Literature DB >> 15696502

Mixed modelling to characterize genotype-phenotype associations.

A S Foulkes1, M Reilly, L Zhou, M Wolfe, D J Rader.   

Abstract

We propose using mixed effects models to characterize the association between multiple gene polymorphisms, environmental factors and measures of disease progression. Characterizing high-order gene-gene and gene-environment interactions presents an analytic challenge due to the large number of candidate genes and the complex, undescribed interactions among them. Several approaches have been proposed recently to reduce the number of candidate genes and post hoc approaches to identify gene-gene interactions are described. However, these approaches may be inadequate for identifying high-order interactions in the absence of main effects and generally do not permit us to control for potential confounders. We describe how mixed effects models and related testing procedures overcome these limitations and apply this approach to data from a cohort of subjects at risk for cardiovascular disease. Four (4) genetic polymorphisms in three genes of the same gene family are considered. The proposed modelling approach allows us first to test whether there is a significant genetic contribution to the variability observed in our disease outcome. This contribution may be through main effects of multi-locus genotypes or through an interaction between genotype and environmental factors. This approach also enables us to identify specific multi-locus genotypes that interact with environmental factors in predicting the outcome. Mixed effects models provide a flexible statistical framework for controlling for potential confounders and identifying interactions among multiple genes and environmental factors that explain the variability in measures of disease progression. Copyright (c) 2004 John Wiley & Sons, Ltd.

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Year:  2005        PMID: 15696502     DOI: 10.1002/sim.1965

Source DB:  PubMed          Journal:  Stat Med        ISSN: 0277-6715            Impact factor:   2.373


  9 in total

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Authors:  Kinman Au; Rongheng Lin; Andrea S Foulkes
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2.  A testing framework for identifying susceptibility genes in the presence of epistasis.

Authors:  Joshua Millstein; David V Conti; Frank D Gilliland; W James Gauderman
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3.  Clique-finding for heterogeneity and multidimensionality in biomarker epidemiology research: the CHAMBER algorithm.

Authors:  Richard A Mushlin; Stephen Gallagher; Aaron Kershenbaum; Timothy R Rebbeck
Journal:  PLoS One       Date:  2009-03-16       Impact factor: 3.240

4.  Mixed modeling and multiple imputation for unobservable genotype clusters.

Authors:  A S Foulkes; R Yucel; M P Reilly
Journal:  Stat Med       Date:  2008-07-10       Impact factor: 2.373

5.  Latent variable modeling paradigms for genotype-trait association studies.

Authors:  Yan Liu; Andrea S Foulkes
Journal:  Biom J       Date:  2011-09       Impact factor: 2.207

6.  Associations among race/ethnicity, ApoC-III genotypes, and lipids in HIV-1-infected individuals on antiretroviral therapy.

Authors:  Andrea S Foulkes; David A Wohl; Ian Frank; Elaine Puleo; Stephanie Restine; Megan L Wolfe; Michael P Dube; Pablo Tebas; Muredach P Reilly
Journal:  PLoS Med       Date:  2006-03       Impact factor: 11.069

7.  Mixed-effects models for joint modeling of sequence data in longitudinal studies.

Authors:  Yan Yan Wu; Laurent Briollais
Journal:  BMC Proc       Date:  2014-06-17

8.  Mixed modeling of meta-analysis P-values (MixMAP) suggests multiple novel gene loci for low density lipoprotein cholesterol.

Authors:  Andrea S Foulkes; Gregory J Matthews; Ujjwal Das; Jane F Ferguson; Rongheng Lin; Muredach P Reilly
Journal:  PLoS One       Date:  2013-02-06       Impact factor: 3.240

9.  A likelihood-based approach to mixed modeling with ambiguity in cluster identifiers.

Authors:  Andrea S Foulkes; Recai Yucel; Xiaohong Li
Journal:  Biostatistics       Date:  2008-03-14       Impact factor: 5.899

  9 in total

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