Literature DB >> 23759510

Genome-wide association studies with high-dimensional phenotypes.

Pekka Marttinen1, Jussi Gillberg, Aki Havulinna, Jukka Corander, Samuel Kaski.   

Abstract

High-dimensional phenotypes hold promise for richer findings in association studies, but testing of several phenotype traits aggravates the grand challenge of association studies, that of multiple testing. Several methods have recently been proposed for testing jointly all traits in a high-dimensional vector of phenotypes, with prospect of increased power to detect small effects that would be missed if tested individually. However, the methods have rarely been compared to the extent of enabling assessment of their relative merits and setting up guidelines on which method to use, and how to use it. We compare the methods on simulated data and with a real metabolomics data set comprising 137 highly correlated variables and approximately 550,000 SNPs. Applying the methods to genome-wide data with hundreds of thousands of markers inevitably requires division of the problem into manageable parts facilitating parallel processing, parts corresponding to individual genetic variants, pathways, or genes, for example. Here we utilize a straightforward formulation according to which the genome is divided into blocks of nearby correlated genetic markers, tested jointly for association with the phenotypes. This formulation is computationally feasible, reduces the number of tests, and lets the methods take advantage of combining information over several correlated variables not only on the phenotype side, but also on the genotype side. Our experiments show that canonical correlation analysis has higher power than alternative methods, while remaining computationally tractable for routine use in the GWAS setting, provided the number of samples is sufficient compared to the numbers of phenotype and genotype variables tested. Sparse canonical correlation analysis and regression models with latent confounding factors show promising performance when the number of samples is small compared to the dimensionality of the data.

Mesh:

Year:  2013        PMID: 23759510     DOI: 10.1515/sagmb-2012-0032

Source DB:  PubMed          Journal:  Stat Appl Genet Mol Biol        ISSN: 1544-6115


  8 in total

1.  Penalized multimarker vs. single-marker regression methods for genome-wide association studies of quantitative traits.

Authors:  Hui Yi; Patrick Breheny; Netsanet Imam; Yongmei Liu; Ina Hoeschele
Journal:  Genetics       Date:  2014-10-28       Impact factor: 4.562

2.  Multivariate analysis of genome-wide data to identify potential pleiotropic genes for five major psychiatric disorders using MetaCCA.

Authors:  XiaoCan Jia; YongLi Yang; YuanCheng Chen; ZhiWei Cheng; Yuhui Du; Zhenhua Xia; Weiping Zhang; Chao Xu; Qiang Zhang; Xin Xia; HongWen Deng; XueZhong Shi
Journal:  J Affect Disord       Date:  2018-07-17       Impact factor: 4.839

Review 3.  Approaches for the identification of genetic modifiers of nutrient dependent phenotypes: examples from folate.

Authors:  John W R Zinck; Amanda J MacFarlane
Journal:  Front Nutr       Date:  2014-07-14

4.  Regularized machine learning in the genetic prediction of complex traits.

Authors:  Sebastian Okser; Tapio Pahikkala; Antti Airola; Tapio Salakoski; Samuli Ripatti; Tero Aittokallio
Journal:  PLoS Genet       Date:  2014-11-13       Impact factor: 5.917

5.  metaCCA: summary statistics-based multivariate meta-analysis of genome-wide association studies using canonical correlation analysis.

Authors:  Anna Cichonska; Juho Rousu; Pekka Marttinen; Antti J Kangas; Pasi Soininen; Terho Lehtimäki; Olli T Raitakari; Marjo-Riitta Järvelin; Veikko Salomaa; Mika Ala-Korpela; Samuli Ripatti; Matti Pirinen
Journal:  Bioinformatics       Date:  2016-02-19       Impact factor: 6.937

6.  Integrative regression network for genomic association study.

Authors:  Reddy Rani Vangimalla; Hyun-Hwan Jeong; Kyung-Ah Sohn
Journal:  BMC Med Genomics       Date:  2016-08-12       Impact factor: 3.063

7.  MARV: a tool for genome-wide multi-phenotype analysis of rare variants.

Authors:  Marika Kaakinen; Reedik Mägi; Krista Fischer; Jani Heikkinen; Marjo-Riitta Järvelin; Andrew P Morris; Inga Prokopenko
Journal:  BMC Bioinformatics       Date:  2017-02-16       Impact factor: 3.169

8.  Assessing multivariate gene-metabolome associations with rare variants using Bayesian reduced rank regression.

Authors:  Pekka Marttinen; Matti Pirinen; Antti-Pekka Sarin; Jussi Gillberg; Johannes Kettunen; Ida Surakka; Antti J Kangas; Pasi Soininen; Paul O'Reilly; Marika Kaakinen; Mika Kähönen; Terho Lehtimäki; Mika Ala-Korpela; Olli T Raitakari; Veikko Salomaa; Marjo-Riitta Järvelin; Samuli Ripatti; Samuel Kaski
Journal:  Bioinformatics       Date:  2014-03-24       Impact factor: 6.937

  8 in total

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