A Pathology Foundation Model for Gastric Cancer with Real-World Validation 文章

ArXiv CS.CV2026-06-04NEWSen作者: Ling Liang, Jiabo Ma, Zhengyu Zhang, Fengtao Zhou, Yingxue Xu, Yihui Wang, Cheng Jin, Zhengrui Guo, On Ki Tang, Zhijian Cen, Zhen Wang, Qi Xie, Chengyu Lu, Chenglong Zhao, Feifei Wang, Yu Cai, Hongyi Wang, Jing Zhang, Yaping Ye, Shijun Sun, Shenglei Li, Yu Wang, Zhenhui Li, Ronald Cheong Kin Chan, Xiuming Zhang, Zhe Wang, Hao Chen, Li Liang

摘要

arXiv:2606.04792v1 Announce Type: new Abstract: Gastric cancer remains a major cause of cancer mortality, yet its histological and molecular heterogeneity complicates diagnosis and risk stratification. General-purpose pathology foundation models (PFMs) often plateau on fine-grained endpoints central to gastric cancer care, and few have undergone rigorous prospective validation or clinical reader studies. We present GRACE, a Gastric-specific foundation model for Real-world Assessment and Clinical dEcision support. GRACE was developed from multicenter gastric pathology datasets totaling 48,364 primarily HE-stained whole-slide images from 37,493 patients. When evaluated on 28 clinically relevant tasks, GRACE consistently outperformed representative pancancer PFMs, achieving a macro-AUC of 0.9188, with strong performance for precancerous lesion diagnosis (macro-AUC 0.9322), tumor histopathological assessment (macro-AUC 0.9119), molecular profiling (macro-AUC 0.

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