首页|基于生物信息学探索脓毒症治疗靶点的关键铁死亡基因及其免疫特征描述

基于生物信息学探索脓毒症治疗靶点的关键铁死亡基因及其免疫特征描述

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目的 基于生物信息学分析探索作为脓毒症治疗靶点的铁死亡基因特征,并对其进行免疫特征描述。方法 从基因表达数据库(GEO)下载脓毒症相关数据集GSE57065、GSE9960、GSE28750、GSE137340的原始数据,从ImmPort、InnateDB数据库获取免疫相关基因(IRG),从FerrDb数据库获取铁死亡相关基因(FRG);通过替代变量分析包(SVA)将GSE57065、GSE9960、GSE28750数据集整合成一个分析数据集,并利用"limma"包分析得到差异表达基因(DEG);取DEG、IRG、FRG 3个基因集的交集得到脓毒症免疫相关铁死亡DEG(FImDEG)。使用R软件包"ClusterProfiler"进行基因本体(GO)功能注释和京都基因与基因组百科全书数据库(KEGG)通路富集分析,了解FImDEG的生物学功能。通过蛋白质-蛋白质相互作用(PPI)网络、最小绝对值收敛和选择算子算法(LASSO)和支持向量机(SVM)分析筛选关键基因,基于关键基因建立Logistic回归模型;绘制受试者工作特征曲线(ROC曲线),评价关键基因单独及联合诊断效能。应用CIBERSORT在线分析工具对22个免疫细胞的浸润程度进行评估,并分析关键基因表达与免疫细胞浸润程度的相关性。通过GSE137340数据集对关键基因进行验证。结果 通过处理和消除批次效应得到由146个脓毒症样本和61个健康对照样本组成的研究数据集。经过分析共得到4537个DEG,其中上调基因2066个,下调基因2471个;从相关数据库中分别获得2519个IRG和855个FRG;取DEG、IRG、FRG三者的交集,共得到34个FImDEG,其中上调基因20个,下调基因14个。GO功能注释显示,34个FImDEG的生物学功能主要是抑制转移酶活性、DNA结合转录因子活性的调控和细胞对刺激的反应;在分子功能方面,主要与RNA聚合酶Ⅱ特异性DNA结合转录因子结合和各种蛋白连接酶结合有关;细胞组成变化主要发生在早幼粒细胞性白血病蛋白和染色质沉默复合体。KEGG通路富集分析显示,34个FImDEG参与的主要通路包括细胞衰老、癌症中程序性死亡受体配体-1(PD-L1)表达和程序性死亡受体-1(PD-1)检查点通路、白细胞介素-17(IL-17)信号通路、脂质与动脉粥样硬化、NOD样受体信号通路。通过PPI网络及LASSO、SVM两种机器学习共筛选出细胞色素b-245β链(CYBB)、丝裂素活化蛋白激酶14(MAPK14)、前列腺素内过氧化物合酶(PTGS2)、V-Rel网状内皮增生病毒癌基因同源物A(RELA)4个关键基因。ROC曲线分析显示,4个关键基因诊断脓毒症的ROC曲线下面积(AUC)均>0。65,其中MAPK14的AUC达到0。911;基于4个关键基因构建Logistic回归模型,其AUC达0。956。免疫细胞浸润分析显示,与健康对照样本比较,脓毒症样本中性粒细胞、巨噬细胞M0的浸润程度明显升高,而静息自然杀伤细胞(NK细胞)、幼稚CD4+T细胞和CD8+T细胞的浸润程度明显降低;相关性分析显示,MAPK14表达与中性粒细胞浸润程度的正相关性最高。在GSE137340数据集中的验证结果显示,与健康对照样本比较,脓毒症样本CYBB和MAPK14的表达显著上调,而PTGS2和RELA的表达显著下调,与上述分析数据集中的表达趋势相同。结论 通过生物信息学分析发现了4个在脓毒症发展过程中的关键铁死亡基因,即CYBB、MAPK14、PTGS2、RELA,在免疫过程中发挥重要作用,其中MAPK14可能是免疫干预的重要靶点。
Exploration of key ferroptosis-related genes as therapeutic targets for sepsis based on bioinformatics and the depiction of their immune profiles characterization
Objective To explore the characteristics of key ferroptosis-related genes as therapeutic targets for sepsis based on bioinformatics analysis,and describe their immune characteristics. Methods The transcriptome datasets GSE57065,GSE9960,GSE28750,and GSE137340 were downloaded from the Gene Expression Omnibus (GEO) database,immune-related gene (IRG) were obtained from ImmPort and InnateDB databases,and ferroptosis-related gene (FRG) were downloaded from the FerrDb database. The datasets GSE57065,GSE9960,and GSE28750 were integrated into an analysis dataset by the surrogate variable analysis (SVA) package and analyzed this analysis dataset by using the "limma" package to obtain differentially expressed gene (DEG),then the intersection set of DEG,FRG,and IRG were considered as ferroptosis and immune-related DEG (FImDEG). Gene ontology (GO) functional annotation and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analyses were performed using "ClusterProfiler" to understand the biological function of FImDEG. The key genes were screened by protein-protein interaction (PPI) network,least absolute shrinkage and selection operator (LASSO) regression algorithms,and support vector machine (SVM) analyses,and Logistic regression model was built based on above key genes. Receiver operator characteristics curve (ROC curve) was plotted to evaluate the diagnostic efficacy of the key genes alone or combinative. The degree of infiltration of 22 immune cells was assessed using the "CIBERSORT" package,and the correlation between the expressions of key genes and infiltration degree of immune cells was analyzed. Dataset GSE137340 was used to verify these key genes. Results A dataset consisting of 146 sepsis samples and 61 healthy control samples was obtained by processing the database and removing batch effect. A total of 4537 DEG were obtained,including 2066 up-regulated genes and 2471 down-regulated genes. 2519 IRG and 855 FRG were obtained from the relevant database. Using the intersection of DEG,IRG and FRG,34 FImDEG were obtained,including 20 up-regulated genes and 14 down-regulated genes. GO functional annotation showed that the biological functions of 34 FImDEG were mainly inhibition of transferase activity,regulation of DNA-binding transcription factor activity and cell response to stimulation. In terms of molecular function,it was mainly related to RNA polymerase Ⅱ-specific DNA-binding transcription factor binding and various protein ligase binding. Changes in cell composition occurred mainly in promyelocytic leukemia protein and chromatin silencing complexes. Enrichment analysis of KEGG pathway showed that the major pathways involved in 34 FImDEG included cell aging,expression of programmed death-ligand 1 (PD-L1) and programmed death-1 (PD-1) checkpoint pathways in cancer,interleukin-17 (IL-17) signaling pathway,lipid and atherosclerosis,and NOD-like receptor signaling pathway. Four key genes,including cytochrome b-245 β chain (CYBB),mitogen-activated protein kinase 14 (MAPK14),prostaglandin-endoperoxide synthase 2 (PTGS2) and V-relreticuloendotheliosis viral oncogene homology A (RELA),were screened through PPI network and LASSO and SVM machine learning. ROC curve analysis showed that the area under ROC curve (AUC) of the four key genes for diagnosing sepsis was all greater than 0.65,and the AUC of MAPK14 was 0.911. Logistic regression model was constructed based on four key genes,and the AUC was 0.956. Immunoinfiltration analysis showed that compared with healthy control samples,the infiltration degree of neutrophils and macrophages M0 was significantly increased in sepsis samples,while the infiltration degree of resting natural killer cell (NK cell),naive CD4+T cell and CD8+T cell was significantly lowered. Correlation analysis showed that the positive correlation between MAPK14 expression and the infiltration degree of neutrophils was the highest. Validation results in the GSE137340 dataset showed that compared with healthy control samples,the expressions of CYBB and MAPK14 in sepsis samples were significantly up-regulated,however,the expressions of PTGS2 and RELA were significantly down-regulated,similar to the expression trend in the above analysis dataset. Conclusion Four key genes,including CYBB,MAPK14,PTGS2,and RELA,in the development of sepsis were identified through bioinformatics analysis,which play an important role in the immune process,and MAPK14 may be an important target for immune intervention.

SepsisImmune reactionFerroptosisBiomarkerTranscriptomic analysis

李萌、梅宇林、潘爱军

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安徽医科大学附属省立医院重症医学科,合肥 230001

皖南医学院,安徽芜湖 241002

脓毒症 免疫反应 铁死亡 生物标志物 转录组分析

2024

中华危重病急救医学
中华医学会

中华危重病急救医学

CSTPCD北大核心
影响因子:3.049
ISSN:2095-4352
年,卷(期):2024.36(10)