Literature DB >> 24801060

The role of environmental heterogeneity in meta-analysis of gene-environment interactions with quantitative traits.

Shi Li1, Bhramar Mukherjee, Jeremy M G Taylor, Kenneth M Rice, Xiaoquan Wen, John D Rice, Heather M Stringham, Michael Boehnke.   

Abstract

With challenges in data harmonization and environmental heterogeneity across various data sources, meta-analysis of gene-environment interaction studies can often involve subtle statistical issues. In this paper, we study the effect of environmental covariate heterogeneity (within and between cohorts) on two approaches for fixed-effect meta-analysis: the standard inverse-variance weighted meta-analysis and a meta-regression approach. Akin to the results in Simmonds and Higgins (), we obtain analytic efficiency results for both methods under certain assumptions. The relative efficiency of the two methods depends on the ratio of within versus between cohort variability of the environmental covariate. We propose to use an adaptively weighted estimator (AWE), between meta-analysis and meta-regression, for the interaction parameter. The AWE retains full efficiency of the joint analysis using individual level data under certain natural assumptions. Lin and Zeng (2010a, b) showed that a multivariate inverse-variance weighted estimator retains full efficiency as joint analysis using individual level data, if the estimates with full covariance matrices for all the common parameters are pooled across all studies. We show consistency of our work with Lin and Zeng (2010a, b). Without sacrificing much efficiency, the AWE uses only univariate summary statistics from each study, and bypasses issues with sharing individual level data or full covariance matrices across studies. We compare the performance of the methods both analytically and numerically. The methods are illustrated through meta-analysis of interaction between Single Nucleotide Polymorphisms in FTO gene and body mass index on high-density lipoprotein cholesterol data from a set of eight studies of type 2 diabetes.
© 2014 WILEY PERIODICALS, INC.

Entities:  

Keywords:  adaptively weighted estimator; covariate heterogeneity; gene-environment interaction; individual patient data; meta-analysis; meta-regression; power calculation

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Year:  2014        PMID: 24801060      PMCID: PMC4108593          DOI: 10.1002/gepi.21810

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


  37 in total

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Authors:  W W Piegorsch; C R Weinberg; J A Taylor
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6.  Uses of ecologic analysis in epidemiologic research.

Authors:  H Morgenstern
Journal:  Am J Public Health       Date:  1982-12       Impact factor: 9.308

7.  Aggregate-data estimation of an individual patient data linear random effects meta-analysis with a patient covariate-treatment interaction term.

Authors:  Stephanie A Kovalchik
Journal:  Biostatistics       Date:  2012-09-21       Impact factor: 5.899

8.  Meta-analysis of genome-wide association studies: no efficiency gain in using individual participant data.

Authors:  D Y Lin; D Zeng
Journal:  Genet Epidemiol       Date:  2010-01       Impact factor: 2.135

9.  Cohorts for Heart and Aging Research in Genomic Epidemiology (CHARGE) Consortium: Design of prospective meta-analyses of genome-wide association studies from 5 cohorts.

Authors:  Bruce M Psaty; Christopher J O'Donnell; Vilmundur Gudnason; Kathryn L Lunetta; Aaron R Folsom; Jerome I Rotter; André G Uitterlinden; Tamara B Harris; Jacqueline C M Witteman; Eric Boerwinkle
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10.  A basic introduction to fixed-effect and random-effects models for meta-analysis.

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1.  Meta-analysis of Complex Diseases at Gene Level with Generalized Functional Linear Models.

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Journal:  Genetics       Date:  2015-12-29       Impact factor: 4.562

2.  Subset-Based Analysis Using Gene-Environment Interactions for Discovery of Genetic Associations across Multiple Studies or Phenotypes.

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Review 3.  Opportunities and Challenges for Environmental Exposure Assessment in Population-Based Studies.

Authors:  Chirag J Patel; Jacqueline Kerr; Duncan C Thomas; Bhramar Mukherjee; Beate Ritz; Nilanjan Chatterjee; Marta Jankowska; Juliette Madan; Margaret R Karagas; Kimberly A McAllister; Leah E Mechanic; M Daniele Fallin; Christine Ladd-Acosta; Ian A Blair; Susan L Teitelbaum; Christopher I Amos
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2017-07-14       Impact factor: 4.254

4.  Functional logistic regression approach to detecting gene by longitudinal environmental exposure interaction in a case-control study.

Authors:  Peng Wei; Hongwei Tang; Donghui Li
Journal:  Genet Epidemiol       Date:  2014-09-12       Impact factor: 2.135

5.  Meta-analysis of gene-environment interaction exploiting gene-environment independence across multiple case-control studies.

Authors:  Jason P Estes; John D Rice; Shi Li; Heather M Stringham; Michael Boehnke; Bhramar Mukherjee
Journal:  Stat Med       Date:  2017-07-25       Impact factor: 2.373

6.  Pleiotropy analysis of quantitative traits at gene level by multivariate functional linear models.

Authors:  Yifan Wang; Aiyi Liu; James L Mills; Michael Boehnke; Alexander F Wilson; Joan E Bailey-Wilson; Momiao Xiong; Colin O Wu; Ruzong Fan
Journal:  Genet Epidemiol       Date:  2015-03-23       Impact factor: 2.135

7.  Interaction between β-hexachlorocyclohexane and ADIPOQ genotypes contributes to the risk of type 2 diabetes mellitus in East Chinese adults.

Authors:  Shushu Li; Xichen Wang; Lu Yang; Shen Yao; Ruyang Zhang; Xue Xiao; Zhan Zhang; Li Wang; Qiujin Xu; Shou-Lin Wang
Journal:  Sci Rep       Date:  2016-11-24       Impact factor: 4.379

8.  Approaches to detect genetic effects that differ between two strata in genome-wide meta-analyses: Recommendations based on a systematic evaluation.

Authors:  Thomas W Winkler; Anne E Justice; L Adrienne Cupples; Florian Kronenberg; Zoltán Kutalik; Iris M Heid
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  8 in total

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