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Efficiency and power in genetic association studies

Abstract

We investigated selection and analysis of tag SNPs for genome-wide association studies by specifically examining the relationship between investment in genotyping and statistical power. Do pairwise or multimarker methods maximize efficiency and power? To what extent is power compromised when tags are selected from an incomplete resource such as HapMap? We addressed these questions using genotype data from the HapMap ENCODE project, association studies simulated under a realistic disease model, and empirical correction for multiple hypothesis testing. We demonstrate a haplotype-based tagging method that uniformly outperforms single-marker tests and methods for prioritization that markedly increase tagging efficiency. Examining all observed haplotypes for association, rather than just those that are proxies for known SNPs, increases power to detect rare causal alleles, at the cost of reduced power to detect common causal alleles. Power is robust to the completeness of the reference panel from which tags are selected. These findings have implications for prioritizing tag SNPs and interpreting association studies.

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Figure 1: Distributions of the test statistic in a typical ENCODE region.
Figure 2: Efficiency afforded by a tagging approach.
Figure 3: Efficiency and power for various tagging strategies.
Figure 4: Effect of tagging from an incomplete reference panel on testing burden and power.
Figure 5: Effect of exhaustive haplotype tests on statistical power.

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Acknowledgements

We thank N. Patterson, E. Lander, J. Hirschhorn and S. Schaffner for discussions; J. Barrett and J. Maller for their implementation of Tagger in Haploview; the Broad Systems Group for technical assistance; and members of the Analysis group of the International HapMap Project for many useful interactions. D.A. is a Charles E. Culpeper Scholar of the Rockefeller Brothers Fund and a Burroughs Wellcome Fund Clinical Scholar in Translational Research. This work was supported by grants from the US National Institutes of Health.

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Correspondence to Mark J Daly or David Altshuler.

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Supplementary information

Supplementary Fig. 1

Genotype relative risk as a function of the frequency of the causal variant. (PDF 3 kb)

Supplementary Fig. 2

Absolute power to detect association for all common causal variants as a function of the number of proxies in the complete data. (PDF 3 kb)

Supplementary Fig. 3

Exhaustive haplotype testing on tags picked from incomplete reference panels. (PDF 7 kb)

Supplementary Note

Empirical comparison of null simulations to explicit permutation testing. (PDF 100 kb)

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de Bakker, P., Yelensky, R., Pe'er, I. et al. Efficiency and power in genetic association studies. Nat Genet 37, 1217–1223 (2005). https://doi.org/10.1038/ng1669

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