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Computer aided analysis of prostate histopathology images Gleason grading especially for Gleason score 7

机译:前列腺组织病理学图像的计算机辅助分析,特别是针对格里森评分7的格里森分级

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Clinically, prostate adenocarcinoma is diagnosed by recognizing certain morphology on histology. While the Gleason grading system has been shown to be the strongest prognostic factor for men with prostrate adenocarcinoma, there is a significant intra and interobserver variability between pathologists in assigning this grading system. In this study, we present a new method for prostate gland segmentation from which we then utilize to develop a computer aided Gleason grading. The novelty of our method is a region-based nuclei segmentation to get individual gland without using lumen as prior information. Because each gland region is surrounded by nuclei, individual gland can be segmented by using the structure features and Delaunay Triangulation. The precision, recal and F of this approach are 0.94±0.11, 0.60±0.23 and 0.70±0.19 respectively. Our method achieves a high accuracy for prostate gland segmentation with less computation time.
机译:临床上,通过在组织学上识别某些形态来诊断前列腺腺癌。虽然格里森(Gleason)评分系统已被证明是患有下垂腺癌的男性最强的预后因素,但病理学家在分配此评分系统时在观察者之间和观察者之间存在很大差异。在这项研究中,我们提出了一种新的前列腺腺体分割方法,然后利用该方法开发计算机辅助的Gleason分级。我们方法的新颖之处在于无需使用管腔作为先验信息即可对单个腺体进行基于区域的核分割。因为每个腺体区域都被核包围,所以可以使用结构特征和Delaunay三角剖分来分割单个腺体。该方法的精度,标度和F分别为0.94±0.11、0.60±0.23和0.70±0.19。我们的方法以较少的计算时间实现了前列腺分割的高精度。

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