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基于基因表达综合数据库的缺血性卒中缺氧相关差异基因表达分析

苏允琦 王哲 于群 蒋兴伟 马骏 巩家媛 高锋华 安华英 宁畅文 魏汉琪 刘鹏宇

中国脑血管病杂志2023,Vol.20Issue(12):825-836,12.
中国脑血管病杂志2023,Vol.20Issue(12):825-836,12.DOI:10.3969/j.issn.1672-5921.2023.12.004

基于基因表达综合数据库的缺血性卒中缺氧相关差异基因表达分析

Expression analysis of hypoxic-related differentially expressed genes in ischemic stroke based on gene expression omnibus database

苏允琦 1王哲 1于群 1蒋兴伟 1马骏 1巩家媛 1高锋华 1安华英 1宁畅文 1魏汉琪 1刘鹏宇1

作者信息

  • 1. 100850 北京,军事科学院军事医学研究院卫生勤务与血液研究所
  • 折叠

摘要

Abstract

Objective Based on the gene expression omnibus(GEO)database,bioinformatics methods were employed to analyze the expression characteristics of hypoxia-related differentially expressed genes(HRDEGs)in ischemic stroke,and key genes were screened,to provide important support for a deeper understanding of ischemic stroke.Methods The GSE16561 and GSE58294 datasets were downloaded from the GEO database,and Python software was used for data integration.The Combat method was employed to eliminate batch effects while retaining disease grouping characteristics.Principal component analysis was conducted to reduce dimensionality of the data before and after batch effect removal,and intraclass correlation coefficient(ICC)testing was performed on the ischemic stroke and normal control groups.Gene set enrichment analysis(GSEA)and single-sample GSEA were conducted on the merged and batch effects eliminated dataset,with a nominal P-value(NOM P-val)<0.05 and false discovery rate P-value(FDR P-val)<0.25 used as criteria to select significantly different gene sets.Differential expression genes between the ischemic stroke samples and normal control samples after merging and eliminating batch effects of the GSE16561 and GSE58294 datasets were identified using R software,with an absolute value of log2 gene expression fold change(FC)≥0.58 and adjusted P-value(Padj)<0.05 as selection criteria.Intersection with hypoxia-related genes obtained from the National Center for Biotechnology Information(NCBI)in the United States yielded the HRDEGs.Gene ontology(GO)and Kyoto encyclopedia of genes and genomes(KEGG)enrichment analyses were performed on the HRDEGs,and the STRING database was used to construct a protein-protein interaction network of differentially expressed genes.The top 10 key genes were filtered using Cytoscape 3.8 software.Results The ICC analysis results showed excellent consistency in the ischemic stroke and normal control samples after batch effect removal,with ICC values of 0.94 and 0.98 for the GSE16561 and GSE58294datasets,respectively.GSEA results demonstrated significant enrichment of 34 gene sets in the stroke samples in the newly merged and batch effects removed dataset from GSE16561 and GSE58294,leading to the identification of 404 differentially expressed genes(all with Padj<0.05),including 354 upregulated genes and 50 downregulated genes.Intersection with hypoxia-related genes yielded 64 HRDEGs.GO enrichment analysis indicated significant enrichment of HRDEGs in vesicle lumen,cytoplasmic vesicle lumen,secretory granule lumen,with molecular functions such as amide binding,peptide binding,phospholipid binding,and enzyme inhibitor activity.These genes are primarily involved in the positive regulation of cytokine production,regulation of immune response,response to bacterium-derived molecules,and response to lipopolysaccharide,among other biological processes.KEGG enrichment analysis revealed enrichment of HRDEGs in pathways related to lipid and atherosclerosis,Salmonella infection,neutrophil extracellular trap formation,nucleotide-binding oligomerization domain-like receptor signaling pathway,protein glycosylation in cancer,tuberculosis,and necroptosis.Based on the protein-protein interaction network,10 key genes were identified,including arginase1(ARG1),caspase1(CASP1),interleukin1 receptor type 1(IL-1R1),integrin subunit alpha M(ITGAM),matrix metalloproteinase9(MMP9),prostaglandin-endoperoxide synthase 2(PTGS2),signal transducer and activator of transcription 3(STAT3),Toll-like receptor2(TLR2),TLR4,and TLR8.Conclusion This study has identified 10 key genes associated with ischemic stroke and hypoxia through bioinformatics mining,which maybe provid potential targets for subsequent research and diagnostic and therapeutic interventions.

关键词

缺血性卒中/差异表达基因/基因表达综合数据库/缺氧相关基因

Key words

Ischemic stroke/Differentially expressed genes/Gene expression omnibus database/Hypoxia-related genes

引用本文复制引用

苏允琦,王哲,于群,蒋兴伟,马骏,巩家媛,高锋华,安华英,宁畅文,魏汉琪,刘鹏宇..基于基因表达综合数据库的缺血性卒中缺氧相关差异基因表达分析[J].中国脑血管病杂志,2023,20(12):825-836,12.

中国脑血管病杂志

OA北大核心CSCDCSTPCD

1672-5921

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