Institute for Molecular Bioscience, University of Queensland, Brisbane, Australia.
Queensland Brain Institute, University of Queensland, Brisbane, Australia.
Eur J Hum Genet. 2018 Sep;26(9):1361-1368. doi: 10.1038/s41431-018-0174-7. Epub 2018 Jun 11.
Trans-eQTLs have been implicated in complex traits and common diseases, but many were initially identified on the basis of having an effect in cis, and there has been no assessment of the significance of the overlap in relation to chance expectations. Here, we investigated whether trans-expression quantitative trait loci (eQTL) associations identified in whole blood contribute to variance in complex traits by determining (1) whether genome-wide significant (GWS) single-nucleotide polymorphisms (SNPs) were enriched for trans-eQTL (including trans-only eQTL), and (2) whether the genomic regions surrounding associated trans-genes were enriched for statistical associations in the relevant GWAS. On average for a given phenotype, we identify 4.8% of GWS SNPs overlapping with trans-eQTL present in blood, and show that for the majority of these phenotypes, this observation does not exceed that expected by chance. Likewise, we observe no enrichment for genetic associations with the GWAS phenotype in the regions surrounding the linked trans-genes, with the exception of rheumatoid arthritis. Interestingly, the GWS SNPs for each phenotype were consistently more enriched for unique trans-eQTL SNPs than trans-eQTL SNP-probe pairs (p = 4 × 10), with schizophrenia the only exception. This relative enrichment for trans-eQTL SNPs over trans-eQTL SNP-probe pairs implies that trait-associated trans-eQTL SNPs in whole blood are less likely to be 'master regulators' than random trans-eQTL SNPs. Taken together, these results suggest little evidence for the role of blood-based trans-eQTL in complex traits and disease, although this may reflect the finite size of currently available data sets and our findings may not hold for trans-eQTLs in more trait-relevant tissues. All software is publically available at https://github.com/IMB-Computational-Genomics-Lab/eqtlOverlapper .
跨表达数量性状基因座(eQTL)已被牵连到复杂性状和常见疾病中,但许多最初是根据顺式效应确定的,而且尚未评估与机会预期相关的重叠的意义。在这里,我们通过确定(1)全血中鉴定的全基因组显著(GWS)单核苷酸多态性(SNP)是否富集跨表达定量性状基因座(包括跨-eQTL),以及(2)相关 GWAS 中与关联跨基因相关的基因组区域是否富集统计关联,来研究跨基因表达 eQTL 关联是否通过确定跨基因表达 eQTL 关联是否有助于复杂性状的方差。对于给定的表型,我们平均确定 4.8%的 GWS SNP 与血液中存在的跨-eQTL 重叠,并且表明对于大多数这些表型,这种观察结果不会超过偶然预期。同样,我们在与连锁跨基因相关的区域中没有观察到与 GWAS 表型的遗传关联富集,除了类风湿性关节炎。有趣的是,对于每种表型,GWS SNP 比跨-eQTL SNP 探针对更富集独特的跨-eQTL SNP(p=4×10),除了精神分裂症。这种跨-eQTL SNP 相对于跨-eQTL SNP 探针对的相对富集意味着全血中与性状相关的跨-eQTL SNP 不太可能是“主调控因子”,而不是随机的跨-eQTL SNP。综上所述,这些结果表明,血液中基于跨-eQTL 的复杂性状和疾病的作用证据很少,尽管这可能反映了当前可用数据集的有限规模,并且我们的发现可能不适用于在更相关的组织中跨-eQTL。所有软件均可在 https://github.com/IMB-Computational-Genomics-Lab/eqtlOverlapper 上公开获取。