肝细胞癌
蛋白质组学
生物标志物
医学
生物标志物发现
肝硬化
内科学
肿瘤科
胃肠病学
生物
生物化学
基因
作者
Xiaohua Xing,Linsheng Cai,Jiahe Ouyang,Fei Wang,Zongman Li,Mingxin Liu,Yingchao Wang,Yang Zhou,En Hu,Changli Huang,Liming Wu,Jingfeng Liu,Xiaolong Liu
标识
DOI:10.1038/s41467-023-44255-2
摘要
Early diagnosis of hepatocellular carcinoma (HCC) lacks highly sensitive and specific protein biomarkers. Here, we describe a staged mass spectrometry (MS)-based discovery-verification-validation proteomics workflow to explore serum proteomic biomarkers for HCC early diagnosis in 1002 individuals. Machine learning model determined as P4 panel (HABP2, CD163, AFP and PIVKA-II) clearly distinguish HCC from liver cirrhosis (LC, AUC 0.979, sensitivity 0.925, specificity 0.915) and healthy individuals (HC, AUC 0.992, sensitivity 0.975, specificity 1.000) in an independent validation cohort, outperforming existing clinical prediction strategies. Furthermore, the P4 panel can accurately predict LC to HCC conversion (AUC 0.890, sensitivity 0.909, specificity 0.877) with predicting HCC at a median of 11.4 months prior to imaging in prospective external validation cohorts (No.: Keshen 2018_005_02 and NCT03588442). These results suggest that proteomics-driven serum biomarker discovery provides a valuable reference for the liquid biopsy, and has great potential to improve early diagnosis of HCC.
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