PT - JOURNAL ARTICLE AU - William Pitchers AU - Jessica Nye AU - Eladio J. Márquez AU - Alycia Kowalski AU - Ian Dworkin AU - David Houle TI - The power of a multivariate approach to genome-wide association studies: an example with <strong><em>Drosophila melanogaster</em></strong> wing shape AID - 10.1101/108308 DP - 2017 Jan 01 TA - bioRxiv PG - 108308 4099 - http://biorxiv.org/content/early/2017/02/14/108308.short 4100 - http://biorxiv.org/content/early/2017/02/14/108308.full AB - Due to the complexity of genotype-phenotype relationships, simultaneous analyses of genomic associations with multiple traits will be more powerful and more informative than a series of univariate analyses. In most cases, however, studies of genotype-phenotype relationships have analyzed only one trait at a time, even as the rapid advances in molecular tools have expanded our view of the genotype to include whole genomes. Here, we report the results of a fully integrated multivariate genome-wide association analysis of the shape of the Drosophila melanogaster wing in the Drosophila Genetic Reference Panel. Genotypic effects on wing shape were highly correlated between two different labs. We found 2,396 significant SNPs using a 5% FDR cutoff in the multivariate analyses, but just 4 significant SNPs in univariate analyses of scores on the first 20 principal component axes. A key advantage of multivariate analysis is that the direction of the estimated phenotypic effect is much more informative than a univariate one. Exploiting this feature, we show that the directions of effects were on average replicable in an unrelated panel of inbred lines. Effects of knockdowns of genes implicated in the initial screen were on average more similar than expected under a null model. Association studies that take a phenomic approach in considering many traits simultaneously are an important complement to the power of genomics. Multivariate analyses of such data are more powerful, more informative, and allow the unbiased study of pleiotropy.