Methods And System For Segmentation Of Isolated Nuclei In Microscopic Breast Fine Needle Aspiration Cytology Images

COMPUTER VISION, GRAPHICS, AND IMAGE PROCESSING, ICVGIP 2016(2017)

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摘要
Computer vision systems for automated breast cancer diagnosis using Fine Needle Aspiration Cytology (FNAC) images are under development for a while now. Accurate segmentation of the nuclei in microscopic images is crucial for functioning of these systems, as most quantify and analyze nuclear features for diagnosis. This paper presents a nucleus segmentation system (NSS) involving pre-processing, pre-segmentation and refined segmentation stages. The NSS includes a novel pixel transformation step to create a high contrast grayscale representation of the input color image. The grayscale image gives NSS the capability-to disregard elements that mimic nuclear morphological and luminescence characteristics, and to minimize effects of non-specific staining of cytoplasm by Hematoxylin. Experimental results illustrate generalizability of the NSS to use multiple refined segmentation techniques and particularly achieve accurate nucleus segmentation using active contours without edges(F-score > 0.92). The paper also presents the results of experiments conducted to study the impact of image preprocessing steps on the NSS performance. The pre-processing steps are observed to improve accuracy and consistency across tested refined segmentation techniques.
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关键词
Breast FNAC, Nucleus segmentation, Active contour models
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