医学
异位妊娠
怀孕
临床诊断
超声波
诊断准确性
产科
风险因素
风险评估
曲线下面积
多普勒超声
产前诊断
超声科
重症监护医学
妇科
曲线下面积
作者
Juxiang Zhang,Shenglan Gu,Yuhong Li,Qiong Fan,Jiangjing Yuan,Dan Cao,Xiaojing Lu,Yì Wáng,Ting Ni,Wanshan Liu,Yida Huang,Yang St,Rui Wang,Yanyan Li,Yanxi Yang,Yuchen Liu,Jiao Wu,Kun Qian,Yudong Wang
出处
期刊:Small methods
[Wiley]
日期:2026-02-27
卷期号:10 (5): e01741-e01741
标识
DOI:10.1002/smtd.202501741
摘要
Ectopic pregnancy (EP) is a leading cause of maternal morbidity and mortality in early pregnancy. Current diagnostic approaches, which rely on ultrasound scanning and blood measurements, are limited by low detection sensitivity. Herein, we propose a one-step system that uses EP-associated serum metabolic fingerprints (ESF) for efficient EP diagnosis and risk prediction. The system employs nanoparticle-assisted laser desorption/ionization mass spectrometry to rapidly record ESF. A machine learning-based diagnostic model was then used to analyze ESF from 722 participants, achieving an area under the curve (AUC) of 0.913. Simultaneously, potential metabolic biomarkers from ESF were annotated, enabling accurate diagnosis of EP across various clinical profiles (AUC 0.922). Moreover, a rupture risk prediction model was constructed, yielding an AUC of 0.885, significantly surpassing conventional clinical indicators (AUC 0.702, p < 0.05). Our work offers a rapid, effective tool for early EP diagnosis and risk stratification, marking a pivotal advancement toward precision diagnostics.
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