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首页> 外文期刊>Human Molecular Genetics >Leveraging lung tissue transcriptome to uncover candidate causal genes in COPD genetic associations
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Leveraging lung tissue transcriptome to uncover candidate causal genes in COPD genetic associations

机译:利用肺组织转录组在COPD遗传关联中发现候选因果基因

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摘要

Causal genes of chronic obstructive pulmonary disease (COPD) remain elusive. The current study aims at integrating genome-wide association studies (GWAS) and lung expression quantitative trait loci (eQTL) data to map COPD candidate causal genes and gain biological insights into the recently discovered COPD susceptibility loci. Two complementary genomic datasets on COPD were studied. First, the lung eQTL dataset which included whole-genome gene expression and genotyping data from 1038 individuals. Second, the largest COPD GWAS to date from the International COPD Genetics Consortium (ICGC) with 13 710 cases and 38 062 controls. Methods that integrated GWAS with eQTL signals including transcriptome-wide association study (TWAS), colocalization and Mendelian randomization-based (SMR) approaches were used to map causality genes, i.e. genes with the strongest evidence of being the functional effector at specific loci. These methods were applied at the genome-wide level and at COPD risk loci derived from the GWAS literature. Replication was performed using lung data from GTEx. We collated 129 non-overlapping risk loci for COPD from the GWAS literature. At the genome-wide scale, 12 new COPD candidate genes/loci were revealed and six replicated in GTEx including CAMK2A, DMPK, MYO15A, TNFRSF10A, BTN3A2 and TRBV30. In addition, we mapped candidate causal genes for 60 out of the 129 GWAS-nominated loci and 23 of them were replicated in GTEx. Mapping candidate causal genes in lung tissue represents an important contribution to the genetics of COPD, enriches our biological interpretation of GWAS findings, and brings us closer to clinical translation of genetic associations.
机译:慢性阻塞性肺病(COPD)的因果基因仍然难以捉摸。目前的研究旨在将基因组 - 宽的关联研究(GWAS)和肺部表达定量特性基因座(EQTL)数据集成为映射COPD候选因果基因,并获得最近发现的COPD易感性基因座的生物见解。研究了COPD上的两个互补基因组数据集。首先,肺部EQTL数据集包括来自1038人的全基因组基因表达和基因分型数据。其次,最大的COPD GWA迄今为止来自国际COPD遗传学联盟(ICGC),13个710个案例和38 062个控制。方法用EQTL信号集成GWA,包括转录组合的关联研究(TWA),分层化和基于孟德尔随机化的(SMR)方法用于映射因果基因,即具有最强证据的基因,具有特定基因座的功能效应。这些方法在基因组 - 宽的水平和来自GWAS文献中的COPD风险基因座。使用来自GTEX的肺部数据进行复制。从GWAS文献中,我们为COPD进行了129个非重叠风险基因座。在基因组范围内,揭示了12个新的COPD候选基因/基因座,并在GTEX中复制六个,包括CAMK2A,DMPK,MYO15A,TNFRSF10A,BTN3A2和TRBV30。此外,我们在GTEX中映射了129个GWAS提名的基因座中的60个候选因果基因60个,其中23个被复制。肺组织中的映射候选因果基因是对COPD遗传学的重要贡献,丰富了我们对GWAS发现的生物解释,并使我们更接近遗传联想的临床翻译。

著录项

  • 来源
    《Human Molecular Genetics 》 |2018年第10期| 共11页
  • 作者单位

    Univ Laval Inst Univ Cardiol &

    Pneumol Quebec Quebec City PQ Canada;

    Univ Laval Inst Univ Cardiol &

    Pneumol Quebec Quebec City PQ Canada;

    Univ British Columbia Ctr Heart Lung Innovat St Pauls Hosp Vancouver BC Canada;

    Brigham &

    Womens Hosp Channing Div Network Med 75 Francis St Boston MA 02115 USA;

    Brigham &

    Womens Hosp Channing Div Network Med 75 Francis St Boston MA 02115 USA;

    Brigham &

    Womens Hosp Channing Div Network Med 75 Francis St Boston MA 02115 USA;

    Univ Groningen Univ Med Ctr Groningen Groningen Res Inst Asthma Dept Epidemiol Groningen;

    Univ Groningen Univ Med Ctr Groningen Groningen Res Inst Asthma Dept Epidemiol Groningen;

    Merck Res Labs Seattle WA USA;

    Icahn Sch Med Mt Sinai Icahn Inst Genom &

    Multiscale Biol New York NY 10029 USA;

    Univ Groningen Univ Med Ctr Groningen GRIAC Res Inst Groningen Dept Pathol &

    Med Biol Groningen;

    Univ Groningen Univ Med Ctr Groningen GRIAC Res Inst Groningen Dept Pulm Dis Groningen;

    Univ Laval Inst Univ Cardiol &

    Pneumol Quebec Quebec City PQ Canada;

    Univ Laval Inst Univ Cardiol &

    Pneumol Quebec Quebec City PQ Canada;

    Univ British Columbia Ctr Heart Lung Innovat St Pauls Hosp Vancouver BC Canada;

    Univ British Columbia Ctr Heart Lung Innovat St Pauls Hosp Vancouver BC Canada;

    Univ Laval Inst Univ Cardiol &

    Pneumol Quebec Quebec City PQ Canada;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医学遗传学 ;
  • 关键词

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