Liu Tao, Zhuang Xing-Xing, Gao Jia-Rong
Department of Pharmacy, The First Affiliated Hospital of Anhui University of Chinese Medicine, Hefei 230012, China.
College of Pharmacy, Anhui University of Chinese Medicine, Hefei 230011, China.
Biomedicines. 2023 Sep 4;11(9):2454. doi: 10.3390/biomedicines11092454.
Aging plays an essential role in the development of diabetic nephropathy (DN). This study aimed to identify and verify potential aging-related genes associated with DN using bioinformatics analysis.
To begin with, we combined the datasets from GEO microarrays (GSE104954 and GSE30528) to find the genes that were differentially expressed (DEGs) across samples from DN and healthy patient populations. By overlapping DEGs, weighted co-expression network analysis (WGCNA), and 1357 aging-related genes (ARGs), differentially expressed ARGs (DEARGs) were discovered. We next performed functional analysis to determine DEARGs' possible roles. Moreover, protein-protein interactions were examined using STRING. The hub DEARGs were identified using the CytoHubba, MCODE, and LASSO algorithms. We next used two validation datasets and Receiver Operating Characteristic (ROC) curves to determine the diagnostic significance of the hub DEARGs. RT-qPCR, meanwhile, was used to confirm the hub DEARGs' expression levels in vitro. In addition, we investigated the relationships between immune cells and hub DEARGs. Next, Gene Set Enrichment Analysis (GSEA) was used to identify each biomarker's biological role. The hub DEARGs' subcellular location and cell subpopulations were both identified and predicted using the HPA and COMPARTMENTS databases, respectively. Finally, drug-protein interactions were predicted and validated using STITCH and AutoDock Vina.
A total of 57 DEARGs were identified, and functional analysis reveals that they play a major role in inflammatory processes and immunomodulation in DN. In particular, aging and the AGE-RAGE signaling pathway in diabetic complications are significantly enriched. Four hub DEARGs (CCR2, VCAM1, CSF1R, and ITGAM) were further screened using the interaction network, CytoHubba, MCODE, and LASSO algorithms. The results above were further supported by validation sets, ROC curves, and RT-qPCR. According to an evaluation of immune infiltration, DN had significantly more resting mast cells and delta gamma T cells but fewer regulatory T cells and active mast cells. Four DEARGs have statistical correlations with them as well. Further investigation revealed that four DEARGs were implicated in immune cell abnormalities and regulated a wide range of immunological and inflammatory responses. Furthermore, the drug-protein interactions included four possible therapeutic medicines that target four DEARGs, and molecular docking could make this association practical.
This study identified four DEARGs (CCR2, VCAM1, CSF1R, and ITGAM) associated with DN, which might play a key role in the development of DN and could be potential biomarkers in DN.
衰老在糖尿病肾病(DN)的发生发展中起着至关重要的作用。本研究旨在通过生物信息学分析鉴定并验证与DN相关的潜在衰老相关基因。
首先,我们整合了来自GEO微阵列(GSE104954和GSE30528)的数据集,以寻找在DN患者和健康人群样本中差异表达的基因(DEGs)。通过对DEGs进行重叠分析、加权共表达网络分析(WGCNA)以及1357个衰老相关基因(ARGs),发现了差异表达的ARGs(DEARGs)。接下来,我们进行功能分析以确定DEARGs的可能作用。此外,使用STRING软件检测蛋白质 - 蛋白质相互作用。使用CytoHubba、MCODE和LASSO算法鉴定枢纽DEARGs。随后,我们使用两个验证数据集和受试者工作特征(ROC)曲线来确定枢纽DEARGs的诊断意义。同时,使用RT - qPCR在体外确认枢纽DEARGs的表达水平。此外,我们研究了免疫细胞与枢纽DEARGs之间的关系。接下来,使用基因集富集分析(GSEA)来确定每个生物标志物的生物学作用。分别使用HPA和COMPARTMENTS数据库鉴定并预测枢纽DEARGs的亚细胞定位和细胞亚群。最后,使用STITCH和AutoDock Vina预测并验证药物 - 蛋白质相互作用。
共鉴定出57个DEARGs,功能分析表明它们在DN的炎症过程和免疫调节中起主要作用。特别是,衰老和糖尿病并发症中的AGE - RAGE信号通路显著富集。使用相互作用网络、CytoHubba、MCODE和LASSO算法进一步筛选出四个枢纽DEARGs(CCR2、VCAM1、CSF1R和ITGAM)。验证集、ROC曲线和RT - qPCR进一步支持了上述结果。根据免疫浸润评估,DN患者中静息肥大细胞和δγT细胞明显增多,但调节性T细胞和活化肥大细胞减少。四个DEARGs与它们也存在统计学相关性。进一步研究发现,四个DEARGs与免疫细胞异常有关,并调节多种免疫和炎症反应。此外,药物 - 蛋白质相互作用包括四种可能靶向四个DEARGs的治疗药物,分子对接可使这种关联具有实际意义。
本研究鉴定出四个与DN相关的DEARGs(CCR2、VCAM1、CSF1R和ITGAM),它们可能在DN的发生发展中起关键作用,并且可能是DN的潜在生物标志物。