Identifying and excluding blurred areas of images of stained tissue to improve cancer scoring
First Claim
1. A method comprising:
- selecting a learning region of a digital image of a slice of tissue from a cancer patient that has been stained using a biomarker, wherein the digital image comprises pixels, wherein each of the pixels has a color defined by pixel values, wherein a portion of the pixels exhibits the color stained using the biomarker;
duplicating the learning region to create a copied learning region;
distorting the copied learning region by applying a filter to the pixel values of each pixel of the copied learning region so as artificially to blur the copied learning region;
training a pixel classifier by analyzing the pixel values of each pixel of the learning region and the pixel values of a corresponding pixel in the copied learning region, wherein the pixel classifier is trained to correctly classify each pixel as belonging either to the learning region or to the copied learning region;
classifying each pixel of the digital image as most likely resembling either the learning region or the copied learning region using the pixel classifier;
segmenting the digital image into blurred areas and unblurred areas based on the classifying of each pixel as belonging either to the learning region or to the copied learning region; and
identifying the blurred areas and the unblurred areas of the digital image on a graphical user interface, wherein the analyzing the pixel values involves comparing the pixel values of each analyzed pixel with the pixel values of neighboring pixels at predetermined offsets from each analyzed pixel, and wherein based on the comparing the pixel classifier is trained to indicate that each pixel of the learning region and the copied learning region most likely belongs either to a blurred class of pixels such as those in the copied learning region or to an unblurred class of pixels such as those in the learning region.
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Abstract
A method for identifying blurred areas in digital images of stained tissue involves artificially blurring a learning tile and then training a pixel classifier to correctly classify each pixel as belonging either to the learning tile or to a blurred copy. A learning tile is first selected from a digital image of stained tissue. The learning tile is copied and blurred by applying a filter to each pixel. The pixel classifier is trained to correctly classify each pixel as belonging either to the learning tile or to the blurred, copied learning tile. The pixel classifier then classifies each pixel of the entire digital image as most likely resembling either the learning tile or the blurred learning tile. The digital image is segmented into blurred and unblurred areas based on the pixel classification. The blurred areas and the unblurred areas of the digital image are identified on a graphical user interface.
36 Citations
15 Claims
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1. A method comprising:
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selecting a learning region of a digital image of a slice of tissue from a cancer patient that has been stained using a biomarker, wherein the digital image comprises pixels, wherein each of the pixels has a color defined by pixel values, wherein a portion of the pixels exhibits the color stained using the biomarker; duplicating the learning region to create a copied learning region; distorting the copied learning region by applying a filter to the pixel values of each pixel of the copied learning region so as artificially to blur the copied learning region; training a pixel classifier by analyzing the pixel values of each pixel of the learning region and the pixel values of a corresponding pixel in the copied learning region, wherein the pixel classifier is trained to correctly classify each pixel as belonging either to the learning region or to the copied learning region; classifying each pixel of the digital image as most likely resembling either the learning region or the copied learning region using the pixel classifier; segmenting the digital image into blurred areas and unblurred areas based on the classifying of each pixel as belonging either to the learning region or to the copied learning region; and identifying the blurred areas and the unblurred areas of the digital image on a graphical user interface, wherein the analyzing the pixel values involves comparing the pixel values of each analyzed pixel with the pixel values of neighboring pixels at predetermined offsets from each analyzed pixel, and wherein based on the comparing the pixel classifier is trained to indicate that each pixel of the learning region and the copied learning region most likely belongs either to a blurred class of pixels such as those in the copied learning region or to an unblurred class of pixels such as those in the learning region. - View Dependent Claims (2, 3, 4, 5, 6, 7, 8)
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9. A method comprising:
- selecting a learning region of a digital image of tissue that has been stained using a biomarker;
duplicating the learning region to create a copied learning region;
blurring the copied learning region by applying a filter to each pixel of the copied learning region;
generating a pixelwise descriptor by comparing learning pixels of the learning region and the copied learning region to a neighboring pixels at predetermined offsets from each of the learning pixels, wherein based on the comparing the pixelwise descriptor is trained to indicate that each of the learning pixels most likely belongs either to an unblurred class of pixels such as those in the learning region or to a blurred class of pixels such as those in the copied learning region;
classifying each pixel of the digital image as belonging either to the unblurred class of pixels or to the blurred class of pixels using the pixelwise descriptor;
segmenting the digital image into blurred areas and unblurred areas based on the classifying; and
identifying the blurred areas and the unblurred areas of the digital image on a graphical user interface, wherein the biomarker is used to stain the tissue with a staining color, wherein a portion of the pixels of the digital image exhibits the staining color, further comprising;determining a score based on image objects identified in the unblurred areas of the digital image using the pixels that exhibit the staining color, wherein the score is indicative of a level of cancer malignancy of the tissue. - View Dependent Claims (10, 11, 12, 13, 14, 15)
- selecting a learning region of a digital image of tissue that has been stained using a biomarker;
Specification