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基于转录组学和 GWAS 分析的统计生物信息学揭示吸烟与 2 型糖尿病患者关联的潜在生物学机制

Statistical Bioinformatics to Uncover the Underlying Biological Mechanisms That Linked Smoking with Type 2 Diabetes Patients Using Transcritpomic and GWAS Analysis.

机构信息

Department of Statistics, Jagannath University, Dhaka 1100, Bangladesh.

Department of Computer Science & Engineering, Prime University, Dhaka 1216, Bangladesh.

出版信息

Molecules. 2022 Jul 8;27(14):4390. doi: 10.3390/molecules27144390.

Abstract

Type 2 diabetes (T2D) is a chronic metabolic disease defined by insulin insensitivity corresponding to impaired insulin sensitivity, decreased insulin production, and eventually failure of beta cells in the pancreas. There is a 30-40 percent higher risk of developing T2D in active smokers. Moreover, T2D patients with active smoking may gradually develop many complications. However, there is still no significant research conducted to solve the issue. Hence, we have proposed a highthroughput network-based quantitative pipeline employing statistical methods. Transcriptomic and GWAS data were analysed and obtained from type 2 diabetes patients and active smokers. Differentially Expressed Genes (DEGs) resulted by comparing T2D patients' and smokers' tissue samples to those of healthy controls of gene expression transcriptomic datasets. We have found 55 dysregulated genes shared in people with type 2 diabetes and those who smoked, 27 of which were upregulated and 28 of which were downregulated. These identified DEGs were functionally annotated to reveal the involvement of cell-associated molecular pathways and GO terms. Moreover, protein-protein interaction analysis was conducted to discover hub proteins in the pathways. We have also identified transcriptional and post-transcriptional regulators associated with T2D and smoking. Moreover, we have analysed GWAS data and found 57 common biomarker genes between T2D and smokers. Then, Transcriptomic and GWAS analyses are compared for more robust outcomes and identified 1 significant common gene, 19 shared significant pathways and 12 shared significant GOs. Finally, we have discovered protein-drug interactions for our identified biomarkers.

摘要

2 型糖尿病(T2D)是一种慢性代谢性疾病,其特征是胰岛素敏感性降低,对应胰岛素敏感性降低、胰岛素分泌减少,最终导致胰腺β细胞衰竭。活跃吸烟者患 T2D 的风险增加 30-40%。此外,活跃吸烟的 T2D 患者可能会逐渐出现许多并发症。然而,目前仍没有针对这一问题的显著研究。因此,我们提出了一种基于高通量网络的定量分析方法,采用统计方法。对 2 型糖尿病患者和活跃吸烟者的转录组和 GWAS 数据进行了分析和获取。通过比较 T2D 患者和吸烟者的组织样本与健康对照组的基因表达转录组数据集,得到差异表达基因(DEGs)。我们发现了 55 个在 2 型糖尿病患者和吸烟者中共享的失调基因,其中 27 个上调,28 个下调。这些鉴定出的 DEGs 进行了功能注释,以揭示细胞相关分子途径和 GO 术语的参与。此外,还进行了蛋白质-蛋白质相互作用分析,以发现途径中的枢纽蛋白。我们还鉴定了与 T2D 和吸烟相关的转录和转录后调节剂。此外,我们还分析了 GWAS 数据,发现了 57 个 T2D 和吸烟者之间的共同生物标志物基因。然后,对转录组和 GWAS 分析进行了比较,以获得更稳健的结果,并鉴定出 1 个显著的共同基因、19 个共享的显著途径和 12 个共享的显著 GO。最后,我们发现了我们鉴定出的生物标志物的蛋白-药物相互作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3e47/9323276/d92e85ea74dc/molecules-27-04390-g001.jpg

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