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arxiv: 2605.25175 · v1 · pith:IDO5X5ZAnew · submitted 2026-05-24 · 💻 cs.CV

Discrepancy Minimization Improves Cross-Hospital Robustness in Digital Pathology

classification 💻 cs.CV
keywords datapfmsacrossdiscrepancydomainhospitalpathologyrobustness
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Pathology foundation models (PFMs) have advanced rapidly in recent years and support training classifiers for a range of histopathology tasks. However, their robustness across hospitals remains limited: performance often degrades when training a classifier on data from one hospital and evaluating it on another target hospital. We address this challenge by fine-tuning PFMs with a local maximum mean discrepancy (LMMD) objective that applies to two settings: domain adaptation, where unlabeled target-hospital data is available, and domain generalization, where target-hospital data is unavailable at all. Experiments at both the patch- and slide-level show consistent improvements across multiple PFMs and tasks.

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