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首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >Digital Assessment of Stained Breast Tissue Images for Comprehensive Tumor and Microenvironment Analysis
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Digital Assessment of Stained Breast Tissue Images for Comprehensive Tumor and Microenvironment Analysis

机译:完整组织肿瘤和微环境分析的染色乳房组织图像的数字评估

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摘要

Current histopathological diagnosis involves human expert interpretation of stained images for diagnosis. This process is prone to inter-observer variability, often leading to low concordance rates amongst pathologists across many types of tissues. Further, since structural features are mostly just defined for epithelial alterations during tumor progression, the use of associated stromal changes is limited. Here we sought to examine whether digital analysis of commonly used hematoxylin and eosin-stained images could provide precise and quantitative metrics of disease from both epithelial and stromal cells. We developed a convolutional neural network approach to identify epithelial breast cells from their microenvironment. Second, we analyzed the microenvironment to further observe different constituent cells using unsupervised clustering. Finally, we categorized breast cancer by the combined effects of stromal and epithelial inertia. Together, the work provides insight and evidence of cancer association for interpretable features from deep learning methods that provide new opportunities for comprehensive analysis of standard pathology images.
机译:当前的组织病理学诊断涉及人类专家对染色图像的解释以进行诊断。这个过程容易导致观察者之间的差异,通常会导致跨多种类型组织的病理学家之间的一致性降低。此外,由于结构特征大多仅针对肿瘤进展期间的上皮变化而定义,因此相关基质变化的使用受到限制。在这里,我们试图检查常用的苏木精和曙红染色图像的数字分析是否可以提供上皮和基质细胞疾病的精确和定量指标。我们开发了一种卷积神经网络方法,从微环境中识别上皮乳腺细胞。其次,我们分析了微环境,以使用无监督聚类进一步观察不同的组成细胞。最后,我们通过基质和上皮惯性的联合作用将乳腺癌分类。在一起,这项工作为深度学习方法的可解释特征提供了癌症关联的见解和证据,为全面分析标准病理图像提供了新的机会。

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