2型糖尿病与肾癌之间的常见分子联系及治疗见解
Common molecular links and therapeutic insights between type 2 diabetes and kidney cancer.
作者信息
Ahmmed Reaz, Islam Mohammad Amirul, Hasan Md Taohid, Sarker Arnob, Ali Md Ahad, Islam Md Saiful, Sultana Mst Zafrin, Mollah Md Nurul Haque
机构信息
Bioinformatics Lab (Dry), Department of Statistics, University of Rajshahi, Rajshahi, Bangladesh.
Department of Biochemistry and Molecular Biology, University of Rajshahi, Rajshahi, Bangladesh.
出版信息
PLoS One. 2025 Aug 20;20(8):e0330619. doi: 10.1371/journal.pone.0330619. eCollection 2025.
INTRODUCTION
Type 2 diabetes (T2D) is considered as a risk factor for kidney cancer (KC). However, so far, there is no study in the literature that has explored genetic factors through which T2D drive the development and progression of KC. Therefore, this study attempted to explore T2D- and KC-causing shared key genes (sKGs) for revealing shared pathogenesis and therapeutic drugs as their common treatments.
METHODS
The integrated bioinformatics and system biology approaches were utilized in this study. The statistical LIMMA approach was used based web-tool GEO2R to detect differentially expressed genes (DEGs) through transcriptomics analysis. Then upregulated and downregulated DEGs for T2D and KC were combined to obtained shared DEGs (sDEGs) between T2D and KC. The STRING database was used to construct the protein-protein interaction (PPI) network of sDEGs. Then Cytohubba plugin-in Cytoscape were used in the PPI network to disclose the sKGs based on different topological measures. The RegNetwork database was used in NetworkAnalyst to analyze co-regulatory networks of sKGs with transcription factors (TFs) and micro-RNAs to identify key TFs and miRNAs as the transcriptional and post-transcriptional regulators of sKGs, respectively. AutoDock Vina is a tool used for molecular docking. ADME/T properties were 24 assessed using pkCSM and SwissADME.
RESULTS
At first, 74 shared DEGs (sDEGs) were identified that can distinguish both KC and T2D patients from control samples. Through protein-protein interaction (PPI) network analysis, top-ranked 6 sDEGs (CD74, TFRC, CREB1, MCL1, SCARB1 and JUN) were detected as the sKGs that drive both KC and T2D development and progression. The most common sKG 'CD74' is associated with key pathways, such as NF-κB signaling transduction, apoptotic processes, B cell proliferation. Differential expression patterns of sKGs validated by independent datasets of NCBI database for T2D and TCGA and GTEx databases for KC. Furthermore, sKGs were found to be significant at several CpG sites in DNA methylation studies. Regulatory network analysis identified three TFs proteins (SMAD5, ATF1 and NR2F1) and two miRNAs (hsa-mir-1-3p and hsa-mir-34a-5p) as the regulators of sKGs. The enrichment analysis of sKGs with KEGG-pathways and Gene Ontology (GO) terms revealed some crucial shared pathogenetic mechanisms (sPM) between two diseases. Finally, sKGs-guided four potential therapeutic drug molecules (Imatinib, Pazopanib hydrochloride, Sorafenib and Glibenclamide) were recommended as the common therapies for KC with T2D.
CONCLUSION
The results of this study may be useful resources for the diagnosis and therapy of KC with the co-existence of T2D.
引言
2型糖尿病(T2D)被认为是肾癌(KC)的一个风险因素。然而,迄今为止,文献中尚无研究探索2型糖尿病驱动肾癌发生发展的遗传因素。因此,本研究试图探索导致2型糖尿病和肾癌的共同关键基因(sKGs),以揭示共同的发病机制,并寻找作为其共同治疗手段的治疗药物。
方法
本研究采用了综合生物信息学和系统生物学方法。基于网络工具GEO2R,使用统计LIMMA方法通过转录组学分析检测差异表达基因(DEGs)。然后将2型糖尿病和肾癌上调和下调的DEGs合并,以获得2型糖尿病和肾癌之间的共享DEGs(sDEGs)。利用STRING数据库构建sDEGs的蛋白质-蛋白质相互作用(PPI)网络。然后在Cytoscape中的Cytohubba插件用于PPI网络,基于不同的拓扑度量来揭示sKGs。在NetworkAnalyst中使用RegNetwork数据库分析sKGs与转录因子(TFs)和微小RNA的共调控网络,分别识别作为sKGs转录和转录后调节因子的关键TFs和miRNAs。AutoDock Vina是一种用于分子对接的工具。使用pkCSM和SwissADME评估ADME/T特性。
结果
首先,鉴定出74个共享DEGs(sDEGs),可将肾癌和2型糖尿病患者与对照样本区分开来。通过蛋白质-蛋白质相互作用(PPI)网络分析,检测到排名前6的sDEGs(CD74、TFRC、CREB1、MCL1、SCARB1和JUN)作为驱动肾癌和2型糖尿病发生发展的sKGs。最常见的sKG“CD74”与关键途径相关,如NF-κB信号转导、凋亡过程、B细胞增殖。sKGs的差异表达模式通过NCBI数据库中2型糖尿病的独立数据集以及TCGA和GTEx数据库中肾癌的独立数据集得到验证。此外,在DNA甲基化研究中发现sKGs在几个CpG位点具有显著性。调控网络分析确定了三种TFs蛋白(SMAD5、ATF1和NR2F1)和两种miRNAs(hsa-mir-1-3p和hsa-mir-34a-5p)作为sKGs的调节因子。sKGs与KEGG通路和基因本体(GO)术语的富集分析揭示了两种疾病之间一些关键的共同发病机制(sPM)。最后,推荐sKGs指导的四种潜在治疗药物分子(伊马替尼、盐酸帕唑帕尼、索拉非尼和格列本脲)作为2型糖尿病合并肾癌的共同治疗方法。
结论
本研究结果可能为2型糖尿病合并肾癌的诊断和治疗提供有用的资源。