articleBMC Evolutionary BiologyJan 1, 2012GOLD OA

Phylogenetic estimation error can decrease the accuracy of species delimitation: a Bayesian implementation of the general mixed Yule-coalescent model

Louisiana State University · The Ohio State University

PubMed
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Abstract

Background

Species are considered the fundamental unit in many ecological and evolutionary analyses, yet accurate, complete, accessible taxonomic frameworks with which to identify them are often unavailable to researchers. In such cases DNA sequence-based species delimitation has been proposed as a means of estimating species boundaries for further analysis. Several methods have been proposed to accomplish this. Here we present a Bayesian implementation of an evolutionary model-based method, the general mixed Yule-coalescent model (GMYC). Our implementation integrates over the parameters of the model and uncertainty in phylogenetic relationships using the output of widely available phylogenetic models and Markov-Chain Monte Carlo (MCMC) simulation in order to produce marginal probabilities of species identities.

Results

We conducted simulations testing the effects of species evolutionary history, levels of intraspecific sampling and number of nucleotides sequenced. We also re-analyze the dataset used to introduce the original GMYC model. We found that the model results are improved with addition of DNA sequence and increased sampling, although these improvements have limits. The most important factor in the success of the model is the underlying phylogenetic history of the species under consideration. Recent and rapid divergences result in higher amounts of uncertainty in the model and eventually cause the model to fail to accurately assess uncertainty in species limits.

Citation impact

573
total citations
FWCI
39.70
Percentile
100%
References
58
Citations per year

Authors

2

Topics & keywords

Keywords
  • Coalescent theory
  • Markov chain Monte Carlo
  • Phylogenetic tree
  • Biology
  • Bayesian probability
  • Sampling (signal processing)
  • Bayesian inference
  • Bayes factor
UN Sustainable Development Goals
  • Life in Land
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Funding