Abstract
BACKGROUND: With the improvement of genotyping technologies and the exponentially growing number of available markers, case-control genome-wide association studies promise to be a key tool for investigation of complex diseases. However new analytical methods have to be developed to face the problems induced by this data scale-up, such as statistical multiple testing, data quality control and computational tractability. RESULTS: We present a novel method to analyze genome-wide association studies results. The algorithm is based on a Bayesian model that integrates genotyping errors and genomic structure dependencies. p-values are assigned to genomic regions termed bins, which are defined from a gene-biased partitioning of the genome, and the false-discovery rate is estimated. We have applied this algorithm to data coming from three genome-wide association studies of Multiple Sclerosis. CONCLUSION: The method practically overcomes the scale-up problems and permits to identify new putative regions statistically associated with the disease.
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CITATION STYLE
Omont, N., Forner, K., Lamarine, M., Martin, G., Képès, F., & Wojcik, J. (2008). Gene-based bin analysis of genome-wide association studies. BMC Proceedings, 2(S4). https://doi.org/10.1186/1753-6561-2-s4-s6
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