WO2003025554A2 - Method quantitative video-microscopy and associated system and computer software program product - Google Patents
Method quantitative video-microscopy and associated system and computer software program product Download PDFInfo
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- WO2003025554A2 WO2003025554A2 PCT/US2002/029567 US0229567W WO03025554A2 WO 2003025554 A2 WO2003025554 A2 WO 2003025554A2 US 0229567 W US0229567 W US 0229567W WO 03025554 A2 WO03025554 A2 WO 03025554A2
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06V—IMAGE OR VIDEO RECOGNITION OR UNDERSTANDING
- G06V20/00—Scenes; Scene-specific elements
- G06V20/60—Type of objects
- G06V20/69—Microscopic objects, e.g. biological cells or cellular parts
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01N—INVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
- G01N21/00—Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
- G01N21/17—Systems in which incident light is modified in accordance with the properties of the material investigated
- G01N21/25—Colour; Spectral properties, i.e. comparison of effect of material on the light at two or more different wavelengths or wavelength bands
- G01N21/27—Colour; Spectral properties, i.e. comparison of effect of material on the light at two or more different wavelengths or wavelength bands using photo-electric detection ; circuits for computing concentration
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T7/00—Image analysis
- G06T7/60—Analysis of geometric attributes
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06T—IMAGE DATA PROCESSING OR GENERATION, IN GENERAL
- G06T2207/00—Indexing scheme for image analysis or image enhancement
- G06T2207/10—Image acquisition modality
- G06T2207/10056—Microscopic image
Definitions
- the present invention relates to image analysis and, more particularly, to a method for quantitative video-microscopy in cellular biology and pathology applications and an associated system and computer software program product therefor.
- Effective analysis of microscopic images is essential in cellular biology and pathology, particularly for detection and quantification of genetic materials such as, for example, genes or messenger RNA, or the expression of this genetic information in the form of proteins such as through, for example, gene amplification, gene deletion, gene mutation, messenger RNA molecule quantification, or protein expression analyses.
- Gene amplification is the presence of too many copies of the same gene in one cell, wherein a cell usually contains two copies, otherwise known as alleles, of the same gene.
- Gene deletion indicates that less than two copies of a gene can be found in a cell.
- Gene mutation indicates the presence of incomplete or nonfunctional genes.
- Messenger RNAs are molecules of genetic information, synthesized from a gene reading process, that serve as templates for protein synthesis. Protein expression is the production of a given protein by a cell. If the gene coding for the given protein, determined from a protein expression process, is enhanced or excess copies of the gene or mRNA are present, the protein may be over-expressed. Conversely, if the gene coding is suppressed or absent, the protein maybe under- expressed or absent.
- Normal cellular behaviors are precisely controlled by molecular mechanisms involving a large number of proteins, mRNAs, and genes.
- Gene amplification, gene deletion, and gene mutation are known to have a prominent role in abnormal cellular behaviors through abnormal protein expression.
- the range of cellular behaviors of concern includes behaviors as diverse as, for example, proliferation or differentiation regulation. Therefore, effective detection and quantification in gene amplification, deletion and mutation, mRNA quantification, or protein expression analyses is necessary in order to facilitate useful research, diagnostic and prognostic tools.
- Such techniques include Western, Northern and Southern blots, polymerase chain reaction (“PCR”), enzyme-linked immunoseparation assay (“ELISA”), and comparative genomic hybridization (“CGH”) techniques.
- PCR polymerase chain reaction
- ELISA enzyme-linked immunoseparation assay
- CGH comparative genomic hybridization
- the biological samples When microscopy is the chosen laboratory technique, the biological samples must first undergo specific detection and revelation preparations. Once the samples are prepared, a human expert typically analyzes the samples with a microscope alone in a qualitative study, or with a microscope coupled to a camera and a computer in a quantitative and generally standardized study. In some instances, the microscope may be configured for fully automatic analysis, wherein the microscope is automated with a motorized stage and focus, motorized objective changers, automatic light intensity controls and the like.
- the preparation of the samples for detection may involve different types of preparation techniques that are suited to microscopic imaging analysis, such as, for example, hybridization-based and immunolabeling-based preparation techniques. Such detection techniques may be coupled with appropriate revelation techniques, such as, for example, fluorescence-based and visible color reaction-based techniques.
- ISH In Situ Hybridization
- FISH Fluorescent In Situ Hybridization
- ISH and FISH are detection and revelation techniques used, for example, for detection and quantification in genetic information amplification and mutation analyses.
- Both ISH and FISH can be applied to histological or cytological samples. These techniques use specific complementary probes for recognizing corresponding precise sequences.
- the specific probe may include a chemical (ISH) marker or a fluorescent (FISH) marker, wherein the samples are then analyzed using a transmission microscope or a fluorescence microscope, respectively.
- ISH chemical marker
- FISH fluorescent
- the use of a chemical marker or a fluorescent marker depends on the goal of the user, each type of marker having corresponding advantages over the other in particular instances.
- immunohistochemistry is the application of immunochemistry to tissue sections
- ICC is the application of immunochemistry to cultured cells or tissue imprints after they have undergone specific cytological preparations such as, for example, liquid-based preparations.
- Immunochemistry is a family of techniques based on the use of a specific antibody, wherein antibodies are used to specifically target molecules inside or on the surface of cells. The antibody typically contains a marker that will undergo a biochemical reaction, and thereby experience a change color, upon encountering the targeted molecules. In some instances, signal amplification may be integrated into the particular protocol, wherein a secondary antibody, that includes the marker stain, follows the application of a primary specific antibody.
- chromogens of different colors are used to distinguish among the different markers.
- the maximum number of markers that may be used in a study is restricted by several factors.
- the spectral overlapping of the colors used to reveal the respective markers may be a limiting factor because dyes may absorb throughout a large portion of the visible spectrum. Accordingly, the higher the number of dyes involved in a study, the higher the risk of spectral overlapping.
- the spectral resolution of the acquisition device may be a limiting factor and the minimal color shift that the device is able to detect must be considered.
- immunochemistry as well as chemistry in ISH, are generally considered to exhibit poor sensitivity when quantification of a marker must be achieved.
- the quantification accuracy of these techniques may be dependent upon several factors.
- the type of reaction used may play a role in the accuracy of the technique since the linearity of the relationship between ligand concentration and the degree of the immunochemical staining reaction may strongly depend on the reaction type. More particularly, for example, a peroxidase / anti-peroxidase method may be more linear than a biotin-avidin method.
- the cellular localization of the markers may also affect accuracy where, for example, if membrane and nuclear markers spatially overlap, the resulting color is a mixture of the respective colors.
- a calibration standard such as, for example, cells with known features, gels with given concentrations of the marker, or the like, may be required where a developed analysis model is applied to a new and different case.
- Staining kits are generally available which incorporate calibration standards.
- the calibration standard is usually only applicable to a particular specimen, such as a specific cell or a structure of a specific type which is known to exhibit constant features with respect to the standard, and may be of limited utility when applied to a sample of a different nature.
- HER2 is a membrane protein that has been shown to have a diagnostic and prognostic significance in metastatic breast cancer. Because HER2 positive patients were shown to be more sensitive to treatments including Herceptin® (a target treatment developed by Genentech), the definition of the HER2 status of metastatic breast cancers has been proven to be of first importance in the choice of the appropriate treatment protocol. This definition of the HER2 status was based on a study of samples treated with either hybridization (FISH, ISH) or immunolabeling (IHC) techniques.
- FISH hybridization
- ISH immunolabeling
- a typical microscopy device based on image acquisition and processing, the magnified image of the sample must first be captured and digitized with a camera.
- CCD charge coupled device
- Excluding spectrophotometers two different techniques are generally used to perform such colorimetric microscopy studies.
- a black and white (BW) CCD camera may be used. In such an instance, a gray level image of the sample is obtained, corresponding to a monochromatic light having a wavelength specific to the staining of the sample to be analyzed.
- the specific wavelength of light is obtained either by filtering a white source light via a specific narrow bandwidth filter, or by directly controlling the wavelength of the light source, using either manual or electronic controls. Accordingly, using this technique, the analysis time increases as the number of colors increases because a light source or a filter must be selected for every different sample staining or every different wavelength. Therefore, many different images of the sample, showing the spectral response of the sample at different wavelengths, must be individually captured in a sequential order to facilitate the analysis. When multiple scenes or fields of view must be analyzed, the typical protocol is to automate the sequence in a batch mode to conserve processing time.
- a color CCD digital camera is used, wherein three gray level images of the sample are simultaneously captured and obtained.
- Each gray level image corresponds to the respective Red, Green and Blue channel (RGB) of the color CCD camera.
- the images are then analyzed directly in the RGB color space by restricting the analysis to pixels located in a specific region of the RGB cube, the specific region also including pixels from a corresponding training database.
- the images are analyzed, after mathematical transform of the RGB color space, in one of the many color spaces defined by the CIE (International Commission on Illumination) such as, for example, an HLS (Hue, Luminance or Saturation) space.
- CIE International Commission on Illumination
- the camera allows a fast image capture of the three spectral components of a scene in a parallel manner.
- cameras modified in this manner may be restricted to specific spectral analysis parameters because the filters cannot be changed and therefore cannot be adapted to address a unique dye combination used for the sample.
- the second technique generally relies upon either the detection of contrast between the specie/species of interest and the remainder of the sample or the analysis of the sample over a narrow bandwidth.
- colorimetric analyses of prepared samples are of limited use in the detection and quantification of species of interest due to several factors such as, for example, spectral overlapping, mixing of colors due to spatially overlap of membrane, cytoplasmic, and nuclear markers, chromatic aberrations in the optical path, limited spectral resolution of the acquisition device, calibration particularities, subjectivity of the detection and quantification process, and inconsistencies between human operators.
- the image processing portion of colorimetric analysis techniques has historically been directed to the subjective detection of contrast within the prepared sample or to a complex and voluminous analysis of the sample at various specific wavelengths of light using a combination of light sources and filters.
- the present invention which, in one embodiment, provides a method of determining an amount of at least one molecular specie comprising a sample, each molecular specie being indicated by a dye. The amount of the molecular specie is determined from an image of the sample captured as image data by a color image acquisition device in a video-microscopy system.
- an optical density of the sample is determined in each of a red, green, and blue channel at a particular pixel in the image.
- a corresponding optical density matrix is thereafter formed for that pixel.
- the optical density matrix is then multiplied by the inverse of a relative absorption coefficient matrix so as to form a resultant matrix for the pixel.
- the relative absorption coefficient matrix comprises a relative absorption coefficient for each dye, independently of the sample, in each of the red, green, and blue channels.
- the resultant matrix thus comprises the amount of each molecular specie, as indicated by the respective dye, for that pixel.
- the amount of each molecular specie is determined from a color image of the sample.
- a color image acquisition device such as an RGB camera and associated frame grabber or a color scanner, is used to acquire the image of the sample.
- the image may then be balanced and normalized according to an empty field (white) reference and a black field image and, in some instances, corrected for shading.
- the image also corrected for chromatic aberrations on a channel by channel basis.
- an optical density of the sample is determined in each of the red, green, and blue channels at a particular pixel in the image from the measured transmitted light.
- a corresponding optical density matrix is thereafter formed for that pixel and then multiplied by the inverse of a relative absorption coefficient matrix of the dyes present in the sample so as to form a resultant matrix for the pixel representing the optical density contributions from each dye.
- the relative absorption coefficient matrix comprises a relative absorption coefficient for each of the dyes used in the sample preparation protocol in each of the red, green, and blue channels
- the resultant matrix thus comprises the amount, as expressed in proportion to concentration, of each molecular species as indicated by the respective dyes for that pixel.
- Another advantageous aspect of the present invention comprises a video- microscopy system for determining an amount of a molecular specie comprising a sample from an image of the sample, wherein each molecular specie is indicated by a dye.
- the system comprises a color image acquisition device capable of capturing a magnified digital image of the sample as image data, and a computer device operably engaged with the image acquisition device.
- the computer device comprises a processing portion configured to determine an optical density of the sample from the image data in each of a red, green, and blue channel and at a pixel in the image to thereby form a corresponding optical density matrix for the pixel.
- Another processing portion of the computer device is further configured to multiply the optical density " matrix by the inverse of a relative abso ⁇ tion coefficient matrix so as to form a resultant matrix for the pixel of the image.
- the relative absorption coefficient matrix comprises a relative absorption coefficient for each dye, independently of the sample, in each of the red, green, and blue channels.
- the resultant matrix thus comprises the amount of each molecular specie, as indicated by the respective dye, for that pixel.
- Still another advantageous aspect of the present invention comprises a computer software program product configured to be executable on a computer device and capable of determining an amount of a molecular specie comprising a sample from a digital image of the sample captured as image data by a color image acquisition device in a video-microscopy system, wherein each molecular specie is indicated by a dye.
- One executable portion of the computer software program product is capable of determining an optical density of the sample in each of a red, green, and blue channel and at a pixel in the image to thereby form a corresponding optical density matrix for the pixel.
- Another executable portion of the computer software program product is further capable of multiplying the optical density matrix by the inverse of a relative absorption coefficient matrix so as to form a resultant matrix for the pixel of the image.
- the relative absorption coefficient matrix comprises a relative absorption coefficient for each dye, independently of the sample, in each of the red, green, and blue channels.
- the resultant matrix thus comprises the amount of each molecular specie, as indicated by the respective dye, for that pixel.
- Such imaging techniques as described herein when particularly adapted to color imaging, allow a substantially real time, or video rate, processing and viewing of the sample.
- a RGB color CCD camera allows acquisition and processing time for sample images to be performed at a video rate, typically 40 millisecond per frame, which provides a considerable advantage as compared to prior art imaging techniques which generally exhibit field of view acquisition and processing times of over 1 second.
- image acquisition through the different channels is performed in parallel and look-up tables (LUT) can be generated so as to map the possible RGB color input values to predetermined concentrations and/or transmittance of each of various dyes.
- LUT look-up tables
- embodiments of the present invention comprise a colorimetric analysis technique for prepared samples that provides effective detection and quantification of species of interest that overcomes limiting factors of prior art techniques such as, for example, spectral overlapping, mixing of colors due to spatially overlap of membrane and nuclear markers, limited spectral resolution of the acquisition device, calibration particularities, the subjectivity of the detection and quantification process, and inconsistencies between human operators of the analysis equipment.
- Embodiments of the present invention further provide an image processing technique which does not rely upon the subjective detection of contrast within the prepared sample or a complex and voluminous analysis of the sample at specific wavelengths of light using a combination of light sources and filters.
- embodiments of the present invention provide a simpler and more effective colorimetric analysis technique that overcomes detection and quantification limitations in prior art analysis techniques, reduces subjectivity and inconsistency in the sample analysis, and is capable of providing the necessary analysis information about the sample, once an image of the sample is captured, without relying upon further examination of the sample to complete the analysis.
- FIG. 1 is a general schematic representation of a quantitative video- microscopy system according to one embodiment of the present invention.
- FIG. 2 is a schematic representation of the practical realization in an extended configuration of a quantitative video-microscopy system according to one embodiment of the present invention.
- FIG. 1 a quantitative video-microscopy system, indicated by the numeral 100, according to one embodiment of the present invention.
- the system 100 generally comprises a microscope 150 having a light source 200 and a magnifying objective 250, a camera 300, a computer device 350, and a data transmission link 400 between the camera 300 and the computer device 350.
- the microscope 150 may comprise, for example, an Axioplan (or Axiovert) microscope produced by ZEISS of Germany or a similar microscope having a bright field light source.
- the camera 300 operably engages the microscope 150 and, in one embodiment, comprises a 3 CCD RGB camera such as, for instance, a Model No. DC-330E Dage-MTI RGB 3CCD camera produced by Dage- MTI, Inc. of Michigan City, IN or a similar RGB camera.
- a camera 300 also includes an associated frame grabber (not shown) to facilitate image capture, both the camera 300 and associated frame grabber being referred to herein as the "camera 300" for convenience.
- both camera 300 and microscope 150 may be replaced by, for example, a linear flat scanner having a 3 CCD chip or equivalent and a controlled illumination source.
- a Model No. Super CoolScan 4000 ED scanner produced by Nikon Corporation may be used for low- resolution imaging. Note that, though different configurations of the necessary system 100 are contemplated by the present invention, the present invention will be described herein in terms of a camera 300 and associated microscope 150.
- the camera 300 is generally configured to capture an image 450 of a sample 500 through the magnifying objective 250 (where a flat scanner is used, the image
- the image 450 is captured through internal lenses), wherein the image 450 may further comprise a digital image having corresponding image data (collectively referred to herein as "the image 450").
- the image 450 is generally captured as a whole, wherein the corresponding image data comprises a red channel 550, a green channel 600, and a blue channel 650 image of the field of view.
- the data transmission link 400 is configured so as to be capable of transmitting the image 450 to the computer device 350, wherein the computer device 350 is further configured to be capable of analyzing the image 450 with respect to each of the red 550, green 600, and blue 650 channels.
- the system 100 is configured to analyze the sample in accordance with the Lambert-Beer law.
- the Lambert-Beer law generally describes a proportionality that can be observed between the concentration of molecules in a solution (the concentration of the "molecular specie” or the “sample”) and the light intensity measured through the solution.
- the Lambert-Beer law is typically expressed as:
- OD is the optical density of the solution
- ⁇ is a proportionality constant called the molar extinction or absorption coefficient
- 1 is the thickness of the sample
- C is the concentration of the molecular specie.
- the absorption coefficient ⁇ is specific to the molecular specie and is typically expressed in units of L-mol " , cm " .
- This proportionality relationship defined by the Lambert-Beer law has been verified under the several conditions including, for example, monochromatic light illuminating the sample, low molecular concentration within the sample, generally no fluorescence or light response heterogeneity (negligible fluorescence and diffusion) of the sample, and lack of chemical photosensitivity of the sample.
- another requirement for an analysis according to the Lambert-Beer law includes, for instance, correct Koehler illumination of the sample under the microscope. Koehler illumination is available with many modern microscopes, providing an even illumination of the sample in the image plane and allowing for effective contrast control. Koehler illumination is critical for certain processes such as, for example, densitometry analysis.
- Correct Koehler illumination is typically provided by, for example, a two-stage illuminating system for the microscope in which the source is imaged in the aperture of the sub-stage condenser by an auxiliary condenser.
- the sub-stage condenser forms an image of the auxiliary condenser on the object.
- An iris diaphragm may also be placed at each condenser, wherein the first iris controls the area of the object to be illuminated, and the second iris varies the numerical aperture of the illuminating beam.
- glass tends to disperse light, which typically causes a simple glass lens to, for example, focus blue light at a shorter distance than red light. That is, a simple glass lens will exhibit different focal lengths for light comprising different wavelengths.
- This dispersion characteristic of glass gives rise to two observed effects. First, longitudinal chromatic aberration, or the positional difference of the focal points for different wavelengths of light along the vertical axis, is observed where, upon focusing the image for selected wavelengths of light corresponding to a particular color, the image will tend to be slightly out of focus when viewed under wavelengths of light corresponding to other colors.
- RGB color space if the image is focused for green wavelengths of light, the same image will tend to be out of focus when viewed under blue or red wavelengths of light.
- lateral chromatic aberration is observed as a difference in magnification for light of different wavelengths due to the different focal lengths thereof.
- an image viewed under relatively short blue light wavelengths will appear larger than the same image viewed under relatively longer red light wavelengths.
- a large portion of the apparent chromatic aberration may be corrected.
- some residual lateral chromatic aberration may still remain, resulting in differences in magnification across wavelengths of light.
- This lateral chromatic aberration may be difficult to visually observe since a human observer tends to concentrate on the center of the field of view where the lateral aberration is typically absent.
- a very small lateral chromatic aberration resulting in, for instance, even less that 1% difference in magnification between wavelengths, will result in slight color shifts about the edges of objects in the field of view, but located away for the optical center of the objective.
- a pixel located at a given (x,y) position on the image may not exactly depict the corresponding portion of the object under investigation depending on the wavelengths of light used to illuminate the object and the location of the object within the field of view.
- a basic premise is that the exact same part of the object in the field of view must be examined. Therefore, images obtained for separate wavelengths of light must be adjusted to provide correlation with respect to the regions of the field of view where chromagen separation equations must be solved.
- one advantageous aspect of the present invention involves a method of correcting lateral chromatic aberration within a microscopy system.
- the coordinates of the center of the magnifying objective 250 are determined with respect to the center of the electronic device or chip comprising the image-producing component of the camera 300.
- An observed magnification factor is then determined for each wavelength and compared to the magnification factor for an arbitrary chosen wavelength.
- the central wavelength namely the green channel 600 would comprise the chosen wavelength to which the magnification factor for each of the red 550 and blue 650 channels would be compared.
- the image for each wavelength is then adjusted according to the determined relative magnification factor and the relative coordinates of the center of the magnifying objective 250.
- a specific calibration slide is used, wherein the slide is configured with a grid of regularly spaced fine holes through a light blocking media.
- An image of the grid is taken at each wavelength of light used to illuminate the sample. For example, an image may be produced for each of the red 550, green 600, and blue 650 channels.
- the center of each hole is then computed in, for instance, x,y coordinates.
- the image corresponding to the wavelength of light nearest to the mean of the wavelengths of light under consideration (the green channel 600, for example) is then designated as the reference image. Subsequently, each of the images for the other wavelength under consideration is then compared to the reference- image.
- Equations such as, for example, linear equations that minimize the reconstruction error for ⁇ x as a function of x and ⁇ y as a function of y, are then determined. From these two equations, the center of the objective (x 0 ,y 0 ) is determined, where x 0 comprising the solution of the first equation in x when ⁇ x is 0 and y 0 comprises the solution of the second equation in y when ⁇ y is 0.
- This image for the particular wavelength is then spatially adjusted such that the origin of the image corresponds to the center of the objective and the magnification of the image corresponds to the magnification of the reference image.
- the additive property of the Lambert-Beer law can be expanded to a situation in which the scene is analyzed in a color environment, generated by, for example, an RGB camera, separated into a red, green, and blue channel.
- the marker dye (or "dye 1") exhibits absorption coefficients, ⁇ r , ⁇ g , and ⁇ lb , in the red, green and blue channels, respectively.
- the analysis of the image in each of the red, green, and blue channels is equivalent to analyzing a red representation of the image across the red spectra, a green representation of the image across the green spectra, and a blue representation of the image across the blue spectra.
- the three dyes may comprise, for instance, one marker dye and two counterstains, or two marker dyes and one counterstain, or even three separate marker dyes.
- this demonstrated property of the Lambert-Beer law may be expanded to included an even greater plurality of dye combinations in accordance with the spirit and scope of the present invention.
- one particularly advantageous embodiment of the present invention utilizes a fast capture color imaging device such as, for example, a 3 CCD RGB camera, for multi-spectral imaging of the markers over three distinct (red, green, and blue) channels. Accordingly, the exemplary analysis herein is presented in terms of three equations, though one skilled in the art will appreciate that the demonstrated concept may be applied to as many channels as are available with a particular imaging device.
- the concentration C of the molecular specie can be extended and examined as the product of 1 and C (/ • C) and the results treated accordingly.
- the concentration of one dye is being compared to the concentration of another dye in a particular sample, the sample thickness term will be common to both concentrations and thus it becomes less important to determine the sample thickness as an absolute and accurate value. Accordingly, it will be understood by one skilled in the art that an accurate determination of the thickness of the sample is typically not required, but may generally be treated as a constant in examining the equations as detailed herein.
- the application of the Lambert-Beer law to a digital microscopy system 100 of the present invention also recognizes that the Lambert-Beer law can also be expressed as:
- a digital image 450 of the sample 500 comprising a plurality of pixels arranged, for example, according to a Cartesian coordinate system, where (x,y) signifies a particular pixel in the image 450, OD (X)V) is the optical density of the sample 500 at that pixel, I X;V is the measured light intensity or transmittance of the sample 500 at that pixel, and Io (X , y ) is the light intensity of the light source 200 as measured without any intermediate light-absorbing object, such as the sample. Accordingly:
- IOD is the integrated optical density of the digital image 450 of the sample 500
- N is the number of pixels in the surface image 450 of the sample.
- the logarithmic relationship described in equations (9) and (10) may be expressed in various bases within the spirit and scope of the present invention.
- the proportionality constant may be appropriately considered where relative comparisons are drawn in light intensities.
- the proportionality relationship between the optical density OD of the sample and the dye concentrations is conserved. Therefore, for a prepared sample 500 examined by the system 100, the appropriate relation is expressed as:
- the initial intensity I 0 of the light source 200 which corresponds to 100% transmittance, will preferably be expressed in each of the red 550, green 600, and blue 650 channels as a value approaching 255, representing the brightest possible value in each channel.
- the camera 300 and/or the light source 200 may be adjusted accordingly such that, in the absence of the sample, a pure "white" light will have an intensity value of 255 in each of the red 550, green 600, and blue 650 channels, corresponding to 100% transmittance.
- a "black image” will have an intensity value approaching 0 in each of the red 550, green 600, and blue 650 channels.
- the initial intensity I 0 of the light source 200 is therefore expressed as the difference between the intensity value measured in presence of the light source 200 minus the intensity value measured in absence of the light source 200 for each of the red 550, green 600, and blue 650 channels. Because the intensity of the light source 200 may vary spatially across the image 450, or over the measured field of view, and because the magnifying objective 250 or other optical components may heterogeneously absorb light, 100% transmittance may be represented by various differential intensities over the measured field of view.
- the optical density OD of the sample is expressed as the logarithm of the ratio of light transmittance in absence of the sample (initial intensity I 0 ) to light transmittance in presence of the sample (I), the optical density OD is largely spatially insensitive to small variations in the differential intensities over the measured field of view.
- the measurement of the light intensity for any pixel, in the presence of the sample can be translated into the transmittance I at that pixel and in each of the red 550, green 600, and blue 650 channels.
- the optical density OD can be computed.
- the absorption coefficient ⁇ of that dye may be determined in each of the red 550, green 600, and blue 650 channels.
- 1-C for a given pixel will be equal in each of the red 550, green 600, and blue 650 channels.
- the absorption coefficient ⁇ can be computed according to equation (11) or in each of the red 550, green 600, and blue 650 channels as:
- the absorption coefficients ⁇ are computed for each channel according to the ratio of the optical density OD in each channel, measured at a given pixel, to the maximum optical density OD out of all the channels measured at the same pixel. More particularly, it will be appreciated by one skilled in the art that the determination of the absorption coefficient ⁇ in each of the red 550, green 600, and blue 650 channels, in the absence of a priori knowledge of 1 and/or C, is a matter of manipulating the linear equations in order to achieve a relative solution where 1-C is arbitrarily set to a value of 1, wherein:
- a relative absorption coefficient ⁇ in each of the red 550, green 600, and blue 650 channels and for any given pixel, may be computed with an error factor equal to I*C.
- an absorption coefficient ⁇ matrix for different dyes may be performed independently of sample evaluation and stored for further application to samples treated with at least one of the respective dyes.
- the various absorption coefficient ⁇ matrices for particular dyes, as well as the original light intensity I Tha data for the light source 200 may be stored in, for example, the computer device 350, a server located on an intranet or the Internet, or other data storage device as will be appreciated by one skilled in the art.
- the appropriate equations may be solved as a set of linear equations so as to extract the respective concentrations of the dyes C l5 C 2 and C 3 .
- Equation (21) may also be alternatively expressed as:
- a "1 is the matrix inverse of matrix A
- parameters may be established such that the number of equations is greater than or equal to the number of unknowns, or M > N.
- M > N the number of unknowns
- the best “compromise” or best fit solution is often the solution that most closely and simultaneously satisfies all of the equations.
- closeness may be defined in, for example, a least-squares manner, wherein the sum of the squares of the differences between both sides of equation (21) is minimized.
- the over-determined set of linear equations may typically be reduced to a solvable linear problem, often referred to as a linear least-squares problem, that may be solved with singular value decomposition (S VD) mathematics as will be appreciated by one skilled in the art.
- SVD is directed to the parametric modeling of data and is usually the chosen method for solving linear least-squares problems and is described in further detail in, for example, NUMERICAL RECIPES IN C: THE ART OF SCIENTIFIC COMPUTING (ISBN 0-521-43108-5) Copyright (C) 1988- 1992 by Cambridge University Press. Programs Copyright (C) 1988-1992 by Numerical Recipes Software.
- pre-computing solutions for all possible pixel values from the described system configuration may effectively facilitate real time processing of the image analysis. More particularly, if an 8 bit color image acquisition device such as, for example, an 8 bit 3CCD RGB camera is utilized, the measured light intensity I of a sample will have 256 possible values ranging between limits of 0 and 255 in each of the red 550, green 600, and blue 650 channels. In such an instance, all possible gray values (256 3 possible gray values for an 8 bit system) with respect to the original light intensity I Tha may be pre-computed and stored, for example, as a look-up table (LUT) within the computer device 350.
- LUT look-up table
- the transmitted light intensity I (or the optical density OD) can be measured at a pixel in each of the red 550, green 600, and blue 650 channels and then compared to the previously stored gray values and the absorption coefficient ⁇ matrix for that particular dye to thereby determine the dye concentration C, or an estimate thereof as the product 1-C, at that pixel.
- a system having a gray value resolution exceeding 8 bits per channel will lead to larger LUTs such as, for example, a LUT of > 1GB for a system resolution of 10 bits per channel, wherein the computer device 350 may be appropriately configured to provide the necessary computing and/or storage capabilities.
- optical density OD matrix (each element being computed as ln(I 0 /T)) thus becomes:
- an image 450 of the sample 500 is captured by the camera 300.
- the computer device 350 determines that the transmitted light intensity in each of the red 550, green 600, and blue 650 channels is:
- the determined gray levels or, in this example, RGB transmittance values from any combination of the three subject dyes may be used to reconstruct an artificial image, since there are no unknowns. Accordingly, for that particular pixel and the determined dye concentrations, images for single dyes would correspond to the following Black and White (BW) or RGB pixel intensities:
- Dye3 0.058 240 244 240 247 Further advantageous aspects of the present invention are realized as a result of the dye separation techniques using color video imaging as previously described herein.
- an artificial image of the field of view may be generated in an RGB color space or in gray levels as a substantially real time or live image, or as a still image, using combinations of the dyes comprising a marker and/or a counterstain used to prepare the sample. More particularly, an artificial image of the field of view may be produced which shows the sample as affected by all of the dyes, the sample as affected by one or more marker dyes, or the sample as affected by the counterstain.
- the capabilities of the system may be extended such that, for instance, the sample or field of view may be automatically scanned to detect a specific region of interest as identified by the characteristics of a particular dye or to affect or facilitate a task to be performed on that specific region of interest.
- the system may be configured so as to be capable of detecting one or more particular dyes which have been previously characterized by the system.
- a dye may comprise, for example, the ink from a particular pen or similar ink marker that has been characterized by the system as having unique color features, these unique color features being retained by the system as a corresponding set of extinction coefficients.
- the system may be configured to recognize and respond to portions of the field of view in which this dye is identified and that, in some instances, the one or more particular markers may comprise a tangible portion of such a system as described herein.
- such a pen may be used, for example, where an operator such a pathologist or a cytotechnologist identifies special areas of interest on a sample-containing glass or plastic slide.
- a special area of interest may comprise, for example, a potential diagnostic area or a reference area.
- the operator using the pen, may then surround the area with a line of ink from that pen.
- the operator may feed the slides into, for instance, an automatic scanning system for quantitative evaluation. Having been configured to detect the ink from the pen, the system may then inclusively identify the area of interest, corresponding to the area within the ink line, circled by the operator with the pen.
- the system may thereafter appropriately process that area of the slide where, for example, one color of pen ink may indicate that a particular diagnostic evaluation must be performed, while another color of ink may indicate that the area contains a calibration or reference material and would call for the system to run a corresponding calibration procedure.
- one color of pen ink may indicate that a particular diagnostic evaluation must be performed
- another color of ink may indicate that the area contains a calibration or reference material and would call for the system to run a corresponding calibration procedure.
- the described technique may be readily adapted to examine other mounting forms for microscopic material such as, for example, microtiter plates or microarrays.
- the artificial images of the field of view may also facilitate the presentation of the data in a configuration allowing identification and selection of meaningful objects or areas of interest as, for example, still images in a report prepared for diagnostic or other reporting purposes.
- the differences in characteristics between the marker dyes and the counterstain, as realized in various dye-specific images of the sample may be used to evaluate the focus adequacy of the field of view.
- the sample may be treated with two separate dyes, one dye comprising a nuclei stain and the other dye comprising a membrane stain.
- an image directed to the membrane stain may be evaluated for focus adequacy by examining the focus of the same image directed to the nuclei stain, wherein the nuclei stain image exhibits a more definite structure upon which evaluate focus.
- the artificial image of the field of view may also be used to facilitate the identification and extraction of selected features of the treated sample.
- marked point processes, contextual analysis, and/or geo-statistics may be used to identify and extract features from the image based on, for instance, a spatial distribution analysis of a particular dye.
- Such a feature extraction capability would also allow, for example, fields of view or objects of interest to be sorted, flagged, or otherwise identified or grouped based on, for instance, the overall content of a given marker dye or a selected ratio of particular marker.
- a threshold criteria can be established, such a capability would be the detection of rare, worsening, or other serious events.
- classifiers based specifically on the image processing resulting from the counterstain and/or marker dye specific images may then be established and used to evaluate the presence of certain cell types or to perform a diagnosis based upon the field of view.
- HER2 may be evaluated in this manner by comparison to a continuous diagnosis scale established according to the system and methods described herein.
- Such classifiers may usually also encompass other informative features such as, for example, detail based upon the morphology or the texture of the cells.
- the system is capable of processing the image data at a faster rate than the images are acquired.
- the enhanced speed at which the image data is processed may allow, for example, features indicated by a particular marker dye to be processed and classified. Accordingly, various conditions may be identified based upon predetermined criteria. As such, visual and/or sonic alarms may be established and/or mapped in conjunction with the processing of the image data.
- the operator's attention may be directed to a specific field of view or object of interest when a characteristic of a marker attains a predetermined level in, for example, intensity or presence in a particular field.
- FIG. 2 is a schematic representation of a practical realization of an extended system configuration according to one embodiment of the present invention.
- the system 100 or workstation is centered about a microscope 150.
- the microscope 150 may include one or more robotic components including, for example, a motorized stage, an automatic focus mechamsm, a motorized objective changer, and an automatic light intensity adjustment.
- the system 100 may also include various input devices such as, for instances, cameras 300a and 300b having fast automatic focusing and configured for acquiring low-resolution and high- resolution images, a flat bed linear scanners 310 used for acquiring low-resolution images, a grossing station 320, and a voice-recording device 330, which are all linked to a computer device 350 through various data transmission links 400.
- the workstation 100 can be part of a Local Area Network (LAN) 700, but may also be configured to support different communication protocols such that available communication channels such as, for example, a standard telephone line, an ISDN connection, or a TI line, can readily connect the workstation 100 to other components or devices over large distances via a Wide Area Network (WAN) 750 as will be appreciated by one skilled in the art.
- WAN Wide Area Network
- the pathology workstation 100 is configured to operate in an integrated environment, the WAN 700 or LAN 750 connection may permit access to, for instance, existing reference databases 800 and Hospital h fonnation Systems (HIS) 850. With such a configuration, new samples and/or cases may readily be compared with the pictures and accompanying information of previously-accumulated reference cases.
- HIS Hospital h fonnation Systems
- images acquired from the samples and/or slides being examined at the workstation 100 can be complemented with the patient and case history as necessary.
- the pathology workstation 100 is particularly configured for a comprehensive sample evaluation. For example, with information and digital pictures of the initial gross biological sample, images of the slides prepared from the sample can be prepared and processed as described herein.
- the patient and case information, the images, and the resulting quantitative information about the cell components of the sample and the sample architecture can collected, integrated if necessary, and stored in a single database.
- the communication capabilities of the extended configuration along with the automation features of the microscope 150 may allow the workstation 1 0 to be used as a tele- pathology system.
- high-resolution images directed to features or objects of interest characterizing a questionable situation on a particular slide may be electronically forwarded to the expert and or to the audited candidate.
- an overview picture of the slide may be provided, wherein the automated microscope 150 is used to scan the slide automatically on, for example, a field by field basis. The corresponding digital images may then be stored in the memory of the computer device 350.
- the edges of adjacent fields may be precisely matched using correlation algorithms, so as to provide a single large overview image of the entire slide.
- Such an overview image may assist the reference pathologist in making an assessment of the information.
- the reference pathologist may remotely control the workstation 100 from a remote site to acquire necessary and/or supplemental images which may be required so as to provide a correct and thorough assessment of the slide.
- the information accumulated by the workstation 100 for a studied case such as, for instance, real or mathematically generated images, measurement results and graphical representations thereof, patient data, preparation data, and screening maps, may be selectively integrated into a report which can either be printed or accessed electronically.
- a report would provide a comprehensive picture of the case under evaluation and would also facilitate quality assurance and standardization issues.
- the methodology and procedures detailed herein in conjunction with the system 100 specify a method of quantifying an amount of a molecular specie from an image of a sample captured by an RGB camera in a video- microscopy system.
- a method may be automated so as to provide a computer software program product, executable on a computer device, having executable portions capable of quantifying the amount of a molecular specie from a digital image of a sample captured by a color image acquisition device, such as an RGB camera, in a video-microscopy system.
- a color image acquisition device such as an RGB camera
- embodiments of the system 100 describe the implementation of the method and/or the corresponding computer software program product which may be accomplished in appropriately configured hardware, software, or a combination of hardware and software in accordance with the spirit and scope of the present invention.
- embodiments of the present invention comprise a colorimetric analysis technique for prepared samples that provides effective detection and quantification of species of interest that overcomes limiting factors of prior art techniques such as, for example, spectral overlapping, mixing of colors due to spatial overlap of membrane and nuclear markers, limited spectral resolution of the acquisition device, calibration particularities, the subjectivity of the detection and quantification process, and inconsistencies between human operators of the analysis equipment.
- Embodiments of the present invention further provide an image processing technique which does not rely upon the subjective detection of contrast within the prepared sample or a complex and voluminous analysis of the sample at specific wavelengths of light using a combination of light sources and filters.
- embodiments of the present invention provide a simpler and more effective colorimetric analysis technique that overcomes detection and quantification limitations in prior art analysis techniques, reduces subjectivity and inconsistency in the sample analysis, and is capable of providing the necessary analysis information about the sample, once an image of the sample is captured, without relying upon further examination of the sample to complete the analysis.
- the analysis (detection and quantification of a molecular specie of interest) of the prepared sample is accomplished through the measurement of light intensities that are manifested in a digital image of the sample captured by a color image acquisition device. Since the analysis is relatively image-dependent, rather than sample-dependent, redundant images may be captured for analysis, while many samples may be processed so as to capture the necessary images within a relatively short period of time. Once the image data has been captured and stored, the actual analysis may occur at a later time or as needed without requiring the physical presence of the actual sample. Such an analysis may be further applied to examining the entire sample or even the entire slide.
- embodiments of the present invention provide an expeditious quantitative video- microscopy system that permits the use of such a system as a routine or "production” tool capable of accomplishing a relatively high analysis throughput.
- significant advantages are realized by embodiments of the present invention as compared to prior art quantitative microscopy systems which were typically limited in sample throughput and analysis, thus generally making such systems more useful as research tools.
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Abstract
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EP02798993A EP1428016B1 (en) | 2001-09-19 | 2002-09-18 | Method of quantitative video-microscopy and associated system and computer software program product |
CA2460801A CA2460801C (en) | 2001-09-19 | 2002-09-18 | Method for quantitative video-microscopy and associated system and computer software program product |
AU2002334590A AU2002334590B2 (en) | 2001-09-19 | 2002-09-18 | Method quantitative video-microscopy and associated system and computer software program product |
JP2003529133A JP4550415B2 (en) | 2001-09-19 | 2002-09-18 | Quantitative video microscopy and related system and computer software program products |
DE60226043T DE60226043T2 (en) | 2001-09-19 | 2002-09-18 | METHOD FOR QUANTITATIVE VIDEO MICROSCOPY AND DEVICE AND PROGRAM FOR IMPLEMENTING THE PROCESS |
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EP1428016A2 (en) | 2004-06-16 |
US7065236B2 (en) | 2006-06-20 |
JP2005504276A (en) | 2005-02-10 |
JP2010078611A (en) | 2010-04-08 |
CA2460801A1 (en) | 2003-03-27 |
JP5044633B2 (en) | 2012-10-10 |
WO2003025554A3 (en) | 2003-08-21 |
JP4550415B2 (en) | 2010-09-22 |
DE60226043T2 (en) | 2009-05-14 |
CA2460801C (en) | 2011-08-23 |
ES2301706T3 (en) | 2008-07-01 |
US20030091221A1 (en) | 2003-05-15 |
DE60226043D1 (en) | 2008-05-21 |
ATE391907T1 (en) | 2008-04-15 |
EP1428016B1 (en) | 2008-04-09 |
AU2002334590B2 (en) | 2008-01-10 |
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