Integrating epidemiology and genetic association: the challenge of gene–environment interaction
Open Access
- 20 July 2005
- journal article
- review article
- Published by The Royal Society in Philosophical Transactions Of The Royal Society B-Biological Sciences
- Vol. 360 (1460) , 1609-1616
- https://doi.org/10.1098/rstb.2005.1692
Abstract
Recent advances in human genomics have made it possible to better understand the genetic basis of disease. In addition, genetic association studies can also elucidate the mechanisms by which ‘non-genetic’ exogenous and endogenous exposures influence the risk of disease. This is true both of studies that assess the marginal effect of a single gene and studies that look at the joint effect of genes and environmental exposures. For example, gene variants that are known to alter enzyme function or level can serve as surrogates for long-term biomarker levels that are impractical or impossible to measure on many subjects. Evidence that genetic variants modify the effect of an established risk factor may help specify the risk factor's biologically active components. We illustrate these ideas with several examples and discuss design and analysis challenges, particularly for studies of gene–environment interaction. We argue that to increase the power to detect interaction effects and limit the number of false positive results, large sample sizes will be needed, which are currently only available through planned collaborative efforts. Such collaborations also ensure a common approach to measuring variation at a genetic locus, avoiding a problem that has led to difficulties when comparing results from genetic association studies.Keywords
This publication has 52 references indexed in Scilit:
- Genetic Structure, Self-Identified Race/Ethnicity, and Confounding in Case-Control Association StudiesAmerican Journal of Human Genetics, 2005
- Assessing the impact of population stratification on genetic association studiesNature Genetics, 2004
- Estimation of magnitude in gene–environment interactions in the presence of measurement errorStatistics in Medicine, 2004
- Commentary: The concept of 'Mendelian Randomization'International Journal of Epidemiology, 2004
- Commentary: Katan's remarkable foresight: genes and causality 18 years onInternational Journal of Epidemiology, 2004
- Commentary: Mendelian randomization and gene-environment interactionInternational Journal of Epidemiology, 2004
- Association Mapping in Structured PopulationsAmerican Journal of Human Genetics, 2000
- Effect modification and the limits of biological inference from epidemiologic dataJournal of Clinical Epidemiology, 1991
- APOUPOPROTEIN E ISOFORMS, SERUM CHOLESTEROL, AND CANCERThe Lancet, 1986
- Sick Individuals and Sick PopulationsInternational Journal of Epidemiology, 1985