Deep Analysis of CNN Settings for New Cancer Whole-slide Histological Images Segmentation: The Case of Small Training Sets

Sonia Mejbri, C. Franchet, I. Reshma, J. Mothe, P. Brousset, Emmanuel Faure
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引用次数: 15

Abstract

Accurate analysis and interpretation of stained biopsy images is a crucial step in the cancer diagnostic routine which is mainly done manually by expert pathologists. The recent progress of digital pathology gives us a challenging opportunity to automatically process these complex image data in order to retrieve essential information and to study tissue elements and structures. This paper addresses the task of tissue-level segmentation in intermediate resolution of histopathological breast cancer images. Firstly, we present a new medical dataset we developed which is composed of hematoxylin and eosin stained whole-slide images wherein all 7 tissues were labeled by hand and validated by expert pathologist. Then, with this unique dataset, we proposed an automatic end-to-end framework using deep neural network for tissue-level segmentation. Moreover, we provide a deep analysis of the framework settings that can be used in similar task by the scientific community.
新型肿瘤全切片组织图像分割CNN设置的深度分析:以小训练集为例
准确分析和解释染色活检图像是癌症诊断常规的关键步骤,主要由专家病理学家手工完成。数字病理学的最新进展为我们提供了一个具有挑战性的机会来自动处理这些复杂的图像数据,以检索基本信息和研究组织元素和结构。本文解决了组织水平分割的任务,在中等分辨率的组织病理乳腺癌图像。首先,我们提出了一个新的医学数据集,该数据集由苏木精和伊红染色的整张切片图像组成,其中所有7个组织都是手工标记的,并由专家病理学家验证。然后,利用这个独特的数据集,我们提出了一个使用深度神经网络进行组织级分割的自动端到端框架。此外,我们还对框架设置进行了深入分析,这些框架设置可用于科学界的类似任务。
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