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Deep-Hipo:用于组织病理学图像分析的多尺度感受野深度学习。

Deep-Hipo: Multi-scale receptive field deep learning for histopathological image analysis.

机构信息

Department of Computer Science, University of Nevada, Las Vegas, NV, USA.

Department of Biostatistics, Epidemiology and Informatics, University of Pennsylvania, Philadelphia, PA, USA.

出版信息

Methods. 2020 Jul 1;179:3-13. doi: 10.1016/j.ymeth.2020.05.012. Epub 2020 May 19.

Abstract

Digitizing whole-slide imaging in digital pathology has led to the advancement of computer-aided tissue examination using machine learning techniques, especially convolutional neural networks. A number of convolutional neural network-based methodologies have been proposed to accurately analyze histopathological images for cancer detection, risk prediction, and cancer subtype classification. Most existing methods have conducted patch-based examinations, due to the extremely large size of histopathological images. However, patches of a small window often do not contain sufficient information or patterns for the tasks of interest. It corresponds that pathologists also examine tissues at various magnification levels, while checking complex morphological patterns in a microscope. We propose a novel multi-task based deep learning model for HIstoPatholOgy (named Deep-Hipo) that takes multi-scale patches simultaneously for accurate histopathological image analysis. Deep-Hipo extracts two patches of the same size in both high and low magnification levels, and captures complex morphological patterns in both large and small receptive fields of a whole-slide image. Deep-Hipo has outperformed the current state-of-the-art deep learning methods. We assessed the proposed method in various types of whole-slide images of the stomach: well-differentiated, moderately-differentiated, and poorly-differentiated adenocarcinoma; poorly cohesive carcinoma, including signet-ring cell features; and normal gastric mucosa. The optimally trained model was also applied to histopathological images of The Cancer Genome Atlas (TCGA), Stomach Adenocarcinoma (TCGA-STAD) and TCGA Colon Adenocarcinoma (TCGA-COAD), which show similar pathological patterns with gastric carcinoma, and the experimental results were clinically verified by a pathologist. The source code of Deep-Hipo is publicly available athttp://dataxlab.org/deep-hipo.

摘要

数字病理学中的全切片成像数字化推动了使用机器学习技术(尤其是卷积神经网络)进行计算机辅助组织检查的发展。已经提出了许多基于卷积神经网络的方法来准确分析组织病理学图像以进行癌症检测、风险预测和癌症亚型分类。由于组织病理学图像的尺寸非常大,大多数现有方法都进行了基于补丁的检查。然而,小窗口的补丁通常不包含足够的信息或感兴趣任务的模式。相应地,病理学家还在各种放大倍率下检查组织,同时在显微镜下检查复杂的形态模式。我们提出了一种新颖的基于多任务的深度学习模型 HIstoPatholOgy(命名为 Deep-Hipo),该模型可同时对多尺度补丁进行操作,以进行准确的组织病理学图像分析。Deep-Hipo 同时提取高倍和低倍放大倍率下的两个相同大小的补丁,并在全切片图像的大、小感受野中捕获复杂的形态模式。Deep-Hipo 优于当前最先进的深度学习方法。我们在各种类型的胃全切片图像中评估了该方法:高分化、中分化和低分化腺癌;包括印戒细胞特征的低黏附性癌;以及正常胃黏膜。优化后的模型还应用于癌症基因组图谱(TCGA)、胃腺癌(TCGA-STAD)和结肠腺癌(TCGA-COAD)的组织病理学图像,这些图像与胃癌具有相似的病理模式,实验结果由病理学家进行了临床验证。Deep-Hipo 的源代码可在 http://dataxlab.org/deep-hipo 上获得。

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