Abstract

Phylogeographic methods have attracted a lot of attention in recent years, stressing the need to provide a solid statistical framework for many existing methodologies so as to draw statistically reliable inferences. Here, we take a flexible fully Bayesian approach by reducing the problem to a clustering framework, whereby the population distribution can be explained by a set of migrations, forming geographically stable population clusters. These clusters are such that they are consistent with a fixed number of migrations on the corresponding (unknown) subdivided coalescent tree. Our methods rely upon a clustered population distribution, and allow for inclusion of various covariates (such as phenotype or climate information) at little additional computational cost. We illustrate our methods with an example from weevil mitochondrial DNA sequences from the Iberian peninsula.

Keywords

Coalescent theoryCluster analysisComputer sciencePopulationBayesian probabilityPhylogeographyEvolutionary biologyData miningEconometricsPhylogenetic treeMachine learningArtificial intelligenceBiologyMathematicsGenetics

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Publication Info

Year
2011
Type
article
Volume
1
Issue
6
Pages
909-921
Citations
36
Access
Closed

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Ioanna Manolopoulou, Lorenza Legarreta, Brent C. Emerson et al. (2011). A Bayesian approach to phylogeographic clustering. Interface Focus , 1 (6) , 909-921. https://doi.org/10.1098/rsfs.2011.0054

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DOI
10.1098/rsfs.2011.0054