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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >Epithelium-Stroma Classification via Convolutional Neural Networks and Unsupervised Domain Adaptation in Histopathological Images
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Epithelium-Stroma Classification via Convolutional Neural Networks and Unsupervised Domain Adaptation in Histopathological Images

机译:通过卷积神经网络和组织学图像中的无监督域适应上皮间质分类。

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摘要

Epithelium-stroma classification is a necessary preprocessing step in histopathological image analysis. Current deep learning based recognition methods for histology data require collection of large volumes of labeled data in order to train a new neural network when there are changes to the image acquisition procedure. However, it is extremely expensive for pathologists to manually label sufficient volumes of data for each pathology study in a professional manner, which results in limitations in real-world applications. A very simple but effective deep learning method, that introduces the concept of unsupervised domain adaptation to a simple convolutional neural network (CNN), has been proposed in this paper. Inspired by transfer learning, our paper assumes that the training data and testing data follow different distributions, and there is an adaptation operation to more accurately estimate the kernels in CNN in feature extraction, in order to enhance performance by transferring knowledge from labeled data in source domain to unlabeled data in target domain. The model has been evaluated using three independent public epithelium-stroma datasets by cross-dataset validations. The experimental results demonstrate that for epithelium-stroma classification, the proposed framework outperforms the state-of-the-art deep neural network model, and it also achieves better performance than other existing deep domain adaptation methods. The proposed model can be considered to be a better option for real-world applications in histopathological image analysis, since there is no longer a requirement for large-scale labeled data in each specified domain.
机译:上皮基质分类是组织病理学图像分析中必要的预处理步骤。当前用于组织学数据的基于深度学习的识别方法需要收集大量的标记数据,以便在图像采集程序发生变化时训练新的神经网络。但是,对于病理学家而言,以专业的方式为每个病理研究手动标记足够数量的数据非常昂贵,这导致了在实际应用中的局限性。本文提出了一种非常简单但有效的深度学习方法,该方法将无监督域自适应的概念引入到简单的卷积神经网络(CNN)中。受转移学习的启发,本文假设训练数据和测试数据遵循不同的分布,并且存在一种自适应操作,可以在特征提取中更准确地估计CNN中的内核,从而通过从源中的标记数据中转移知识来提高性能域到目标域中未标记的数据。通过跨数据集验证,使用三个独立的公共上皮基质数据集评估了该模型。实验结果表明,对于上皮-基质分类,提出的框架优于最新的深度神经网络模型,并且比其他现有的深域适应方法具有更好的性能。对于在组织病理学图像分析中的实际应用,建议的模型可以被认为是更好的选择,因为不再需要每个指定域中的大规模标记数据。

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