尿
生物标志物
诊断生物标志物
挥发性有机化合物
泌尿系统
气相色谱-质谱法
食管癌
色谱法
生物标志物发现
曲线下面积
气相色谱法
接收机工作特性
癌症
医学
质谱法
化学
内科学
有机化学
蛋白质组学
生物化学
基因
作者
Qi Liu,Shuhai Li,Yaping Li,L.‐C. YU,Zhao Yu-xiao,Zhihong Wu,Yingjing Fan,Xinyang Li,Yifeng Wang,Shouxin Zhang,Yi Zhang
标识
DOI:10.1038/s41598-023-45989-1
摘要
Abstract Early diagnosis of esophageal cancer (EC) is extremely challenging. The study presented herein aimed to assess whether urinary volatile organic compounds (VOCs) may be emerging diagnostic biomarkers for EC. Urine samples were collected from EC patients and healthy controls (HCs). Gas chromatography-ion mobility spectrometry (GC-IMS) was next utilised for volatile organic compound detection and predictive models were constructed using machine learning algorithms. ROC curve analysis indicated that an 8-VOCs based machine learning model could aid the diagnosis of EC, with the Random Forests having a maximum AUC of 0.874 and sensitivities and specificities of 84.2% and 90.6%, respectively. Urine VOC analysis aids in the diagnosis of EC.
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