可感知混杂因素的 ConvNets 可视化。

Qingyu Zhao, Ehsan Adeli, Adolf Pfefferbaum, Edith V Sullivan, Kilian M Pohl
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引用次数: 0

摘要

随着深度学习的最新进展,神经成像研究越来越多地依赖卷积网络(ConvNets)来预测基于磁共振图像的诊断。为了更好地了解疾病是如何影响大脑的,这些研究将 ConvNet 的显著性图可视化,突出大脑中对预测有重大贡献的体素。然而,这些显著性图通常是混杂的,即某些显著区域对混杂变量(如年龄)的预测作用大于对诊断的预测作用。为了避免这种误解,我们在本文中提出了一种方法,旨在可视化无混杂因素的显著性地图,只突出显示对诊断有预测作用的体素。该方法结合了单变量统计检验,以识别 ConvNet 学习到的中间特征中的混杂效应。然后,通过一种新颖的部分反向传播程序消除来自混杂特征子集的影响。我们使用这两步方法来可视化从合成数据集和两个真实数据集中提取的无混淆突出图。这些实验揭示了我们的可视化技术在产生无偏见模型解释方面的潜力。
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Confounder-Aware Visualization of ConvNets.

With recent advances in deep learning, neuroimaging studies increasingly rely on convolutional networks (ConvNets) to predict diagnosis based on MR images. To gain a better understanding of how a disease impacts the brain, the studies visualize the salience maps of the ConvNet highlighting voxels within the brain majorly contributing to the prediction. However, these salience maps are generally confounded, i.e., some salient regions are more predictive of confounding variables (such as age) than the diagnosis. To avoid such misinterpretation, we propose in this paper an approach that aims to visualize confounder-free saliency maps that only highlight voxels predictive of the diagnosis. The approach incorporates univariate statistical tests to identify confounding effects within the intermediate features learned by ConvNet. The influence from the subset of confounded features is then removed by a novel partial back-propagation procedure. We use this two-step approach to visualize confounder-free saliency maps extracted from synthetic and two real datasets. These experiments reveal the potential of our visualization in producing unbiased model-interpretation.

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