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Adaptation of Weakly Supervised Localization in Histopathology by Debiasing Predictions

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Weakly Supervised Object Localization (WSOL) models enable joint classification and region-of-interest localization in histology images using only image-class supervision. When deployed in a target domain, distributions shift remains a major cause of performance degradation, especially when applied on new organs or institutions with different staining protocols and scanner characteristics. Under stronger cross-domain shifts, WSOL predictions can become biased toward dominant classes, producing highly skewed pseudo-label distributions in the target domain. Source-Free (Unsupervised) Domain Adaptation (SFDA) methods are commonly employed to address domain shift. However, because they rely on self-training, the initial bias is reinforced over training iterations, degrading both classification and localization tasks. We identify this amplification of prediction bias as a primary obstacle to the SFDA of WSOL models in histopathology. This paper introduces \sfdadep, a method inspired by machine unlearning that formulates SFDA as an iterative process of identifying and correcting prediction bias. It periodically identifies target images from over-predicted classes and selectively reduces the predictive confidence for uncertain (high entropy) images, while preserving confident predictions. This process reduces the drift of decision boundaries and bias toward dominant classes. A jointly optimized pixel-level classifier further restores discriminative localization features under distribution shift. Extensive experiments on cross-organ and -center histopathology benchmarks (glas, CAMELYON-16, CAMELYON-17) with several WSOL models show that SFDA-DeP consistently improves classification and localization over state-of-the-art SFDA baselines. {\small Code: \href{https://anonymous.4open.science/r/SFDA-DeP-1797/}{anonymous.4open.science/r/SFDA-DeP-1797/}}

Alexis Guichemerre, Banafsheh Karimian, Soufiane Belharbi, Natacha Gillet, Nicolas Thome, Pourya Shamsolmoali, Mohammadhadi Shateri, Luke McCaffrey, Eric Granger• 2026

Related benchmarks

TaskDatasetResultRank
ClassificationC16
Balanced Accuracy72.1
31
ClassificationCAMELYON17 Center 0
Classification Accuracy86.2
18
ClassificationCAMELYON17 Center 2
CL79.2
18
ClassificationCAMELYON17 Center 3
CL Score80.6
18
ClassificationCAMELYON17 Center 4
CL Score74.5
18
ClassificationAverage C16, C17-0, C17-1, C17-2, C17-3, C17-4
Accuracy (CL Average)73.4
18
LocalizationC16 Target Domain from GlaS → C16
PxAP53.5
18
LocalizationCAMELYON17 Center 0
PxAP49.9
18
LocalizationCAMELYON17 Center 1
PxAP38.8
18
LocalizationCAMELYON17 Center 2
PxAP50.2
18
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