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探索趋化因子相关基因失调和免疫浸润在缺血性卒中中的作用:以CXCL16和SEMA3E作为潜在生物标志物的见解

Exploring the Role of Chemokine-Related Gene Deregulation and Immune Infiltration in Ischemic Stroke: Insights into CXCL16 and SEMA3E as Potential Biomarkers.

作者信息

Yu Tingting, Jiang Peng

机构信息

Department of Anaesthesiology, Shandong Provincial Third Hospital, Shandong University, Tianqiao District, No. 12, Middle Wuyingshan Road, Jinan, Shandong Province, China.

出版信息

J Mol Neurosci. 2024 Dec 12;74(4):115. doi: 10.1007/s12031-024-02295-3.

DOI:10.1007/s12031-024-02295-3
PMID:39663269
Abstract

Ischemic stroke is a leading cause of mortality and disability globally. Understanding the role of chemokine-related differently expressed genes (CDGs) in ischemic stroke pathophysiology is essential for advancing diagnostic and therapeutic strategies. We conducted comprehensive analyses using the GSE16561 dataset: chemokine pathway enrichment via GSVA, differential expression of 12 CDGs, Pearson correlation, and functional enrichment analyses (GO and KEGG). Machine learning algorithms were employed to develop diagnostic models, evaluated using ROC curve analysis. A nomogram was constructed and validated with independent datasets (GSE58294). Gene set enrichment analysis (GSEA) and immuno-infiltration analysis were also performed. Chemokine pathway scores were significantly elevated in ischemic stroke, indicating their potential involvement. Logistic regression emerged as the most effective diagnostic model, with CXCL16 and SEMA3E as significant biomarkers. The nomogram exhibited high discriminatory ability (AUC = 0.964), well-calibrated predictions, and clinical utility across datasets. GSEA highlighted key biological pathways associated with CXCL16 and SEMA3E. Immuno-infiltration analysis revealed significant differences in immune cell infiltration between control and ischemic stroke groups, with distinct correlations between CXCL16 and SEMA3E expression and immune cell populations. This study highlights the deregulation of CDGs in ischemic stroke and their implications in critical biological processes. CXCL16 and SEMA3E are identified as key biomarkers with potential diagnostic utility. Insights from gene set enrichment and immuno-infiltration analyses provide mechanistic understanding, suggesting novel therapeutic targets and enhancing clinical decision-making in ischemic stroke management.

摘要

缺血性中风是全球范围内导致死亡和残疾的主要原因。了解趋化因子相关差异表达基因(CDGs)在缺血性中风病理生理学中的作用对于推进诊断和治疗策略至关重要。我们使用GSE16561数据集进行了全面分析:通过GSVA进行趋化因子通路富集、12个CDGs的差异表达、Pearson相关性分析以及功能富集分析(GO和KEGG)。采用机器学习算法开发诊断模型,并使用ROC曲线分析进行评估。构建了列线图并使用独立数据集(GSE58294)进行验证。还进行了基因集富集分析(GSEA)和免疫浸润分析。缺血性中风中趋化因子通路得分显著升高,表明它们可能参与其中。逻辑回归成为最有效的诊断模型,CXCL16和SEMA3E为显著的生物标志物。列线图具有高辨别能力(AUC = 0.964)、校准良好的预测以及跨数据集的临床实用性。GSEA突出了与CXCL16和SEMA3E相关的关键生物学通路。免疫浸润分析揭示了对照组和缺血性中风组之间免疫细胞浸润的显著差异,CXCL16和SEMA3E表达与免疫细胞群体之间存在明显的相关性。本研究强调了缺血性中风中CDGs的失调及其在关键生物学过程中的影响。CXCL16和SEMA3E被确定为具有潜在诊断效用的关键生物标志物。基因集富集和免疫浸润分析的见解提供了机制理解,提示了新的治疗靶点并增强了缺血性中风管理中的临床决策。

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本文引用的文献

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Transcriptomic analysis reveals the potential crosstalk genes and immune relationship between Crohn's disease and atrial fibrillation.转录组分析揭示了克罗恩病与心房颤动之间潜在的相互作用基因及免疫关系。
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TLR7-MyD88-DC-CXCL16 axis results neutrophil activation to elicit inflammatory response in pustular psoriasis.TLR7-MyD88-DC-CXCL16 轴导致中性粒细胞活化,引发脓疱型银屑病的炎症反应。
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