Urinary protein biomarkers based on LC–MS/MS analysis to discriminate vascular dementia from Alzheimer’s disease in Han Chinese population

小桶 痴呆 蛋白质组 接收机工作特性 尿 蛋白质组学 生物信息学 疾病 医学 血管性痴呆 计算生物学 生物 基因本体论 内科学 基因 遗传学 基因表达
作者
Ruijuan Chen,Yuanjing Yi,Wenbiao Xiao,Bowen Zhong,Le Zhang,Yi Zeng
出处
期刊:Frontiers in Aging Neuroscience [Frontiers Media]
卷期号:15 被引量:2
标识
DOI:10.3389/fnagi.2023.1070854
摘要

This study aimed to identify the potential urine biomarkers of vascular dementia (VD) and unravel the disease-associated mechanisms by applying Liquid chromatography tandem-mass spectrometry (LC-MS/MS).LC-MS/MS proteomic analysis was applied to urine samples from 3 groups, including 14 patients with VD, 9 patients with AD, and 21 normal controls (NC). By searching the MS data by Proteome Discoverer software, analyzing the protein abundances qualitatively and quantitatively, comparing between groups, combining bioinformatics analysis using Gene Ontology (GO) and pathway crosstalk analysis using Kyoto Encyclopedia of Genes and Genomes (KEGG), and literature searching, the differentially expressed proteins (DEPs) of VD can be comprehensively determined at last and were further quantified by receiver operating characteristic (ROC) curve methods.The proteomic findings showed quantitative changes in patients with VD compared to patients with NC and AD groups; among 4,699 identified urine proteins, 939 and 1,147 proteins displayed quantitative changes unique to VD vs. NC and AD, respectively, including 484 overlapped common DEPs. Then, 10 unique proteins named in KEGG database (including PLOD3, SDCBP, SRC, GPRC5B, TSG101/STP22/VPS23, THY1/CD90, PLCD, CDH16, NARS/asnS, AGRN) were confirmed by a ROC curve method.Our results suggested that urine proteins enable detection of VD from AD and VC, which may provide an opportunity for intervention.

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