| Literature DB >> 18466449 |
Soonil Kwon1, Dai Wang, Xiuqing Guo.
Abstract
Genome-wide association studies usually involve several hundred thousand of single-nucleotide polymorphisms (SNPs). Conventional approaches face challenges when there are enormous number of SNPs but a relatively small number of samples and, in some cases, are not feasible. We introduce here an iterative Bayesian variable selection method that provides a unique tool for association studies with a large number of SNPs (p) but a relatively small sample size (n). We applied this method to the simulated case-control sample provided by the Genetic Analysis Workshop 15 and compared its performance with stepwise variable selection method. We demonstrated that the results of iterative Bayesian variable selection applied to when p t n are as comparable as those of stepwise variable selection implemented to when n t p. When n > p, the iterative Bayesian variable selection performs better than stepwise variable selection does.Entities:
Year: 2007 PMID: 18466449 PMCID: PMC2367600 DOI: 10.1186/1753-6561-1-s1-s109
Source DB: PubMed Journal: BMC Proc ISSN: 1753-6561
Figure 1IBVS in DS2. All three panels in DS2 have 100 samples (50 cases and 50 controls) and 674 SNPs.
Figure 2SVS in DS1. Total panel has 1500 cases and 2000 controls; female panel, ~1400 cases and ~1000 controls; and male panel, ~680 cases and ~1000 controls. All panels have 674 SNPs.
Figure 3IBVS in DS3. All three panels in DS3 have 100 samples (50 cases and 50 controls) and 50 SNPs.
Figure 4SVS in DS3. All three panels in DS3 have 100 samples (50 cases and 50 controls) and 50 SNPs.