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LSA: Latent Style Augmentation Towards Stain-Agnostic Cervical Cancer Screening

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arxiv 2503.06563 v1 pith:RCUBOSM4 submitted 2025-03-09 eess.IV cs.AIcs.CV

LSA: Latent Style Augmentation Towards Stain-Agnostic Cervical Cancer Screening

classification eess.IV cs.AIcs.CV
keywords stainaugmentationlatentwsiscancercervicalstylewsi-level
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The deployment of computer-aided diagnosis systems for cervical cancer screening using whole slide images (WSIs) faces critical challenges due to domain shifts caused by staining variations across different scanners and imaging environments. While existing stain augmentation methods improve patch-level robustness, they fail to scale to WSIs due to two key limitations: (1) inconsistent stain patterns when extending patch operations to gigapixel slides, and (2) prohibitive computational/storage costs from offline processing of augmented WSIs.To address this, we propose Latent Style Augmentation (LSA), a framework that performs efficient, online stain augmentation directly on WSI-level latent features. We first introduce WSAug, a WSI-level stain augmentation method ensuring consistent stain across patches within a WSI. Using offline-augmented WSIs by WSAug, we design and train Stain Transformer, which can simulate targeted style in the latent space, efficiently enhancing the robustness of the WSI-level classifier. We validate our method on a multi-scanner WSI dataset for cervical cancer diagnosis. Despite being trained on data from a single scanner, our approach achieves significant performance improvements on out-of-distribution data from other scanners. Code will be available at https://github.com/caijd2000/LSA.

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