Information Bottleneck Attribution for Visual Explanations of Diagnosis and Prognosis.

Ugur Demir, Ismail Irmakci, Elif Keles, Ahmet Topcu, Ziyue Xu, Concetto Spampinato, Sachin Jambawalikar, Evrim Turkbey, Baris Turkbey, Ulas Bagci
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引用次数: 3

Abstract

Visual explanation methods have an important role in the prognosis of the patients where the annotated data is limited or unavailable. There have been several attempts to use gradient-based attribution methods to localize pathology from medical scans without using segmentation labels. This research direction has been impeded by the lack of robustness and reliability. These methods are highly sensitive to the network parameters. In this study, we introduce a robust visual explanation method to address this problem for medical applications. We provide an innovative visual explanation algorithm for general purpose and as an example application we demonstrate its effectiveness for quantifying lesions in the lungs caused by the Covid-19 with high accuracy and robustness without using dense segmentation labels. This approach overcomes the drawbacks of commonly used Grad-CAM and its extended versions. The premise behind our proposed strategy is that the information flow is minimized while ensuring the classifier prediction stays similar. Our findings indicate that the bottleneck condition provides a more stable severity estimation than the similar attribution methods. The source code will be publicly available upon publication.

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诊断与预后视觉解释的信息瓶颈归因。
视觉解释方法对注释数据有限或不可用的患者的预后有重要作用。已经有几次尝试使用基于梯度的归因方法来定位医学扫描的病理,而不使用分割标签。这一研究方向一直受到鲁棒性和可靠性不足的阻碍。这些方法对网络参数高度敏感。在这项研究中,我们引入了一种鲁棒的视觉解释方法来解决医疗应用中的这个问题。我们提供了一种创新的通用视觉解释算法,并作为示例应用,我们证明了它在不使用密集分割标签的情况下,对Covid-19引起的肺部病变进行量化的有效性,具有高精度和鲁棒性。这种方法克服了常用的Grad-CAM及其扩展版本的缺点。我们提出的策略背后的前提是信息流最小化,同时确保分类器预测保持相似。研究结果表明,与同类归因方法相比,瓶颈条件提供了更稳定的严重程度估计。源代码将在发布后公开提供。
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