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Rectified Cross-Entropy and Upper Transition Loss for Weakly Supervised Whole Slide Image Classifier

机译:弱监督整个幻灯片图像分类器的校正交叉熵和上转换损失

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Convolutional neural network (CNN) has achieved promising results in classifying histopathology images so far. However, most clinical data only has label information for the whole tissue slide and annotating every region of different tissue type is prohibitively expensive. Hence, computer aided diagnosis of whole slide images (WSIs) is challenging due to: (1) a WSI contains tissues with different types but it is classified by the most malignant tissue; (2) the gigapixel size of WSIs makes loading the whole image and end-to-end CNN training computationally infeasible. Previous works tended to classify WSI patch-wisely using the whole slide label and overlooked one useful information: it is an error to classify a patch as higher-grade classes. To address this, we propose a rectified cross-entropy loss as a combination of soft pooling and hard pooling of discriminative patches. We also introduce an upper transition loss to restrain errors. Our experimental results on colon polyp WSIs showed that, the two new losses can effectively guide the CNN optimization. With only WSI class information available for training, the patch-wise classification results on the testing set largely agree with human experts' domain knowledge.
机译:到目前为止,卷积神经网络(CNN)在对组织病理学图像进行分类方面已经取得了可喜的成果。然而,大多数临床数据仅具有整个组织玻片的标签信息,并且注释不同组织类型的每个区域的费用过高。因此,由于以下原因,计算机辅助诊断整个幻灯片图像(WSI)具有挑战性:(1)WSI包含不同类型的组织,但按恶性程度最高的组织进行分类; (2)WSI的千兆像素大小使加载整个图像和端到端CNN训练在计算上不可行。以前的工作倾向于使用整个幻灯片标签对WSI进行明智的分类,而忽略了一个有用的信息:将补丁分类为更高级别的类是错误的。为了解决这个问题,我们提出了校正后的交叉熵损失,作为区分性补丁的软池化和硬池化的组合。我们还引入了较高的过渡损耗来抑制错误。我们在结肠息肉WSI上的实验结果表明,这两个新的损失可以有效地指导CNN优化。由于只有WSI类别信息可用于培训,因此测试集上的逐项分类结果在很大程度上与人类专家的领域知识一致。

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