Literature DB >> 16544290

A Bayesian toolkit for genetic association studies.

David J Lunn1, John C Whittaker, Nicky Best.   

Abstract

We present a range of modelling components designed to facilitate Bayesian analysis of genetic-association-study data. A key feature of our approach is the ability to combine different submodels together, almost arbitrarily, for dealing with the complexities of real data. In particular, we propose various techniques for selecting the "best" subset of genetic predictors for a specific phenotype (or set of phenotypes). At the same time, we may control for complex, non-linear relationships between phenotypes and additional (non-genetic) covariates as well as accounting for any residual correlation that exists among multiple phenotypes. Both of these additional modelling components are shown to potentially aid in detecting the underlying genetic signal. We may also account for uncertainty regarding missing genotype data. Indeed, at the heart of our approach is a novel method for reconstructing unobserved haplotypes and/or inferring the values of missing genotypes. This can be deployed independently or, alternatively, it can be fully integrated into arbitrary genotype- or haplotype-based association models such that the missing data and the association model are "estimated" simultaneously. The impact of such simultaneous analysis on inferences drawn from the association model is shown to be potentially significant. Our modelling components are packaged as an "add-on" interface to the widely used WinBUGS software, which allows Markov chain Monte Carlo analysis of a wide range of statistical models. We illustrate their use with a series of increasingly complex analyses conducted on simulated data based on a real pharmacogenetic example.

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Mesh:

Year:  2006        PMID: 16544290     DOI: 10.1002/gepi.20140

Source DB:  PubMed          Journal:  Genet Epidemiol        ISSN: 0741-0395            Impact factor:   2.135


  35 in total

1.  Localizing putative markers in genetic association studies by incorporating linkage disequilibrium into bayesian hierarchical models.

Authors:  Brooke L Fridley; Gregory D Jenkins
Journal:  Hum Hered       Date:  2010-06-10       Impact factor: 0.444

2.  Automated covariate selection and Bayesian model averaging in population PK/PD models.

Authors:  David J Lunn
Journal:  J Pharmacokinet Pharmacodyn       Date:  2007-11-08       Impact factor: 2.745

Review 3.  Bayesian statistical methods for genetic association studies.

Authors:  Matthew Stephens; David J Balding
Journal:  Nat Rev Genet       Date:  2009-10       Impact factor: 53.242

4.  Identifying environmental correlates of intraspecific genetic variation.

Authors:  K A Harrisson; J D L Yen; A Pavlova; M L Rourke; D Gilligan; B A Ingram; J Lyon; Z Tonkin; P Sunnucks
Journal:  Heredity (Edinb)       Date:  2016-06-08       Impact factor: 3.821

Review 5.  Gene set analysis of SNP data: benefits, challenges, and future directions.

Authors:  Brooke L Fridley; Joanna M Biernacka
Journal:  Eur J Hum Genet       Date:  2011-04-13       Impact factor: 4.246

6.  A Bayesian Partitioning Model for the Detection of Multilocus Effects in Case-Control Studies.

Authors:  Debashree Ray; Xiang Li; Wei Pan; James S Pankow; Saonli Basu
Journal:  Hum Hered       Date:  2015-06-03       Impact factor: 0.444

7.  Mixture modelling as an exploratory framework for genotype-trait associations.

Authors:  Kinman Au; Rongheng Lin; Andrea S Foulkes
Journal:  J R Stat Soc Ser C Appl Stat       Date:  2011-05       Impact factor: 1.864

8.  Bayesian mixture modeling of gene-environment and gene-gene interactions.

Authors:  Jon Wakefield; Frank De Vocht; Rayjean J Hung
Journal:  Genet Epidemiol       Date:  2010-01       Impact factor: 2.135

9.  A non-synonymous variant in ADH1B is strongly associated with prenatal alcohol use in a European sample of pregnant women.

Authors:  Luisa Zuccolo; Nicola Fitz-Simon; Ron Gray; Susan M Ring; Kapil Sayal; George Davey Smith; Sarah J Lewis
Journal:  Hum Mol Genet       Date:  2009-08-17       Impact factor: 6.150

10.  Application of two machine learning algorithms to genetic association studies in the presence of covariates.

Authors:  Bareng A S Nonyane; Andrea S Foulkes
Journal:  BMC Genet       Date:  2008-11-14       Impact factor: 2.797

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