Department of Pediatrics, Dongguan Houjie Hospital, Dongguan, 523945, China.
Department of Pediatrics, The Sixth Affiliated Hospital, Sun Yat-Sen University, Guangzhou, 510655, China.
Eur J Med Res. 2023 Feb 28;28(1):105. doi: 10.1186/s40001-023-01061-2.
Neonatal sepsis (NS), a life-threatening condition, is characterized by organ dysfunction and is the most common cause of neonatal death. However, the pathogenesis of NS is unclear and the clinical inflammatory markers currently used are not ideal for diagnosis of NS. Thus, exploring the link between immune responses in NS pathogenesis, elucidating the molecular mechanisms involved, and identifying potential therapeutic targets is of great significance in clinical practice. Herein, our study aimed to explore immune-related genes in NS and identify potential diagnostic biomarkers. Datasets for patients with NS and healthy controls were downloaded from the GEO database; GSE69686 and GSE25504 were used as the analysis and validation datasets, respectively. Differentially expressed genes (DEGs) were identified and Gene Set Enrichment Analysis (GSEA) was performed to determine their biological functions. Composition of immune cells was determined and immune-related genes (IRGs) between the two clusters were identified and their metabolic pathways were determined. Key genes with correlation coefficient > 0.5 and p < 0.05 were selected as screening biomarkers. Logistic regression models were constructed based on the selected biomarkers, and the diagnostic models were validated.
Fifty-two DEGs were identified, and GSEA indicated involvement in acute inflammatory response, bacterial detection, and regulation of macrophage activation. Most infiltrating immune cells, including activated CD8 + T cells, were significantly different in patients with NS compared to the healthy controls. Fifty-four IRGs were identified, and GSEA indicated involvement in immune response and macrophage activation and regulation of T cell activation. Diagnostic models of DEGs containing five genes (PROS1, TDRD9, RETN, LOC728401, and METTL7B) and IRG with one gene (NSUN7) constructed using LASSO algorithm were validated using the GPL6947 and GPL13667 subset datasets, respectively. The IRG model outperformed the DEG model. Additionally, statistical analysis suggested that risk scores may be related to gestational age and birth weight, regardless of sex.
We identified six IRGs as potential diagnostic biomarkers for NS and developed diagnostic models for NS. Our findings provide a new perspective for future research on NS pathogenesis.
新生儿败血症(NS)是一种危及生命的疾病,其特征是器官功能障碍,是新生儿死亡的最常见原因。然而,NS 的发病机制尚不清楚,目前用于临床的炎症标志物诊断 NS 并不理想。因此,探讨 NS 发病机制中免疫反应的联系,阐明相关的分子机制,并确定潜在的治疗靶点,在临床实践中具有重要意义。在此,我们的研究旨在探索 NS 中的免疫相关基因,并确定潜在的诊断生物标志物。从 GEO 数据库中下载了 NS 患者和健康对照者的数据集;GSE69686 和 GSE25504 分别作为分析和验证数据集。鉴定差异表达基因(DEGs)并进行基因集富集分析(GSEA)以确定其生物学功能。确定免疫细胞的组成,并鉴定两个聚类之间的免疫相关基因(IRGs)及其代谢途径。选择相关系数>0.5 且 p<0.05 的关键基因作为筛选生物标志物。基于选定的生物标志物构建逻辑回归模型,并验证诊断模型。
鉴定出 52 个 DEGs,GSEA 表明其参与了急性炎症反应、细菌检测以及巨噬细胞激活的调控。与健康对照组相比,NS 患者中大多数浸润免疫细胞,包括激活的 CD8+T 细胞,存在显著差异。鉴定出 54 个 IRGs,GSEA 表明其参与了免疫反应以及巨噬细胞激活和 T 细胞激活的调控。使用 LASSO 算法构建的包含五个基因(PROS1、TDRD9、RETN、LOC728401 和 METTL7B)的 DEG 诊断模型和使用一个基因(NSUN7)的 IRG 诊断模型分别在 GPL6947 和 GPL13667 子数据集上进行了验证。IRG 模型的性能优于 DEG 模型。此外,统计分析表明,风险评分可能与胎龄和出生体重有关,而与性别无关。
我们鉴定了六个 IRG 作为 NS 的潜在诊断生物标志物,并开发了 NS 的诊断模型。我们的研究结果为 NS 发病机制的进一步研究提供了新的视角。