利用掩膜R-CNN对ER-IHC染色的组织病理学图像进行细胞核分割

Md. Jahid Hasan, Wan Siti Halimatul Munirah wan Ahmad, M. F. A. Fauzi, J. T. H. Lee, S. Y. Khor, L. Looi, F. S. Abas
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引用次数: 0

摘要

乳腺癌是发展中国家和不发达国家妇女死亡的主要原因。数字组织病理学图像分析中的细胞核分割在乳腺癌早期发展中起着至关重要的作用,可能使患者得到适当的治疗。乳腺组织活检图像中细胞核重叠和复杂的组织结构使得细胞核分割和特征提取具有挑战性。为了缓解上述问题,本文采用基于mask区域的卷积神经网络(mask R-CNN)对乳腺癌免疫组化图像进行分割。掩码R-CNN算法引入了先进的区域提议网络架构,可以精确地处理目标位置以生成候选区域。Mask R-CNN以resnet50为骨干,采用特征金字塔网络(Feature Pyramid Network, FPN)对多尺度特征图进行充分挖掘。然后利用区域建议网络(Region Proposal Network, RPN)提出候选边界框。通过使用我们收集的数据集训练Mask R-CNN模型,增强了模型的鲁棒性。该架构的平均准确率为72%,召回率为84.2%,f1得分为77.62%,Jaccard指数总分为0.59。所提出的模型可以帮助病理学家进行常规检查,以及从整个幻灯片图像中分割乳腺癌的第二意见。由于这个过程是完全自动化的,它可以在没有监督的情况下完成,只有病理学家才会参加最终的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nuclei Segmentation in ER-IHC Stained Histopathology Images using Mask R-CNN
Breast cancer is the leading cause of mortality among women in both developing and underdeveloped countries. The nuclei segmentation in digital histopathology image analysis plays a crucial role in breast cancer in the early stages of its development and may allow patients to have proper treatment. Nuclei overlap and complex structural organisation of the breast tissue in biopsy images make nuclei segmentation and feature extraction challenging. To mitigate the aforementioned problems, this paper employed a mask region-based convolution neural network (Mask R-CNN) to segment immunohistochemistry breast cancer images. The mask R-CNN algorithm introduces advanced Regional Proposal Network architecture that precisely addresses the object location to generate candidate regions. The Mask R-CNN used resnet50 as the backbone and applied Feature Pyramid Network (FPN) to fully explore multiscale feature maps. And then, Region Proposal Network (RPN) was used to propose candidate bounding boxes. The robustness of the Mask R-CNN model is enhanced by training the model with our collected dataset. The proposed architecture has the average of 72% precision, 84.2% recall, 77.62% F1-score, and Jaccard Index overall score of 0.59. The proposed model can be beneficial in assisting pathologist for a routine exam, as well as a second opinion for breast cancer segmentation from whole slide images. Since the process is fully automated, it can be done without supervision and only the final result will be attended by the pathologists.
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