从胸片对肺炎进行稳健分类的一种对抗性方法

Joseph D. Janizek, G. Erion, A. DeGrave, Su-In Lee
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引用次数: 16

摘要

虽然深度学习在医学图像疾病分类领域显示出前景,但基于最先进的卷积神经网络架构的模型经常由于数据集移位而表现出性能损失。使用来自一家医院系统的数据进行训练的模型在对来自同一家医院的数据进行测试时获得了很高的预测性能,但在不同医院系统中进行测试时表现明显较差。此外,即使在给定的医院系统中,深度学习模型也被证明依赖于医院和患者层面的混杂因素,而不是有意义的病理学来进行分类。为了安全地部署这些模型,我们希望确保它们不使用混杂变量进行分类,并且即使在对未包含在训练数据中的医院图像进行测试时,它们也能很好地工作。我们试图在胸片肺炎分类的背景下解决这个问题。我们提出了一种基于对抗性优化的方法,这使我们能够学习不依赖于混杂因素的更健壮的模型。具体来说,我们通过训练一个模型来证明肺炎分类器在院外的泛化性能得到了改善,该模型对胸片的视图位置(前后vs后前)是不变的。我们的方法对外部医院数据的预测性能优于标准基线和先前提出的处理混杂因素的方法,并且还提出了一种识别可能依赖于混杂因素的模型的方法。
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An adversarial approach for the robust classification of pneumonia from chest radiographs
While deep learning has shown promise in the domain of disease classification from medical images, models based on state-of-the-art convolutional neural network architectures often exhibit performance loss due to dataset shift. Models trained using data from one hospital system achieve high predictive performance when tested on data from the same hospital, but perform significantly worse when they are tested in different hospital systems. Furthermore, even within a given hospital system, deep learning models have been shown to depend on hospital- and patient-level confounders rather than meaningful pathology to make classifications. In order for these models to be safely deployed, we would like to ensure that they do not use confounding variables to make their classification, and that they will work well even when tested on images from hospitals that were not included in the training data. We attempt to address this problem in the context of pneumonia classification from chest radiographs. We propose an approach based on adversarial optimization, which allows us to learn more robust models that do not depend on confounders. Specifically, we demonstrate improved out-of-hospital generalization performance of a pneumonia classifier by training a model that is invariant to the view position of chest radiographs (anterior-posterior vs. posterior-anterior). Our approach leads to better predictive performance on external hospital data than both a standard baseline and previously proposed methods to handle confounding, and also suggests a method for identifying models that may rely on confounders.
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