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Automated segmentation of tissue images for computerized IHC analysis.

机译:组织图像的自动分割,用于计算机化IHC分析。

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摘要

This paper presents two automated methods for the segmentation of immunohistochemical tissue images that overcome the limitations of the manual approach as well as of the existing computerized techniques. The first independent method, based on unsupervised color clustering, recognizes automatically the target cancerous areas in the specimen and disregards the stroma; the second method, based on colors separation and morphological processing, exploits automated segmentation of the nuclear membranes of the cancerous cells. Extensive experimental results on real tissue images demonstrate the accuracy of our techniques compared to manual segmentations; additional experiments show that our techniques are more effective in immunohistochemical images than popular approaches based on supervised learning or active contours. The proposed procedure can be exploited for any applications that require tissues and cells exploration and to perform reliable and standardized measures of the activity of specific proteins involved in multi-factorial genetic pathologies.
机译:本文提出了两种自动化的免疫组织化学组织图像分割方法,这些方法克服了手动方法以及现有计算机技术的局限性。第一种独立的方法基于无监督的颜色聚类,可自动识别标本中的目标癌变区域,而忽略基质。第二种方法基于分色和形态学处理,利用癌细胞的核膜的自动分割。在真实组织图像上的大量实验结果证明了与手动分割相比,我们的技术的准确性;其他实验表明,与基于监督学习或活动轮廓的流行方法相比,我们的技术在免疫组织化学图像中更有效。可以将所提出的程序用于需要组织和细胞探索的任何应用,并对涉及多因素遗传病理学的特定蛋白质的活性进行可靠且标准化的测量。

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