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整合 eQTL 和 GWAS 数据可阐明已确立的和识别新的偏头痛风险基因座。

Integrating eQTL and GWAS data characterises established and identifies novel migraine risk loci.

机构信息

Statistical and Genomic Epidemiology Laboratory, School of Biomedical Sciences, Faculty of Health, Centre for Genomics and Personalised Health, Queensland University of Technology, Brisbane, QLD, 4059, Australia.

出版信息

Hum Genet. 2023 Aug;142(8):1113-1137. doi: 10.1007/s00439-023-02568-8. Epub 2023 May 28.

Abstract

Migraine-a painful, throbbing headache disorder-is the most common complex brain disorder, yet its molecular mechanisms remain unclear. Genome-wide association studies (GWAS) have proven successful in identifying migraine risk loci; however, much work remains to identify the causal variants and genes. In this paper, we compared three transcriptome-wide association study (TWAS) imputation models-MASHR, elastic net, and SMultiXcan-to characterise established genome-wide significant (GWS) migraine GWAS risk loci, and to identify putative novel migraine risk gene loci. We compared the standard TWAS approach of analysing 49 GTEx tissues with Bonferroni correction for testing all genes present across all tissues (Bonferroni), to TWAS in five tissues estimated to be relevant to migraine, and TWAS with Bonferroni correction that took into account the correlation between eQTLs within each tissue (Bonferroni-matSpD). Elastic net models performed in all 49 GTEx tissues using Bonferroni-matSpD characterised the highest number of established migraine GWAS risk loci (n = 20) with GWS TWAS genes having colocalisation (PP4 > 0.5) with an eQTL. SMultiXcan in all 49 GTEx tissues identified the highest number of putative novel migraine risk genes (n = 28) with GWS differential expression at 20 non-GWS GWAS loci. Nine of these putative novel migraine risk genes were later found to be at and in linkage disequilibrium with true (GWS) migraine risk loci in a recent, more powerful migraine GWAS. Across all TWAS approaches, a total of 62 putative novel migraine risk genes were identified at 32 independent genomic loci. Of these 32 loci, 21 were true risk loci in the recent, more powerful migraine GWAS. Our results provide important guidance on the selection, use, and utility of imputation-based TWAS approaches to characterise established GWAS risk loci and identify novel risk gene loci.

摘要

偏头痛是一种疼痛、悸动的头痛障碍,是最常见的复杂脑部疾病,但它的分子机制仍不清楚。全基因组关联研究(GWAS)已被证明在识别偏头痛风险基因座方面非常成功;然而,仍有大量工作需要确定因果变异和基因。在本文中,我们比较了三种转录组全基因组关联研究(TWAS)推断模型-MASHR、弹性网络和 SMultiXcan-来描述已建立的全基因组显著(GWS)偏头痛 GWAS 风险基因座,并鉴定潜在的新的偏头痛风险基因座。我们比较了标准的 TWAS 方法,即分析 49 个 GTEx 组织,并对所有组织中存在的所有基因进行 Bonferroni 校正以进行测试(Bonferroni),与在五个被认为与偏头痛相关的组织中进行 TWAS,以及考虑到每个组织内 eQTL 之间相关性的 Bonferroni 校正(Bonferroni-matSpD)。使用 Bonferroni-matSpD 在所有 49 个 GTEx 组织中进行的弹性网络模型,描述了数量最多的已建立的偏头痛 GWAS 风险基因座(n=20),具有 GWS TWAS 基因与 eQTL 之间的共定位(PP4>0.5)。在所有 49 个 GTEx 组织中使用 SMultiXcan 进行分析,确定了数量最多的潜在新的偏头痛风险基因(n=28),在 20 个非 GWS GWAS 基因座上具有 GWS 差异表达。其中 9 个潜在的新的偏头痛风险基因后来在最近一项更强大的偏头痛 GWAS 中被发现位于真正的(GWS)偏头痛风险基因座附近并处于连锁不平衡状态。在所有 TWAS 方法中,在 32 个独立的基因组基因座中共鉴定出 62 个潜在的新的偏头痛风险基因。在这 32 个基因座中,有 21 个是最近更强大的偏头痛 GWAS 中的真正风险基因座。我们的研究结果为基于 IMPUTATION 的 TWAS 方法的选择、使用和应用提供了重要指导,以描述已建立的 GWAS 风险基因座并鉴定新的风险基因座。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3a12/10449685/205b6d75c934/439_2023_2568_Fig1_HTML.jpg

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