基于导管实例导向管道的乳腺组织病理学图像分类。

Beibin Li, Ezgi Mercan, Sachin Mehta, Stevan Knezevich, Corey W Arnold, Donald L Weaver, Joann G Elmore, Linda G Shapiro
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引用次数: 4

摘要

在本研究中,我们提出了导管面向实例的管道(Ductal instance - oriented Pipeline, DIOP),该管道包含一个导管级实例分割模型、一个组织级语义分割模型和用于诊断分类的三级特征。基于实例分割和Mask RCNN模型的最新进展,我们的管道级分割器试图识别微观图像中的每个管道个体;然后,从已识别的导管实例中提取组织级信息。利用从这些导管实例和组织病理学图像中获得的三层信息,所提出的DIOP在所有诊断任务中都优于以前的方法(基于特征和基于cnn的方法);对于四向分类任务,DIOP在这个独特的数据集中实现了与普通病理学家相当的性能。所提出的DIOP在推理时间内只需要几秒钟的运行时间,可以在大多数现代计算机上交互式地使用。该系统的稳健性和通用性有待进一步的临床探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classifying Breast Histopathology Images with a Ductal Instance-Oriented Pipeline.

In this study, we propose the Ductal Instance-Oriented Pipeline (DIOP) that contains a duct-level instance segmentation model, a tissue-level semantic segmentation model, and three-levels of features for diagnostic classification. Based on recent advancements in instance segmentation and the Mask RCNN model, our duct-level segmenter tries to identify each ductal individual inside a microscopic image; then, it extracts tissue-level information from the identified ductal instances. Leveraging three levels of information obtained from these ductal instances and also the histopathology image, the proposed DIOP outperforms previous approaches (both feature-based and CNN-based) in all diagnostic tasks; for the four-way classification task, the DIOP achieves comparable performance to general pathologists in this unique dataset. The proposed DIOP only takes a few seconds to run in the inference time, which could be used interactively on most modern computers. More clinical explorations are needed to study the robustness and generalizability of this system in the future.

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