Volume 26, Issue 17 p. 4562-4573
ORIGINAL ARTICLE

Demographic model selection using random forests and the site frequency spectrum

Megan L. Smith

Megan L. Smith

Department of Evolution, Ecology & Organismal Biology, The Ohio State University, Columbus, OH, USA

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Megan Ruffley

Megan Ruffley

Department of Biological Sciences, University of Idaho, Moscow, ID, USA

Biological Sciences, Institute for Bioinformatics and Evolutionary Studies (IBEST), University of Idaho, Moscow, ID, USA

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Anahí Espíndola

Anahí Espíndola

Department of Biological Sciences, University of Idaho, Moscow, ID, USA

Biological Sciences, Institute for Bioinformatics and Evolutionary Studies (IBEST), University of Idaho, Moscow, ID, USA

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David C. Tank

David C. Tank

Department of Biological Sciences, University of Idaho, Moscow, ID, USA

Biological Sciences, Institute for Bioinformatics and Evolutionary Studies (IBEST), University of Idaho, Moscow, ID, USA

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Jack Sullivan

Jack Sullivan

Department of Biological Sciences, University of Idaho, Moscow, ID, USA

Biological Sciences, Institute for Bioinformatics and Evolutionary Studies (IBEST), University of Idaho, Moscow, ID, USA

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Bryan C. Carstens

Corresponding Author

Bryan C. Carstens

Department of Evolution, Ecology & Organismal Biology, The Ohio State University, Columbus, OH, USA

Correspondence

Bryan C. Carstens, Department of Evolution, Ecology & Organismal Biology, The Ohio State University, Columbus, OH, USA.

Email: [email protected]

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First published: 30 June 2017
Citations: 36

Abstract

Phylogeographic data sets have grown from tens to thousands of loci in recent years, but extant statistical methods do not take full advantage of these large data sets. For example, approximate Bayesian computation (ABC) is a commonly used method for the explicit comparison of alternate demographic histories, but it is limited by the “curse of dimensionality” and issues related to the simulation and summarization of data when applied to next-generation sequencing (NGS) data sets. We implement here several improvements to overcome these difficulties. We use a Random Forest (RF) classifier for model selection to circumvent the curse of dimensionality and apply a binned representation of the multidimensional site frequency spectrum (mSFS) to address issues related to the simulation and summarization of large SNP data sets. We evaluate the performance of these improvements using simulation and find low overall error rates (~7%). We then apply the approach to data from Haplotrema vancouverense, a land snail endemic to the Pacific Northwest of North America. Fifteen demographic models were compared, and our results support a model of recent dispersal from coastal to inland rainforests. Our results demonstrate that binning is an effective strategy for the construction of a mSFS and imply that the statistical power of RF when applied to demographic model selection is at least comparable to traditional ABC algorithms. Importantly, by combining these strategies, large sets of models with differing numbers of populations can be evaluated.

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