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Tumor Budding Detection in HE-Stained Images Using Deep Semantic Learning

机译:利用深层语义学习,H&E染色图像中的肿瘤萌芽检测

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Tumor buddings (TB), a special formation of cancerous cells that bud from the tumor front, are fast becoming the key indicator in modern clinical applications where they play a significant role in prognostic and evaluation of colorectal cancers in histopathological images. Recently, computational methods have been rapidly evolving in the domain of digital pathology, yet the literature lacks computerized approaches to automate the localization and segmentation of TBs in hematoxylin and eosin (H&E)-stained images. This research addresses this very challenging task of tumor budding detection in H&E images by presenting different deep learning architectures designed for semantic segmentation. The proposed design for a new Convolutional Neural Network (CNN) incorporates convolution filters with different factors of dilations. Multiple experiments based on a newly constructed colorectal cancer histopathological image collection provided promising performances. The best average intersection over union (IOU) for TB of 0.11, IOU for non-TB of 0.86, mean IOU of 0.49 and weighted IOU of 0.83 were observed.
机译:肿瘤伴(TB),一种特殊的肿瘤细胞形成芽从肿瘤前沿,快速成为现代临床应用中的关键指标,其中它们在组织病理学图像中的结肠直肠癌的预后和评估中发挥着重要作用。最近,计算方法在数字病理学领域中已经迅速发展,但文献缺乏计算机化方法,以自动化血液杂志和曙红(H&E)染色的TBS的定位和分段。本研究通过呈现用于语义分割的不同深度学习架构,解决了H&E图像中肿瘤萌芽检测的这项非常具有挑战性的任务。新的卷积神经网络(CNN)的提出设计包括具有不同膨胀因子的卷积滤波器。基于新构建的结直肠癌组织病理学图像收集的多个实验提供了有前途的表现。 TB的联盟(IOO)的最佳平均交叉路口为0.11,IOO为0.86,平均值为0.49,加权IOO为0.83。

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