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Multi-Scale Explainable Feature Learning for Pathological Image Analysis Using Convolutional Neural Networks

机译:使用卷积神经网络进行病理图像分析的多尺度可解释特征学习

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The use of computer-assisted diagnosis (CAD) systems for pathological image analysis constitutes an important research topic. Such systems should be accurate, and their decisions should be explainable to ensure reliability. In this paper, we present an explainable diagnosis method based on convolutional neural networks (CNNs). This method allows us to interpret the basis of the decisions made by the CNN from two perspectives, namely statistics and visualization. For the statistical explanation, the method constructs dictionaries of representative pathological features over multiple scales in training data. It performs diagnoses based on the occurrence and importance of items in the dictionaries to rationalize its decisions. We introduce a vector quantization scheme to the CNN to enable it to construct the feature dictionary. For the visual interpretation, the method provides images of learned features in the dictionary by decoding them from a high-dimensional feature space to a pathological image space. The experimental results showed that the proposed network learned pathological features, which contributed to the diagnosis, and the method yielded approximately an area under the receiver operating curve (AUC) of 0.89 for detecting atypical tissues in pathological images of a uterine cervix by using these features.
机译:使用计算机辅助诊断(CAD)系统进行病理图像分析构成了重要的研究课题。这样的系统应该是准确的,并且其决策应该可以解释以确保可靠性。在本文中,我们提出了一种基于卷积神经网络(CNN)的可解释的诊断方法。这种方法使我们能够从统计和可视化两个角度解释CNN做出的决策依据。为了进行统计解释,该方法在训练数据中构建了具有多个尺度的代表性病理特征字典。它根据字典中项目的出现情况和重要性执行诊断,以合理化其决策。我们向CNN引入矢量量化方案,以使其能够构建特征字典。为了进行视觉解释,该方法通过将字典中的学习特征从高维特征空间解码为病理图像空间来提供字典中的学习特征图像。实验结果表明,所提出的网络学习了有助于诊断的病理特征,并且该方法产生了大约0.89的接收器工作曲线(AUC)下方区域,用于通过使用这些特征来检测子宫颈病理图像中的非典型组织。

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