癌症
医学
基础(证据)
本体论
计算机科学
重症监护医学
病理
计算模型
数据科学
梅德林
疾病
语义学(计算机科学)
图形
知识图
人工智能
人体病理学
分子病理学
人类疾病
认知科学
罕见病
公共卫生
生物信息学
作者
Xiao Zhou,Luoyi Sun,Dexuan He,Wenbin Guan,Ge Wang,Lifeng Wang,Lifeng Wang,Xiaojun Yuan,Xin Sun,Ya Zhang,Kun Sun,Yanfeng Wang,Weidi Xie
出处
期刊:Cancer Cell
[Cell Press]
日期:2026-02-19
卷期号:44 (4): 777-791.e7
被引量:1
标识
DOI:10.1016/j.ccell.2026.01.019
摘要
Vision-language foundation models have shown great promise in computational pathology but remain primarily data-driven, lacking explicit integration of medical knowledge. We introduce knowledge-enhanced pathology (KEEP), a foundation model that systematically incorporates disease knowledge into pretraining for cancer diagnosis. KEEP leverages a comprehensive disease knowledge graph encompassing 11,454 diseases and 139,143 attributes to reorganize millions of pathology image-text pairs into 143,000 semantically structured groups aligned with disease ontology hierarchies. This knowledge-enhanced pretraining aligns visual and textual representations within hierarchical semantic spaces, enabling a deeper understanding of disease relationships and morphological patterns. Across 18 public benchmarks (over 14,000 whole-slide images) and 4 institutional rare cancer datasets (926 cases), KEEP consistently outperformed existing foundation models, showing substantial gains for rare subtypes. These results establish knowledge-enhanced vision-language modeling as a powerful paradigm for advancing computational pathology.
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