Department of Emergency in Ruijin Hospital Affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Mediators Inflamm. 2020 Oct 9;2020:3432587. doi: 10.1155/2020/3432587. eCollection 2020.
Sepsis remains a major global concern and is associated with high mortality and morbidity despite improvements in its management. Markers currently in use have shortcomings such as a lack of specificity and failures in the early detection of sepsis. In this study, we aimed to identify key genes involved in the molecular mechanisms of sepsis and search for potential new biomarkers and treatment targets for sepsis using bioinformatics analyses. Three datasets (GSE95233, GSE57065, and GSE28750) associated with sepsis were downloaded from the public functional genomics data repository Gene Expression Omnibus. Differentially expressed genes (DEGs) were identified using R packages (Affy and limma). Functional enrichment of the DEGs was analyzed with the DAVID database. Protein-protein interaction networks were derived using the STRING database and visualized using Cytoscape software. Potential biomarker genes were analyzed using receiver operating characteristic (ROC) curves in the R package (pROC). The three datasets included 156 whole blood RNA samples from 89 sepsis patients and 67 healthy controls. Between the two groups, 568 DEGs were identified, among which 315 were upregulated and 253 were downregulated in the septic group. These genes were enriched for pathways mainly involved in the innate immune response, T-cell biology, antigen presentation, and natural killer cell function. ROC analyses identified nine genes-LRG1, ELANE, TP53, LCK, TBX21, ZAP70, CD247, ITK, and FYN-as potential new biomarkers for sepsis. Real-time PCR confirmed that the expression of seven of these genes was in accordance with the microarray results. This study revealed imbalanced immune responses at the transcriptomic level during early sepsis and identified nine genes as potential biomarkers for sepsis.
脓毒症仍然是一个主要的全球关注问题,尽管在其治疗方面有所改进,但仍与高死亡率和发病率相关。目前使用的标志物存在缺乏特异性和早期检测脓毒症失败等缺点。在这项研究中,我们旨在使用生物信息学分析鉴定参与脓毒症分子机制的关键基因,并寻找脓毒症的潜在新生物标志物和治疗靶点。从公共功能基因组学数据存储库基因表达综合数据库中下载了与脓毒症相关的三个数据集(GSE95233、GSE57065 和 GSE28750)。使用 R 包(Affy 和 limma)鉴定差异表达基因(DEGs)。使用 DAVID 数据库分析 DEGs 的功能富集。使用 STRING 数据库推导蛋白质-蛋白质相互作用网络,并使用 Cytoscape 软件可视化。使用 R 包(pROC)中的接收器操作特征(ROC)曲线分析潜在的生物标志物基因。这三个数据集包括 89 名脓毒症患者和 67 名健康对照者的 156 份全血 RNA 样本。在两组之间,鉴定出 568 个 DEGs,其中 315 个在脓毒症组中上调,253 个下调。这些基因富集的途径主要涉及固有免疫反应、T 细胞生物学、抗原呈递和自然杀伤细胞功能。ROC 分析确定了九个基因-LRG1、ELANE、TP53、LCK、TBX21、ZAP70、CD247、ITK 和 FYN-作为脓毒症的潜在新生物标志物。实时 PCR 证实这七个基因的表达与微阵列结果一致。这项研究揭示了早期脓毒症转录组水平失衡的免疫反应,并确定了九个基因作为脓毒症的潜在生物标志物。