Optimal selection of markers for validation or replication from genome‐wide association studies
- 4 April 2007
- journal article
- research article
- Published by Wiley in Genetic Epidemiology
- Vol. 31 (5) , 396-407
- https://doi.org/10.1002/gepi.20220
Abstract
With reductions in genotyping costs and the fast pace of improvements in genotyping technology, it is not uncommon for the individuals in a single study to undergo genotyping using several different platforms, where each platform may contain different numbers of markers selected via different criteria. For example, a set of cases and controls may be genotyped at markers in a small set of carefully selected candidate genes, and shortly thereafter, the same cases and controls may be used for a genome‐wide single nucleotide polymorphism (SNP) association study. After such initial investigations, often, a subset of “interesting” markers is selected for validation or replication. Specifically, by validation, we refer to the investigation of associations between the selected subset of markers and the disease in independent data. However, it is not obvious how to choose the best set of markers for this validation. There may be a prior expectation that some sets of genotyping data are more likely to contain real associations. For example, it may be more likely for markers in plausible candidate genes to show disease associations than markers in a genome‐wide scan. Hence, it would be desirable to select proportionally more markers from the candidate gene set. When a fixed number of markers are selected for validation, we propose an approach for identifying an optimal marker‐selection configuration by basing the approach on minimizing the stratified false discovery rate. We illustrate this approach using a case‐control study of colorectal cancer from Ontario, Canada, and we show that this approach leads to substantial reductions in the estimated false discovery rates in the Ontario dataset for the selected markers, as well as reductions in the expected false discovery rates for the proposed validation dataset. Genet. Epidemiol. 2007.Keywords
This publication has 16 references indexed in Scilit:
- Overcoming the Winner’s Curse: Estimating Penetrance Parameters from Case-Control DataAmerican Journal of Human Genetics, 2007
- Stratified false discovery control for large‐scale hypothesis testing with application to genome‐wide association studiesGenetic Epidemiology, 2006
- Using Linkage Genome Scans to Improve Power of Association in Genome ScansAmerican Journal of Human Genetics, 2006
- Joint analysis is more efficient than replication-based analysis for two-stage genome-wide association studiesNature Genetics, 2006
- Reduction of selection bias in genomewide studies by resamplingGenetic Epidemiology, 2005
- Large-Scale Simultaneous Hypothesis TestingJournal of the American Statistical Association, 2004
- Statistical significance for genomewide studiesProceedings of the National Academy of Sciences, 2003
- Multiple Hypothesis Testing in Microarray ExperimentsStatistical Science, 2003
- A Direct Approach to False Discovery RatesJournal of the Royal Statistical Society Series B: Statistical Methodology, 2002
- Empirical bayes methods and false discovery rates for microarraysGenetic Epidemiology, 2002