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Automatic segmentation of whole-slide H&E stained breast histopathology images using a deep convolutional neural network architecture

机译:使用深卷积神经网络架构自动分割全载H&E染色乳腺组织病理学图像

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摘要

The segmentation of malignant breast tissue from histological images represents a crucial task for the diagnosis of breast cancer (BC). This is a time-consuming process that could be alleviated with the help of computerized segmentation methods, leading to elevated precision and reproducibility results. However, this automated segmentation poses a challenge due to the large size of histological whole-slide images and the significant variability, heterogeneity and complexity of features in them.In this research, we propose a processing pipeline for the automatic segmentation of stained BC images presenting different types of histopathological patterns. To deal with the gigantic size of whole-slide images, the digital preparations were processed in a tile-wise manner: a large part of the image is split into patches. Then, the segmentation of each tile was accomplished by applying a deep convolutional neural network (DCNN) along with an encoder-decoder with separable atrous convolution architecture, which, once successfully validated, has revealed to be a promising method to segment pathological image patches. Next, in order to combine the local segmentation results (segmented tiles), while avoiding discontinuities and inconsistencies, an improved merging strategy based on an efficient fully connected Conditional Random Field (CRF) was applied.Experimental results on a collection of patches of breast cancer images demonstrate how the designed processing pipeline performs properly regardless the size, texture or any other colour-shape features typical of the malignant carcinomas considered in this study. The estimated segmentation accuracy and frequency weighted intersection over union (FWIoU) were 95.62%, 92.52%, respectively. Additionally, in order to facilitate the collaboration between pathologists and researchers to extract the specialist knowledge in form of training datasets that allows the training of new algorithms, a web-based platform which includes a slide-viewer and an annotation tool was developed. The automatic segmentation method proposed in this work was integrated into this platform and currently, it is being used as a decision support tool by pathologists. (C) 2020 Elsevier Ltd. All rights reserved.
机译:来自组织学图像的恶性乳腺组织的分割代表了乳腺癌(BC)的关键任务。这是一种耗时的过程,可以在计算机化分割方法的帮助下缓解,导致精度和再现性升高。然而,这种自动分割由于组织学全幻灯片的大尺寸和特征的显着变异性,异质性和复杂性,所以在本研究中提出了一种用于自动分割的加工管线,用于染色的BC图像的自动分割,提出了一种处理管道不同类型的组织病理学模式。为了处理整个幻灯片图像的巨大尺寸,数字准备以瓷砖方式处理:大部分图像被分成斑块。然后,通过将深卷积神经网络(DCNN)沿着具有可分离的不可分割的卷积架构的编码器解码器以及一旦成功验证,可以实现每个瓦片的分割,已经显示出对病理图像斑块的有希望的方法。接下来,为了组合局部分割结果(分段瓦片),同时避免不连续性和不一致,应用基于有效的完全连接的条件随机场(CRF)的改进的合并策略。实验结果对乳腺癌的一系列斑块图像展示设计的处理管道如何正确执行,无论本研究中考虑的恶性癌的典型尺寸,质地或任何其他颜色形状特征如何。对联盟(FWIOO)的估计分割精度和频率加权交叉分别为95.62%,92.52%。此外,为了促进病理学家和研究人员之间的协作,以允许培训新算法的训练数据集的形式提取专业知识,开发了一种基于Web的平台,该平台包括滑视图和注释工具。本工作中提出的自动分段方法已集成到该平台中,目前将其作为病理学家用作决策支持工具。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Expert systems with applications》 |2020年第8期|113387.1-113387.14|共14页
  • 作者单位

    Hosp Univ Puerta del Mar Biomed Res & Innovat Inst Cadiz INiBCA Avda Ana de Viya 21 Cadiz Spain|Univ Cadiz Sch Engn Dept Automat Engn Elect & Comp Architecture & Net Biomed Engn & Telemed Res Grp Avda Univ Ccidiz 10 Cadiz Spain;

    Hosp Univ Puerta del Mar Biomed Res & Innovat Inst Cadiz INiBCA Avda Ana de Viya 21 Cadiz Spain|Univ Cadiz Sch Engn Dept Automat Engn Elect & Comp Architecture & Net Biomed Engn & Telemed Res Grp Avda Univ Ccidiz 10 Cadiz Spain;

    Hosp Univ Puerta del Mar Biomed Res & Innovat Inst Cadiz INiBCA Avda Ana de Viya 21 Cadiz Spain|Univ Cadiz Sch Engn Dept Automat Engn Elect & Comp Architecture & Net Biomed Engn & Telemed Res Grp Avda Univ Ccidiz 10 Cadiz Spain;

    Hosp Univ Puerta del Mar Biomed Res & Innovat Inst Cadiz INiBCA Avda Ana de Viya 21 Cadiz Spain|Hosp Univ Puerta del Mar Dept Pathol Avda Ana de Viya 21 Cadiz Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Breast cancer; Segmentation; Deep learning; HE staining; Whole-Slide Imaging;

    机译:乳腺癌;细分;深度学习;H&E染色;全幻灯片成像;

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