Lee Sanghoon, Amgad Mohamed, Mobadersany Pooya, McCormick Matt, Pollack Brian P, Elfandy Habiba, Hussein Hagar, Gutman David A, Cooper Lee A D
Department of Computer Sciences and Electrical Engineering, Marshall University, Huntington, West Virginia.
Department of Pathology, Northwestern University Feinberg School of Medicine, Chicago, Illinois.
Cancer Res. 2021 Feb 15;81(4):1171-1177. doi: 10.1158/0008-5472.CAN-20-0668. Epub 2020 Dec 21.
Whole-slide histology images contain information that is valuable for clinical and basic science investigations of cancer but extracting quantitative measurements from these images is challenging for researchers who are not image analysis specialists. In this article, we describe HistomicsML2, a software tool for learn-by-example training of machine learning classifiers for histologic patterns in whole-slide images. This tool improves training efficiency and classifier performance by guiding users to the most informative training examples for labeling and can be used to develop classifiers for prospective application or as a rapid annotation tool that is adaptable to different cancer types. HistomicsML2 runs as a containerized server application that provides web-based user interfaces for classifier training, validation, exporting inference results, and collaborative review, and that can be deployed on GPU servers or cloud platforms. We demonstrate the utility of this tool by using it to classify tumor-infiltrating lymphocytes in breast carcinoma and cutaneous melanoma. SIGNIFICANCE: An interactive machine learning tool for analyzing digital pathology images enables cancer researchers to apply this tool to measure histologic patterns for clinical and basic science studies.
全切片组织学图像包含对癌症临床和基础科学研究有价值的信息,但对于非图像分析专家的研究人员来说,从这些图像中提取定量测量数据具有挑战性。在本文中,我们描述了HistomicsML2,这是一种用于通过示例训练全切片图像中组织学模式的机器学习分类器的软件工具。该工具通过引导用户选择最具信息性的训练示例进行标注,提高了训练效率和分类器性能,可用于开发用于前瞻性应用的分类器,或作为一种适用于不同癌症类型的快速注释工具。HistomicsML2作为一个容器化服务器应用程序运行,提供基于网络的用户界面,用于分类器训练、验证、导出推理结果和协作审查,并且可以部署在GPU服务器或云平台上。我们通过使用该工具对乳腺癌和皮肤黑色素瘤中的肿瘤浸润淋巴细胞进行分类,展示了该工具的实用性。意义:一种用于分析数字病理图像的交互式机器学习工具使癌症研究人员能够应用该工具测量组织学模式,用于临床和基础科学研究。