医学
急性胰腺炎
代谢组学
观察研究
生物标志物
内科学
临床试验
疾病
队列
前瞻性队列研究
曲线下面积
队列研究
生物标志物发现
胰腺炎
液体活检
组学
生物信息学
预警系统
重症监护医学
肿瘤科
试验预测值
荟萃分析
病理
疾病严重程度
接收机工作特性
诊断准确性
危险分层
预警得分
活检
随机对照试验
放射科
作者
Deng Da,Qihang Yuan,Pan Chen,Junhong Chen,Jianjun Liu,Song Wei,Y. Liu,YuTong Zhu,Tianfu Wei,Jianliang Cao,Zeming Wu,Yuepeng Hu,Dong Shang,Peiyuan Yin
标识
DOI:10.1038/s41746-025-02294-7
摘要
To identify novel diagnostic biomarkers for acute pancreatitis (AP) and facilitate the early prediction of severe AP (SAP), this investigation characterized the serum metabolomic profiles of patients across distinct disease phases and integrated metabolomics with artificial intelligence to construct bile acid-based predictive models. The observational protocol was registered with the Chinese Clinical Trial Registry (ChiCTR2000034117) on June 24, 2020. Comparative metabolomic analysis revealed significant alterations in 303 metabolites and 461 lipid species in AP. Subsequent weighted gene coexpression network analysis demonstrated robust correlations between clinical parameters and specific metabolic clusters, particularly bile acids (BAs) and lipid species. Targeted quantification of 63 BAs was subsequently performed within a multicentre validation cohort (n = 948). Machine learning algorithms applied to these data facilitated the derivation of two distinct BA panels. The first panel, comprising nine BAs, demonstrated high diagnostic accuracy for AP, including among individuals with negative conventional enzymatic biomarkers, and effectively discriminated AP from acute cholangitis, as reflected by elevated area under the curve (AUC) values. A second panel, consisting of 13 BAs, reliably identified patients at elevated risk for SAP progression. Collectively, these results validate the translational potential of machine learning-driven metabolic biomarkers for the precision management of acute abdominal conditions, underscore the clinical utility of BAs as promising diagnostic and prognostic biomarkers in acute pancreatitis, and provide a new paradigm for the development of dynamic risk early-warning systems (Clinical Trial Registration Our study is an observational study registered in ChiCTR (ChiCTR2000034117) on 2020/06/24, not a prospective interventional clinical trial, and therefore does not fall under the ICMJE definition of a clinical trial requiring CONSORT compliance).
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