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Deep Convolutional Neural Networks Enable Discrimination of Heterogeneous Digital Pathology Images

机译:深度卷积神经网络可区分异构数字病理图像

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摘要

Pathological evaluation of tumor tissue is pivotal for diagnosis in cancer patients and automated image analysis approaches have great potential to increase precision of diagnosis and help reduce human error.In this study, we utilize several computational methods based on convolutional neural networks (CNN) and build a stand-alone pipeline to effectively classify different histopathology images across different types of cancer.In particular, we demonstrate the utility of our pipeline to discriminate between two subtypes of lung cancer, four biomarkers of bladder cancer, and five biomarkers of breast cancer. In addition, we apply our pipeline to discriminate among four immunohistochemistry (IHC) staining scores of bladder and breast cancers.Our classification pipeline includes a basic CNN architecture, Google's Inceptions with three training strategies, and an ensemble of two state-of-the-art algorithms, Inception and ResNet. Training strategies include training the last layer of Google's Inceptions, training the network from scratch, and fine-tunning the parameters for our data using two pre-trained version of Google's Inception architectures, Inception-V1 and Inception-V3.We demonstrate the power of deep learning approaches for identifying cancer subtypes, and the robustness of Google's Inceptions even in presence of extensive tumor heterogeneity. On average, our pipeline achieved accuracies of 100%, 92%, 95%, and 69% for discrimination of various cancer tissues, subtypes, biomarkers, and scores, respectively. Our pipeline and related documentation is freely available at .
机译:肿瘤组织的病理学评估对于癌症患者的诊断至关重要,自动图像分析方法具有提高诊断准确性并帮助减少人为错误的巨大潜力。在这项研究中,我们利用基于卷积神经网络(CNN)的几种计算方法进行构建一个独立的管道,可以有效地对不同类型的癌症进行不同的组织病理学图像分类。特别是,我们展示了管道的用途,可以区分两种亚型的肺癌,四种膀胱癌的生物标志物和五种乳腺癌的生物标志物。此外,我们运用我们的流程来区分膀胱癌和乳腺癌的四个免疫组化(IHC)染色评分。我们的分类流程包括基本的CNN架构,具有三种训练策略的Google盗梦空间和两个状态的集合艺术算法,盗版和ResNet。培训策略包括培训Google Inception的最后一层,从头开始培训网络以及使用Google Inception体系结构的两个预训练版本Inception-V1和Inception-V3对我们的数据进行微调。识别癌症亚型的深度学习方法,以及即使存在广泛的肿瘤异质性,Google Inceptions的强大功能。平均而言,我们对各种癌症组织,亚型,生物标志物和分数的区分准确率分别达到100%,92%,95%和69%。我们的管道和相关文档可在上免费获得。

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