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A note on permutation tests for genetic association analysis of quantitative traits when variances are heterogeneous
Authors:Danielle Posthuma  Dirk‐Jan de Koning  Conor Dolan  Michael E. Goddard  Peter M. Visscher
Affiliation:1. Department of Biological Psychology, Vrije Universiteit, Amsterdam, The Netherlands;2. Department of Medical Genomics, Vrije Universiteit Medical Centre, Amsterdam, The Netherlands;3. Department of Functional Genomics, Vrije Universiteit, Amsterdam, The Netherlands;4. Division of Genetics and Genomics, Roslin Institute and R(D)SVS, University of Edinburgh, Roslin, UK;5. Department of Psychology, University of Amsterdam, Amsterdam, The Netherlands;6. Department of Land and Food Resources, University of Melbourne, Melbourne, Victoria, Australia;7. Department of Primary Industries, Victoria, Australia;8. Queensland Statistical Genetics, Queensland Institute of Medical Research, Brisbane, Australia
Abstract:The genetic dissection of quantitative traits, or endophenotypes, usually involves genetic linkage or association analysis in pedigrees and subsequent fine mapping association analysis in the population. The ascertainment procedure for quantitative traits often results in unequal variance of observations. For example, some phenotypes may be clinically measured whilst others are from self‐reports, or phenotypes may be the average of multiple measures but with the number of measurements varying. The resulting heterogeneity of variance poses no real problem for analysis, as long as it is properly modelled and thereby taken into account. However, if statistical significance is determined using an empirical permutation procedure, it is not obvious what the units of sampling are. We investigated a number of permutation approaches in a simulation study of an association analysis between a quantitative trait and a single nucleotide polymorphism. Our simulations were designed such that we knew the true p‐value of the test statistics. A number of permutation methods were compared from the regression of true on empirical p‐values and the precision of the empirical p‐values. We show that the best procedure involves an implicit adjustment of the original data for the effects in the model before permutation, and that other methods, some of which seemed appropriate a priori, are relatively biased. Genet. Epidemiol. 33:710–716, 2009. © 2009 Wiley‐Liss, Inc.
Keywords:empirical p‐value  permutation  WLS  OLS  genetic association
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