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从全基因组关联研究时代到精准医学看 2 型糖尿病的遗传学研究。

Perspectives on genetic studies of type 2 diabetes from the genome-wide association studies era to precision medicine.

机构信息

Department of Advanced Genomic and Laboratory Medicine, Graduate School of Medicine, University of the Ryukyus, Nishihara-Cho, Japan.

Division of Clinical Laboratory and Blood Transfusion, University of the Ryukyus Hospital, Nishihara-Cho, Japan.

出版信息

J Diabetes Investig. 2024 Apr;15(4):410-422. doi: 10.1111/jdi.14149. Epub 2024 Jan 23.

Abstract

Genome-wide association studies (GWAS) have facilitated a substantial and rapid increase in the number of confirmed genetic susceptibility variants for complex diseases. Approximately 700 variants predisposing individuals to the risk for type 2 diabetes have been identified through GWAS until 2023. From 2018 to 2022, hundreds of type 2 diabetes susceptibility loci with smaller effect sizes were identified through large-scale GWAS with sample sizes of 200,000 to >1 million. The clinical translation of genetic information for type 2 diabetes includes the development of novel therapeutics and risk predictions. Although drug discovery based on loci identified in GWAS remains challenging owing to the difficulty of functional annotation, global efforts have been made to identify novel biological mechanisms and therapeutic targets by applying multi-omics approaches or searching for disease-associated coding variants in isolated founder populations. Polygenic risk scores (PRSs), comprising up to millions of associated variants, can identify individuals with higher disease risk than those in the general population. In populations of European descent, PRSs constructed from base GWAS data with a sample size of approximately 450,000 have predicted the onset of diseases well. However, European GWAS-derived PRSs have limited predictive performance in non-European populations. The predictive accuracy of a PRS largely depends on the sample size of the base GWAS data. The results of GWAS meta-analyses for multi-ethnic groups as base GWAS data and cross-population polygenic prediction methodology have been applied to establish a universal PRS applicable to small isolated ethnic populations.

摘要

全基因组关联研究(GWAS)极大地促进了确认复杂疾病遗传易感性变异的数量迅速增加。截至 2023 年,通过 GWAS 已鉴定出约 700 个使个体易患 2 型糖尿病的变异。2018 年至 2022 年,通过样本量为 20 万至>100 万的大规模 GWAS 鉴定出了数百个具有较小效应大小的 2 型糖尿病易感性基因座。2 型糖尿病遗传信息的临床转化包括新型治疗方法的开发和风险预测。尽管由于功能注释困难,基于 GWAS 中鉴定的基因座的药物发现仍然具有挑战性,但全球已努力通过应用多组学方法或在孤立的创始人群中搜索与疾病相关的编码变异来确定新的生物学机制和治疗靶点。多基因风险评分(PRS)由多达数百万个相关变异组成,可识别出比一般人群疾病风险更高的个体。在欧洲血统人群中,由样本量约为 450,000 的基础 GWAS 数据构建的 PRS 可以很好地预测疾病的发生。然而,欧洲 GWAS 衍生的 PRS 在非欧洲人群中的预测性能有限。PRS 的预测准确性在很大程度上取决于基础 GWAS 数据的样本量。将多民族群体的 GWAS 荟萃分析结果作为基础 GWAS 数据和跨人群多基因预测方法应用于建立适用于小型孤立种族群体的通用 PRS。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1bd9/10981147/3532a1dc1126/JDI-15-410-g002.jpg

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