Gene-gene and gene-environment interactions in meta-analysis of genetic association studies

Extensive genetic studies have identified a large number of causal genetic variations in many human phenotypes; however, these could not completely explain heritability in complex diseases. Some researchers have proposed that the "missing heritability" may be attributable to gene-gene and...

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Veröffentlicht in:PloS one 2015-04, Vol.10 (4), p.e0124967-e0124967
Hauptverfasser: Lin, Chin, Chu, Chi-Ming, Lin, John, Yang, Hsin-Yi, Su, Sui-Lung
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description Extensive genetic studies have identified a large number of causal genetic variations in many human phenotypes; however, these could not completely explain heritability in complex diseases. Some researchers have proposed that the "missing heritability" may be attributable to gene-gene and gene-environment interactions. Because there are billions of potential interaction combinations, the statistical power of a single study is often ineffective in detecting these interactions. Meta-analysis is a common method of increasing detection power; however, accessing individual data could be difficult. This study presents a simple method that employs aggregated summary values from a "case" group to detect these specific interactions that based on rare disease and independence assumptions. However, these assumptions, particularly the rare disease assumption, may be violated in real situations; therefore, this study further investigated the robustness of our proposed method when it violates the assumptions. In conclusion, we observed that the rare disease assumption is relatively nonessential, whereas the independence assumption is an essential component. Because single nucleotide polymorphisms (SNPs) are often unrelated to environmental factors and SNPs on other chromosomes, researchers should use this method to investigate gene-gene and gene-environment interactions when they are unable to obtain detailed individual patient data.
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however, these could not completely explain heritability in complex diseases. Some researchers have proposed that the "missing heritability" may be attributable to gene-gene and gene-environment interactions. Because there are billions of potential interaction combinations, the statistical power of a single study is often ineffective in detecting these interactions. Meta-analysis is a common method of increasing detection power; however, accessing individual data could be difficult. This study presents a simple method that employs aggregated summary values from a "case" group to detect these specific interactions that based on rare disease and independence assumptions. However, these assumptions, particularly the rare disease assumption, may be violated in real situations; therefore, this study further investigated the robustness of our proposed method when it violates the assumptions. In conclusion, we observed that the rare disease assumption is relatively nonessential, whereas the independence assumption is an essential component. Because single nucleotide polymorphisms (SNPs) are often unrelated to environmental factors and SNPs on other chromosomes, researchers should use this method to investigate gene-gene and gene-environment interactions when they are unable to obtain detailed individual patient data.</abstract><cop>United States</cop><pub>Public Library of Science</pub><pmid>25923960</pmid><doi>10.1371/journal.pone.0124967</doi><oa>free_for_read</oa></addata></record>
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subjects Algorithms
Chromosome Mapping
Chromosomes
Environmental factors
Enzymes
Epidemiology
Epistasis, Genetic
Gene-Environment Interaction
Genetic analysis
Genetic Association Studies
Genetic diversity
Genetic Predisposition to Disease
Heritability
Humans
Life sciences
Lung cancer
Males
Medical research
Mens health
Meta-analysis
Methods
Models, Genetic
Phenotypes
Phenotypic variations
Polymorphism, Single Nucleotide
Population
Public health
Rare diseases
Research methodology
Researchers
Single-nucleotide polymorphism
Studies
Systematic review
Variables
Womens health
title Gene-gene and gene-environment interactions in meta-analysis of genetic association studies
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