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RACR-MIL: Rank-aware contextual reasoning for weakly supervised grading of squamous cell carcinoma using whole slide images

RACR-MIL: Rank-aware contextual reasoning for weakly supervised grading of squamous cell carcinoma using whole slide images

来源:Arxiv_logoArxiv
英文摘要

Squamous cell carcinoma (SCC) is the most common cancer subtype, with an increasing incidence and a significant impact on cancer-related mortality. SCC grading using whole slide images is inherently challenging due to the lack of a reliable protocol and substantial tissue heterogeneity. We propose RACR-MIL, the first weakly-supervised SCC grading approach achieving robust generalization across multiple anatomies (skin, head and neck, lung). RACR-MIL is an attention-based multiple-instance learning framework that enhances grade-relevant contextual representation learning and addresses tumor heterogeneity through two key innovations: (1) a hybrid WSI graph that captures both local tissue context and non-local phenotypical dependencies between tumor regions, and (2) a rank-ordering constraint in the attention mechanism that consistently prioritizes higher-grade tumor regions, aligning with pathologists diagnostic process. Our model achieves state-of-the-art performance across multiple SCC datasets, achieving 3-9% higher grading accuracy, resilience to class imbalance, and up to 16% improved tumor localization. In a pilot study, pathologists reported that RACR-MIL improved grading efficiency in 60% of cases, underscoring its potential as a clinically viable cancer diagnosis and grading assistant.

Krishnakant Saboo、Anirudh Choudhary、Aaron Mangold、Ravishankar Iyer、Mosbah Aouad、Dennis Murphree、Angelina Hwang、Jacob Kechter、Blake Bordeaux、Puneet Bhullar、David DiCaudo、Steven Nelson、Nneka Comfere、Emma Johnson、Olayemi Sokumbi、Jason Sluzevich、Leah Swanson

肿瘤学计算技术、计算机技术

Krishnakant Saboo,Anirudh Choudhary,Aaron Mangold,Ravishankar Iyer,Mosbah Aouad,Dennis Murphree,Angelina Hwang,Jacob Kechter,Blake Bordeaux,Puneet Bhullar,David DiCaudo,Steven Nelson,Nneka Comfere,Emma Johnson,Olayemi Sokumbi,Jason Sluzevich,Leah Swanson.RACR-MIL: Rank-aware contextual reasoning for weakly supervised grading of squamous cell carcinoma using whole slide images[EB/OL].(2025-07-19)[2025-08-05].https://arxiv.org/abs/2308.15618.点此复制

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