181545
    HC129 3.6405185 7.0627455 0.470421 −2.332961 −5.502918 5.692623 1.683808 −4.8697295
    HC131 1.461713 8.415907 −0.154573 −4.009655 −8.960383 7.5832005 1.5313675 −6.775249
    HC132 1.5572645 3.3843145 −1.9018925 −1.7710325 −2.3653865 1.947055 −0.2035885 −6.7796075
    HC133 5.5447335 8.022457 2.6341825 −2.2298335 −6.1281315 0 1.4173895 −5.762015
    HC134 −0.8148735 4.96739 −3.1030595 −1.3138565 −7.231144 0.3848995 −0.794433 −7.7140665
    HC135 2.250305 5.794605 −0.986165 0.6955465 −6.7262275 4.394354 0.9780515 −6.689595
    HC136 5.5267715 10.9307725 2.4040865 −4.013948 −8.223611 7.4962365 2.426321 −5.5069335
    HC137 5.2105355 4.767228 5.62451 −1.6355645 −5.8875425 1.0556075 3.7311615 −5.2271275
    HC 138 5.028429 5.576937 4.1601375 −1.738341 −6.019837 7.169314 4.19882 −4.2322595
    HC 139 2.940447 4.3133685 0.685194 1.632571 −4.6240035 3.333358 1.7913325 −6.6866335
    HC 140 5.1767035 10.874029 2.488357 −3.1717235 −7.5439415 9.276635 5.0732625 −4.266519
    HC 141 6.1148255 7.979559 2.66802 −1.687093 −7.2596615 #DIV/0! 3.5973445 −4.952551
    HC 142 5.8031125 8.2104255 2.0983905 −1.5934495 −5.8074755 9.442329 3.4164995 4.6520795
    HC 143 3.470906 3.981805 1.474377 0.695168 −2.049901 3.754627 3.058019 −4.7443975
    HC 144 3.844786 10.7187705 3.540563 −1.6857605 −6.869217 11.9441575 4.417722 −4.817306
    HC 145 5.482263 9.313039 2.112409 −1.525041 −6.669204 10.0458615 3.0082705 −5.7677005
    HC 148 5.1824885 7.611916 2.8802325 −1.791636 −6.9831945 5.450716 3.884913 −4.427413
    HC 147 4.5366875 9.358894 3.2373475 −2.0156545 −6.053345 8.7065355 3.732017 −4.317148
    HC 148 2.490156 5.4985645 8.523611 −0.773246 −3.7206575 5.663583 3.295068 −6.0532135
    HC 149 3.4454215 6.8563245 2.4724295 −0.9357605 −7.337568 −0.063395 4.267075 −5.7767065
    HC 150 3.585447 7.980274 3.118546 0.5916635 −5.762837 9.1651835 2.811495 −5.7495535
    HC 151 4.613043 8.9062765 2.2090065 −2.8000785 −7.251033 9.44137 3.5959505 −4.6972005
    HC 152 4.17552 10.736246 4.56538 −1.578246 −8.106859 12.118351 2.6658355 −6.944767
    HC 153 3.133394 7.298329 3.85894 −0.616143 −7.947464 11.674272 2.670245 −5.0796695
    HC 154 3.2541115 3.139705 −0.3936805 −1.070278 −4.611328 1.5925535 2.2396475 −6.2090535
    HC 155 5.7341595 6.4585135 2.4375015 −0.254649 −7.297162 10.0981895 3.3878795 −5.37231
    HC 156 2.1302465 4.4056075 1.070339 0.42868 −6.890963 2.0124875 2.225275 −7.037827
    HC 157 1.3778545 2.0950385 −0.56173 −0.8411435 −8.474893 7.2842685 1.6720135 −6.6310375
    HC 159 5.727853 8.8523415 2.7886015 −1.0442865 −7.268645 8.8204775 2.861685 −5.4777465
  • TABLE G
    Date of follow- Date of 1st secondary date of tumor
    HC 000 tumor surgery or (PH) or Date of Date of up recur- recurrence or OLT after secondary grade
    identification transplantation (OLT) last visit death (years) rence metastasis hepatectomy OLT Edmondson
    HC 001 12/12/1996 PH 07/01/1997 0.07 N 3
    HC 003 21/02/1997 PH 20/06/2000 3.33 Y  4/11/1998 N 2
    HC 004 28/02/1997 PH 20/08/2008 11.48 N 2
    HC 006 07/10/1996 PH 06/01/1998 1.25 N 28/11/1997 N 2
    HC 007 02/07/1996 PH 31/12/1997 1.50 Y  4/11/1997 N 2-3
    HC 008 05/06/1996 PH 24/01/2005 8.48 N 3
    HC 009 28/08/1996 PH 05/09/1996 0.02 N 3-4
    HC 010 10/10/1996 PH 20/09/1997 0.95 N 4
    HC 011 10/10/1996 OLT 14/12/2008 12.20 N 2
    HC 012 24/10/1995 OLT 14/11/1995 0.05 N 2
    HC 014 10/06/1995 OLT 27/07/1995 1.00 N 3-4
    HC 015 21/07/1995 PH 10/10/1996 1.22 Y 10/10/1996 N 3
    HC 017 05/05/1997 PH 16/04/2008 10.96 N 2
    HC 018 07/05/1997 PH 28/09/1997 0.39 NA 3
    HC 020 13/05/1993 OLT 20/10/2008 15.40 N 2
    HC 021 15/01/1992 PH 28/09/1992 0.70 Y 15/06/1992 N NA
    HC 022 15/03/1997 OLT 02/09/2008 11.50 N 2
    HC 023 20/07/1995 PH 20/06/2007 11.93 N 2
    HC 025 05/10/1992 PH 13/08/2008 15.87 N 2
    HC 026 04/06/1993 OLT 18/04/1994 0.83 NA 2
    HC 027 20/01/1993 OLT 15/02/1993 0.10 N 2
    HC 028 16/02/1996 OLT 13/03/1996 0.10 N 3
    HC 030 10/04/1996 PH 07/09/2008 12.40 Y 15/10/1996 Y 17/12/1993 3
    HC 032 17/02/1993 PH 17/10/1993 0.66 N 2
    HC 034 10/03/1993 PH 05/11/2008 15.70 Y 15/11/1995 Y 20/06/1996 2
    HC 037 08/06/1997 OLT 13/08/1997 0.20 N 3
    HC 038 16/07/1997 PH 28/08/1998 1.12 Y  1/01/1998 N NA
    HC 041 24/11/1997 PH 01/05/2005 7.44 Y 29/06/1999 Y  9/3/2000 2
    2nd
    recurrence
    15/1/2005
    HC 042 05/11/1997 PH 03/06/2008 10.58 N 3
    HC 043 19/11/1997 OLT 22/10/2008 10.90 N 3
    HC 052 17/02/1999 PH 18/05/1999 PDV 0.25 N 3
    HC 058 14/10/1999 PH 30/01/2008 8.30 N 2
    HC 060 15/05/1925 PH NA NA
    HC 064 10/04/2000 PH 09/07/2005 5.25 Y 15/10/2001 N 3
    HC 066 15/09/1999 PH 18/08/2008 8.93 N 2-3
    HC 101 03/05/2006 0LT 27/10/2008 2.50 N 2-3
    HC 102 12/07/2006 PH 18/08/2006 0.10 N 4
    HC 103 16/08/2006 PH 11/06/2008 1.82 Y 15/1/2007  N 2-3
    HC 104 20/09/2006 PH 05/11/2008 2.10 N 2-3
    HC 105 11/12/2006 PH 04/07/2007 0.56 Y 15/04/2007 N 3
    HC 106 22/01/2007 OLT 16/01/2009 2.00 Y 3
    HC 107 25/01/2007 PH 23/10/2008 1.75 N 2
    HC 108 12/02/2007 PH 24/09/2008 1.62 N 3
    HC 109 19/02/2007 OLT 26/05/2008 1.30 N 2-3
    HC 110  6/02/2007 OLT 04/02/2009 1.95 N 2-3
    HC 111 07/03/2007 OLT 03/10/2007 0.70 N 2-3
    HC 112 19/03/2007 PH 08/09/2008 1.48 N 2-3
    HC 113 23/03/2007 OLT 15/03/2008 1.00 N 2-3
    HC 114 03/04/2007 PH 11/09/2007 0.44 N 2
    HC 115 01/08/2007 PH 29/04/2008 0.75 N 1
    HC 116 09/08/2008 PH 18/04/2008 0.69 N 3
    HC 117 25/10/2007 OLT 23/12/2008 1.20 N 2-3
    HC 118 25/10/2007 PH 28/09/2008 0.93 N 1
    HC 119 03/12/2007 OLT 08/01/2009 1.20 N 2-3
    HC 120 18/12/2007 PH 14/10/2008 0.82 N Y 12/05/2008 2-3
    HC 121 02/01/2008 PH 08/08/2008 0.60 N 3
    HC 122 16/01/2008 PH 17/10/2008 0.75 Y 10/10/2008 N 2
    HC 123 11/02/2008 OLT 01/12/2008 0.80 N 3
    HC 124 20/02/2008 PH 26/08/2008 0.52 N 3
    HC 125 22/02/2008 OLT 08/01/2009 0.90 N 3
    HC 126 12/03/2008 PH 14/08/2008 0.42 Y 6/8/2008 N 1-2
    HC 127 19/03/2008 PH 20/06/2008 0.25 Y 4/6/2008 N 2-3
    HC 128 20/03/2008 PH 29/08/2008 0.44 N 2
    HC 129 01/04/2008 0LT 31/05/2008 0.15 N 3
    HC 130 07/04/2008 PH 27/05/2008 0.14 N 3
    HC 131 10/04/2008 PH 15/07/2008 0.26 N 2-3
    HC 137 19/07/2002 PH 31/03/2008 . 5.67 N . NA
    HC 138 25/04/2003 PH 03/12/2008 . 5.58 Y 03/10/2003 NA
    HC 139 15/05/2002 PH 09/05/2008 . 6.00 N . NA
    HC 140 03/06/2004 PH  5/08/2008 . 4.17 Y 30/06/2005 NA
    HC 141 06/02/2004 PH 12/03/2009 . 5.08 Y Dec. 2005 NA
    HC 142 14/05/2002 PH 21/06/2006 21/06/2006 4.08 Y 24/03/2006 NA
    HC 143 04/03/2002 PH 26/01/2007 . 2.83 Y 2005 NA
    HC 144 27/06/2002 PH 17/06/2008 . 6.00 Y 16/03/2004 NA
    HC 145 14/11/2002 PH 30/07/2008 . 5.58 Y 09/06/2005 NA
    HC 146 30/07/2004 PH 11/12/2008 . 4.33 Y June 2005 NA
    HC 147 23/11/2004 PH 22/09/2008 . 3.83 Y 12/06/2008 NA
    HC 148 12/09/2003 PH 15/10/2006 . 3.08 N NA
    HC 149 26/08/2003 PH 16/01/2007 16/01/2007 3.42 N NA
    HC 150 31/01/2003 PH 23/06/2008 . 5.42 N NA
    HC 151 10/12/2004 PH 15/03/2007 . 2.25 N NA
    HC 152 14/05/2003 PH 17/01/2007 17/01/2007 3.67 Y mars-09 NA
    HC 153 25/02/2003 PH 24/12/2007 24/12/2007 4.83 Y 06/05/2005 NA
    HC 154 06/09/2004 PH 23/11/2006 2.21 Y 01/01/2005 N 2-3
    HC 155 18/10/2004 PH 09/12/2008 4.10 Y 18/10/2004 Y 31/05/2005 2
    HC 156 03/02/2005 PH 28/05/2007 2.31 Y 15/06/2006 3
    HC 157 24/02/2003 PH 26/10/2006 3.59 Y 15/08/2004 2
    HC 159 16/10/2002 PH 18/03/2005 2.42 Y 03/05/2004 2
    HC 161 20/08/2003 PH 06/02/2008 4.47 Y 2
    HC 162 30/10/2003 PH 25/04/2007 3.49 N 3
    HC 163 20/09/2004 PH 07/12/2006 2.21 Y 01/09/2006 N 3
    HC 164 05/09/2002 PH 21/03/2007 4.54 N 1
    HC 165 08/08/2003 PH 29/05/2008 4.72 N 2
    HC 168 10/02/2003 PH 04/02/2009 6.00 Y 15/07/2004 Y 18/02/2008 2
    HC 169 10/06/2002 PH 22/03/2005 22/03/2005 2.78 Y 15/03/2003 N 2
    HC 170 14/03/2002 PH 28/06/2007 5.29 N 1
    HC 171 25/03/2004 PH 17/10/2008 4.57 Y 15/11/2004 N 4
    HC 172 10/01/2005 PH 25/11/2008 3.90 Y 25/11/2005 N 3
    HC 173 18/12/2003 PH 03/03/2008 4.21 N 1
    HC 176 13/03/2002 PH 05/10/2006 4.57 N 2
    HC 177 29/10/2003 PH mars-09 5.42 Y 01/2009 2
    HC 178 19/03/2003 PH 19/09/2005 2.50 N 2
    HC 179 27/10/2000 PH 06/12/2005 5.17 Y 10/2002 2-3
    HC 180 9/4/2002 PH 03/11/2005 03/11/2005 3.58 Y 05/2005 3
    HC 181 27/05/2002 PH mars-09 6.83 Y 04/2008 2
    HC 182 30/03/2004 PH October 3.50 N 1
    2007
    HC 183 21/07/2003 PH 02/09/2007 02/09/2007 4.08 Y July 2007 3
    HC 184 18/01/2002 PH 08/02/2004 08/02/2004 2.08 Y April 2002 2
    HC 185 19/11/2002 PH 03/03/2005 2.25 N 3
    HC 186 31/08/2004 PH 06/11/2006 06/11/2006 2.17 N 3
    HC 187 7/06/2001 PH févr-09 7.67 Y March 2003 1
    HC 188 29/07/2004 PH avr-09 4.67 Y July 2004 2
    HC 189 30/04/2002 PH 13/08/2005 13/08/2005 3.25 Y January 2
    2005
    HC 190 29/07/2003 PH mars-09 5.58 N 3
    number
    max of Macro-
    mitosis Ndules Nrmal Score Score
    Tumor vascular vascular per 10 of liver Cir- META- META-
    HC 000 tumor differenti- tumor invasion invasion fields × multiple regen- A0F0 or rhosis VIR VIR
    identification ation (OMS) size (mm) macro micro 40 Ndules eration A0F1 AXF4 Activity Fibrosis
    HC 001 moderately 120 N N NA N N Y NA 4
    differentiated
    HC 003 well 60 N N NA N N Y NA 4
    differentiated
    HC 004 well 100 N N NA N Y N 0 1
    differentiated
    HC 006 well 90 N Y NA N Y N 0 1
    differentiated
    HC 007 well 100 Y Y NA Y N N 2 3
    differentiated
    HC 008 moderately 30 N N NA N N Y N 4
    differentiated
    HC 009 Moderately 100 Y Y NA Y N N 1 3
    poorly
    HC 010 moderately- 75 N N NA N N Y NA 4
    poorly
    HC 011 well 15 N N NA Y N Y NA 4
    differentiated
    HC 012 well 60 N N NA Y N Y NA 4
    differentiated
    HC 014 Moderate 80 Y Y NA Y N Y NA 4
    poor
    HC 015 moderately 60 Y Y NA Y N N 3 3
    differentiated
    HC 017 well 100 N N NA N N N NA 3
    differentiated
    HC 018 moderately 140 Y Y NA N N Y 2 4
    differentiated
    HC 020 well 40 NA NA NA Y N Y NA 4
    differentiated
    HC 021 NA 100 NA NA NA Y N Y NA 4
    HC 022 well 45 N N NA Y N Y NA 4
    differentiated
    HC 023 well 50 N N NA N Y N NA 0
    differentiated
    HC 025 well 140 N N NA N Y N 0 0
    differentiated
    HC 026 well 30 Y Y NA Y N Y NA 4
    differentiated
    HC 027 well 15 N N NA Y Y N Y NA 4
    differentiated
    HC 028 moderately 120 N Y NA Y Y N 0 0
    differentiated
    HC 030 moderately 16 NA NA NA N N Y NA 4
    differentiated
    HC 032 well 60 N NA NA Y N Y NA 4
    differentiated
    HC 034 well 140 N N NA Y Y N NA 0
    differentiated
    HC 037 moderately 35 Y Y NA Y Y N Y NA 4
    differentiated
    HC 038 moderately 50 N N NA Y N Y NA 4
    differentiated
    HC 041 well 30 N N NA N N Y NA 4
    differentiated
    HC 042 moderately 130 prob- Y NA N N N 2 1
    differentiated able
    HC 043 moderately 15 N N NA Y N Y N 4
    differentiated
    HC 052 moderately 110 N Y NA Y N Y N 4
    differentiated
    HC 058 moderately 100 N N NA N N N 2 3
    differentiated
    HC 060 well 55 N N NA
    differentiated
    HC 064 moderately 40 N N NA N N N 2 2
    differentiated
    HC 066 well 75 N N NA Y N Y NA 4
    moderately
    HC 101 well 35 Y Y 18 Y Y N Y 2 4
    moderately
    HC 102 Peu 200 Y Y 7 N N N N 1 1
    différencié
    HC 103 well 55 N Y 8 N Y N Y 3 4
    moderately
    HC 104 well 160 prob- Y 10 Y N Y N 0 1
    moderately able
    HC 105 moderately 40 Y Y 20 Y Y N Y 2 4
    differentiated
    HC 106 moderately 80 Y Y 32 Y N N Y 1 4
    differentiated
    HC 107 well 60 N N 1 N N Y N 0 0-1
    differentiated
    HC 108 moderately 26 N Y 18 N N N N 1 1
    differentiated
    HC 109 well 30 N N <1 Y Y N Y 2 4
    moderately
    HC 110 well 30 N Y 1á5 Y Y N Y 1 4
    moderately
    HC 111 well 40 Y Y 45 Y Y N Y 1 4
    moderately
    HC 112 well 18 N N 0 N N N N 2 2
    moderately
    HC 113 well 50 Y Y 25 Y Y N Y 1 4
    moderately
    HC 114 well 36 N N <1 N N N N 2 3
    differentiated
    HC 115 well 90 N N 0 N N N N 2 1
    differentiated
    HC 116 moderately 140 N N 12 N N N N 2 3
    differentiated
    HC 117 well 28 N N 4 Y Y N Y 2 4
    moderately
    HC 118 well 40 N N <1 N N Y N 0 1
    differentiated
    HC 119 well 26 N Y 15 Y Y N Y 2 4
    moderately
    HC 120 well 20 N Y 3 Y N N Y 1 4
    moderately
    HC 121 moderately 150 prob- Y 8á30 Y Y N Y 2 4
    differentiated able
    HC 122 well 20 Y Y 8 Y ? N Y 1 4
    differentiated
    HC 123 moderately 43 prob- prob- 4 Y N N Y 2 4
    differentiated able able
    HC 124 moderately 62 N N 4 N N N N 1 1
    differentiated
    HC 125 moderately 33 N Y 2 Y N N Y 2 4
    differentiated
    HC 126 well 130 Y Y 2 Y N Y N 0 1
    differentiated
    HC 127 well 115 Y Y >100 N N N N 1 1
    moderately
    HC 128 well 110 N Y 5 N N N N 2 2
    moderately
    HC 129 moderately 30 N Y 40 Y N N N 2 3
    differentiated
    HC 130 moderately 38 N prob- 12 N N N N 1 2
    differentiated able
    HC 131 well 120 N Y 20á25 N N Y N 0 1
    moderately
    HC 137 moderately 10 NA NA NA Y . . .
    differentiated
    HC 138 well 5.5 NA NA NA Y N . .
    differentiated
    HC 139 moderately 16 NA NA NA Y . . .
    differentiated
    HC 140 well 15 NA NA NA N N 0 1
    differentiated
    HC 141 well 3.5 NA NA NA N N . .
    differentiated
    HC 142 well 8 NA NA NA Y . . .
    differentiated
    HC 143 well 3 NA NA NA N Y 1 4
    differentiated
    HC 144 well 15 NA NA NA Y . . .
    differentiated
    HC 145 well 6 NA NA NA N . 0 3
    differentiated
    HC 146 well 7.5 NA NA NA N N . 2
    differentiated
    HC 147 moderately 15 NA NA NA N N 0 3
    differentiated
    HC 148 moderately 21 NA NA NA Y N . .
    differentiated
    HC 149 NA 8 NA NA NA N N 0 0
    HC 150 moderately 13 NA NA NA N . 0 3
    differentiated
    HC 151 well 6.5 NA NA NA N Y 2 4
    differentiated
    HC 152 well 3.5 NA NA NA N N 0 2
    differentiated
    HC 153 well 5 NA NA NA N . 0 3
    differentiated
    HC 154 well 45 Y Y 25 N N Y N 0 1
    differentiated
    HC 155 well 24 N N 1 N N N Y 2 4
    differentiated
    HC 156 moderately 70 N Y 16 Y N N Y 2 4
    differentiated
    HC 157 well 140 Y Y 2 N N Y N 0 1
    differentiated
    HC 159 well 35 N N NA N N N Y 2 4
    differentiated
    HC 161 well 210 N Y 2 N N N N 1 1
    differentiated
    HC 162 moderately 130 Y Y 77 N N Y N 0 0
    differentiated
    HC 163 moderately 80 N Y 4 N N N Y 1 4
    differentiated
    HC 164 well 90 N N 1 N N Y N 0 1
    differentiated
    HC 165 well 30 N Y 4 N N N N 0 2
    differentiated
    HC 168 well 25 N N 1 Y Y N Y 2 4
    differentiated
    HC 169 well 35 N N NA N N N Y 2 4
    differentiated
    HC 170 well 220 N N 0 N N Y N 0 0
    differentiated
    HC 171 Peu 70 Y Y 10 Y N N N 1 2
    différencié
    HC 172 moderately 40 N Y 28 N N N N 2 3
    differentiated
    HC 173 well 40 N N 0 N N Y N 0 0
    differentiated
    HC 176 well 75 N N NA N N Y N 0 0
    differentiated
    HC 177 moderately 2.3 NA N NA Y A1 F4
    differentiated
    HC 178 well 6.5 NA N NA Y A1 F4
    differentiated
    HC 179 well-moder- 9 NA Y NA Y A2 F1
    ate-poor
    HC
    180 moderately 15 NA Y NA Y A2 F2
    differentiated
    HC 181 well 3.5 NA Y NA Y A1 F4
    moderately
    HC 182 well 11 NA N NA N F1
    differentiated
    HC 183 well 8 NA Y NA N A1 F3
    differentiated
    HC 184 well 6.5 NA N NA N F1
    differentiated
    HC 185 moderately 3.5 NA N NA N A1 F4
    differentiated
    HC 186 well 17 NA Y NA N F0
    moderately
    HC 187 well 8 NA Y NA N F4
    differentiated
    HC 188 well 13 NA N NA N F0
    differentiated
    HC 189 well 22 NA Y NA Y F1
    differentiated
    HC 190 moderately 15 NA N NA Y A1 F3
    differentiated
    chronic
    HC 000 tumor viral Etiology Etiology
    identification hepatitis HBV HCV alcool Hemochromatos —NASH
    HC 001 N N N Y N N
    HC 003 Y N Y N N N
    HC 004 N N N N N N
    HC 006 N N N Y Y N
    HC 007 N N N Y N N
    HC 008 Y N Y N N N
    HC 009 N N N Y N N
    HC 010 Y Y N N N N
    HC 011 Y Y Y N N N
    HC 012 Y Y N N N N
    HC 014 Y N Y Y N N
    HC 015 N N N Y N N
    HC 017 Y Y N N N N
    HC 018 N N N Y N N
    HC 020 N N N Y N N
    HC 021 N N N Y N N
    HC 022 N N N Y N N
    HC 023 N N N N N N
    HC 025 N N N N N N
    HC 026 Y Y N N N N
    HC 027 Y N Y N N N
    HC 028 N N N N N N
    HC 030 N N N Y N N
    HC 032 Y N Y N N N
    HC 034 N N N N N N
    HC 037 N N N Y N N
    HC 038 Y N Y N N N
    HC 041 Y N Y N N N
    HC 042 Y Y N N N N
    HC 043 Y N Y N N N
    HC 052 Y Y N N N N
    HC 058 Y N Y N N N
    HC 060
    HC 064 Y N Y N N N
    HC 066 Y Y N Y N N
    HC 101 Y Y Y Y N N
    HC 102 Y Y Y N N N
    HC 103 Y Y N N N N
    HC 104 N N N N N N
    HC 105 Y N Y N N N
    HC 106 Y Y N N N N
    HC 107 N N N Y N N
    HC 108 Y N Y N N N
    HC 109 N N N Y N Y
    HC 110 Y N Y Y N N
    HC 111 N N N Y N N
    HC 112 N N N N N Y
    HC 113 Y N Y N N N
    HC 114 N N N Y N N
    HC 115 N N N N N Y
    HC 116 Y Y N N N N
    HC 117 Y N Y N N N
    HC 118 N N N N N N
    HC 119 Y N Y Y N N
    HC 120 Y Y N N N N
    HC 121 N N N Y N Y
    HC 122 Y Y N N N N
    HC 123 Y N Y N N N
    HC 124 N N N N N Y
    HC 125 N N N Y N N
    HC 126 N N N N N N
    HC 127 Y Y N N N N
    HC 128 N N N Y N N
    HC 129 Y N Y N N N
    HC 130 Y Y N N N N
    HC 131 N N N N N N
    HC 137 N N N Y N N
    HC 138 N N N N N N
    HC 139 N N N N N N
    HC 140 N N N N N N
    HC 141 N N N N N N
    HC 142 N N N Y N N
    HC 143 N N N N Y N
    HC 144 N N N N N N
    HC 145 N N N Y N N
    HC 146 Y Y N Y N N
    HC 147 N N N N Y N
    HC 148 N N N N N N
    HC 149 N N N N N N
    HC 150 N N N Y N N
    HC 151 N N N N N Y
    HC 152 N N N N Y N
    HC 153 Y Y N Y N N
    HC 154 N N N N N N
    HC 155 N N N Y N N
    HC 156 Y N Y N N N
    HC 157 N N N N N N
    HC 159 N N N Y N N
    HC 161 N N N N N N
    HC 162 N N N N N N
    HC 163 N N N Y N N
    HC 164 N N N N N N
    HC 165 N N N N Y N
    HC 168 Y N Y N N N
    HC 169 N N N Y N N
    HC 170 N N N N N N
    HC 171 N N N Y N N
    HC 172 N N N N Y N
    HC 173 N N N N N N
    HC 176 N N N N N N
    HC 177 Y Y N N N N
    HC 178 N N N Y N N
    HC 179 Y N Y N N N
    HC 180 Y Y N N N N
    HC 181 N N N Y N N
    HC 182 Y N Y N N N
    HC 183 Y Y N N N N
    HC 184 N N N Y N N
    HC 185 Y N Y N N N
    HC 186 NA NA NA NA NA NA
    HC 187 N N N Y N N
    HC 188 N N N Y N N
    HC 189 N N N Y N N
    HC 190 Y Y N N N N
  • REFERENCES
    • Assou, S., Le Carrour, T., Tondeur, S., Strom, S., Gabelle, A., Marty, S., Nadal, L., Pantesco, V., Reme, T., Hugnot, J. P., et al. (2007). A meta-analysis of human embryonic stem cells transcriptome integrated into a web-based expression atlas. Stem Cells 25, 961-973.
    • Boyault, S., Rickman, D. S., de Reynies, A., Balabaud, C., Rebouissou, S., Jeannot, E., Herault, A., Saric, J., Belghiti, J., Franco, D., et al. (2007). Transcriptome classification of HCC is related to gene alterations and to new therapeutic targets. Hepatology 45, 42-52.
    • Finegold, M. J., Lopez-Terrada, D. H., Bowen, J., Washington, M. K., and Qualman, S. J. (2007). Protocol for the examination of specimens from pediatric patients with hepatoblastoma. Arch Pathol Lab Med 131, 520-529.
    • Fodde, R., and Brabletz, T. (2007). Wnt/beta-catenin signaling in cancer sternness and malignant behavior. Curr Opin Cell Biol 19, 150-158.
    • Glinsky, G. V., Berezovska, O., and Glinskii, A. B. (2005). Microarray analysis identifies a death-from-cancer signature predicting therapy failure in patients with multiple types of cancer. J Clin Invest 115, 1503-1521.
    • Hirschman, B. A., Pollock, B. H., and Tomlinson, G. E. (2005). The spectrum of APC mutations in children with hepatoblastoma from familial adenomatous polyposis kindreds. J Pediatr 147, 263-266.
    • Irizarry, R. A., Hobbs, B., Collin, F., Beazer-Barclay, Y. D., Antonellis, K. J., Scherf, U., and Speed, T. P. (2003). Exploration, normalization, and summaries of high density oligonucleotide array probe level data. Biostatistics 4, 249-264.
    • Lee, J. S., Heo, J., Libbrecht, L., Chu, I. S., Kaposi-Novak, P., Calvisi, D. F., Mikaelyan, A., Roberts, L. R., Demetris, A. J., Sun, Z., et al., (2006). A novel prognostic subtype of human hepatocellular carcinoma derived from hepatic progenitor cells. Nat Med 12, 410-416.
    • McLin, V. A., Rankin, S. A., and Zorn, A. M. (2007). Repression of Wnt/β-catenin signaling in the anterior endoderm is essential for liver and pancreas development. Development 134, 2207-2217.
    • Perilongo, G., Shafford, E., and Plaschkes, J. (2000). SIOPEL trials using preoperative chemotherapy in hepatoblastoma. Lancet Oncol 1, 94-100.
    • Rowland, J. M. (2002). Hepatoblastoma: assessment of criteria for histologic classification. Med Pediatr Oncol 39, 478-483.
    • Schnater, J. M., Kohler, S. E., Lamers, W. H., von Schweinitz, D., and Aronson, D. C. (2003). Where do we stand with hepatoblastoma? A review. Cancer 98, 668-678.
    • Taniguchi, K., Roberts, L. R., Aderca, I. N., Dong, X., Qian, C., Murphy, L. M., Nagorney, D. M., Burgart, L. J., Roche, P. C., Smith, D. I., et al. (2002). Mutational spectrum of beta-catenin, AXIN1, and AXIN2 in hepatocellular carcinomas and hepatoblastomas. Oncogene 21, 4863-4871.
    • Wei, Y., Fabre, M., Branchereau, S., Gauthier, F., Perilongo, G., and Buendia, M. A. (2000). Activation of beta-catenin in epithelial and mesenchymal hepatoblastomas. Oncogene 19, 498-504.
    • Lustgarten, J. L. et al (2008)—Improving classification performance with discretization on biomedical datasets. AMIA 2008 Symposium Proceedings,

Claims (28)

1. Method to determine the gene expression profile on a biological sample, comprising:
a. assaying the expression of a set of genes in a sample previously obtained from a patient diagnosed for a liver tumor, wherein said set comprises from 2 to 16 genes or consists of 2 to 16 genes, said 2 to 16 genes being chosen in the group consisting in the alpha-fetoprotein (AFP), aldehyde dehydrogenase 2 (ALDH2), amyloid P component serum (APCS), apolipoprotein C-IV (APOC4), aquaporin 9 (AQP9), budding uninhibited by benzimidazoles 1 (BUB1), complement componant 1 (C1S), cytochrome p450 2E1 (CYP2E1), discs large homolog 7 (DLG7), dual specificity phosphatase 9 (DUSP9), E2F5 transcription factor (E2F5), growth hormone receptor (GHR), 4-hydroxyphenylpyruvase dioxygenase (DHP), immunoglogulin superfamily member 1 (IGSF1), Notchless homolog 1 (NLE1) and the ribosomal protein L10a (RPL10A) genes; and
b. determining the gene expression profile of said sample.
2. Method according to claim 1, which further comprises determining the grade of the liver tumor providing the sample, for example by comparing the obtained gene expression profile of said sample to the gene expression profile of a reference sample or to the gene expression profiles of a collection of reference samples or by applying a discretization method for classification.
3. Method according to claim 1 or 2, wherein the assay of the expression of said set of genes comprises a step of detecting nucleotide targets, wherein each nucleotide target is a product resulting from the expression of one of the genes in said set.
4. Method according to claim 2, wherein said nucleotide targets are mRNA.
5. Method according to any one of claims 1 to 4, wherein the assay of the expression of said set of genes comprises an amplification step, such as performed by qualitative polymerase chain reaction prior to a step of detecting the mRNA of each gene of said set.
6. Method according to any one of claims 1 to 5, wherein the assay of the expression of said set of genes comprises a hybridization step, such as one performed by hybridization on a solid or liquid support, especially on an array, prior to a step of detecting the mRNA of each gene of said set.
7. Method according to any one of claims 2 to 5, wherein said detected nucleotide targets are quantified with respect to at least one nucleotide target, expression product of an invariant gene, such as ACTG1, EFF1A1, PNN and RHOT2 genes.
8. Method according to any one of claims 1 to 7, wherein said liver tumor is a hepatoblastoma (HB) or a hepatocellular carcinoma (HCC).
9. Method according to any one of claims 2 to 8, wherein said method comprises, before step a., the preparation of said nucleotide targets from the sample.
10. Method according to any one of claims 1 to 9, wherein said set of genes comprises or consists in a set chosen in the group consisting of:
(a) E2F5 and HPD genes;
(b) APCS, BUB1, E2F5, GHR and HPD genes;
(c) ALDH2, APCS, APOC4, BUB1, C1S, CYP2E1, E2F5, GHR and HPD genes;
(d) ALDH2, APCS, APOC4, AQP9, BUB1, C1S, DUSP9, E2F5 and RPL10A genes;
(e) ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, E2F5, GHR, IGSF1 and RPL10A genes; and
(f) AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
11. Method enabling the determination of the tumor grade on a patient's biological sample, which comprises a classification of the tumor through discretization according the following steps:
In a method according to any of claims 1 to 10, measuring the expression and especially the relative (normalized) expression of each gene in a set of genes defined as the signature of the tumor, for example by quantitative PCR thereby obtaining data as Ct or preferably Delta Ct in said biological sample wherein said set of genes is divided in two groups, a first group consisting of the proliferation-related genes and a second group consisting of the differentiation-related genes,
comparing the values measured for each gene, to a cut-off value determined for each gene of the set of genes, and assigning a discretized value to each of said measured expression values with respect to said cut-off value, said discretized value being advantageously a “1” or a “2” and optionally a “1.5” value with respect to the cut-off value,
determining the average of the discretized values for the genes, in each group of the set of genes,
determining a score calculated as a ratio the average for the discretized values for the proliferating-related genes on the average for the discretized values for the differentiation-related genes,
comparing the obtained score for the biological sample with one or more sample cut-off(s) value(s), wherein each cut-off value corresponds to a selected percentile,
determining the tumor grade as C1 or C2, as a result of the classification of the biological sample with respect to said sample cut-off.
12. Method according to claim 11, wherein the relative expression determined for the profiled gene is obtained by normalizing with respect to the invariant RHOT2 gene.
13. Method according to claim 11, wherein the determination of the tumor grade on a biological sample comprises applying the following conditions:
a) for a hepatoblastoma:
the set of assayed genes for profiling is constituted of the 16 genes disclosed;
the invariant gene (of reference) is RHOT2;
the cut-offs value for each gene are:
AFP: 3.96139596; ALDH2: 4.3590482; APCS: 4.4691582; APOC4: 2.03068712; AQP9: 3.38391456; BUB1: −1.41294708; C1S: 4.24839464; CYP2E1: 6.70659644; DLG7: −3.3912188; DUSP9: 2.07022648; E2F5: −0.72728656; GHR: −0.1505569200; HPD: 2.27655628; IGSF1: 0.1075015200; NLE: −0.02343571999; RPL10A: 6.19723876.
the cut-off value for the sample is 0.91 and a sample with a score above 0.91 is classified into the C2 class and a sample with a score below 0.91 is classified into the C1 class.
b) for a hepatocellular carcinoma:
the set of assayed genes for profiling is constituted of the 16 genes disclosed;
the invariant gene (of reference) is RHOT2;
the cut-offs value for each gene is:
Gene name Cut-off for Taqman Cut-off for SybrGreen AEP −1.2634010 −2.3753035 ALDH2 4.014143 5.314302 APCS 5.6142907 6.399079 APOC4 −0.7963158 4.656336 AQP9 4.2836011 5.446966 BUB1 −1.2736579 −3.634476 C1S 6.3514679 6.240002 CYP2E1 6.9562419 5.829384 DLG7 −2.335694 −4.614352 DUSP9 −7.979559 −1.8626715 E2F5 −0.4400218 −1.367846 GHR 1.0832632 1.169362 HPD 6.480328 6.736329 IGSF1 −4.8417785 7.6653982 NLE −1.6167268 −1.82226 RPL10A 6.2483056 5.731897
the cut-off value for the sample corresponding to the 67th percentile is 0.925 and the cut-off value corresponding to the 33th percentile is 0.66 and a sample with a score above 0.925 is classified into the C2 class and a sample with a score below 0.66 is classified into the C1 class.
14. Method according to claim 13 wherein in the case of a hepatocellular carcinoma, a sample with a score (initial score) between 0.66 and 0.925 is refined to obtain a modified score, the modified score being either “1” or “2” depending on the calculated average of the discretized values for the proliferation-related genes only, said average being discretized at a determined percentile (the 60th for example) and “1” is assigned if the sample has an average below the value at the percentile of reference and “2” is assigned if the sample has an average above the value at the percentile of reference.
15. Kit, suitable to carry out the method as defined in any one of claims 1 to 13, comprising
a. a plurality of pairs of primers specific for a set of genes to be assayed, said set comprising 2 to 16 genes or consisting of 2 to 16 genes, said 2 to 16 genes being chosen in the group consisting of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes; and
b. optionally reagents necessary for the amplification of the nucleotide targets of these genes by said primers, and optionally reagents for detecting the amplification products.
16. Kit according to claim 14, wherein each primer is 10 to 30 bp in length and has at least 80% similarity with its complementary sequence in the nucleotide target, preferably 100%.
17. Kit according to claim 14 or 15, wherein said pairs of primers are chosen in the group consisting of:
Forward primer gene (5′-3′) Reverse primer (5′-3′) AFP AACTATTGGCCTGTGGCGAG TCATCCACCACCAAGCTGC ALDH2 GTTTGGAGCCCAGTCACCCT GGGAGGAAGCTTGCATGATTC APCS GGCCAGGAATATGAACAAGCC CTTCTCCAGCGGTGTGATCA APOC4 GGAGCTGCTGGAGACAGTGG TTTGGATTCGAGGAACCAGG AQP9 GCTTCCTCCCTGGGACTGA CAACCAAAGGGCCCACTACA BUB1 ACCCCTGAAAAAGTGATGCCT TCATCCTGTTCCAAAAATCCG C1S TTGTTTGGTTCTGTCATCCGC TGGAACACATTTCGGCAGC CYP2E1 CAACCAAGAATTTCCTGATC AAGAAACAACTCCATGCGAGC CAG DLG7 GCAGGAAGAATGTGCTGAAA TCCAAGTCTTTGAGAAGGGCC CA DUSP9 CGGAGGCCATTGAGTTCATT ACCAGGTCATAGGCATCGTTG E2F5 CCATTCAGGCACCTTCTGGT ACGGGCTTAGATGAACTCGACT GHR CTTGGCACTGGCAGGATCA AGGTGAACGGCACTTGGTG HPD ATCTTCACCAAACCGGTGCA CCATGTTGGTGAGGTTACCCC IGSF1 CACTCACACTGAAAAACGCCC GGGTGGAGCAATTGAAAGTCA NLE1 ATGTGAAGGCCCAGAAGCTG GAGAACTTCGGGCCGTCTC RPL10A TATCCCCCACATGGACATCG TGCCTTATTTAAACCTGGGCC
and,
a modified group of primers with respect to the above, wherein one or more primer(s) is modified, provided said primer(s) has at least 80% similarity with its non-modified version above.
18. A set of probes, suitable to carry out the method as defined in any one of claims 1 to 13, comprising a plurality of probes specific for a set of genes to assay, said set comprising or having from 2 to 16 genes, said 2 to 16 genes being chosen in the group consisting of AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
19. A set of probes according to claim 17, wherein said probes are 50 to 200 bp in length and have at least 80% similarity to the complementary sequence of the nucleotide target of the gene, preferably 100%.
20. A solid support, especially an array comprising a set of probes as defined in claims 17 or 18 linked to a support.
21. A composition comprising a set of probes as defined in claim 17 or 18, in solution.
22. A kit comprising a set of probes as defined in claim 17 or 18, a solid support as defined in claim 19 or a composition as defined in claim 20, and optionally reagents necessary for the hybridization of said nucleotide targets to said probes.
23. Set of probes, solid support, arrays, compositions or kits according to any one of claims 14 to 21, suitable for assaying a set of genes which comprises or consists in a set chosen in the group consisting of:
(a) E2F5 and HPD genes;
(b) APCS, BUB1, E2F5, GHR and HPD genes;
(c) ALDH2, APCS, APOC4, BUB1, C1S, CYP2E1, E2F5, GHR and HPD genes;
(d) ALDH2, APCS, APOC4, AQP9, BUB1, CIS, DUSP9, E2F5 and RPL10A genes;
(e) ALDH2, APCS, APOC4, AQP9, C1S, CYP2E1, E2F5, GHR, IGSF1 and RPL10A genes; and
(f) AFP, ALDH2, APCS, APOC4, AQP9, BUB1, C1S, CYP2E1, DLG7, DUSP9, E2F5, GHR, HPD, IGSF1, NLE1 and RPL10A genes.
24. Set of probes, solid support, arrays, compositions or kits according to any one of claims 14 to 23, wherein the invariant gene is the RHOT2 gene or the PNN gene.
25. Use of a set of probes, solid support, arrays, compositions or kits according to any one of claims 14 to 24, to determine the grade of a liver tumor in a sample obtained from a patient.
26. Use according to claim 25 or method of claim 11, wherein for a hepatoblastoma or for a hepatocellular carcinoma the cut-off value of the profiled genes are determined for the overexpressed proliferation-related genes at a percentile within the range of the 60th to the 80th percentile, especially at the 67th percentile and the cut-off value of the profiled genes are determined for the downregulated differentiation-related genes at a percentile within the range of the 30rd to 45th percentile, especially at the 33rd or 40th percentile and the cut-off value of the sample is determined within the same range of the 60th to the 80th percentile.
27. Use of a set of probes, arrays, compositions or kits according to any one of claims 14 to 21, to determine, in a patient, the risk of developing metastasis.
28. Use of a set of probes, arrays, compositions or kits according to any one of claims 14 to 21, to define the therapeutic regimen to apply to said patient.
US12/999,907 2008-06-27 2009-06-26 Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen Expired - Fee Related US9347088B2 (en)

Applications Claiming Priority (7)

Application Number Priority Date Filing Date Title
EP08290628A EP2138589A1 (en) 2008-06-27 2008-06-27 Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen
EP08290628.0 2008-06-27
EP08290628 2008-06-27
EP09151808 2009-01-30
EP09151808.4 2009-01-30
EP09151808 2009-01-30
PCT/IB2009/006450 WO2009156858A1 (en) 2008-06-27 2009-06-26 Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen

Publications (3)

Publication Number Publication Date
US20110183862A1 US20110183862A1 (en) 2011-07-28
US20120040848A2 true US20120040848A2 (en) 2012-02-16
US9347088B2 US9347088B2 (en) 2016-05-24

Family

ID=41263706

Family Applications (1)

Application Number Title Priority Date Filing Date
US12/999,907 Expired - Fee Related US9347088B2 (en) 2008-06-27 2009-06-26 Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen

Country Status (4)

Country Link
US (1) US9347088B2 (en)
EP (1) EP2307570B1 (en)
CA (1) CA2729554C (en)
WO (1) WO2009156858A1 (en)

Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US8628920B2 (en) * 2011-07-27 2014-01-14 National Tsing Hua University Method for early diagnosis of liver cancer and prediction of metastasis

Families Citing this family (7)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
NZ545243A (en) * 2006-02-10 2009-07-31 Pacific Edge Biotechnology Ltd Urine gene expression ratios for detection of cancer
ES2367285B1 (en) * 2010-04-12 2012-09-13 Dominion Pharmakine, Sl SET OF MARKERS FOR THE DETECTION OF COLORRECTAL CANCER METEPHASIS AND KIT FOR THE DETECTION OF COLORRECTAL CANCER METEPHASIS.
CA2868398A1 (en) 2012-04-02 2013-10-10 Moderna Therapeutics, Inc. Modified polynucleotides for the production of cosmetic proteins and peptides
US10501513B2 (en) 2012-04-02 2019-12-10 Modernatx, Inc. Modified polynucleotides for the production of oncology-related proteins and peptides
US9878056B2 (en) 2012-04-02 2018-01-30 Modernatx, Inc. Modified polynucleotides for the production of cosmetic proteins and peptides
US11186873B2 (en) * 2014-07-29 2021-11-30 Wellmarker Bio Co., Ltd. Combination method for treating cancer by targeting immunoglobulin superfamily member 1 (IGSF1) and mesenchymal-epithelial transition factor (MET)
WO2018214249A1 (en) * 2017-05-22 2018-11-29 立森印迹诊断技术(无锡)有限公司 Imprinted gene grading model, system composed of same, and application of same

Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20020142981A1 (en) * 2000-06-14 2002-10-03 Horne Darci T. Gene expression profiles in liver cancer

Family Cites Families (3)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
DE10136273A1 (en) * 2001-07-25 2003-02-13 Sabine Debuschewitz Molecular markers in hepatocellular carcinoma
EP1639090A4 (en) 2003-06-09 2008-04-16 Univ Michigan Compositions and methods for treating and diagnosing cancer
EP1661991A4 (en) * 2003-08-24 2007-10-10 Univ Nihon Hepatocellular cancer-associated gene

Patent Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20020142981A1 (en) * 2000-06-14 2002-10-03 Horne Darci T. Gene expression profiles in liver cancer

Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US8628920B2 (en) * 2011-07-27 2014-01-14 National Tsing Hua University Method for early diagnosis of liver cancer and prediction of metastasis

Also Published As

Publication number Publication date
CA2729554C (en) 2018-03-06
CA2729554A1 (en) 2009-12-30
WO2009156858A1 (en) 2009-12-30
EP2307570B1 (en) 2018-07-18
US20110183862A1 (en) 2011-07-28
EP2307570A1 (en) 2011-04-13
US9347088B2 (en) 2016-05-24

Similar Documents

Publication Publication Date Title
JP6246845B2 (en) Methods for quantifying prostate cancer prognosis using gene expression
US8030013B2 (en) Methods and compositions for the diagnosis for early hepatocellular carcinoma
US9347088B2 (en) Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen
KR20140105836A (en) Identification of multigene biomarkers
CA2776751A1 (en) Methods to predict clinical outcome of cancer
WO2012151212A1 (en) Multifocal hepatocellular carcinoma microrna expression patterns and uses thereof
EP2140020A2 (en) Gene expression markers for prediction of patient response to chemotherapy
JP2008521383A (en) Methods, systems, and arrays for classifying cancer, predicting prognosis, and diagnosing based on association between p53 status and gene expression profile
WO2015073949A1 (en) Method of subtyping high-grade bladder cancer and uses thereof
WO2009026128A2 (en) Gene expression markers of recurrence risk in cancer patients after chemotherapy
US10604809B2 (en) Methods and kits for the diagnosis and treatment of pancreatic cancer
WO2009032084A1 (en) Expression profiles of biomarker genes in notch mediated cancers
US20150344962A1 (en) Methods for evaluating breast cancer prognosis
US20160222461A1 (en) Methods and kits for diagnosing the prognosis of cancer patients
US9410205B2 (en) Methods for predicting survival in metastatic melanoma patients
US20120004127A1 (en) Gene expression markers for colorectal cancer prognosis
US20220136065A1 (en) High-grade serous ovarian carcinoma (hgsoc)
US20110301054A1 (en) Method of Stratifying Breast Cancer Patients Based on Gene Expression
WO2014089055A1 (en) Tivozanib response prediction
EP2138589A1 (en) Molecular signature of liver tumor grade and use to evaluate prognosis and therapeutic regimen
CA2677723A1 (en) Prognostic markers for classifying colorectal carcinoma on the basis of expression profiles of biological samples.
US20210079479A1 (en) Compostions and methods for diagnosing lung cancers using gene expression profiles
US20130303400A1 (en) Multimarker panel
US20200370122A1 (en) Immune index methods for predicting breast cancer outcome
AU2018244758A1 (en) Method and kit for diagnosing early stage pancreatic cancer

Legal Events

Date Code Title Description
AS Assignment

Owner name: CENTRE NATIONAL DE LA RECHERCHE SCIENTIFIQUE (CNRS

Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNORS:BUENDIA, MARIE ANNICK;NIELL, CAROLINA ARMENGOL;CAIRO, STEFANO;AND OTHERS;SIGNING DATES FROM 20110318 TO 20110330;REEL/FRAME:026093/0700

Owner name: INSTITUT PASTEUR, FRANCE

Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNORS:BUENDIA, MARIE ANNICK;NIELL, CAROLINA ARMENGOL;CAIRO, STEFANO;AND OTHERS;SIGNING DATES FROM 20110318 TO 20110330;REEL/FRAME:026093/0700

Owner name: INSTITUT NATIONAL DE LA SANTE ET DE LA RECHERCHE M

Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNORS:BUENDIA, MARIE ANNICK;NIELL, CAROLINA ARMENGOL;CAIRO, STEFANO;AND OTHERS;SIGNING DATES FROM 20110318 TO 20110330;REEL/FRAME:026093/0700

FEPP Fee payment procedure

Free format text: PAYOR NUMBER ASSIGNED (ORIGINAL EVENT CODE: ASPN); ENTITY STATUS OF PATENT OWNER: LARGE ENTITY

STCF Information on status: patent grant

Free format text: PATENTED CASE

FEPP Fee payment procedure

Free format text: MAINTENANCE FEE REMINDER MAILED (ORIGINAL EVENT CODE: REM.); ENTITY STATUS OF PATENT OWNER: LARGE ENTITY

LAPS Lapse for failure to pay maintenance fees

Free format text: PATENT EXPIRED FOR FAILURE TO PAY MAINTENANCE FEES (ORIGINAL EVENT CODE: EXP.); ENTITY STATUS OF PATENT OWNER: LARGE ENTITY

STCH Information on status: patent discontinuation

Free format text: PATENT EXPIRED DUE TO NONPAYMENT OF MAINTENANCE FEES UNDER 37 CFR 1.362

FP Lapsed due to failure to pay maintenance fee

Effective date: 20200524