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Segmenting overlapping cell nuclei in digital histopathology images

机译:分割数字组织病理学图像中重叠的细胞核

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Automatic quantification of cell nuclei in immunostained images is highly desired by pathologists in diagnosis. In this paper, we present a new approach for the segmentation of severely clustered overlapping nuclei. The proposed approach first involves applying a combined global and local threshold method to extract foreground regions. In order to segment clustered overlapping nuclei in the foreground regions, seed markers are obtained by utilizing morphological filtering and intensity based region growing. Seeded watershed is then applied and clustered nuclei are separated. As pixels corresponding to stained cellular cytoplasm can be falsely identified as belonging to nuclei, a post processing step identifying positive nuclei pixels is added to eliminate these false pixels. This new approach has been tested on a set of manually labeled Tissue Microarray (TMA) and Whole Slide Images (WSI) colorectal cancers stained for the biomarker P53. Experimental results show that it outperformed currently available state of the art methods in nuclei segmentation.
机译:病理学家在诊断中非常需要对免疫染色图像中的细胞核进行自动定量。在本文中,我们提出了一种新方法,用于分割严重聚集的重叠核。所提出的方法首先涉及应用组合的全局和局部阈值方法来提取前景区域。为了在前景区域中分割成簇的重叠核,通过利用形态滤波和基于强度的区域生长来获得种子标记。然后应用种子分水岭,并分离成簇的核。由于可以将与染色的细胞质相对应的像素错误地识别为属于核,因此添加了识别阳性核像素的后处理步骤,以消除这些错误的像素。此新方法已在一套针对生物标记P53染色的手动标记的组织微阵列(TMA)和全玻片图像(WSI)结肠直肠癌上进行了测试。实验结果表明,它在核分割方面的性能优于当前可用的现有技术。

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