Paper ID: 2503.12401 • Published Mar 16, 2025
MExD: An Expert-Infused Diffusion Model for Whole-Slide Image Classification
Jianwei Zhao, Xin Li, Fan Yang, Qiang Zhai, Ao Luo, Yang Zhao, Hong Cheng, Huazhu Fu
UESTC•AIQ•SICAU•SWJTU•IHPC, A*STAR
TL;DR
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Whole Slide Image (WSI) classification poses unique challenges due to the
vast image size and numerous non-informative regions, which introduce noise and
cause data imbalance during feature aggregation. To address these issues, we
propose MExD, an Expert-Infused Diffusion Model that combines the strengths of
a Mixture-of-Experts (MoE) mechanism with a diffusion model for enhanced
classification. MExD balances patch feature distribution through a novel
MoE-based aggregator that selectively emphasizes relevant information,
effectively filtering noise, addressing data imbalance, and extracting
essential features. These features are then integrated via a diffusion-based
generative process to directly yield the class distribution for the WSI. Moving
beyond conventional discriminative approaches, MExD represents the first
generative strategy in WSI classification, capturing fine-grained details for
robust and precise results. Our MExD is validated on three widely-used
benchmarks-Camelyon16, TCGA-NSCLC, and BRACS consistently achieving
state-of-the-art performance in both binary and multi-class tasks.
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