前列腺癌
医学
人工智能
模式治疗法
队列
临床实习
计算机科学
前列腺特异性抗原
主成分分析
癌症
机器学习
医学物理学
肿瘤科
患者数据
临床诊断
前列腺
模型验证
组分(热力学)
临床决策
内科学
作者
C Wang,Yuan Tian,Shaojie Yin,Xi Zhang,Xuedong Wei,Lingfeng Wu,Zhengdong Zhou,Guijian Pang,Yue Wang,Wangjian Wu,Shukai Zhao,Ziwei Wang,Jiangnan Xu,He He,Minglun Li,Zhankui Jia,Xu Gao,Fubo Wang,Guangtao Zhai,Bin Xu
标识
DOI:10.1038/s41746-026-02670-x
摘要
Accurate prostate cancer (PCa) diagnosis remains difficult because of tumor heterogeneity and the challenge of integrating multimodal clinical information. We developed Prost-LM, a multimodal large language model that jointly embeds MRI-derived features, numerical PSA values, and free-text clinical reports into a unified semantic space to enable deep cross-modal reasoning. Trained and validated on a large multi-center cohort of 3940 patients, Prost-LM achieved strong diagnostic performance, with an internal validation AUC of 0.954 for distinguishing PCa from benign conditions, outperforming MRI-only models (AUC = 0.868, P < 0.001). For detecting clinically significant PCa (Gleason score ≥ 7), Prost-LM reached an AUC of 0.955. Additionally, the model provides interpretable diagnostic decisions to support clinical verification. These results suggest Prost-LM can improve automated PCa diagnosis and support precision oncology through multimodal AI.
科研通智能强力驱动
Strongly Powered by AbleSci AI