| Literature DB >> 17160900 |
John V Pearson1, Matthew J Huentelman, Rebecca F Halperin, Waibhav D Tembe, Stacey Melquist, Nils Homer, Marcel Brun, Szabolcs Szelinger, Keith D Coon, Victoria L Zismann, Jennifer A Webster, Thomas Beach, Sigrid B Sando, Jan O Aasly, Reinhard Heun, Frank Jessen, Heike Kolsch, Magdalini Tsolaki, Makrina Daniilidou, Eric M Reiman, Andreas Papassotiropoulos, Michael L Hutton, Dietrich A Stephan, David W Craig.
Abstract
We report the development and validation of experimental methods, study designs, and analysis software for pooling-based genomewide association (GWA) studies that use high-throughput single-nucleotide-polymorphism (SNP) genotyping microarrays. We first describe a theoretical framework for establishing the effectiveness of pooling genomic DNA as a low-cost alternative to individually genotyping thousands of samples on high-density SNP microarrays. Next, we describe software called "GenePool," which directly analyzes SNP microarray probe intensity data and ranks SNPs by increased likelihood of being genetically associated with a trait or disorder. Finally, we apply these methods to experimental case-control data and demonstrate successful identification of published genetic susceptibility loci for a rare monogenic disease (sudden infant death with dysgenesis of the testes syndrome), a rare complex disease (progressive supranuclear palsy), and a common complex disease (Alzheimer disease) across multiple SNP genotyping platforms. On the basis of these theoretical calculations and their experimental validation, our results suggest that pooling-based GWA studies are a logical first step for determining whether major genetic associations exist in diseases with high heritability.Entities:
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Year: 2006 PMID: 17160900 PMCID: PMC1785308 DOI: 10.1086/510686
Source DB: PubMed Journal: Am J Hum Genet ISSN: 0002-9297 Impact factor: 11.025