| Literature DB >> 26901065 |
Andrew Dahl1, Valentina Iotchkova2,3, Amelie Baud3, Åsa Johansson4, Ulf Gyllensten4, Nicole Soranzo2, Richard Mott1, Andreas Kranis5,6, Jonathan Marchini1,7.
Abstract
Genetic association studies have yielded a wealth of biological discoveries. However, these studies have mostly analyzed one trait and one SNP at a time, thus failing to capture the underlying complexity of the data sets. Joint genotype-phenotype analyses of complex, high-dimensional data sets represent an important way to move beyond simple genome-wide association studies (GWAS) with great potential. The move to high-dimensional phenotypes will raise many new statistical problems. Here we address the central issue of missing phenotypes in studies with any level of relatedness between samples. We propose a multiple-phenotype mixed model and use a computationally efficient variational Bayesian algorithm to fit the model. On a variety of simulated and real data sets from a range of organisms and trait types, we show that our method outperforms existing state-of-the-art methods from the statistics and machine learning literature and can boost signals of association.Entities:
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Year: 2016 PMID: 26901065 PMCID: PMC4817234 DOI: 10.1038/ng.3513
Source DB: PubMed Journal: Nat Genet ISSN: 1061-4036 Impact factor: 38.330