Physics-Grounded Adversarial Stain Augmentation with Calibrated Coverage Guarantees

Abstract

Stain variation across hospitals degrades histopathology models at deployment. Existing augmentation methods perturb color spaces with arbitrary hyperparameters, lacking both a principled budget and coverage guarantees for unseen centers. We propose Calibrated Adversarial Stain Augmentation (CASA), which performs adversarial augmentation in the Macenko stain parameter space with a budget calibrated from multi-center statistics via the DKW inequality. On Camelyon17-WILDS (5 seeds), CASA achieves 93.9\% 1.6\% slide-level accuracy -- outperforming HED-strong (88.4\% 7.3\%), RandStainNA (85.2\% 6.7\%), and ERM (63.9\% 11.3\%) -- with the highest worst-group accuracy (84.9\% 0.9\%) among all 10 compared methods.

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