Literature DB >> 24060367

How low can you go? The effects of mutation rate on the accuracy of species-tree estimation.

Hayley C Lanier1, Huateng Huang, L Lacey Knowles.   

Abstract

Although species-tree methods have been widely adopted for multi-locus data, little consideration has been given to the source and character of the loci used in these approaches. Decisions about which loci to target in empirical studies are typically constrained by availability, technology and funds - characteristics that are not typically considered in simulation studies. As a result, most real-world datasets often combine one or two variable loci (such as mtDNA or chloroplast loci) with multiple lower-variation loci to estimate species trees. These locus selections impact the accuracy and the resolution of a phylogeny. Furthermore, the fact that using a larger sample of loci can result in lower posterior probabilities has been used as an excuse to drop loci from an analysis. Here we address these issues directly through a simulation approach designed to mimic situations arising in empirical datasets by combining loci with differing mutation rates. We show that low-variation loci can be utilized in species-tree analyses that account for gene-tree uncertainty (e.g., a Bayesian framework), whereas maximum likelihood approaches show no improvement in accuracy when low-variation loci are added. We demonstrate that limited phylogenetic signal associated with low-variation loci constrains gains in species-tree estimation accuracy when adding loci. Lastly, we demonstrate that the inclusion of only a handful of loci with higher mutation rates, and hence greater phylogenetic information content, can make a tremendous difference in the accuracy of species-tree estimates, suggesting that empiricists should consider the quality, and not just quantity, of loci in multi-locus phylogenetic analyses.
Copyright © 2013 Elsevier Inc. All rights reserved.

Keywords:  (*)BEAST; Locus variability; Multispecies coalescent; Phylogenetic accuracy; STEM; Sampling effort

Mesh:

Year:  2013        PMID: 24060367     DOI: 10.1016/j.ympev.2013.09.006

Source DB:  PubMed          Journal:  Mol Phylogenet Evol        ISSN: 1055-7903            Impact factor:   4.286


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