A Bayesian Partitioning Model for the Detection of Multilocus Effects in Case-Control Studies.

Pubmed ID: 26044550

Pubmed Central ID: PMC4499013

Journal: Human heredity

Publication Date: Jan. 1, 2015

MeSH Terms: Humans, Case-Control Studies, Bayes Theorem, Polymorphism, Single Nucleotide, Genome-Wide Association Study, Computer Simulation, Diabetes Mellitus, Type 2, Atherosclerosis, Models, Genetic

Grants: HHSN268201100005C, HHSN268201100006C, HHSN268201100007C, HHSN268201100008C, HHSN268201100009C, HHSN268201100010C, HHSN268201100011C, HHSN268201100012C, 268201100011C, 268201100005C, 268201100007C, 268201100012C, 268201100008C, R21 DK089351, R21DK089351, 268201100009C, 268201100006C, 268201100010C, R01DA033958, R01 DA033958, HHSN268201100009I, HHSN268201100005G, HHSN268201100008I, HHSN268201100011I, HHSN268201100005I, HHSN268201100007I

Authors: Pankow JS, Li X, Ray D, Pan W, Basu S

Cite As: Ray D, Li X, Pan W, Pankow JS, Basu S. A Bayesian Partitioning Model for the Detection of Multilocus Effects in Case-Control Studies. Hum Hered 2015;79(2):69-79. Epub 2015 Jun 3.

Studies:

Abstract

BACKGROUND: Genome-wide association studies (GWASs) have identified hundreds of genetic variants associated with complex diseases, but these variants appear to explain very little of the disease heritability. The typical single-locus association analysis in a GWAS fails to detect variants with small effect sizes and to capture higher-order interaction among these variants. Multilocus association analysis provides a powerful alternative by jointly modeling the variants within a gene or a pathway and by reducing the burden of multiple hypothesis testing in a GWAS. METHODS: Here, we propose a powerful and flexible dimension reduction approach to model multilocus association. We use a Bayesian partitioning model which clusters SNPs according to their direction of association, models higher-order interactions using a flexible scoring scheme and uses posterior marginal probabilities to detect association between the SNP set and the disease. RESULTS: We illustrate our method using extensive simulation studies and applying it to detect multilocus interaction in Atherosclerosis Risk in Communities (ARIC) GWAS with type 2 diabetes. CONCLUSION: We demonstrate that our approach has better power to detect multilocus interactions than several existing approaches. When applied to the ARIC study dataset with 9,328 individuals to study gene-based associations for type 2 diabetes, our method identified some novel variants not detected by conventional single-locus association analyses.