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Self-guided Multiple Instance Learning for Weakly Supervised Disease Classification and Localization in Chest Radiographs

机译:胸部射线照片中弱监督疾病分类和本地化的自我指导多实例学习

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The lack of fine-grained annotations hinders the deployment of automated diagnosis systems, which require human-interpretable justification for their decision process. In this paper, we address the problem of weakly supervised identification and localization of abnormalities in chest radiographs. To that end, we introduce a novel loss function for training convolutional neural networks increasing the localization confidence and assisting the overall disease identification. The loss leverages both image- and patch-level predictions to generate auxiliary supervision. Rather than forming strictly binary from the predictions as done in previous loss formulations, we create targets in a more customized manner, which allows the loss to account for possible misclassification. We show that the supervision provided within the proposed learning scheme leads to better performance and more precise predictions on prevalent datasets for multiple-instance learning as well as on the NIH ChestX-Rayl4 benchmark for disease recognition than previously used losses.
机译:缺乏细粒度的注释阻碍了自动诊断系统的部署,这需要对其决策过程的人为可解释的理由。在本文中,我们解决了胸部射线照片弱化识别和定位问题的问题。为此,我们向培训卷积神经网络引入了一种新的损失功能,提高了本地化信心并协助整体疾病鉴定。损失利用图像和补丁级别预测来生成辅助监控。我们以先前损失配方中完成的预测中,以更自定义的方式创建目标,而不是从预测中形成严格的二进制,而是以更自定义的方式创建目标,这允许丢失占可能错误分类。我们表明,在拟议的学习计划内提供的监督导致更好的性能,更精确地预测多实例学习,以及疾病认可的NIH Chessx-Rayl4基准,而不是先前使用的损失。

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