通过整合基因组数据库和生物信息学方法研究与错义突变相关的 1 型糖尿病。

Dyonisa Nasirochmi Pakha, Ratih Dewi Yudhani, Lalu Muhammad Irham
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摘要

尽管人们已经知道 1 型糖尿病(T1DM)的致病基因,但对该疾病基因的错义突变的了解仍然不足。为了解决这个问题,本研究整合了基因组数据库和基于生物信息学的方法。最初,研究人员从 GWAS 目录中检索到九个与 T1DM 相关的变异基因。研究人员使用了不同的基因组学算法,如 PolyPhen2.0、SNPs 和 GTEx 分析程序来研究这些变异的结构和功能效应。随后,SNPnexus 也被用来了解这些突变对表达蛋白功能的影响。利用 GWAS 目录数据库确定了九个 T1DM 的错义变异。在这九个 SNPs 中,有三个被预测与 T1DM 疾病的进展有关,因为它们会影响蛋白质水平。带有 SNP rs34536443 的 TYK2 基因变异被认为可能具有损伤作用。同时,COL4A3 和 IFIH1 基因的 SNPs rs55703767 和 rs35667974 都可能通过可能的破坏性预测来改变蛋白质功能。在这三个基因的变异中,带有 SNP rs34536443 的 TYK2 基因对 T1DM 发病的影响最大,得分为 0.999。我们衷心希望这些研究成果能对了解 T1DM 的遗传基础起到重要作用。
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Investigation of missense mutation-related type 1 diabetes mellitus through integrating genomic databases and bioinformatic approach.

Though genes are already known to be responsible for type 1 diabetes mellitus (T1DM), the knowledge of missense mutation of that disease gene has still to be under covered. A genomic database and a bioinformatics-based approach are integrated in the present study in order to address this issue. Initially, nine variants associated with T1DM were retrieved from the GWAS catalogue. Different genomic algorithms such as PolyPhen2.0, SNPs and GTEx analyser programs were used to study the structural and functional effects of these mutations. Subsequently, SNPnexus was also employed to understand the effect of these mutations on the function of the expressed protein. Nine missense variants of T1DM were identified using the GWAS catalogue database. Among these nine SNPs, three were predicted to be related to the progression of T1DM disease by affecting the protein level. TYK2 gene variants with SNP rs34536443 were thought to have a probably damaging effect. Meanwhile, both COL4A3 and IFIH1 genes with SNPs rs55703767 and rs35667974, respectively, might alter protein function through a possibly damaging prediction. Among the variants of the three genes, the TYK2 gene with SNP rs34536443 had the strongest contribution in affecting the development of T1DM, with a score of 0.999. We sincerely hope that the results could be of immense importance in understanding the genetic basis of T1DM.

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