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Efficient Association Study Design Via Power-Optimized Tag SNP Selection

Cited 16 time in Web of Science Cited 18 time in Scopus
Authors

Han, B.; Kang, H. M.; Seo, M. S.; Zaitlen, N.; Eskin, E.

Issue Date
2008-11
Publisher
Blackwell Publishing Inc.
Citation
Annals of Human Genetics, Vol.72 No.6, pp.834-847
Abstract
Discovering statistical correlation between causal genetic variation and clinical traits through association studies is an important method for identifying the genetic basis of human diseases. Since fully resequencing a cohort is prohibitively costly, genetic association studies take advantage of local correlation structure (or linkage disequilibrium) between single nucleotide polymorphisms (SNPs) by selecting a subset of SNPs to be genotyped (tag SNPs). While many current association studies are performed using commercially available high-throughput genotyping products that define a set of tag SNPs, choosing tag SNPs remains an important problem for both custom follow-up studies as well as designing the high-throughput genotyping products themselves. The most widely used tag SNP selection method optimizes the correlation between SNPs (r(2)). However, tag SNPs chosen based on an r(2) criterion do not necessarily maximize the statistical power of an association study. We propose a study design framework that chooses SNPs to maximize power and efficiently measures the power through empirical simulation. Empirical results based on the HapMap data show that our method gains considerable power over a widely used r(2)-based method, or equivalently reduces the number of tag SNPs required to attain the desired power of a study. Our power-optimized 100k whole genome tag set provides equivalent power to the Affymetrix 500k chip for the CEU population. For the design of custom follow-up studies, our method provides up to twice the power increase using the same number of tag SNPs as r(2)-based methods. Our method is publicly available via web server at external link type http://design.cs.ucla.edu.
ISSN
0003-4800
URI
https://hdl.handle.net/10371/191660
DOI
https://doi.org/10.1111/j.1469-1809.2008.00469.x
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  • College of Medicine
  • Department of Medicine
Research Area Bioinformatics, Computational Biology, Genomics, Human Leukocyte Antigen, Statistical Genetics

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