[2602.24183] A multimodal slice discovery framework for systematic failure detection and explanation in medical image classification

[2602.24183] A multimodal slice discovery framework for systematic failure detection and explanation in medical image classification

arXiv - Machine Learning 3 min read

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Abstract page for arXiv paper 2602.24183: A multimodal slice discovery framework for systematic failure detection and explanation in medical image classification

Computer Science > Computer Vision and Pattern Recognition arXiv:2602.24183 (cs) [Submitted on 27 Feb 2026] Title:A multimodal slice discovery framework for systematic failure detection and explanation in medical image classification Authors:Yixuan Liu, Kanwal K. Bhatia, Ahmed E. Fetit View a PDF of the paper titled A multimodal slice discovery framework for systematic failure detection and explanation in medical image classification, by Yixuan Liu and 2 other authors View PDF HTML (experimental) Abstract:Despite advances in machine learning-based medical image classifiers, the safety and reliability of these systems remain major concerns in practical settings. Existing auditing approaches mainly rely on unimodal features or metadata-based subgroup analyses, which are limited in interpretability and often fail to capture hidden systematic failures. To address these limitations, we introduce the first automated auditing framework that extends slice discovery methods to multimodal representations specifically for medical applications. Comprehensive experiments were conducted under common failure scenarios using the MIMIC-CXR-JPG dataset, demonstrating the framework's strong capability in both failure discovery and explanation generation. Our results also show that multimodal information generally allows more comprehensive and effective auditing of classifiers, while unimodal variants beyond image-only inputs exhibit strong potential in scenarios where resources are constrain...

Originally published on March 02, 2026. Curated by AI News.

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