Zhu Jing, Qu Xiaochen, Yang Liu, Wang Yuqian, Liu Zhengjuan
Department of Pediatrics, Second Affiliated Hospital of Dalian Medical University, Dalian, China.
Department of Orthopedics, First Affiliated Hospital of Dalian Medical University, Dalian, China.
Transl Pediatr. 2025 Aug 31;14(8):1746-1760. doi: 10.21037/tp-2025-247. Epub 2025 Aug 13.
Necrotizing enterocolitis (NEC) stands as one of the most lethal conditions afflicting premature infants. There is a close relationship between necroptosis, necroinflammation, and the potential mechanisms of NEC. The purpose of this study was to investigate the mechanism of necroinflammation-associated necroptosis-related genes (NiNRGs) in NEC, identify NiNRGs-related diagnostic markers for NEC, and construct a diagnostic model for NEC through bioinformatics analysis and machine learning.
Differentially expressed NiNRGs (DE-NiNRGs) were identified through differential expression and correlation analysis, followed by gene set enrichment analysis (GSEA) and protein-protein interaction (PPI) network establishment. Three machine learning methods were used to find potential diagnostic biomarkers, evaluated through a receiver operating characteristic (ROC) curve and a nomogram model. Immune infiltration scores for 28 immune cell types in NEC were calculated, along with correlation coefficients for diagnostic marker genes. Various databases predicted interactions between these genes, small molecule drugs, microRNAs, and transcription factors. A single-gene GSEA (sgGSEA) identified significantly enriched signaling pathways associated with diagnostic marker genes in NEC.
A total of 29 DE-NiNRGs were identified, linked to 17 pathways, including tumor necrosis factor (TNF), interleukin (IL)-17, and cytosolic DNA-sensing pathways. The PPI network showed close interactions among DE-NiNRGs. Three biomarkers, , , and , were selected using machine learning, showing area under the curve (AUC) values ≥0.8 in ROC analysis. The nomogram indicated significant diagnostic score differences between NEC and healthy controls. Type 2 T helper (Th2) cell infiltration differed significantly between NEC and controls, with and expression correlating with immune cells. Transcription factors, microRNAs, and small molecule drugs regulating these markers were identified, and sgGSEA revealed 198, 240, and 217 pathways for , , and , respectively.
Necroinflammation-induced necroptosis significantly contributes to the progression of NEC. , , and demonstrate substantial diagnostic potential for the condition. Employing bioinformatics to explore potential mechanisms aids in elucidating the genetic pathogenesis of NEC and offers valuable insights for future investigations.
坏死性小肠结肠炎(NEC)是折磨早产儿的最致命病症之一。坏死性凋亡、坏死性炎症与NEC的潜在机制之间存在密切关系。本研究的目的是通过生物信息学分析和机器学习来研究NEC中坏死性炎症相关坏死性凋亡相关基因(NiNRGs)的机制,识别NEC的NiNRGs相关诊断标志物,并构建NEC的诊断模型。
通过差异表达和相关性分析鉴定差异表达的NiNRGs(DE-NiNRGs),随后进行基因集富集分析(GSEA)和蛋白质-蛋白质相互作用(PPI)网络构建。使用三种机器学习方法寻找潜在的诊断生物标志物,并通过受试者工作特征(ROC)曲线和列线图模型进行评估。计算NEC中28种免疫细胞类型的免疫浸润评分以及诊断标志物基因的相关系数。各种数据库预测了这些基因、小分子药物、微小RNA和转录因子之间的相互作用。单基因GSEA(sgGSEA)确定了与NEC中诊断标志物基因相关的显著富集信号通路。
共鉴定出29个DE-NiNRGs,与17条通路相关,包括肿瘤坏死因子(TNF)、白细胞介素(IL)-17和胞质DNA传感通路。PPI网络显示DE-NiNRGs之间存在密切相互作用。使用机器学习选择了三个生物标志物,在ROC分析中曲线下面积(AUC)值≥0.8。列线图显示NEC与健康对照之间的诊断评分存在显著差异。2型辅助性T(Th2)细胞浸润在NEC与对照之间存在显著差异,且 和 的表达与免疫细胞相关。鉴定了调节这些标志物的转录因子、微小RNA和小分子药物,sgGSEA分别揭示了 、 和 的198、240和217条通路。
坏死性炎症诱导的坏死性凋亡显著促进NEC的进展。 、 和 对该病症具有显著的诊断潜力。利用生物信息学探索潜在机制有助于阐明NEC的遗传发病机制,并为未来研究提供有价值的见解。