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PoMo: An Allele Frequency-based Approach for Species Tree Estimation

Nicola De Maio, Dominik Schrempf, Carolin Kosiol
doi: https://doi.org/10.1101/016360
Nicola De Maio
1Institut für Populationsgenetik, Vetmeduni Vienna, Wien, 1210, Austria
2Vienna Graduate School of Population Genetics, Wien, Austria
3Nuffield Department of Clinical Medicine, University of Oxford, Oxford, OX3 7BN, UK
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Dominik Schrempf
1Institut für Populationsgenetik, Vetmeduni Vienna, Wien, 1210, Austria
2Vienna Graduate School of Population Genetics, Wien, Austria
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Carolin Kosiol
1Institut für Populationsgenetik, Vetmeduni Vienna, Wien, 1210, Austria
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Abstract

Incomplete lineage sorting can cause incongruencies of the overall species-level phylogenetic tree with the phylogenetic trees for individual genes or genomic segments. If these incongruencies are not accounted for, it is possible to incur several biases in species tree estimation. Here, we present a simple maximum likelihood approach that accounts for ancestral variation and incomplete lineage sorting. We use a POlymorphisms-aware phylogenetic MOdel (PoMo) that we have recently shown to efficiently estimate mutation rates and fixation biases from within and between-species variation data. We extend this model to perform efficient estimation of species trees. We test the performance of PoMo in several different scenarios of incomplete lineage sorting using simulations and compare it with existing methods both in accuracy and computational speed. In contrast to other approaches, our model does not use coalescent theory but is allele-frequency based. We show that PoMo is well suited for genome-wide species tree estimation and that on such data it is more accurate than previous approaches.

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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-NC-ND 4.0 International license.
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Posted June 03, 2015.
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PoMo: An Allele Frequency-based Approach for Species Tree Estimation
Nicola De Maio, Dominik Schrempf, Carolin Kosiol
bioRxiv 016360; doi: https://doi.org/10.1101/016360
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PoMo: An Allele Frequency-based Approach for Species Tree Estimation
Nicola De Maio, Dominik Schrempf, Carolin Kosiol
bioRxiv 016360; doi: https://doi.org/10.1101/016360

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