Yang Meng, Wang Jian, Meng Hu, Xu Jian, Xie Yu, Kong Weiying
Department of Nephrology, The First People's Hospital of Yunnan Province, The Affiliated Hospital of Kunming University of Science and Technology, Kunming, Yunnan 650032, P.R. China.
Exp Ther Med. 2024 Aug 23;28(5):406. doi: 10.3892/etm.2024.12695. eCollection 2024 Nov.
Diabetic nephropathy (DN) is a common systemic microvascular complication of diabetes with a high incidence rate. Notably, the disturbance of lipid metabolism is associated with DN progression. The present study aimed to identify lipid metabolism-related hub genes associated with DN for improved diagnosis of DN. The gene expression profile data of DN and healthy samples (GSE142153) were obtained from the Gene Expression Omnibus database, and the lipid metabolism-related genes were obtained from the Molecular Signatures Database. Differentially expressed genes (DEGs) between DN and healthy samples were analyzed. The weighted gene co-expression network analysis (WGCNA) was performed to examine the relationship between genes and clinical traits to identify the key module genes associated with DN. Next, the Venn Diagram R package was used to identify the lipid metabolism-related genes associated with DN and their protein-protein interaction (PPI) network was constructed. Subsequently, Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analyses were performed. The hub genes were identified using machine-learning algorithms. The Gene Set Enrichment Analysis (GSEA) was used to analyze the functions of the hub genes. The present study also investigated the immune infiltration discrepancies between DN and healthy samples, and assessed the correlation between the immune cells and hub genes. Finally, the expression levels of key genes were verified by reverse transcription-quantitative (RT-q)PCR. The present study determined 1,445 DEGs in DN samples. In addition, 694 DN-related genes in MEyellow and MEturquoise modules were identified by WGCNA. Next, the Venn Diagram R package was used to identify 17 lipid metabolism-related genes and to construct a PPI network. GO analysis revealed that these 17 genes were markedly associated with 'phospholipid biosynthetic process' and 'cholesterol biosynthetic process', while the KEGG analysis showed that they were enriched in 'glycerophospholipid metabolism' and 'fatty acid degradation'. In addition, SAMD8 and CYP51A1 were identified through the intersections of two machine-learning algorithms. The results of GSEA revealed that the 'mitochondrial matrix' and 'GTPase activity' were the markedly enriched GO terms in both SAMD8 and CYP51A1. Their KEGG pathways were mainly concentrated in the 'pathways of neurodegeneration-multiple diseases'. Immune infiltration analysis showed that nine types of immune cells had different expression levels in DN (diseased) and healthy samples. Notably, SAMD8 and CYP51A1 were both markedly associated with activated B cells and effector memory CD8 T cells. Finally, RT-qPCR confirmed the high expression of SAMD8 and CYP51A1 in DN. In conclusion, lipid metabolism-related genes SAMD8 and CYP51A1 may play key roles in DN. The present study provides fundamental information on lipid metabolism that may aid the diagnosis and treatment of DN.
糖尿病肾病(DN)是糖尿病常见的全身性微血管并发症,发病率较高。值得注意的是,脂质代谢紊乱与DN的进展相关。本研究旨在鉴定与DN相关的脂质代谢枢纽基因,以改善DN的诊断。从基因表达综合数据库获取DN和健康样本的基因表达谱数据(GSE142153),并从分子特征数据库获取脂质代谢相关基因。分析DN和健康样本之间的差异表达基因(DEG)。进行加权基因共表达网络分析(WGCNA)以检查基因与临床特征之间的关系,从而鉴定与DN相关的关键模块基因。接下来,使用Venn Diagram R包鉴定与DN相关的脂质代谢基因,并构建其蛋白质-蛋白质相互作用(PPI)网络。随后,进行基因本体(GO)和京都基因与基因组百科全书(KEGG)富集分析。使用机器学习算法鉴定枢纽基因。使用基因集富集分析(GSEA)分析枢纽基因的功能。本研究还调查了DN和健康样本之间的免疫浸润差异,并评估了免疫细胞与枢纽基因之间的相关性。最后,通过逆转录定量(RT-q)PCR验证关键基因的表达水平。本研究确定了DN样本中的1445个DEG。此外,通过WGCNA在MEyellow和MEturquoise模块中鉴定出694个与DN相关的基因。接下来,使用Venn Diagram R包鉴定17个脂质代谢相关基因并构建PPI网络。GO分析显示,这17个基因与“磷脂生物合成过程”和“胆固醇生物合成过程”显著相关,而KEGG分析表明它们在“甘油磷脂代谢”和“脂肪酸降解”中富集。此外,通过两种机器学习算法的交集鉴定出SAMD8和CYP51A1。GSEA结果显示,“线粒体基质”和“GTP酶活性”是SAMD8和CYP51A1中显著富集的GO术语。它们的KEGG途径主要集中在“神经退行性变-多种疾病途径”。免疫浸润分析表明,九种免疫细胞在DN(患病)和健康样本中的表达水平不同。值得注意的是,SAMD8和CYP51A1均与活化B细胞和效应记忆CD8 T细胞显著相关。最后,RT-qPCR证实了SAMD8和CYP51A1在DN中的高表达。总之,脂质代谢相关基因SAMD8和CYP51A1可能在DN中起关键作用。本研究提供了有关脂质代谢的基础信息,可能有助于DN的诊断和治疗。