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首页> 外文期刊>Genetic epidemiology. >Integrating eQTL data with GWAS summary statistics in pathway‐based analysis with application to schizophrenia
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Integrating eQTL data with GWAS summary statistics in pathway‐based analysis with application to schizophrenia

机译:将EQTL数据与GWAS汇总统计集成在基于GWAS的基于分析中,应用于精神分裂症

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ABSTRACT Many genetic variants affect complex traits through gene expression, which can be exploited to boost statistical power and enhance interpretation in genome‐wide association studies (GWASs) as demonstrated by the transcriptome‐wide association study (TWAS) approach. Furthermore, due to polygenic inheritance, a complex trait is often affected by multiple genes with similar functions as annotated in gene pathways. Here, we extend TWAS from gene‐based analysis to pathway‐based analysis: we integrate public pathway collections, expression quantitative trait locus (eQTL) data and GWAS summary association statistics (or GWAS individual‐level data) to identify gene pathways associated with complex traits. The basic idea is to weight the SNPs of the genes in a pathway based on their estimated cis ‐effects on gene expression, then adaptively test for association of the pathway with a GWAS trait by effectively aggregating possibly weak association signals across the genes in the pathway. The P values can be calculated analytically and thus fast. We applied our proposed test with the KEGG and GO pathways to two schizophrenia (SCZ) GWAS summary association data sets, denoted by SCZ1 and SCZ2 with about 20,000 and 150,000 subjects, respectively. Most of the significant pathways identified by analyzing the SCZ1 data were reproduced by the SCZ2 data. Importantly, we identified 15 novel pathways associated with SCZ, such as GABA receptor complex (GO:1902710), which could not be uncovered by the standard single SNP‐based analysis or gene‐based TWAS. The newly identified pathways may help us gain insights into the biological mechanism underlying SCZ. Our results showcase the power of incorporating gene expression information and gene functional annotations into pathway‐based association testing for GWAS.
机译:摘要许多遗传变体通过基因表达影响复杂的性状,这可以利用转录组合协会研究(TWA)方法所证明的基因组关联研究(GWASS)中提高统计功率和增强解释。此外,由于多种遗传,复杂的性状通常受多种基因的影响,该基因具有与基因途径注释的类似功能。在这里,我们将基于基因的分析扩展到基于途径的分析:我们整合公共途径集合,表达量化性状基因座(EQTL)数据和GWAS概要关联统计(或GWAS个性级数据)以识别与复杂相关的基因途径特质。基本思想是基于它们对基因表达的估计的顺式效应来重量基因的SNP在途径中,然后通过在途径中的基因中有效聚集可能弱的关联信号,自适应地测试途径与GWAS性状的关联。 P值可以分析地计算,从而快速。我们将我们的建议测试用Kegg和Go途径应用于两个精神分裂症(SCZ)GWAS摘要关联数据集,由SCZ1和SCZ2表示,分别为约20,000和150,000个受试者。通过分析SCZ1数据识别的大多数重要途径由SCZ2数据再现。重要的是,我们确定了与SCZ相关的15个新途径,例如GABA受体复合物(GO:1902710),其无法被标准的单一SNP的分析或基于基因的TWA揭示。新识别的途径可以帮助我们进入SCZ潜在的生物机制的见解。我们的结果展示了将基因表达信息和基因功能注释纳入基于GWAS的基于路径的关联测试的力量。

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