Published October 9, 2019
| Version v1
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Bayesian multivariate reanalysis of large genetic studies identifies many new associations
Description
Genome-wide association studies (GWAS) have now been conducted for hundreds of phenotypes of relevance to human health. Many such GWAS involve multiple closely-related phenotypes collected on the same samples. However, the vast majority of these GWAS have been analyzed using simple univariate analyses, which consider one phenotype at a time. This is despite the fact that, at least in simulation experiments, multivariate analyses have been shown to be more powerful at detecting associations. Here, we conduct multivariate association analyses on 13 different publicly-available GWAS datasets that involve multiple closely-related phenotypes. These data include large studies of anthropometric traits (GIANT), plasma lipid traits (GlobalLipids), and red blood cell traits (HaemgenRBC). Our analyses identify many new associations (433 in total across the 13 studies), many of which replicate when follow-up samples are available. Overall, our results demonstrate that multivariate analyses can help make more effective use of data from both existing and future GWAS.
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All relevant data are within the manuscript and its Supporting Information files.Files
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Additional details
Identifiers
- DOI
- 10.1371/journal.pgen.1008431
- Other
- oai:uchicago.tind.io:5696
Funding
- National Institutes of Health
- R01 HG002585
- National Institutes of Health
- T32 GM007197
- National Institutes of Health
- TL1 TR000432
- National Institutes of Health
- F31 AI118375
- National Institutes of Health
- R01 GM118652