前列腺癌
医学
机器学习
危险分层
人工智能
肿瘤科
磁共振成像
前列腺特异性抗原
内科学
风险评估
临床实习
前列腺
癌症
鉴定(生物学)
代谢组学
PCA3系列
曲线下面积
生物标志物发现
前列腺癌的治疗
增生
训练集
回顾性队列研究
曲线下面积
作者
Xi Zhang,Minjiang Chen,Binbin Xia,Binrui Liu,Xiaoya Lin,Hanyang Tao,He Wang,Tengfei Gu,Jie Li,Baijun Dong,Hongchang Gao
标识
DOI:10.1038/s41698-026-01406-0
摘要
The non-invasive diagnosis and risk stratification of prostate cancer (PCa) remain clinically challenging due to the limited specificity of prostate-specific antigen (PSA). In this retrospective study, we applied a comparative machine learning (ML) framework to rank and select biomarkers from serum 1H nuclear magnetic resonance (NMR)-based metabolomics, subsequently developing three sequential metabolite panels. These metabolite-based models effectively distinguished overall PCa from benign prostatic hyperplasia (BPH), clinically non-significant prostate cancer (cnsPCa) from BPH, and clinically significant prostate cancer (csPCa) from cnsPCa. All models achieved areas under the curve (AUC) consistently above 0.9 in both discovery and validation cohorts, without incorporating clinical variables such as age or PSA. Decision curve analysis (DCA) further confirmed their superior clinical utility over the current PSA-based strategy. This study underscores the potential of ML-driven metabolomics for accurate, non-invasive diagnosis and effective risk stratification of PCa, which could significantly improve patient management and reduce unnecessary interventions.
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