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GLOSSI: a method to assess the association of genetic loci-sets with complex diseases
Authors:High-Seng Chai  Hugues Sicotte  Kent R Bailey  Stephen T Turner  Yan W Asmann  Jean-Pierre A Kocher
Institution:(1) Department of Health Sciences Research, Mayo Clinic College of Medicine, Rochester, New York, USA;(2) Department of Medicine, Mayo Clinic College of Medicine, Rochester, New York, USA
Abstract:

Background  

The developments of high-throughput genotyping technologies, which enable the simultaneous genotyping of hundreds of thousands of single nucleotide polymorphisms (SNP) have the potential to increase the benefits of genetic epidemiology studies. Although the enhanced resolution of these platforms increases the chance of interrogating functional SNPs that are themselves causative or in linkage disequilibrium with causal SNPs, commonly used single SNP-association approaches suffer from serious multiple hypothesis testing problems and provide limited insights into combinations of loci that may contribute to complex diseases. Drawing inspiration from Gene Set Enrichment Analysis developed for gene expression data, we have developed a method, named GLOSSI (Gene-loci Set Analysis), that integrates prior biological knowledge into the statistical analysis of genotyping data to test the association of a group of SNPs (loci-set) with complex disease phenotypes. The most significant loci-sets can be used to formulate hypotheses from a functional viewpoint that can be validated experimentally.
Keywords:
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