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A Covering Method for Detecting Genetic Associations between Rare Variants and Common Phenotypes

Author(s)
Bhatia, Gaurav; Bansal, Vikas; Harismendy, Olivier; Schork, Nicholas J.; Topol, Eric J.; Frazer, Kelly; Bafna, Vineet; ... Show more Show less
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Abstract
Genome wide association (GWA) studies, which test for association between common genetic markers and a disease phenotype, have shown varying degrees of success. While many factors could potentially confound GWA studies, we focus on the possibility that multiple, rare variants (RVs) may act in concert to influence disease etiology. Here, we describe an algorithm for RV analysis, RARECOVER. The algorithm combines a disparate collection of RVs with low effect and modest penetrance. Further, it does not require the rare variants be adjacent in location. Extensive simulations over a range of assumed penetrance and population attributable risk (PAR) values illustrate the power of our approach over other published methods, including the collapsing and weighted-collapsing strategies. To showcase the method, we apply RARECOVER to re-sequencing data from a cohort of 289 individuals at the extremes of Body Mass Index distribution (NCT00263042). Individual samples were re-sequenced at two genes, FAAH and MGLL, known to be involved in endocannabinoid metabolism (187Kbp for 148 obese and 150 controls). The RARECOVER analysis identifies exactly one significantly associated region in each gene, each about 5 Kbp in the upstream regulatory regions. The data suggests that the RVs help disrupt the expression of the two genes, leading to lowered metabolism of the corresponding cannabinoids. Overall, our results point to the power of including RVs in measuring genetic associations.
Date issued
2010-10
URI
http://hdl.handle.net/1721.1/64465
Department
Whitaker College of Health Sciences and Technology; Harvard University--MIT Division of Health Sciences and Technology
Journal
PLoS Computational Biology
Publisher
Public Library of Science
Citation
Bhatia, Gaurav et al. "A Covering Method for Detecting Genetic Associations between Rare Variants and Common Phenotypes." PLoS Comput Biol, 2010 6(10): e1000954.
Version: Final published version
ISSN
1553-7358
1553-734X

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