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血凝块的蛋白质组学分析可识别接受血管内治疗患者的中风病因。

Proteomic Analyses of Clots Identify Stroke Etiologies in Patients Undergoing Endovascular Therapy.

作者信息

Kim Tae Jung, Jung Jin Woo, Kim Young-Ju, Yoon Byung-Woo, Han Dohyun, Ko Sang-Bae

机构信息

Department of Neurology, Seoul National University College of Medicine, Seoul, Korea.

Department of Critical Care Medicine, Seoul National University Hospital, Seoul, Korea.

出版信息

CNS Neurosci Ther. 2025 Mar;31(3):e70340. doi: 10.1111/cns.70340.

Abstract

AIMS

This study aimed to investigate the correlation between clot composition and stroke mechanisms in patients undergoing endovascular therapy (EVT), using proteomic analysis.

METHODS

This study included 35 patients with ischemic stroke (cardioembolism [CE], n = 17; large artery atherosclerosis [LAA], n = 6; cancer-related [CR], n = 4; and undetermined (UD) cause, n = 8) who underwent EVT. Retrieved clots were proteomically analyzed to identify differentially expressed proteins associated with the three stroke mechanisms and to develop the machine learning model.

RESULTS

In the discover stage, 3838 proteins were identified using clot samples from 27 patients with CE, LAA, and CR mechanisms. Through functional enrichment and network analysis, 149 proteins were identified as potential candidates for verification studies. After verification experiments, 34 proteins were selected as the final candidates to predict stroke mechanisms. Furthermore, the machine learning-based model identified three proteins associated with each mechanism (Pleckstrin in CE; CD59 glycoprotein in LAA; and Immunoglobulin Heavy Constant Gamma 1 in CR) in the UD group.

CONCLUSIONS

This study identified specific protein markers of clots that could differentiate stroke mechanisms in patients undergoing EVT. Therefore, our results could offer valuable insights into elucidating the mechanisms of ischemic stroke, which could provide information on more effective secondary prevention strategies.

摘要

目的

本研究旨在通过蛋白质组学分析,探讨接受血管内治疗(EVT)的患者血凝块成分与中风机制之间的相关性。

方法

本研究纳入了35例接受EVT的缺血性中风患者(心源性栓塞[CE],n = 17;大动脉粥样硬化[LAA],n = 6;癌症相关[CR],n = 4;病因不明[UD],n = 8)。对回收的血凝块进行蛋白质组学分析,以鉴定与三种中风机制相关的差异表达蛋白,并建立机器学习模型。

结果

在发现阶段,使用来自27例具有CE、LAA和CR机制的患者的血凝块样本鉴定出3838种蛋白质。通过功能富集和网络分析,确定了149种蛋白质作为验证研究的潜在候选物。经过验证实验,选择了34种蛋白质作为预测中风机制的最终候选物。此外,基于机器学习的模型在UD组中鉴定出与每种机制相关的三种蛋白质(CE中的普列克底物蛋白;LAA中的CD59糖蛋白;CR中的免疫球蛋白重链恒定γ1)。

结论

本研究确定了血凝块的特定蛋白质标志物,可区分接受EVT的患者的中风机制。因此,我们的结果可为阐明缺血性中风的机制提供有价值的见解,从而为更有效的二级预防策略提供信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ee83/11904956/bdb32ec590da/CNS-31-e70340-g001.jpg

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