通过生物信息学鉴定TNF-α和IFN-γ诱导的细胞因子风暴的枢纽基因和关键途径

Ryan Christian Mailem, L. Tayo
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引用次数: 1

摘要

细胞因子风暴是一种过度表达促炎细胞因子的过度侵袭性免疫反应,已被确定在COVID-19感染中发挥重要作用。研究表明TNF-α和IFN-γ在这一过程中不可或缺,然而,其遗传机制尚未完全阐明。本文通过对公开的GEO GSE160163数据集的差异基因分析,确定了TNF-α和IFN-γ诱导的细胞因子风暴基因表达的关键变化。利用GO和KEGG富集对鉴定的deg进行标注,并基于STRING数据库构建PPI网络。共鉴定出446个差异表达基因。上调基因和下调基因分别富集于病毒免疫应答和感染途径以及类固醇生物合成和代谢途径。PPI构建揭示了428种蛋白之间的1834种相互作用,表明了它们的生物学连通性。模块分析鉴定出9个中心基因:STAT1、CXCL10、CD274、CXCL9、IRF1、PSMB9、CD86、STAT3和CXCR4参与病毒免疫应答,以及3个重要模块参与nod样受体信号传导、类固醇生物合成和病毒感染。这些已鉴定的deg、枢纽基因及其各自富集的通路有助于我们理解细胞因子风暴的分子机制,并为细胞因子风暴的治疗提供潜在的基因靶点和药物受体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Hub Genes and Key Pathways in TNF-α and IFN-γ Induced Cytokine Storms via Bioinformatics
Cytokine storms, an overaggressive immune response due to the overexpression of pro-inflammatory cytokines, have been identified to play a significant role in COVID-19 infections. Studies have shown that TNF-α and IFN-γ are integral to the process, however, its genetic mechanisms have yet to be fully elucidated. Herein, the key changes in the gene expression of TNF-α and IFN-γ induced cytokine storms are identified through differential gene analysis on the publicly available GEO GSE160163 dataset. GO and KEGG enrichment were used to annotate identified DEGs, and a PPI network was constructed based on the STRING database. A total of 446 differentially expressed genes were identified. Up-regulated genes and downregulated genes were enriched in viral immune response and infection pathways, and steroid biosynthesis and metabolic pathways, respectively. PPI construction revealed 1,834 interactions between 428 proteins, indicating their biological connectivity. Module analysis identified nine (9) hub genes: STAT1, CXCL10, CD274, CXCL9, IRF1, PSMB9, CD86, STAT3, and CXCR4, involved in viral immune response and three (3) significant modules involved in NOD-like receptor signaling, steroid biosynthesis, and viral infections. These identified DEGs, hub genes, and their respective enriched pathways aid us in understanding the molecular mechanisms of cytokine storms, as well as provide potential gene targets and druggable receptors for the treatment of cytokine storms.
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