基于深度神经网络的组织病理图像核分割

Peter Naylor, M. Laé, F. Reyal, Thomas Walter
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引用次数: 156

摘要

肿瘤染色切片的分析和解释是肿瘤诊断和预后的主要工具之一,主要由病理学家手工完成。数字病理学的出现为我们提供了一个具有挑战性的机会,可以自动分析大量这些复杂的图像数据,以便从中得出生物学结论,并大规模地研究细胞和组织表型。这种方法的瓶颈之一是从这类图像数据中自动分割细胞核。在这里,我们提出了一个完全自动化的工作流程,通过使用从一组手动注释的图像中训练的深度神经网络,并通过处理后验概率图来分割共同分割的细胞核,从而从组织病理学图像数据中分割细胞核。此外,我们将为本研究生成的图像数据集作为基准集提供给科学界。
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Nuclei segmentation in histopathology images using deep neural networks
Analysis and interpretation of stained tumor sections is one of the main tools in cancer diagnosis and prognosis, which is mainly carried out manually by pathologists. The avent of digital pathology provides us with the challenging opportunity to automatically analyze large amounts of these complex image data in order to draw biological conclusions from them and to study cellular and tissular phenotypes at a large scale. One of the bottlenecks for such approaches is the automatic segmentation of cell nuclei from this type of image data. Here, we present a fully automated workflow to segment nuclei from histopathology image data by using deep neural networks trained from a set of manually annotated images and by processing the posterior probability maps in order to split jointly segmented nuclei. Further, we provide the image data set that has been generated for this study as a benchmark set to the scientific community.
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