Fairness and Robustness of CLIP-Based Models for Chest X-rays

Théo Sourget, David Restrepo, Céline Hudelot, Enzo Ferrante, Stergios Christodoulidis, Maria Vakalopoulou

Publikation: Konference artikel i Proceeding eller bog/rapport kapitelKonferencebidrag i proceedingsForskningpeer review

Abstract

Motivated by the strong performance of CLIP-based models in natural image-text domains, recent efforts have adapted these architectures to medical tasks, particularly in radiology, where large paired datasets of images and reports, such as chest X-rays, are available. While these models have shown encouraging results in terms of accuracy and discriminative performance, their fairness and robustness in the different clinical tasks remain largely underexplored. In this study, we extensively evaluate six widely used CLIP-based models on chest X-ray classification using three publicly available datasets: MIMIC-CXR, NIH-CXR14, and NEATX. We assess the models fairness across six conditions and patient subgroups based on age, sex, and race. Additionally, we assess the robustness to shortcut learning by evaluating performance on pneumothorax cases with and without chest drains. Our results indicate performance gaps between patients of different ages, but more equitable results for the other attributes. Moreover, all models exhibit lower performance on images without chest drains, suggesting reliance on spurious correlations. We further complement the performance analysis with a study of the embeddings generated by the models. While the sensitive attributes could be classified from the embeddings, we do not see such patterns using PCA, showing the limitations of these visualisation techniques when assessing models. Our code is available at https://github.com/TheoSourget/clip_cxr_fairness
OriginalsprogEngelsk
TitelFairness of AI in Medical Imaging (FAIMI) 2025 MICCAI workshop
Antal sider10
ForlagSpringer Nature Switzerland
Publikationsdato19 sep. 2025
Sider11-21
ISBN (Trykt)978-3-032-05869-0
DOI
StatusUdgivet - 19 sep. 2025
Udgivet eksterntJa
BegivenhedFairness of AI in Medical Imaging - Korea, Republic of, Daejeon, Sydkorea
Varighed: 23 sep. 202523 sep. 2025
Konferencens nummer: 3

Konference

KonferenceFairness of AI in Medical Imaging
Nummer3
LokationKorea, Republic of
Land/OmrådeSydkorea
ByDaejeon
Periode23/09/202523/09/2025
NavnLecture Notes in Computer Science
Vol/bind15976
ISSN0302-9743

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