Meta‐analysis of genome‐wide association studies: no efficiency gain in using individual participant data
- 21 October 2009
- journal article
- research article
- Published by Wiley in Genetic Epidemiology
- Vol. 34 (1) , 60-66
- https://doi.org/10.1002/gepi.20435
Abstract
To identify genetic variants with modest effects on complex human diseases, a growing number of networks or consortia are created for sharing data from multiple genome‐wide association studies on the same disease or related disorders. A central question in this enterprise is whether to obtain summary results or individual participant data from relevant studies. We show theoretically and numerically that meta‐analysis of summary results is statistically as efficient as joint analysis of individual participant data (provided that both analyses are performed properly under the same modeling assumptions). We illustrate this equivalence with case‐control data from the Finland‐United States Investigation of NIDDM Genetics (FUSION) study. Collating only summary results will increase the number and representativeness of available studies, simplify data collection and analysis, reduce resource utilization, and accelerate discovery. Genet. Epidemiol. 34:60–66, 2010.Keywords
This publication has 10 references indexed in Scilit:
- On the relative efficiency of using summary statistics versus individual-level data in meta-analysisBiometrika, 2010
- A framework for interpreting genome-wide association studies of psychiatric disordersMolecular Psychiatry, 2008
- Meta-analysis of genome-wide association data and large-scale replication identifies additional susceptibility loci for type 2 diabetesNature Genetics, 2008
- Methods for meta-analysis in genetic association studies: a review of their potential and pitfallsHuman Genetics, 2007
- Genome-Wide Association Analysis Identifies Loci for Type 2 Diabetes and Triglyceride LevelsScience, 2007
- Replication of Genome-Wide Association Signals in UK Samples Reveals Risk Loci for Type 2 DiabetesScience, 2007
- A Genome-Wide Association Study of Type 2 Diabetes in Finns Detects Multiple Susceptibility VariantsScience, 2007
- Principal components analysis corrects for stratification in genome-wide association studiesNature Genetics, 2006
- Comparison of meta-analysis versus analysis of variance of individual patient data.Published by JSTOR ,1998
- Theoretical StatisticsPublished by Taylor & Francis ,1979