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Automatic Glandular and Tubule Region Segmentation in Histological Grading of Breast Cancer

机译:乳腺癌组织学分级中的自动腺和管区分割

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In the popular Nottingham histologic score system for breast cancer grading, the pathologist analyzes the H&E tissue slides and assigns a score, in the range of 1-3, for tubule formation, nuclear pleomorphism and mitotic activity in the tumor regions. The scores from these three factors are added to give a final score, ranging from 3-9 to grade the cancer. Tubule score (TS), which reflects tubular formation, is a value in 1-3 given by manually estimating the percentage of glandular regions in the tumor that form tubules. In this paper, given an H&E tissue image representing a tumor region, we propose an automated algorithm to segment glandular regions and detect the presence of tubules in these regions. The algorithm first detects all nuclei and lumen candidates in the input image, followed by identifying tumor nuclei from the detected nuclei and identifying true lumina from the lumen candidates using a random forest classifier. Finally, it forms the glandular regions by grouping the closely located tumor nuclei and lumina using a graph-cut-based method. The glandular regions containing true lumina are considered as the ones that form tubules (tubule regions). To evaluate the proposed method, we calculate the tubule percentage (TP), i.e., the ratio of the tubule area to the total glandular area for 353 H&E images of the three TSs, and plot the distribution of these TP values. This plot shows the clear separation among these three scores, suggesting that the proposed algorithm is useful in distinguishing images of these TSs.
机译:在乳腺癌分级的流行诺丁汉组织学评分系统中,病理学生分析了H&E组织载玻片并在肿瘤区域中的小管形成,核粘性和有丝分裂活性的分数,在1-3的范围内分配得分。从这三种因素的分数增加以获得终点,范围从3-9到癌症。反射管状形成的小管评分(TS)是通过手动估计形成小管中肿瘤中腺体区域的腺体百分比的1-3中的值。本文给定代表肿瘤区域的H&E组织图像,我们提出了一种自动算法以分段腺体区域并检测这些区域中的小管的存在。该算法首先检测输入图像中的所有核和内腔候选,然后通过随机林分类器鉴定来自检测到的细胞核的肿瘤核,并从内腔候选者中鉴定真正的肠。最后,通过使用基于图形切割的方法对紧密肿瘤核和胶质组分组来形成腺体区域。含有真菌的腺体区域被认为是形成小管(管区)的腺体区域。为了评估所提出的方法,我们计算小管百分比(Tp),即小管面积与三个TS的总腺面积的比例,并绘制这些TP值的分布。该图显示了这三个评分中的清晰分离,表明所提出的算法在区分这些TS的图像中是有用的。

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