Gao Yajun, Bai Ruyu, Gao Bo, Li Ma
Department of Neurology, Yan'an People's Hospital, Yan'an, 716000, China.
Department of Neurology, Yan'an University Affiliated Hospital, 43 North Street, Baota District, Yan'an, 716000, China.
Sci Rep. 2025 May 29;15(1):18863. doi: 10.1038/s41598-025-03724-y.
Ischemic stroke (IS) is a multifactorial disease caused by the interaction of a variety of environmental and genetic factors, which can lead to severe disability and heavy social burden. This study aimed to find potential biomarkers related to T cell exhaustion (TEX) in IS. Based on the GSE16561 dataset, differentially expressed genes (DEGs) were screened from IS and control groups, and their enriched biological pathways were explored. The TEX enrichment score for each sample was calculated using the GSEA algorithm, and the gene modules with the highest correlation with the TEX score were screened by WGCNA. Then, two machine learning algorithms were used to screen the key genes and test the correlation between the key genes and the level of immune cell infiltration. Potential drugs or molecular compounds that interact with key genes were predicted by searching DGIdb, and the drug-gene interaction network was visualized by Cytoscape software. Using GSE16561 dataset, we performed differential expression analysis and identified 482 DEGs. By weighted gene co-expression network analysis (WGCNA) and machine learning algorithms, we identified five key genes: CD163, LAMP2, PICALM, RGS2 and PIN1. Functional enrichment analysis revealed that these genes were involved in immune response and cellular processes, which were closely related to the level of immune cell infiltration. In addition, potential drug interactions were predicted using the drug-Gene Interaction database, providing avenues for future therapeutic strategies. This study enhances the understanding of TEX-related biomarkers in ischemic stroke and provides insights into the development of novel interventions aimed at improving patient outcomes.
缺血性中风(IS)是一种由多种环境和遗传因素相互作用引起的多因素疾病,可导致严重残疾和沉重的社会负担。本研究旨在寻找与IS中T细胞耗竭(TEX)相关的潜在生物标志物。基于GSE16561数据集,从IS组和对照组中筛选差异表达基因(DEG),并探索其富集的生物途径。使用GSEA算法计算每个样本的TEX富集分数,并通过WGCNA筛选与TEX分数相关性最高的基因模块。然后,使用两种机器学习算法筛选关键基因,并测试关键基因与免疫细胞浸润水平之间的相关性。通过搜索DGIdb预测与关键基因相互作用的潜在药物或分子化合物,并使用Cytoscape软件可视化药物-基因相互作用网络。利用GSE16561数据集,我们进行了差异表达分析,鉴定出482个DEG。通过加权基因共表达网络分析(WGCNA)和机器学习算法,我们鉴定出五个关键基因:CD163、LAMP2、PICALM、RGS2和PIN1。功能富集分析表明,这些基因参与免疫反应和细胞过程,与免疫细胞浸润水平密切相关。此外,使用药物-基因相互作用数据库预测了潜在的药物相互作用,为未来的治疗策略提供了途径。本研究加深了对缺血性中风中TEX相关生物标志物的理解,并为旨在改善患者预后的新型干预措施的开发提供了见解。