Medical School of Chinese PLA General Hospital, Beijing, China.
Department of Emergency, The First Medical Center, Chinese PLA General Hospital, 28th Fuxing Road, Beijing, China.
Eur J Med Res. 2023 Sep 4;28(1):320. doi: 10.1186/s40001-023-01307-z.
High throughput gene expression profiling is a valuable tool in providing insight into the molecular mechanism of human diseases. Hypoxia- and lactate metabolism-related genes (HLMRGs) are fundamentally dysregulated in sepsis and have great predictive potential. Therefore, we attempted to build an HLMRG signature to predict the prognosis of patients with sepsis.
Three publicly available transcriptomic profiles of peripheral blood mononuclear cells from patients with sepsis (GSE65682, E-MTAB-4421 and E-MTAB-4451, total n = 850) were included in this study. An HLMRG signature was created by employing Cox regression and least absolute shrinkage and selection operator estimation. The CIBERSORT method was used to analyze the abundances of 22 immune cell subtypes based on transcriptomic data. Metascape was used to investigate pathways related to the HLMRG signature.
We developed a prognostic signature based on five HLMRGs (ERO1L, SIAH2, TGFA, TGFBI, and THBS1). This classifier successfully discriminated patients with disparate 28-day mortality in the discovery cohort (GSE65682, n = 479), and consistent results were observed in the validation cohort (E-MTAB-4421 plus E-MTAB-4451, n = 371). Estimation of immune infiltration revealed significant associations between the risk score and a subset of immune cells. Enrichment analysis revealed that pathways related to antimicrobial immune responses, leukocyte activation, and cell adhesion and migration were significantly associated with the HLMRG signature.
Identification of a prognostic signature suggests the critical role of hypoxia and lactate metabolism in the pathophysiology of sepsis. The HLMRG signature can be used as an efficient tool for the risk stratification of patients with sepsis.
高通量基因表达谱分析是深入了解人类疾病分子机制的有价值的工具。缺氧和乳酸代谢相关基因(HLMRGs)在脓毒症中基本失调,具有巨大的预测潜力。因此,我们试图构建一个 HLMRG signature 来预测脓毒症患者的预后。
本研究纳入了三个公开的脓毒症患者外周血单核细胞转录组谱(GSE65682、E-MTAB-4421 和 E-MTAB-4451,总 n=850)。采用 Cox 回归和最小绝对收缩和选择算子估计构建 HLMRG signature。根据转录组数据,采用 CIBERSORT 方法分析 22 种免疫细胞亚型的丰度。采用 Metascape 分析与 HLMRG signature 相关的通路。
我们基于五个 HLMRGs(ERO1L、SIAH2、TGFA、TGFBI 和 THBS1)开发了一个预后 signature。该分类器成功区分了发现队列(GSE65682,n=479)中具有不同 28 天死亡率的患者,在验证队列(E-MTAB-4421 加 E-MTAB-4451,n=371)中也观察到了一致的结果。免疫浸润的估计表明风险评分与一部分免疫细胞之间存在显著关联。富集分析表明,与抗菌免疫反应、白细胞激活以及细胞黏附和迁移相关的通路与 HLMRG signature 显著相关。
预后 signature 的鉴定表明缺氧和乳酸代谢在脓毒症的病理生理学中具有关键作用。HLMRG signature 可作为脓毒症患者风险分层的有效工具。