WO2013059177A1 - Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes - Google Patents

Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes Download PDF

Info

Publication number
WO2013059177A1
WO2013059177A1 PCT/US2012/060394 US2012060394W WO2013059177A1 WO 2013059177 A1 WO2013059177 A1 WO 2013059177A1 US 2012060394 W US2012060394 W US 2012060394W WO 2013059177 A1 WO2013059177 A1 WO 2013059177A1
Authority
WO
WIPO (PCT)
Prior art keywords
bone
lesion
image
pixels
determining
Prior art date
Application number
PCT/US2012/060394
Other languages
French (fr)
Inventor
Matthew Sherman BROWN
Original Assignee
Medqia
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
Application filed by Medqia filed Critical Medqia
Priority to CN201280051415.0A priority Critical patent/CN103930030B/en
Priority to EP12842317.5A priority patent/EP2768395B1/en
Publication of WO2013059177A1 publication Critical patent/WO2013059177A1/en

Links

Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T7/00Image analysis
    • G06T7/0002Inspection of images, e.g. flaw detection
    • G06T7/0012Biomedical image inspection
    • G06T7/0014Biomedical image inspection using an image reference approach
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/10Image acquisition modality
    • G06T2207/10116X-ray image
    • G06T2207/10128Scintigraphy
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/30Subject of image; Context of image processing
    • G06T2207/30004Biomedical image processing
    • G06T2207/30008Bone
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06TIMAGE DATA PROCESSING OR GENERATION, IN GENERAL
    • G06T2207/00Indexing scheme for image analysis or image enhancement
    • G06T2207/30Subject of image; Context of image processing
    • G06T2207/30004Biomedical image processing
    • G06T2207/30096Tumor; Lesion

Definitions

  • TITLE COMPUTER-AIDED BONE SCAN ASSESSMENT WITH AUTOMATED LESION DETECTION AND QUANTITATIVE ASSESSMENT OF BONE DISEASE BURDEN
  • the invention relates to the field of medical imaging. More particularly, the present invention relates to bone scans, bone lesions, and bone disease assessment. Discussion of the Related Art
  • Bone tumors may originate in bone or they may originate in other sites and spread (metastasize) to the skeleton. For example, secondary tumors in the bone frequently result from metastasized prostate cancer. Images from bone scans reveal lesions associated with primary bone or metastatic cancer and their interpretations are used extensively in the diagnosis and treatment of the disease.
  • the use of bone scans to monitor treatment effects utilizes accurate segmentation and quantification of lesions within a single scan, as well as the comparison of lesion measurements between
  • Embodiments provide an automated system that accurately and reproducibly segments and quantifies bone lesions to aid physicians in intrapatient and interpatient comparison.
  • the inventors have analytical validation of a bone scan computer- aided treatment assessment system that combines both automated lesion segmentation, including image normalization, and quantitative assessment of disease burden. Successful differentiation between untreated and treated patient groups was used to evaluate system capability for assessing treatment effects.
  • Validation shows the system is capable of accurate automated bone scan lesion segmentation (detection of lesion pixels) and capable of providing quantitative measures of lesion burden that may then be used to assess disease status changes in treated and untreated patients.
  • the invention may be implemented as a computer program (software).
  • the program may be executed by an image acquisition device, a reading workstation, a server, and/or other appropriate devices. Processing on a server may facilitate interfacing with a centralized imaging archive and storing bone scan analysis reports in a centralized database.
  • the system may also be accessed remotely (e.g., via the Internet).
  • Embodiments of the invention may be described with reference to equations, algorithms, and/or flowchart illustrations of methods. These methods may be implemented using sets of instructions either separately, or as a component of a system. As such, each equation, algorithm, operation of a flowchart, and/or combinations thereof, may be implemented in various ways, such as hardware, firmware, and/or software. Computer program instructions may be loaded on to a computer, such that the computer program instructions provide a way to implement functions specified by the equations, algorithms, and/or flowcharts.
  • Figure 1 shows a computer-aided quantitative bone scan
  • Figure 2 shows an overview of a computer-aided bone scan assessment process in accordance with the present invention.
  • Figure 3 shows a more detailed overview of the assessment process of Figure 2.
  • Figure 4 shows a method of calculating a normal bone normalizing value RIMEDIAN from reference images in accordance with the process of Figure 2.
  • Figure 5 shows a methodology including use of an expert and identification of lesion indicating intensity thresholds.
  • Figure 6 shows a second methodology including use of an expert and identification of lesion indicating intensity thresholds in accordance with the process of Figure 2.
  • Figure 7 shows identification of true -positive pixels indicating a lesion in accordance with the process of Figure 2.
  • Figure 8 shows evaluation of anatomically specific metrics in accordance with the process of Figure 2.
  • Figure 9 shows evaluation of summary metrics for all anatomic regions in accordance with the process of Figure 2.
  • Figure 10 shows an exemplary assessment system operating scenario in accordance with the process of Figure 2.
  • Coupled includes direct and indirect connections. Moreover, where first and second devices are coupled, intervening devices including active devices may be located therebetween.
  • FIG. 1 shows a computer-aided quantitative bone scan assessment system in accordance with the present invention 100.
  • a processing unit 108 receives image data from image acquisition equipment 102. Data from these and other images, processed or not, is available to the processor via a reference unit 104 for storing selected data.
  • processor inputs include user inputs and settings 106 such as those resulting from expert evaluation of any of patient condition, desired image quality, and equipment capability.
  • processing and/or user input is carried out, at least in part, in the image acquisition equipment.
  • Bone scan imaging equipment 102 includes any suitable bone imaging equipment commonly used in nuclear medicine.
  • imaging equipment utilizes radioisotopes and radiation sensitive cameras such as those used in scintigraphic imaging systems and devices.
  • scintigraphy is a technique that uses radioisotopes in conjunction with a gamma camera for indicating tissues that accumulate the radioisotope.
  • gamma camera pixel intensity shows accumulated radioisotope and localized areas of high metabolic activity in bone, events indicative of a bone lesion.
  • Reference equipment 104 includes any suitable means for storing data and/or information about data.
  • Typical reference units include digital data storage devices including semiconductor memory, moving media memory such as hard disc drives, optical memory, and like devices and equipment known in the computing field.
  • User input devices 106 include any suitable means for conveying a user's inputs to the processor 108.
  • any of a keyboard, mouse, touchscreen, and associated input processing means such as a personal computer are used.
  • an adjustment unit or station 114 provides for enhancement and quality control of selected processor output data 109.
  • an expert such as a nuclear medicine radiologist with expertise in nuclear medicine enhances and/or corrects bone scan images/data. For example, false lesion indications resulting from preexisting conditions such as joint disease and bone fracture are identified and resolved accordingly.
  • Bone scan processing 108 includes processing equipment, methods, and processes.
  • Suitable equipment includes any suitable information processing equipment known in the computing field.
  • digital processing equipment including any one or more microprocessors, personal computers, workstations, massively parallel computing infrastructure, and supercomputers provide, in various embodiments, suitable processing functionality.
  • Visualization equipment 110 includes any suitable equipment known in the computing field including displays and printers. Displays include CRT, LED, Plasma, Fluorescent, and electroluminescent display devices.
  • Printers include devices fixing information in tangible media such as laser printers and devices with similar uses.
  • Graphic visualization aids 112 provide for visualizing physical structures and in particular for visualizing lesion indicating bone scan data.
  • Visualization aids include the special case of compound images in the form of image sets presenting a foundational or base image that is overlain by an upper image.
  • Translucent and/or transparent qualities of the upper image provide for simultaneous viewing of at least portions of the base image in conjunction with at least portions of the upper image.
  • a processor output 109 conveys information to one or more of visualization equipment 110, graphic visualization aids 112, and an adjustment unit 114.
  • the visualization equipment and aids provide for visualization, in various embodiments, of one or both of unadjusted processor output 111 and adjusted processor output 115.
  • FIG. 2 shows an overview of a computer-aided bone scan
  • An initializing step 202 enables a normalized test image step 204 and an evaluation of the test image including identifying lesions and generating quantitative metrics 206. As shown, subsequent test image evaluations do not typically require that the initialization step be repeated.
  • one or more reference images are acquired.
  • plural reference images are acquired from plural patients with positive indications of indication of primary or metastatic cancer to the bone. Selecting a group of reference images from a varied patient population tends to enhance the likelihood that reference norms will indicate, rather than fail to indicate, bone lesions in later compared test images.
  • Initialization step 202 includes determining a normalizing factor indicative of normal bone intensity. Intensity here refers to visible light intensity such as the intensity of a pixel in an image acquired by a gamma camera. Initialization also includes use of the reference images to determine intensity thresholds that are indicative of bone lesions. In various embodiments, the normalizing factor and intensity thresholds determined from the
  • the values are stored in the reference unit 104.
  • test image (e.g., data representing an image) is acquired by the image acquisition equipment 102 or otherwise and the image is normalized as further described below.
  • Normalization 204 prepares the test image for evaluation including lesion identification and metric generation 206.
  • normalization reduces the effects of variances in intensity due to differences in body habitus, radiotracer dosing levels and/or time between tracer
  • the metrics from the evaluating step 206 provide a quantitative measure of lesion burden.
  • additional test images may be normalized and evaluated without repeating the initialization step 202.
  • an end step 210 is reached.
  • multiple test images are made and processed for one particular patient. Each test image provides a quantitative measure of the patient's lesion burden such that test images made at different times provide patient health monitoring including whether the disease is responding to treatment, stable, or progressing.
  • FIG. 3 shows a more detailed overview of an embodiment of the computer-aided bone scan assessment of the present invention 300.
  • an initializing step 202 is followed by a normalizing step 204, and an evaluation step 206.
  • the initializing step 202 includes acquisition of reference image(s) 302, use of the reference images to determine a normalizing value
  • RENENETN for normal bone 400, and use of the reference images to determine anatomic region specific intensity thresholds (' ⁇ ') 500, 600.
  • ' ⁇ ' anatomic region specific intensity thresholds
  • the normalizing step 204 includes acquisition of a test image 304, determination of a test image normal bone intensity value ("TI75") 314, and normalizing test image pixel intensity 324.
  • a normalizing factor NF is calculated as shown in Equation 1.
  • the normalizing factor NF is used to normalize the intensity of pixels in the test image. Where TIPL is test image pixel intensity for a particular pixel and TIPINi is the normalized test image pixel intensity for that pixel, test image pixels are normalized as shown in Equation 2.
  • Normalization 204 prepares the test image for evaluation 206.
  • the evaluation step includes indication of lesions 700, evaluation of anatomic region specific metrics 800, and evaluation of summary metrics for all anatomic regions 900, each of which is further described below.
  • the metrics provides a quantitative measure of lesion burden.
  • additional test images may be normalized and evaluated without repeating the initialization step 202. After all test images are processed, an end step 348 is reached.
  • FIG. 4 shows a method of calculating a normal bone normalizing value RIMEDIAN from reference images 400.
  • Anatomic regions are identified 411
  • the set of reference bone images are anatomically segmented 413
  • a normal bone intensity value is identified in each image 415
  • a reference bone intensity value representative of all of the reference images is determined 417.
  • anatomic regions are identified. These regions generally represent skeletal regions. In an embodiment, the anatomic
  • segmentation identifies anatomic regions by comparison to an atlas image with the following anatomic labels: spine, ribs, head, extremities, and pelvis.
  • step 413 the set of reference bone images are anatomically segmented. Segmentation here corresponds with the anatomic regions identified above.
  • a normal bone intensity value is identified in each reference image.
  • a statistically valued intensity is selected in a particular region of each reference image to represent normal bone intensity.
  • the statistical valuation used may be based on experience, evaluated based on a trial and error procedure or determined in another manner known to persons of ordinary skill in the art.
  • normal bone intensity is indicated by the 75 th centile value RI75 X (1 ⁇ x ⁇ no. of regions) of the intensity histogram of a particular anatomical region.
  • normal bone intensity in a reference image is determined by the 75 th centile value RI75x selected from the extremities region intensity histogram.
  • a reference bone intensity value representative of all of the reference images is determined.
  • this representative bone intensity value is the median value RIMEDIAN corresponding to the set of 75 th centile values RI75 X mentioned above.
  • Figures 5 and 6 show methodologies for determining anatomically specific intensity thresholds from the reference images 500, 600.
  • Figure 5 shows a methodology including use of an expert and identification of lesion indicating intensity thresholds 500.
  • a first step 511 provides an expert such as an expert in reading nuclear medicine images and in particular bone scan images of patients with bone lesions. In this step, the expert locates lesions on the reference images.
  • the expert indications are evaluated. This evaluation determines the intensity threshold(s) that indicate a lesion.
  • Figure 6 shows a second methodology including use of an expert and identification of lesion indicating intensity thresholds 600. Steps include annotation 611, classification 613, and determining intensity threshold values
  • Annotation 611 utilizes an expert such as the expert mentioned above.
  • the expert annotates each reference image to indicate lesions.
  • Classification 613 classifies the expert markings to associate pixels with lesions.
  • a binary classifier system is used such that expert markings indicating lesions are classified as true-positive pixels and other bone pixels are classified as true-negative pixels.
  • Intensity threshold determination 615 determines, for each anatomical region, a single intensity threshold ITV tending to replicate the classification for all patients in the reference group.
  • an intensity threshold value is found that tends, for all patients in the group, to maximize the number of true positives (increased mean sensitivity) while minimizing the number of false positives (increased mean specificity).
  • lesion segmentation via anatomic region-specific intensity thresholding is performed on a normalized image to detect lesions in each anatomic region by applying a specific threshold to the
  • a receiver operating characteristic curve (ROC or ROC Curve) is used to evaluate the performance of the above binary classifier system.
  • TPR is also known as sensitivity, and FPR is one minus the specificity or true negative rate.
  • the discrimination threshold here Intensity Threshold (IT r )
  • IT r Intensity Threshold
  • ROC Curve plotting true positive lesion pixels as a function of false positive lesion pixels will typically have a distinctive change of slope indicating an optimum IT r value.
  • FIG. 7 shows identification of true-positive pixels indicating a lesion 700.
  • anatomic regions are identified 711. Matching pixel intensities in each test image anatomic region with a corresponding intensity thresholds IT r , the following test 713 is performed Equation 5, Indication Of Lesions: TIPINr. i > ITr
  • this equation compares the normalized test image pixel intensities in a particular anatomical region with the reference image derived anatomically specific Intensity Threshold, IT r . Where the test image pixel intensity is greater than the corresponding Intensity Threshold, the pixel is a true-positive pixel indicating the presence of a lesion.
  • Figure 8 shows evaluation of anatomically specific metrics 800.
  • the number of true-positive pixels, Z r is counted 813.
  • the intensities of all of the true-positive pixels are summed, SUML, in a subsequent step 815. These steps are repeated for each of the anatomic regions 817.
  • Figure 9 shows evaluation of summary metrics 900. Summary metrics include for all anatomic regions.
  • Summary bone lesion area thus represents a quantification of the size and number of active regions on the bone scan whereas the bone scan lesion intensity represents the level of bone formation activity.
  • bone lesion count 915 is assessed.
  • lesions are identified as discrete regions including at least five contiguous pixels, each of which is over the determined intensity threshold.
  • Lesion identifiers and the size of contiguous pixel groups in various embodiments consider not only features large enough to be of interest, but also whether there is a likelihood a group of the size selected will be simultaneously affected by common failures such as faulty scanner camera pixels.
  • Changes in the lesion burden metrics between serial bone scans from a given patient may be calculated during response assessment in order to quantitatively assess the patient's response to treatment.
  • the percent change in a lesion burden metric may be used to assess treatment progression and/or response, with cut points in the percent change delineating each response category. For instance, a bone scan image lesion area increase of 30% or greater may be considered progression, and a decrease of 30% or greater may be considered response.
  • steps in above described assessments may be varied to suit availability of images, data derived from images, and reference image processing steps. For example, determining anatomic region specific intensity thresholds from reference images might follow normalization of test images. In another example, multiple sets of reference images may be processed and corresponding RIMEDIAN and TI r values used with one or more test images. As such, persons of ordinary skill in the art will recognize from the present disclosure that sequences of image processing steps differing from those described above are appropriate in cases, for example the case where there is a search for an optimum set of reference images. Therefore, operation of the above described system may be varied to suit particular needs and constraints.
  • Figure 10 illustrates an exemplary assessment system operating scenario 1000.
  • input image(s) are processed using data from
  • patient baseline and week 6 images are available 1020.
  • the assessment process provides the quantitative disease indicia for the baseline and for the week 6 images in generally the same manner.
  • anatomic segmentation is performed to segment an input image 1002.
  • the image is divided into anatomic regions.
  • Anatomic regions selected for this example are spine, ribs, head, extremities, and pelvis.
  • Anatomic segmentation of the input image provides a segmented image similar to the illustrated segmented image 1022.
  • Image intensity normalization is performed on the segmented input image 1004. Normalization produces images similar to the illustrative
  • intensity normalized pixels in each region of the input image are compared with intensity threshold values derived from
  • the region specific intensity threshold values derived from the reference images are indicative of lesions in the input image.
  • Optional user review and editing to obtain user-approved lesion segmentation 1008 and adjustments 114 shown in Figure 1 provide for human adjustments to be made to the assessment. For example, false positives due to joint disease and broken bones can be resolved here.
  • Lesion segmentation with or without the optional user review and editing produces images similar to the illustrative baseline and week 6 lesion indicating images 1026.
  • Computation of lesion burden 1010 follows lesion segmentation 1006 and user review and editing 1008, if any. During this step, measures of lesion area, lesion intensity, and lesion count for specific regions and/or all regions are determined. In an embodiment, lesion area is summed for all regions and lesion intensity is summed for all regions. In various embodiments, lesion count, for example lesion count summed for all regions, together with summary values of lesion area and lesion intensity, provide means to quantify lesion burden.
  • patient response assessment 1012 includes a patient response classification report showing for example, response or progression or stable.
  • a chart 1028 provides a quantitative comparison of baseline and week 6 measures for bone scan lesion count, bone scan lesion area, and bone scan lesion intensity.
  • image comparisons utilize a foundation image together with a semi-transparent overlay.
  • an automatically segmented region image is presented, colorized or not, as a semi- transparent overlay on the bone scan image (original or normalized). Such may be used, inter alia, as an operator aid in adjusting and/or editing an image as needed 114.
  • a foundation image such as a baseline image with lesion segmentation 1026, together with a semi-transparent overlay of the week 6 (or a similar image from another treatment interval) image is used.
  • colors or colorization may be used to enhance the visual contrast between the "before and after” conditions.
  • these image comparisons provide what some would see as qualitative, "at a glance” information.
  • they also embody a quantitative measure of bone disease burden change.

Landscapes

  • Engineering & Computer Science (AREA)
  • Health & Medical Sciences (AREA)
  • General Health & Medical Sciences (AREA)
  • Medical Informatics (AREA)
  • Nuclear Medicine, Radiotherapy & Molecular Imaging (AREA)
  • Radiology & Medical Imaging (AREA)
  • Quality & Reliability (AREA)
  • Computer Vision & Pattern Recognition (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Theoretical Computer Science (AREA)
  • Apparatus For Radiation Diagnosis (AREA)

Abstract

A computer aided bone scan assessment system and method provide automated lesion detection and quantitative assessment of bone disease burden changes.

Description

TITLE: COMPUTER-AIDED BONE SCAN ASSESSMENT WITH AUTOMATED LESION DETECTION AND QUANTITATIVE ASSESSMENT OF BONE DISEASE BURDEN
CHANGES
PRIORITY CLAIM
[001] This application claims the benefit of U.S. Prov. Pat. App. No.
61/548,498 filed October 18, 2011 and entitled COMPUTER-AIDED BONE SCAN ASSESSMENT WITH AUTOMATED LESION DETECTION AND QUANTITATIVE ASSESSMENT OF BONE DISEASE BURDEN CHANGES. This application claims the benefit of U.S. Prov. Pat. App. No. 61/714,318 filed October 16, 2012 and entitled COMPUTER-AIDED BONE SCAN
ASSESSMENT.
INCORPORATION BY REFERENCE
[002] This application incorporates by reference in its entirety and for all purposes U.S. Prov. Pat. App. No. 61/548,498 filed October 18, 2011 and U.S. Prov. Pat. App. No. 61/714,318 filed October 16, 2012.
BACKGROUND OF THE INVENTION
Field Of The Invention
[003] The invention relates to the field of medical imaging. More particularly, the present invention relates to bone scans, bone lesions, and bone disease assessment. Discussion of the Related Art
[004] Bone tumors may originate in bone or they may originate in other sites and spread (metastasize) to the skeleton. For example, secondary tumors in the bone frequently result from metastasized prostate cancer. Images from bone scans reveal lesions associated with primary bone or metastatic cancer and their interpretations are used extensively in the diagnosis and treatment of the disease.
[005] A few computer-aided lesion detection systems have been reported for bone scans. These techniques have included semi-automated image segmentation programs that are frequently too time-consuming for use in a clinical setting such as those of Erdi et al. and Yin et al. The semi-automated approach described by Erdi et al. requires that the user insert a seed point in each metastatic region on the image, a process that is nontrivial, considering that patients with bone metastases often have multiple disease sites.1
[006] More recently, a fully automated method developed by Sadik et al. combines bone lesion detection by image segmentation with scan evaluation through an artificial neural network to classify patients by their probability of bone metastasis, resulting in a binary grading of scans as having probable "bone metastases" or probable "no bone metastases." 2
[007] Although this system showed a good correlation with physician-
1 Erdi YE, Humm JL, Imbriaco M, Yeung H, Larson SM, Quantitative bone metastases analysis based on image segmentation. J Nucl Med 1997; 38:1401- 1406. See also Yin TK, Chiu NT, A computer-aided diagnosis for locating abnormalities in bone scintigraphy by a fuzzy system with a three- step
minimization approach. IEEE Trans Med Imaging 2004; 23:639-654.
2 See Sadik M, Jakobsson D, Olofsson F, Ohlsson M, Suurkula M, Edenbrandt L., A new computer-based decision- support system for the interpretation of bone scans. Nucl Med Commun 2006; 27:417-423. determined estimates of the probability of bone metastases, the system does not provide a quantitative metric for the comparison of consecutive scans nor a means of assessing treatment outcomes.
[008] Importantly, none of the reported outcomes have been studied prospectively in relation to true measures of patient benefit such as reduction in skeletal-related events or prolongation of life, measures that form the basis for regulatory approvals.
[009] Conversely, systems for image enhancement have been developed to normalize images from consecutive scans for ease of physician interpretation but have not attempted lesion identification.3
[010] Quantitative assessment by bone scintigraphy of metastatic bone disease burden in prostate cancer has been previously performed, including the development of metrics such as bone scan index (BSI) and percentage of the positive area on a bone scan (%PABS).4
[011] Both BSI and %PABS have undergone initial evaluation as prognostic factors for patients with prostate cancer, but the methods used to calculate these metrics have been time-consuming, requiring extensive manual annotation of bone scans. Evaluation of %PABS and BSI as feasible metrics for
3 Jeong CB, Kim KG, Kim TS, Kim SK, Comparison of image enhancement methods for the effective diagnosis in successive whole-body bone scans. J Digit Imaging 2011; 24:424-436.
4 Imbriaco M, Larson SM, Yeung HW, Mawlawi OR, Erdi Y, Venkatraman ES, et al., A new parameter for measuring metastatic bone involvement by prostate cancer: the Bone Scan Index. Clin Cancer Res 1998; 4: 1765-1772. See also Noguchi M, Kikuchi H, Ishibashi M, Noda S., Percentage of the positive area of bone metastasis is an independent predictor of disease death in advanced prostate cancer. Br J Cancer 2003; 88:195-201. the assessment of treatment response is ongoing.5
[012] While computer-aided detection (CAD) systems have been
previously applied to bone scan analysis, they lack features in embodiments of the present invention. For example, such known systems have typically addressed lesion detection only on a single scan from a patient, without comparing successive scans.
SUMMARY OF THE INVENTION
[013] A system and method that provides bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes.
[014] In various embodiments, the use of bone scans to monitor treatment effects utilizes accurate segmentation and quantification of lesions within a single scan, as well as the comparison of lesion measurements between
consecutive scans. Embodiments provide an automated system that accurately and reproducibly segments and quantifies bone lesions to aid physicians in intrapatient and interpatient comparison.
[015] The inventors have analytical validation of a bone scan computer- aided treatment assessment system that combines both automated lesion segmentation, including image normalization, and quantitative assessment of disease burden. Successful differentiation between untreated and treated patient groups was used to evaluate system capability for assessing treatment effects.
5 Yahara J, Noguchi M, Noda S., Quantitative evaluation of bone metastases in patients with advanced prostate cancer during systemic treatment. BJU Int 2003; 92:379-384. See also Morris MJ, Jia X, Larson SM, Kelly A, Mezheritzky I, Stephenson RD, et al., Post-treatment serial bone scan index (BSI) as an outcome measure predicting survival. Presented at: Genitourinary Cancers Symposium 2008; [016] Validation shows the system is capable of reducing the variability of hand-annotated bone scan analysis, so that objective, reproducible, and quantitative measurements are consistently obtained which lays a foundation for prospective correlation of individual measures with other clinical and laboratory outcome data.
[017] Validation shows the system is capable of accurate automated bone scan lesion segmentation (detection of lesion pixels) and capable of providing quantitative measures of lesion burden that may then be used to assess disease status changes in treated and untreated patients.
[018] In various embodiments, the invention may be implemented as a computer program (software). The program may be executed by an image acquisition device, a reading workstation, a server, and/or other appropriate devices. Processing on a server may facilitate interfacing with a centralized imaging archive and storing bone scan analysis reports in a centralized database. The system may also be accessed remotely (e.g., via the Internet).
[019] Embodiments of the invention may be described with reference to equations, algorithms, and/or flowchart illustrations of methods. These methods may be implemented using sets of instructions either separately, or as a component of a system. As such, each equation, algorithm, operation of a flowchart, and/or combinations thereof, may be implemented in various ways, such as hardware, firmware, and/or software. Computer program instructions may be loaded on to a computer, such that the computer program instructions provide a way to implement functions specified by the equations, algorithms, and/or flowcharts.
BRIEF DESCRIPTION OF THE DRAWINGS
[020] The present invention is described with reference to the accompanying figures. These figures, incorporated herein and forming part of the specification, illustrate embodiments of the present invention and, together with the description, further serve to explain the principles of the invention and to enable a person skilled in the relevant art to make and use the invention.
[021] Figure 1 shows a computer-aided quantitative bone scan
assessment system in accordance with the present invention.
[022] Figure 2 shows an overview of a computer-aided bone scan assessment process in accordance with the present invention.
[023] Figure 3 shows a more detailed overview of the assessment process of Figure 2.
[024] Figure 4 shows a method of calculating a normal bone normalizing value RIMEDIAN from reference images in accordance with the process of Figure 2.
[025] Figure 5 shows a methodology including use of an expert and identification of lesion indicating intensity thresholds.
[026] Figure 6 shows a second methodology including use of an expert and identification of lesion indicating intensity thresholds in accordance with the process of Figure 2.
[027] Figure 7 shows identification of true -positive pixels indicating a lesion in accordance with the process of Figure 2.
[028] Figure 8 shows evaluation of anatomically specific metrics in accordance with the process of Figure 2.
[029] Figure 9 shows evaluation of summary metrics for all anatomic regions in accordance with the process of Figure 2.
[030] Figure 10 shows an exemplary assessment system operating scenario in accordance with the process of Figure 2.
DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS
[031] The disclosure provided in the following pages describes examples of some embodiments of the invention. The designs, figures, and description are non-limiting examples of the embodiments they disclose. For example, other embodiments of the disclosed device and/or method may or may not include the features described herein. Moreover, disclosed advantages and benefits may apply to only certain embodiments of the invention and should not be used to limit the disclosed invention.
[032] As used herein, the term "coupled" includes direct and indirect connections. Moreover, where first and second devices are coupled, intervening devices including active devices may be located therebetween.
[033] FIG. 1 shows a computer-aided quantitative bone scan assessment system in accordance with the present invention 100. A processing unit 108 receives image data from image acquisition equipment 102. Data from these and other images, processed or not, is available to the processor via a reference unit 104 for storing selected data. In various embodiments, processor inputs include user inputs and settings 106 such as those resulting from expert evaluation of any of patient condition, desired image quality, and equipment capability. In some embodiments, processing and/or user input is carried out, at least in part, in the image acquisition equipment.
[034] Bone scan imaging equipment 102 includes any suitable bone imaging equipment commonly used in nuclear medicine. For example, in various embodiments imaging equipment utilizes radioisotopes and radiation sensitive cameras such as those used in scintigraphic imaging systems and devices. In particular, scintigraphy is a technique that uses radioisotopes in conjunction with a gamma camera for indicating tissues that accumulate the radioisotope. Here, gamma camera pixel intensity shows accumulated radioisotope and localized areas of high metabolic activity in bone, events indicative of a bone lesion.
[035] Reference equipment 104 includes any suitable means for storing data and/or information about data. Typical reference units include digital data storage devices including semiconductor memory, moving media memory such as hard disc drives, optical memory, and like devices and equipment known in the computing field.
[036] User input devices 106 include any suitable means for conveying a user's inputs to the processor 108. In various embodiments, any of a keyboard, mouse, touchscreen, and associated input processing means such as a personal computer are used.
[037] In some embodiments, an adjustment unit or station 114 provides for enhancement and quality control of selected processor output data 109.
While this function may be automated, using pattern recognition techniques for example, in various embodiments an expert such as a nuclear medicine radiologist with expertise in nuclear medicine enhances and/or corrects bone scan images/data. For example, false lesion indications resulting from preexisting conditions such as joint disease and bone fracture are identified and resolved accordingly.
[038] Bone scan processing 108 includes processing equipment, methods, and processes. Suitable equipment includes any suitable information processing equipment known in the computing field. In particular, digital processing equipment including any one or more microprocessors, personal computers, workstations, massively parallel computing infrastructure, and supercomputers provide, in various embodiments, suitable processing functionality.
[039] Visualization equipment 110 includes any suitable equipment known in the computing field including displays and printers. Displays include CRT, LED, Plasma, Fluorescent, and electroluminescent display devices.
Printers include devices fixing information in tangible media such as laser printers and devices with similar uses.
[041] Graphic visualization aids 112 provide for visualizing physical structures and in particular for visualizing lesion indicating bone scan data. Visualization aids include the special case of compound images in the form of image sets presenting a foundational or base image that is overlain by an upper image. Translucent and/or transparent qualities of the upper image provide for simultaneous viewing of at least portions of the base image in conjunction with at least portions of the upper image.
[042] As seen in the figure, a processor output 109 conveys information to one or more of visualization equipment 110, graphic visualization aids 112, and an adjustment unit 114. The visualization equipment and aids provide for visualization, in various embodiments, of one or both of unadjusted processor output 111 and adjusted processor output 115.
[043] Figures below describe in more detail methods and processes carried out in the computer-aided quantitative bone scan assessment system 100 including methods and processes carried out in processing 108.
[044] FIG. 2 shows an overview of a computer-aided bone scan
assessment process in accordance with the present invention 200. An initializing step 202 enables a normalized test image step 204 and an evaluation of the test image including identifying lesions and generating quantitative metrics 206. As shown, subsequent test image evaluations do not typically require that the initialization step be repeated.
[045] In the initializing step 202, one or more reference images are acquired. Typically, plural reference images are acquired from plural patients with positive indications of indication of primary or metastatic cancer to the bone. Selecting a group of reference images from a varied patient population tends to enhance the likelihood that reference norms will indicate, rather than fail to indicate, bone lesions in later compared test images.
[046] Initialization step 202 includes determining a normalizing factor indicative of normal bone intensity. Intensity here refers to visible light intensity such as the intensity of a pixel in an image acquired by a gamma camera. Initialization also includes use of the reference images to determine intensity thresholds that are indicative of bone lesions. In various embodiments, the normalizing factor and intensity thresholds determined from the
initialization step are stored for future use. In some embodiments, the values are stored in the reference unit 104.
[047] Having completed the initialization step, normalizing 204 and evaluating 206 steps follow. In the normalizing step, a test image (e.g., data representing an image) is acquired by the image acquisition equipment 102 or otherwise and the image is normalized as further described below.
[048] Normalization 204 prepares the test image for evaluation including lesion identification and metric generation 206. In various embodiments, normalization reduces the effects of variances in intensity due to differences in body habitus, radiotracer dosing levels and/or time between tracer
administration and scan acquisition in order to improve reproducibility of lesion segmentation and quantitation. After intensity normalization, the pixel intensities of normal bone are consistent between time points enabling
reproducible lesion segmentation and quantitative assessment in serial patient images.
[049] The metrics from the evaluating step 206 provide a quantitative measure of lesion burden. As shown in decision step 208, additional test images may be normalized and evaluated without repeating the initialization step 202. After all test images are processed, an end step 210 is reached. [050] In an embodiment, multiple test images are made and processed for one particular patient. Each test image provides a quantitative measure of the patient's lesion burden such that test images made at different times provide patient health monitoring including whether the disease is responding to treatment, stable, or progressing.
[051] FIG. 3 shows a more detailed overview of an embodiment of the computer-aided bone scan assessment of the present invention 300. As before, an initializing step 202 is followed by a normalizing step 204, and an evaluation step 206.
[052] The initializing step 202 includes acquisition of reference image(s) 302, use of the reference images to determine a normalizing value
("RIMEDIAN") for normal bone 400, and use of the reference images to determine anatomic region specific intensity thresholds ('ΊΊΥ') 500, 600. As mentioned above, it is typical for plural reference images to be acquired 302 from plural bone cancer patients.
[053] The normalizing step 204 includes acquisition of a test image 304, determination of a test image normal bone intensity value ("TI75") 314, and normalizing test image pixel intensity 324.
[054] From test image normal bone intensity TI75 and the reference image normalizing value RIMEDIAN, a normalizing factor NF is calculated as shown in Equation 1.
Equation 1, Normalizing Factor: NF = (RIMEDIAN / TI75)
[055] The normalizing factor NF is used to normalize the intensity of pixels in the test image. Where TIPL is test image pixel intensity for a particular pixel and TIPINi is the normalized test image pixel intensity for that pixel, test image pixels are normalized as shown in Equation 2.
Equation 2: TIPINi = TIPL x NF [056] Following this normalization, normal bone intensities in the reference images correspond with normal bone intensities in the test image.
[057] Normalization 204 prepares the test image for evaluation 206. The evaluation step includes indication of lesions 700, evaluation of anatomic region specific metrics 800, and evaluation of summary metrics for all anatomic regions 900, each of which is further described below.
[058] The metrics provides a quantitative measure of lesion burden. As shown in decision step 338, additional test images may be normalized and evaluated without repeating the initialization step 202. After all test images are processed, an end step 348 is reached.
[059] FIG. 4 shows a method of calculating a normal bone normalizing value RIMEDIAN from reference images 400. Anatomic regions are identified 411, the set of reference bone images are anatomically segmented 413, a normal bone intensity value is identified in each image 415, and a reference bone intensity value representative of all of the reference images is determined 417.
[060] In step 411, anatomic regions are identified. These regions generally represent skeletal regions. In an embodiment, the anatomic
segmentation identifies anatomic regions by comparison to an atlas image with the following anatomic labels: spine, ribs, head, extremities, and pelvis.
[061] In step 413, the set of reference bone images are anatomically segmented. Segmentation here corresponds with the anatomic regions identified above.
[062] In step 415, a normal bone intensity value is identified in each reference image. In various embodiments, a statistically valued intensity is selected in a particular region of each reference image to represent normal bone intensity. The statistical valuation used may be based on experience, evaluated based on a trial and error procedure or determined in another manner known to persons of ordinary skill in the art.
[063] In an exemplary case based on the inventor's experience, normal bone intensity is indicated by the 75th centile value RI75X (1 < x < no. of regions) of the intensity histogram of a particular anatomical region. In an embodiment, normal bone intensity in a reference image is determined by the 75th centile value RI75x selected from the extremities region intensity histogram.
[064] In step 417, a reference bone intensity value representative of all of the reference images is determined. In various embodiments, this representative bone intensity value is the median value RIMEDIAN corresponding to the set of 75th centile values RI75X mentioned above.
[065] Figures 5 and 6 show methodologies for determining anatomically specific intensity thresholds from the reference images 500, 600. Figure 5 shows a methodology including use of an expert and identification of lesion indicating intensity thresholds 500. A first step 511 provides an expert such as an expert in reading nuclear medicine images and in particular bone scan images of patients with bone lesions. In this step, the expert locates lesions on the reference images. In a second step 513, the expert indications are evaluated. This evaluation determines the intensity threshold(s) that indicate a lesion.
[066] Figure 6 shows a second methodology including use of an expert and identification of lesion indicating intensity thresholds 600. Steps include annotation 611, classification 613, and determining intensity threshold values
[067] Annotation 611 utilizes an expert such as the expert mentioned above. Here, the expert annotates each reference image to indicate lesions.
Classification 613 classifies the expert markings to associate pixels with lesions. In an embodiment, a binary classifier system is used such that expert markings indicating lesions are classified as true-positive pixels and other bone pixels are classified as true-negative pixels. [068] Intensity threshold determination 615 determines, for each anatomical region, a single intensity threshold ITV tending to replicate the classification for all patients in the reference group.
[069] For example, for each anatomical region an intensity threshold value is found that tends, for all patients in the group, to maximize the number of true positives (increased mean sensitivity) while minimizing the number of false positives (increased mean specificity).
[070] In various embodiments, lesion segmentation via anatomic region- specific intensity thresholding is performed on a normalized image to detect lesions in each anatomic region by applying a specific threshold to the
normalized image, then performing connected component filtering.
[07l] And, in various embodiments, a receiver operating characteristic curve (ROC or ROC Curve) is used to evaluate the performance of the above binary classifier system. The curve/criteria is created by plotting the fraction of true positives out of the positives (TPR = true positive rate) versus the fraction of false positives out of the negatives (FPR = false positive rate), at various threshold settings. TPR is also known as sensitivity, and FPR is one minus the specificity or true negative rate.
[072] The discrimination threshold, here Intensity Threshold (ITr), is varied to determine an ITr value that tends to optimize both mean sensitivity and mean specificity. For example, an ROC Curve plotting true positive lesion pixels as a function of false positive lesion pixels will typically have a distinctive change of slope indicating an optimum ITr value.
[073] FIG. 7 shows identification of true-positive pixels indicating a lesion 700. As mentioned above, anatomic regions are identified 711. Matching pixel intensities in each test image anatomic region with a corresponding intensity thresholds ITr, the following test 713 is performed Equation 5, Indication Of Lesions: TIPINr. i > ITr
[074] As seen, this equation compares the normalized test image pixel intensities in a particular anatomical region with the reference image derived anatomically specific Intensity Threshold, ITr. Where the test image pixel intensity is greater than the corresponding Intensity Threshold, the pixel is a true-positive pixel indicating the presence of a lesion.
[075] Figure 8 shows evaluation of anatomically specific metrics 800. In particular, for each anatomic region the number of true-positive pixels, Zr, is counted 813. In addition, the intensities of all of the true-positive pixels are summed, SUML, in a subsequent step 815. These steps are repeated for each of the anatomic regions 817.
[076] Figure 9 shows evaluation of summary metrics 900. Summary metrics include for all anatomic regions.
[077] Summary bone lesion area 911 is evaluated as shown in Equation 6 where PA represents the area of one pixel.
Figure imgf000017_0001
Area (BSLA): ~5
[078] Summary bone lesion intensity 913 is evaluated as shown in Equation 7 below.
Equation 7, Summary Bone Scan Lesion Intensity (SBLI):
# regions # regio ns
( ∑SUML) /( J )
[079] Summary bone lesion area thus represents a quantification of the size and number of active regions on the bone scan whereas the bone scan lesion intensity represents the level of bone formation activity.
[080] In various embodiments, bone lesion count 915 is assessed. In an embodiment utilizing a lesion area identifier, lesions are identified as discrete regions including at least five contiguous pixels, each of which is over the determined intensity threshold. Lesion identifiers and the size of contiguous pixel groups in various embodiments consider not only features large enough to be of interest, but also whether there is a likelihood a group of the size selected will be simultaneously affected by common failures such as faulty scanner camera pixels.
Equation 8, Summary Bone Scab Lesion Count (BSLC):
Number of discrete regions of at least five contiguous pixels over the determined intensity threshold.
[081] Changes in the lesion burden metrics between serial bone scans from a given patient may be calculated during response assessment in order to quantitatively assess the patient's response to treatment. The percent change in a lesion burden metric may be used to assess treatment progression and/or response, with cut points in the percent change delineating each response category. For instance, a bone scan image lesion area increase of 30% or greater may be considered progression, and a decrease of 30% or greater may be considered response.
[082] In operation, steps in above described assessments may be varied to suit availability of images, data derived from images, and reference image processing steps. For example, determining anatomic region specific intensity thresholds from reference images might follow normalization of test images. In another example, multiple sets of reference images may be processed and corresponding RIMEDIAN and TIr values used with one or more test images. As such, persons of ordinary skill in the art will recognize from the present disclosure that sequences of image processing steps differing from those described above are appropriate in cases, for example the case where there is a search for an optimum set of reference images. Therefore, operation of the above described system may be varied to suit particular needs and constraints.
[083] Figure 10 illustrates an exemplary assessment system operating scenario 1000. Generally, input image(s) are processed using data from
reference image(s) to produce a quantitative assessment of bone disease burden. To the extent there are patient images at treatment intervals, changes in quantitative indicia of the disease are indicative of a response to the treatment, a progressing disease, or a stable disease.
[084] As shown, patient baseline and week 6 images are available 1020. The assessment process provides the quantitative disease indicia for the baseline and for the week 6 images in generally the same manner.
[085] Initially, anatomic segmentation is performed to segment an input image 1002. During image segmentation, the image is divided into anatomic regions. Anatomic regions selected for this example are spine, ribs, head, extremities, and pelvis. Anatomic segmentation of the input image provides a segmented image similar to the illustrated segmented image 1022.
[086] Image intensity normalization is performed on the segmented input image 1004. Normalization produces images similar to the illustrative
normalized baseline and week 6 images 1024.
[087] Lesion segmentation or identification 1006 follows image
normalization 1004. Here, intensity normalized pixels in each region of the input image are compared with intensity threshold values derived from
corresponding regions of reference images as explained above. The region specific intensity threshold values derived from the reference images are indicative of lesions in the input image.
[088] Optional user review and editing to obtain user-approved lesion segmentation 1008 and adjustments 114 shown in Figure 1 provide for human adjustments to be made to the assessment. For example, false positives due to joint disease and broken bones can be resolved here. Lesion segmentation with or without the optional user review and editing produces images similar to the illustrative baseline and week 6 lesion indicating images 1026.
[089] Computation of lesion burden 1010 follows lesion segmentation 1006 and user review and editing 1008, if any. During this step, measures of lesion area, lesion intensity, and lesion count for specific regions and/or all regions are determined. In an embodiment, lesion area is summed for all regions and lesion intensity is summed for all regions. In various embodiments, lesion count, for example lesion count summed for all regions, together with summary values of lesion area and lesion intensity, provide means to quantify lesion burden.
[090] In various embodiments, patient response assessment 1012 includes a patient response classification report showing for example, response or progression or stable. In an embodiment, a chart 1028 provides a quantitative comparison of baseline and week 6 measures for bone scan lesion count, bone scan lesion area, and bone scan lesion intensity.
[091] In some embodiments, image comparisons utilize a foundation image together with a semi-transparent overlay. In an embodiment, an automatically segmented region image is presented, colorized or not, as a semi- transparent overlay on the bone scan image (original or normalized). Such may be used, inter alia, as an operator aid in adjusting and/or editing an image as needed 114.
[092] In an embodiment, a foundation image, such as a baseline image with lesion segmentation 1026, together with a semi-transparent overlay of the week 6 (or a similar image from another treatment interval) image is used.
Here, colors or colorization may be used to enhance the visual contrast between the "before and after" conditions. Notably, these image comparisons provide what some would see as qualitative, "at a glance" information. To the extent care is taken in preserving the detail in the original images, they also embody a quantitative measure of bone disease burden change.
[093] While various embodiments of the present invention have been described above, it should be understood that they have been presented by way of example only, and not limitation. It will be apparent to those skilled in the art that various changes in the form and details can be made without departing from the spirit and scope of the invention. As such, the breadth and scope of the present invention should not be limited by the above- described exemplary embodiments, but should be defined only in accordance with the following claims and equivalents thereof.

Claims

CLAIMS What is claimed is
1. An automated method for processing a subject bone scan image and quantifying bone lesion burden, the method comprising the steps of:
providing a subject bone scan image formed from pixels;
performing atlas-based anatomic segmentation of the image in order to identify a set of anatomic regions included on the image;
normalizing the intensity of the image such that the intensity of normal bone in the image corresponds with that of normal bone in one or more reference bone scan images;
detecting bone lesions in each region of the image by comparing the intensities of pixels in the region with a region specific intensity threshold derived from the one or more reference bone scan images; and,
quantifying bone lesion burden using characteristics of a set of pixels corresponding to detected bone lesions.
2. The automated method of claim 1 further comprising the steps of: for the subject bone scan image, determining at least one quantitative bone lesion burden indicium from the group lesion area, lesion intensity, and lesion count;
for a previously processed bone scan image, determining the corresponding quantitative bone lesion burden indicium; and, determining patient response based on a comparison of the quantitative bone lesion burden indicia.
3. The automated method of claim 2 wherein the quantitative bone lesion burden indicium is cumulative for all of the regions.
4. The automated method of claim 1 further comprising the steps of: for the subject bone scan image, determining at least two quantitative bone lesion burden indicia from the group lesion area, lesion intensity, and lesion count;
for a previously processed bone scan image, determining the corresponding quantitative bone lesion burden indicia; and,
determining patient response based on a comparison of the quantitative bone lesion burden indicia.
5. The automated method of claim 1 further comprising the steps of: for the subject bone scan image, determining quantitative bone lesion burden indicia lesion area, lesion intensity, and lesion count;
for a previously processed bone scan image, determining the corresponding quantitative bone lesion burden indicia; and,
determining patient response based on a comparison of the quantitative bone lesion burden indicia.
6. The automated method of claim 1 further comprising the step of: selecting as a foundation image a patient baseline image that is
normalized and processed to show lesions;
selecting as a semi-transparent overlay image a patient later in time image that is normalized and processed to show lesions; and,
presenting the superimposed images to a lay-person as a means for explaining how the lesion burden of a particular patient has changed.
7. The automated method of claim 1 further comprising the step of: selecting as a foundation image one of a patient original image or patient normalized image;
selecting as an overlay image a semi-transparent overlay of detected lesions; and,
presenting the superimposed images as a means for visualizing the extent and distribution of lesion burden of a particular patient.
8. The automated method of claim 7 wherein the overlay image is an image that is contemporaneous with the foundation image.
9. The automated method of claim 2 further comprising the steps of: from plural reference scans, determining a normal bone normalizing value ; not region specific; from the subject bone scan image, determining a normal bone intensity value; and,
carrying out the normalizing step using the reference scan normal bone normalizing value and the subject bone scan image normal bone intensity.
10. The automated method of claim 9 further comprising the steps of: annotating plural reference scans to indicate lesions;
classifying annotations as true-positive pixels or otherwise as true- negative pixels; and,
for each anatomical region determining an intensity threshold value tending to replicate the classification.
11. An automated method for processing a subject bone scan image and quantifying bone lesion burden, the method comprising the steps of:
scanning a bony anatomical structure with a scanner to produce a subject bone scan image formed by pixels having intensities indicating rates of bone metabolism;
using an anatomical atlas, anatomically segmenting the subject image into regions;
normalizing the intensities of subject image pixels using a normal bone indicium from a set of reference bone scan images and a normal bone indicium from the subject image;
detecting lesion pixels in the subject image using subject image pixel intensity and reference image derived intensity thresholds that are region specific; and,
from characteristics of the lesion pixels, if any, quantifying bone lesion burden.
12. The automated method of claim 11 further comprising the steps of: for the subject image, determining bone scan lesion area as the number of lesion pixels in all of the regions multiplied by pixel area;
for a previously processed bone scan image, determining the corresponding quantitative bone lesion burden indicium; and,
determining patient response based on a comparison of the quantitative bone lesion burden indicia.
13. The automated method of claim 12 further comprising the steps of: for the subject image, determining summed intensities as the sum of the intensities of the lesion pixels in all of the regions;
for the subject image, determining summed lesion pixels as the sum of the lesion pixels in all of the regions;
determining the bone scan lesion intensity as the summed intensities divided by the summed lesion pixels;
for a previously processed bone scan image, determining the corresponding quantitative bone lesion burden indicium; and,
determining patient response based on a comparison of the quantitative bone lesion burden indicia.
14. The automated method of claim 11 further comprising the steps of: selecting a number k of contiguous pixels unlikely to be simultaneously affected by common failures such as a faulty scanner camera pixels; for the subject image and considering all regions, determining the number of groups j having k or more lesion pixels; and, setting bone scan lesion count equal to j.
15. A device for processing a subject bone scan image and quantifying bone lesion burden, the device comprising: a radiotracer type scanner, a processor, and digital data memory; an anatomic atlas stored in memory; from reference scans a normal bone indicium is derived and stored in memory and a set of lesion indicating intensity thresholds that are region specific is derived and stored in memory; the scanner operable to acquire a subject bone scan image formed from pixels; the processor operable to use the anatomic atlas to anatomically segment the subject image; the processor operable to use the normal bone indicium to normalize the intensities of pixels in the subject image; the processor operable use the intensity thresholds to detect lesion pixels; the processor operable to calculate quantitative lesion burden metrics lesion pixel characteristics.
PCT/US2012/060394 2011-10-18 2012-10-16 Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes WO2013059177A1 (en)

Priority Applications (2)

Application Number Priority Date Filing Date Title
CN201280051415.0A CN103930030B (en) 2011-10-18 2012-10-16 The area of computer aided bone scanning evaluation of the quantization assessment with automation lesion detection and bone disease load variations
EP12842317.5A EP2768395B1 (en) 2011-10-18 2012-10-16 Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes

Applications Claiming Priority (4)

Application Number Priority Date Filing Date Title
US201161548498P 2011-10-18 2011-10-18
US61/548,498 2011-10-18
US201261714318P 2012-10-16 2012-10-16
US61/714,318 2012-10-16

Publications (1)

Publication Number Publication Date
WO2013059177A1 true WO2013059177A1 (en) 2013-04-25

Family

ID=48141274

Family Applications (1)

Application Number Title Priority Date Filing Date
PCT/US2012/060394 WO2013059177A1 (en) 2011-10-18 2012-10-16 Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes

Country Status (2)

Country Link
CN (1) CN103930030B (en)
WO (1) WO2013059177A1 (en)

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN107274389A (en) * 2017-05-25 2017-10-20 中国科学院苏州生物医学工程技术研究所 Femur and Acetabular dissection parameter acquiring method based on CT three-dimensional series images
CN112669254A (en) * 2019-10-16 2021-04-16 中国医药大学附设医院 Deep learning prostate cancer bone metastasis identification system based on whole-body bone scanning image

Families Citing this family (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20190341150A1 (en) * 2018-05-01 2019-11-07 Google Llc Automated Radiographic Diagnosis Using a Mobile Device

Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
JP2002531198A (en) * 1998-11-30 2002-09-24 ホロジック, インコーポレイテッド DICOM compliant file communication including quantitative and image data
JP2004508118A (en) * 2000-09-11 2004-03-18 シーメンス アクチエンゲゼルシヤフト Method, apparatus and software for separating individual objects of a segmented anatomical structure from a 3D dataset of a medical examination method
JP2006512938A (en) * 2002-09-16 2006-04-20 イメージング セラピューティクス,インコーポレーテッド Imaging markers for musculoskeletal diseases
JP2009515594A (en) * 2005-11-11 2009-04-16 ホロジック, インコーポレイテッド Estimating the risk of future fractures using a three-dimensional bone density model

Family Cites Families (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6246745B1 (en) * 1999-10-29 2001-06-12 Compumed, Inc. Method and apparatus for determining bone mineral density
WO2004062495A2 (en) * 2003-01-07 2004-07-29 Imaging Therapeutics, Inc. Methods of predicting musculoskeletal disease

Patent Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
JP2002531198A (en) * 1998-11-30 2002-09-24 ホロジック, インコーポレイテッド DICOM compliant file communication including quantitative and image data
JP2004508118A (en) * 2000-09-11 2004-03-18 シーメンス アクチエンゲゼルシヤフト Method, apparatus and software for separating individual objects of a segmented anatomical structure from a 3D dataset of a medical examination method
JP2006512938A (en) * 2002-09-16 2006-04-20 イメージング セラピューティクス,インコーポレーテッド Imaging markers for musculoskeletal diseases
JP2009515594A (en) * 2005-11-11 2009-04-16 ホロジック, インコーポレイテッド Estimating the risk of future fractures using a three-dimensional bone density model

Non-Patent Citations (9)

* Cited by examiner, † Cited by third party
Title
BR J CANCER, vol. 88, 2003, pages 195 - 201
ERDI YE; HUMM JL; IMBRIACO M; YEUNG H; LARSON SM: "Quantitative bone metastases analysis based on image segmentation", J NUCL MED, vol. 38, 1997, pages 1401 - 1406, XP055194576
IMBRIACO M; LARSON SM; YEUNG HW; MAWLAWI OR; ERDI Y; VENKATRAMAN ES ET AL.: "A new parameter for measuring metastatic bone involvement by prostate cancer: the Bone Scan Index", CLIN CANCER RES, vol. 4, 1998, pages 1765 - 1772
JEONG CB; KIM KG; KIM TS; KIM SK: "Comparison of image enhancement methods for the effective diagnosis in successive whole-body bone scans", J DIGIT IMAGING, vol. 24, 2011, pages 424 - 436, XP019900879, DOI: doi:10.1007/s10278-010-9273-x
MORRIS MJ; JIA X; LARSON SM; KELLY A; MEZHERITZKY I; STEPHENSON RD ET AL.: "Post-treatment serial bone scan index (BSI) as an outcome measure predicting survival", GENITOURINARY CANCERS SYMPOSIUM, 2008
OHLSSON ET AL.: "Automated decision support for bone scintigraphy", COMPUTER-BASED MEDICAL SYSTEMS, 2009
SEE SADIK M; JAKOBSSON D; OLOFSSON F; OHLSSON M; SUURKULA M; EDENBRANDT L.: "A new computer-based decision-support system for the interpretation of bone scans", NUCL MED COMMUN, vol. 27, 2006, pages 417 - 423, XP003025148
YAHARA J; NOGUCHI M; NODA S.: "Quantitative evaluation of bone metastases in patients with advanced prostate cancer during systemic treatment", BJU INT, vol. 92, 2003, pages 379 - 384
YIN TK; CHIU NT: "A computer-aided diagnosis for locating abnormalities in bone scintigraphy by a fuzzy system with a three-step minimization approach", IEEE TRANS MED IMAGING, vol. 23, 2004, pages 639 - 654, XP011112032, DOI: doi:10.1109/TMI.2004.826355

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN107274389A (en) * 2017-05-25 2017-10-20 中国科学院苏州生物医学工程技术研究所 Femur and Acetabular dissection parameter acquiring method based on CT three-dimensional series images
CN112669254A (en) * 2019-10-16 2021-04-16 中国医药大学附设医院 Deep learning prostate cancer bone metastasis identification system based on whole-body bone scanning image

Also Published As

Publication number Publication date
CN103930030B (en) 2017-06-16
CN103930030A (en) 2014-07-16

Similar Documents

Publication Publication Date Title
US9002081B2 (en) Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes
Campadelli et al. A fully automated method for lung nodule detection from postero-anterior chest radiographs
Goo A computer-aided diagnosis for evaluating lung nodules on chest CT: the current status and perspective
Mesanovic et al. Automatic CT image segmentation of the lungs with region growing algorithm
US11321841B2 (en) Image analysis method, image analysis device, image analysis system, and storage medium
WO2015175746A1 (en) Visualization and quantification of lung disease utilizing image registration
Llobet et al. Semi-automated and fully automated mammographic density measurement and breast cancer risk prediction
US7203350B2 (en) Display for computer-aided diagnosis of mammograms
JP6475691B2 (en) Method and x-ray system for computer-aided detection of structures in x-ray images
Pu et al. Computerized assessment of pulmonary fissure integrity using high resolution CT
US20220284578A1 (en) Image processing for stroke characterization
CN113256634B (en) Cervical carcinoma TCT slice vagina arranging method and system based on deep learning
Aslantas et al. CADBOSS: A computer-aided diagnosis system for whole-body bone scintigraphy scans
Paquerault et al. Radial gradient‐based segmentation of mammographic microcalcifications: Observer evaluation and effect on CAD performance
WO2016146469A1 (en) Tissue sample analysis technique
WO2013059177A1 (en) Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes
KR20100010973A (en) Method for automatic classifier of lung diseases
Gc et al. Variability measurement for breast cancer classification of mammographic masses
JP2004213643A (en) Computer aided reconciliation method
Buckler et al. Inter-method performance study of tumor volumetry assessment on computed tomography test-retest data
Lu et al. Computing mammographic density from a multiple regression model constructed with image-acquisition parameters from a full-field digital mammographic unit
EP2768395B1 (en) Computer-aided bone scan assessment with automated lesion detection and quantitative assessment of bone disease burden changes
Abdullah et al. Lung Lesion Identification Using Geometrical Feature and Optical Flow Method from Computed Tomography Scan Images
CN111445436A (en) Lung analysis and reporting system
He et al. Mammographic image segmentation and risk classification using a novel texture signature based methodology

Legal Events

Date Code Title Description
121 Ep: the epo has been informed by wipo that ep was designated in this application

Ref document number: 12842317

Country of ref document: EP

Kind code of ref document: A1

WWE Wipo information: entry into national phase

Ref document number: 2012842317

Country of ref document: EP

NENP Non-entry into the national phase

Ref country code: DE