A Method for Meta-Analysis of Case-Control Genetic Association Studies Using Logistic Regression

Pantelis G. Bagos, Department of Cell Biology and Biophysics, Faculty of Biology, University of Athens, Greece and Department of Biomedical Informatics, University of Central Greece, Lamia, Greece
Georgios K. Nikolopoulos, Hellenic Centre for Disease Control and Prevention

Abstract

We propose here a simple and robust approach for meta-analysis of molecular association studies. Making use of the binary structure of the data, and by treating the genotypes as independent variables in a logistic regression, we apply a simple and commonly used methodology that performs satisfactorily, being at the same time very flexible. We present simple tests for detecting heterogeneity and we describe a random effects extension of the method in order to allow for between studies heterogeneity. We derive also simple tests for assessing the most plausible genetic model of inheritance, and its between-studies heterogeneity as well as adjusting for covariates. The methodology introduced here is easily extended in cases with polytomous or continuous outcomes as well as in cases with more than two alleles. We apply the methodology in several published meta-analyses of genetic association studies with very encouraging results. The main advantages of the proposed methodology is its flexibility and the ease of use, while at the same time covers almost every aspect of a meta-analysis providing overall estimates without the need of multiple comparisons. We anticipate that this simple method would be used in the future in meta-analyses of genetic association studies. A STATA command performing all the available computations is available at http://bioinformatics.biol.uoa.gr/~pbagos/metagen/.

Submitted: February 4, 2007 · Accepted: April 10, 2007 · Published: June 14, 2007

Recommended Citation

Bagos, Pantelis G. and Nikolopoulos, Georgios K. (2007) "A Method for Meta-Analysis of Case-Control Genetic Association Studies Using Logistic Regression," Statistical Applications in Genetics and Molecular Biology: Vol. 6 : Iss. 1, Article 17.
Available at: http://www.bepress.com/sagmb/vol6/iss1/art17

 
 
 
 

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