Towards Fair and Robust Volumetric CT Classification via KL-Regularised Group Distributionally Robust Optimisation
arXiv cs.CV / 3/18/2026
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Key Points
- The paper addresses distribution shift across acquisition sites and demographic disparities in chest CT diagnosis by proposing a KL-regularised Group DRO framework for two tasks.
- It combines a lightweight MobileViT-XXS slice encoder with a two-layer SliceTransformer and uses a KL-regularised Group DRO objective to upweight underperforming groups without collapsing group weights.
- In Task 1 (COVID-19 binary classification across multi-site CT volumes) it achieves a challenge F1 of 0.835, surpassing the best published entry by 5.9 points.
- In Task 2 (four-class lung pathology with gender-based fairness constraints) it reaches a mean per-gender macro F1 of 0.815, outperforming the best entry by 11.1 percentage points and boosting Female Squamous F1 by 17.4 over the focal loss baseline.
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