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Patch-level Tumor Classification in Digital Histopathology Images with Domain Adapted Deep Learning

机译:具有领域适应性深度学习的数字组织病理学图像中的补丁级别肿瘤分类

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Tumor histopathology is a crucial step in cancer diagnosis which involves visual inspection of imaging data to detect the presence of tumor cells among healthy tissues. This manual process can be time-consuming, error-prone, and influenced by the expertise of the pathologist. Recent deep learning methods for image classification and detection using convolutional neural networks (CNNs) have demonstrated marked improvements in the accuracy of a variety of medical imaging analysis tasks. However, most well-established deep learning methods require large annotated training datasets that are specific to the particular problem domain; such datasets are difficult to acquire for histopathology data where visual characteristics differ between different tissue types, in addition to the need for precise annotations. In this study, we overcome the lack of annotated training dataset in histopathology images of a particular domain by adapting annotated histopathology images from different domains (tissue types). The data from other tissue types are used to pre-train CNNs into a shared histopathology domain (e.g., stains, cellular structures) such that it can be further tuned/optimized for a specific tissue type. We evaluated our classification method on publically available datasets of histopathology images; the accuracy and area under the receiver operating characteristic curve (AUC) of our method was higher than CNNs trained from scratch on limited data (accuracy: 84.3% vs. 78.3%; AUC: 0.918 vs. 0.867), suggesting that domain adaptation can be a valuable approach to histopathological images classification.
机译:肿瘤组织病理学是癌症诊断中的关键步骤,涉及视觉检查成像数据以检测健康组织中肿瘤细胞的存在。此手动过程可能很耗时,容易出错,并且会受到病理学家的专业知识的影响。使用卷积神经网络(CNN)进行图像分类和检测的最新深度学习方法已证明在各种医学成像分析任务的准确性方面有显着提高。但是,大多数公认的深度学习方法都需要特定于特定问题领域的大型带注释的训练数据集。这样的数据集很难获得组织病理学数据,在这些数据中,除了需要精确的注释外,不同组织类型之间的视觉特征也不同。在这项研究中,我们通过改编来自不同域(组织类型)的带注释的组织病理学图像,克服了特定域的组织病理学图像中带注释的训练数据集的不足。来自其他组织类型的数据用于将CNN预训练到共享的组织病理学域(例如,染色剂,细胞结构)中,以便可以针对特定的组织类型对其进行进一步的调整/优化。我们根据公开的组织病理学图像数据集评估了分类方法;我们的方法的接收器工作特性曲线(AUC)下的准确性和面积要比在有限数据上从头开始训练的CNN更高(准确性:84.3%vs. 78.3%; AUC:0.918 vs. 0.867),这表明可以进行域自适应组织病理学图像分类的一种有价值的方法。

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