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19
22

CheXplaining in Style: Counterfactual Explanations for Chest X-rays using StyleGAN

15 July 2022
Matan Atad
V. Dmytrenko
Yitong Li
Xinyue Zhang
Matthias Keicher
Jan Kirschke
Bene Wiestler
Ashkan Khakzar
Nassir Navab
    MedIm
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Abstract

Deep learning models used in medical image analysis are prone to raising reliability concerns due to their black-box nature. To shed light on these black-box models, previous works predominantly focus on identifying the contribution of input features to the diagnosis, i.e., feature attribution. In this work, we explore counterfactual explanations to identify what patterns the models rely on for diagnosis. Specifically, we investigate the effect of changing features within chest X-rays on the classifier's output to understand its decision mechanism. We leverage a StyleGAN-based approach (StyleEx) to create counterfactual explanations for chest X-rays by manipulating specific latent directions in their latent space. In addition, we propose EigenFind to significantly reduce the computation time of generated explanations. We clinically evaluate the relevancy of our counterfactual explanations with the help of radiologists. Our code is publicly available.

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