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A Breast Vision Pathology Foundation Model for Real-world Clinical Utility

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Pathology foundation models have shown strong retrospective performance, but whether such systems can support clinically relevant use remains unclear. This challenge is particularly important in breast cancer, where pathological assessment serves as the gold standard for diagnosis and guides treatment planning, surgical decision-making and risk stratification across pre-, intra- and post-operative stages. Here we present \textbf{BRAVE}, a breast-adaptive pathology foundation model developed and evaluated using a total resource of 101,638 breast whole-slide images from 32 sources across Asia, Europe and North America. We assessed BRAVE across 34 tasks in 82 cohorts spanning pre-operative biopsy, intra-operative frozen section and post-operative resection, using an evidence chain comprising retrospective benchmarking, clinically challenging scenarios, workflow-oriented clinical impact simulations, prospective observational validation with the thresholds locked in the retrospective cohorts and crossover pathologist-AI interaction studies. Across these settings, BRAVE supported practical roles in the clinical workflow, including safe exclusion of low-risk cases from routine review, AI-assisted second-review rescue of initially missed positives and prioritization of cases for further assessment. In prospective validation across three centres, BRAVE excluded 76.9% of negative biopsy cases (NPV 0.953) and 70.1% of negative frozen-section cases (NPV 0.973), and triaged 78.8% of post-operative subtyping cases as high-confidence clear-cut cases (NPV 1.000). In reader studies, AI assistance improved balanced accuracy from 88.5% to 95.1% (OR 3.14, P<0.001), with better efficiency, confidence and inter-rater agreement. BRAVE-derived scores also independently predicted disease-free survival (adjusted HR 4.79, P<0.001) and overall survival (adjusted HR 8.14, P<0.001).

Yingxue Xu, Zhengyu Zhang, Xiuming Zhang, Mengwei Xu, Fengtao Zhou, Yihui Wang, Jiabo Ma, Yi Xin, Danyi Li, Chengyu Lu, Zhijian Cen, Ying Tan, Qingbing Yao, Qi Wang, Zizhao Gao, Yong Zhang, Jingjing Chen, Feifei Liu, Qian Xu, Yi Dai, Hongxuan Tan, Cheng Jin, Huajun Zhou, Zhengrui Guo, Ling Liang, Hongyi Wang, Yingcong Chen, Xi Wang, Zhenhui Li, Ronald Cheong Kin Chan, Ning Mao, Muyan Cai, Zhe Wang, Li Liang, Hao Chen• 2026

Related benchmarks

TaskDatasetResultRank
Differential DiagnosisPre-operative Differential Diagnosis (Pre-Diagnosis)
Macro-AUC98
5
Differential DiagnosisIntra-operative Differential Diagnosis (Intra-Diagnosis)
Macro-AUC96.4
5
ER PredictionIntra-operative Retrospective Cohort Biopsy H5-Internal
AUC87.1
5
ER PredictionIntra-operative Retrospective Cohort Biopsy H10-Retro
AUC0.84
5
ER PredictionIntra-operative Retrospective Cohort Biopsy H17-Retro
AUC82.9
5
ER PredictionIntra-operative Retrospective Cohort Biopsy H20-Retro
AUC83.5
5
ER PredictionIntra-operative Retrospective Cohort Biopsy H21-Retro
AUC84
5
ER PredictionIntra-operative Retrospective Cohort Biopsy H7-Retro
AUC0.789
5
ER PredictionIntra-operative Retrospective Cohort Biopsy H8-Retro
AUC89.4
5
HER2 PredictionIntra-operative Retrospective Cohort Biopsy H5-Internal
AUC0.824
5
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