Liu Shaojie, Jiang Qingqing, Li Wenli, Shi Jinbao, Wu Binxuan, Xiong Man, Huang Liuying
Department of Nephrology, Blood Purification Research Centre, Ningde Hospital of Traditional Chinese Medicine, Fujian University of Traditional Chinese Medicine, Ningde, China.
J Diabetes Res. 2025 May 8;2025:2736801. doi: 10.1155/jdr/2736801. eCollection 2025.
Diabetic kidney disease (DKD) is a common microvascular complication of diabetes mellitus (DM). Amino acid (AA) homeostasis has an important impact on renal hemodynamics and glomerular hyperfiltration in patients with DKD, and the metabolite level of tryptophan (TRP), an AA, has been associated with various diseases. In this study, DKD tubule- and glomerulus-related microarray datasets were collected from the GEO database, and DKD-related modular genes were identified by weighted gene coexpression network analysis (WGCNA). TRP metabolism-related genes (TRGs) were downloaded from the MSigDB database, and the key genes were obtained by taking the intersection of DKD differentially expressed genes, TRGs, and modular genes. Validated with the Nephrseq v5 database and performed clinical prediction model construction. The association of pivotal genes with immune cell infiltration was verified using CIBERSORTx software. The protein expression of the key genes was verified by qPCR, Western blot, immunohistochemistry, and immunofluorescence. Four hundred and seventy seven DEGs were identified in the GSE30529 dataset, 392 DEGs were identified in the GSE30528 dataset, and the intersection of the DEGs in the two datasets, the module with the most significant correlation with DKD obtained by WGCNA, and the TRGs were taken, respectively. Five key genes were finally obtained (AOC1, HAAO, STAT1, OGDHL, and TDO2). Compared with control-group mice, the expression of AOC1, HAAO, and OGDHL was significantly downregulated, and the expression of STAT1 and TDO2 was significantly elevated in DKD mice. The diagnostic model was constructed using the key genes AUC = 0.996. Our study suggests that the AOC1, HAAO, and STAT1 genes may be potential diagnostic biomarkers of tubular injury in DKD. OGDHL and TDO2 may be potential diagnostic biomarkers of glomerular injury in DKD. The model constructed using AOC1, HAAO, STAT1, OGDHL, and TDO2 had good disease differentiation.
糖尿病肾病(DKD)是糖尿病(DM)常见的微血管并发症。氨基酸(AA)稳态对DKD患者的肾血流动力学和肾小球高滤过有重要影响,色氨酸(TRP)作为一种氨基酸,其代谢物水平与多种疾病相关。在本研究中,从基因表达综合数据库(GEO数据库)收集DKD肾小管和肾小球相关的微阵列数据集,并通过加权基因共表达网络分析(WGCNA)鉴定与DKD相关的模块基因。从分子特征数据库(MSigDB数据库)下载色氨酸代谢相关基因(TRGs),通过取DKD差异表达基因、TRGs和模块基因的交集获得关键基因。用Nephrseq v5数据库进行验证并构建临床预测模型。使用CIBERSORTx软件验证关键基因与免疫细胞浸润的关联。通过qPCR、蛋白质免疫印迹法、免疫组织化学和免疫荧光验证关键基因的蛋白表达。在GSE30529数据集中鉴定出477个差异表达基因(DEGs),在GSE30528数据集中鉴定出392个DEGs,分别取两个数据集中DEGs的交集、通过WGCNA获得的与DKD相关性最显著的模块以及TRGs。最终获得5个关键基因(AOC1、HAAO、STAT1、OGDHL和TDO2)。与对照组小鼠相比,DKD小鼠中AOC1、HAAO和OGDHL的表达显著下调,STAT1和TDO2的表达显著上调。使用关键基因构建的诊断模型曲线下面积(AUC)=0.996。我们的研究表明,AOC1、HAAO和STAT1基因可能是DKD肾小管损伤的潜在诊断生物标志物。OGDHL和TDO2可能是DKD肾小球损伤的潜在诊断生物标志物。使用AOC1、HAAO、STAT1、OGDHL和TDO2构建的模型具有良好的疾病区分能力。