Institute of Pediatric Research, Children's Hospital of Soochow University, Suzhou, China.
Department of Nephrology, Children's Hospital of Soochow University, Suzhou, China.
J Transl Med. 2017 Dec 13;15(1):254. doi: 10.1186/s12967-017-1364-8.
Sepsis represents a complex disease with the dysregulated inflammatory response and high mortality rate. The goal of this study was to identify potential transcriptomic markers in developing pediatric sepsis by a co-expression module analysis of the transcriptomic dataset.
Using the R software and Bioconductor packages, we performed a weighted gene co-expression network analysis to identify co-expression modules significantly associated with pediatric sepsis. Functional interpretation (gene ontology and pathway analysis) and enrichment analysis with known transcription factors and microRNAs of the identified candidate modules were then performed. In modules significantly associated with sepsis, the intramodular analysis was further performed and "hub genes" were identified and validated by quantitative real-time PCR (qPCR) in this study.
15 co-expression modules in total were detected, and four modules ("midnight blue", "cyan", "brown", and "tan") were most significantly associated with pediatric sepsis and suggested as potential sepsis-associated modules. Gene ontology analysis and pathway analysis revealed that these four modules strongly associated with immune response. Three of the four sepsis-associated modules were also enriched with known transcription factors (false discovery rate-adjusted P < 0.05). Hub genes were identified in each of the four modules. Four of the identified hub genes (MYB proto-oncogene like 1, killer cell lectin like receptor G1, stomatin, and membrane spanning 4-domains A4A) were further validated to be differentially expressed between septic children and controls by qPCR.
Four pediatric sepsis-associated co-expression modules were identified in this study. qPCR results suggest that hub genes in these modules are potential transcriptomic markers for pediatric sepsis diagnosis. These results provide novel insights into the pathogenesis of pediatric sepsis and promote the generation of diagnostic gene sets.
脓毒症是一种具有失调的炎症反应和高死亡率的复杂疾病。本研究的目的是通过对转录组数据集进行共表达模块分析,确定小儿脓毒症发展中的潜在转录组标志物。
使用 R 软件和 Bioconductor 包,我们进行了加权基因共表达网络分析,以识别与小儿脓毒症显著相关的共表达模块。然后对鉴定出的候选模块进行功能解释(基因本体论和途径分析)和已知转录因子和 microRNAs 的富集分析。在与脓毒症显著相关的模块中,进一步进行了模块内分析,并通过定量实时 PCR(qPCR)在本研究中鉴定和验证“枢纽基因”。
总共检测到 15 个共表达模块,其中 4 个模块(“午夜蓝”、“青色”、“棕色”和“棕褐色”)与小儿脓毒症最显著相关,被认为是潜在的脓毒症相关模块。基因本体论分析和途径分析表明,这四个模块与免疫反应密切相关。这四个脓毒症相关模块中有三个也富集了已知的转录因子(经错误发现率校正的 P 值<0.05)。在每个模块中都鉴定出了枢纽基因。在这四个模块中鉴定出的四个枢纽基因(原癌基因 MYB 样 1、杀伤细胞凝集素样受体 G1、stomatin 和膜跨 4 结构域 A4A)通过 qPCR 进一步验证在脓毒症患儿和对照组之间存在差异表达。
本研究鉴定了四个与小儿脓毒症相关的共表达模块。qPCR 结果表明,这些模块中的枢纽基因可能是小儿脓毒症诊断的潜在转录组标志物。这些结果为小儿脓毒症的发病机制提供了新的见解,并促进了诊断基因集的产生。