2015
DOI: 10.1101/024083
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Integrative approaches for large-scale transcriptome-wide association studies

Abstract: Many genetic variants influence complex traits by modulating gene expression, thus altering the abundance levels of one or multiple proteins. In this work we introduce a powerful strategy that integrates gene expression measurements with large-scale genome-wide association data to identify genes whose cis-regulated expression is associated to complex traits. We use a relatively small reference panel of individuals for which both genetic variation and gene expression have been measured to impute gene expression… Show more

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Cited by 288 publications
(603 citation statements)
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“…Therefore, it does not prove causality, similarly to all current methods. [7][8][9][10][11][12] In fact, if gene functions are often pleiotropic, for which we found some evidence in the current study, the assumption of independence between the instrument variable and the outcome of Mendelian randomization approaches is more likely to be violated. 34 Still, the inferences made here can potentially guide phenotypic studies of gene functions in model systems.…”
Section: Discussionmentioning
confidence: 62%
“…Therefore, it does not prove causality, similarly to all current methods. [7][8][9][10][11][12] In fact, if gene functions are often pleiotropic, for which we found some evidence in the current study, the assumption of independence between the instrument variable and the outcome of Mendelian randomization approaches is more likely to be violated. 34 Still, the inferences made here can potentially guide phenotypic studies of gene functions in model systems.…”
Section: Discussionmentioning
confidence: 62%
“…43 Unlike GWASs, where the association between a genetic variant and trait is unidirectional, in transcriptome-wide association studies (TWASs) the direction of association between transcript and phenotype is not clear and causal inference must be drawn with caution. 44 eQTL studies hold the promise of revealing biological mechanisms of SNP-phenotype associations; integrating GWASs with TWASs may help prioritize genes and variants for functional studies. 44 In this study, we used a causal inference approach to infer causal relations and their directionality by integrating SNPs from GWASs with gene expression and phenotype data predicated on the assumption that if a gene is causally related to a phenotype, a nearby genetic variant (i.e., a cis-eQTL) that explains a large proportion of its expression should be associated with the same phenotype.…”
Section: Discussionmentioning
confidence: 99%
“…One fertile area of method development is integrating data from GWASs and expression quantitative trait locus (eQTL) studies to identify associations between transcripts and complex traits. 56,61,62 These methods are useful for prioritizing genes from known GWAS loci for functional follow-up, detecting novel gene-trait associations, and inferring the directions of associations. 21,27,62 The analytical results that only about one-third of the associated genes are the nearest genes 61,62 are informative for the design of fine-mapping experiments.…”
Section: From Gwas To Biologymentioning
confidence: 99%