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Bayesian inference analyses of the polygenic architecture of rheumatoid arthritis.

Stahl, Eli A; Wegmann, Daniel; Trynka, Gosia; Gutierrez-Achury, Javier; Do, Ron; Voight, Benjamin F; Kraft, Peter; Chen, Robert; Kallberg, Henrik J; Kurreeman, Fina A S; Diabetes_Genetics_Replication_and_Meta-analysis_Consortium; Myocardial_Infarction_Genetics_Consortium; Kathiresan, Sekar; Wijmenga, Cisca; Gregersen, Peter K; Alfredsson, Lars; Siminovitch, Katherine A; Worthington, Jane; de Bakker, Paul I W; Raychaudhuri, Soumya; Plenge, Robert M

Nature genetics. 2012;44(5):482-489.

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Abstract

The genetic architectures of common, complex diseases are largely uncharacterized. We modeled the genetic architecture underlying genome-wide association study (GWAS) data for rheumatoid arthritis and developed a new method using polygenic risk-score analyses to infer the total liability-scale variance explained by associated GWAS SNPs. Using this method, we estimated that, together, thousands of SNPs from rheumatoid arthritis GWAS explain an additional 20% of disease risk (excluding known associated loci). We further tested this method on datasets for three additional diseases and obtained comparable estimates for celiac disease (43% excluding the major histocompatibility complex), myocardial infarction and coronary artery disease (48%) and type 2 diabetes (49%). Our results are consistent with simulated genetic models in which hundreds of associated loci harbor common causal variants and a smaller number of loci harbor multiple rare causal variants. These analyses suggest that GWAS will continue to be highly productive for the discovery of additional susceptibility loci for common diseases.

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Record metadata

Manchester eScholar ID:
uk-ac-man-scw:159012
Created by:
Ingram, Mary
Created:
16th April, 2012, 14:09:47
Last modified by:
Ingram, Mary
Last modified:
29th January, 2015, 08:44:22

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