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Inferring Continuous and Discrete Population Genetic Structure Across Space

Gideon Bradburd, Graham Coop, Peter Ralph
doi: https://doi.org/10.1101/189688
Gideon Bradburd
Michigan State University;
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  • For correspondence: bradburd@msu.edu
Graham Coop
University of California: Davis;
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Peter Ralph
University of Oregon
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Abstract

A classic problem in population genetics is the characterization of discrete population structure in the presence of continuous patterns of genetic differentiation. Especially when sampling is discontinuous, the use of clustering or assignment methods may incorrectly ascribe differentiation due to continuous processes (e.g., geographic isolation by distance) to discrete processes, such as geographic, ecological, or reproductive barriers between populations. This reflects a shortcoming of current methods for inferring and visualizing population structure when applied to genetic data deriving from geographically distributed populations. Here, we present a statistical framework for the simultaneous inference of continuous and discrete patterns of population structure. The method estimates ancestry proportions for each sample from a set of two-dimensional population layers, and, within each layer, estimates a rate at which relatedness decays with distance. This thereby explicitly addresses the “clines versus cluster” problem in modeling population genetic variation. The method produces useful descriptions of structure in genetic relatedness in situations where separated, geographically distributed populations interact, as after a range expansion or secondary contact. We demonstrate the utility of this approach using simulations and by applying it to empirical datasets of poplars and black bears in North America.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-ND 4.0 International license.
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  • Posted September 15, 2017.

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Inferring Continuous and Discrete Population Genetic Structure Across Space
Gideon Bradburd, Graham Coop, Peter Ralph
bioRxiv 189688; doi: https://doi.org/10.1101/189688
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Inferring Continuous and Discrete Population Genetic Structure Across Space
Gideon Bradburd, Graham Coop, Peter Ralph
bioRxiv 189688; doi: https://doi.org/10.1101/189688

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