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Genetics. Published Articles Ahead of Print: April 3, 2006, Copyright © 2006
doi:10.1534/genetics.105.055335


A more recent version of this article appeared on July 1, 2006.
Originally published as Genetics Published Articles Ahead of Print on April 2, 2006.
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A general population-genetic model for the production by population structure of spurious genotype-phenotype associations in discrete, admixed, or spatially distributed populations

Noah A Rosenberg 1* and Magnus Nordborg 2

1 University of Michigan
2 USC

* To whom correspondence should be addressed. E-mail: rnoah{at}umich.edu.

Submitted on December 31, 2005
Revised on March 20, 2006
Accepted on 30 March 2006


   Abstract
In linkage disequilibrium mapping of genetic variants causally associated with phenotypes, spurious associations can potentially be generated by any of a variety of types of population structure. However, mathematical theory of the production of spurious associations has largely been restricted to population structure models that involve the sampling of individuals from a collection of discrete subpopulations. Here, we introduce a general model of spurious association in structured populations, appropriate whether the population structure involves discrete groups, admixture among such groups, or continuous variation across space. Under the assumptions of the model, we find that a single common principle - applicable to both the discrete and admixed settings as well as to spatial populations - gives a necessary and sufficient condition for the occurrence of spurious associations. Using a mathematical connection between the discrete and admixed cases, we show that in admixed populations, spurious associations are less severe than in corresponding mixtures of discrete subpopulations, especially when the variance of admixture across individuals is small. This observation, together with the results of simulations that examine the relative influences of various model parameters, has important implications for the design and analysis of genetic association studies in structured populations.

Key Words: admixture, clines, linkage disequilibrium, population stratification, spatial population genetics




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