Survey of Branch Support Methods Demonstrates Accuracy, Power, and Robustness of Fast Likelihood-based Approximation Schemes
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Open Access
- 3 May 2011
- journal article
- research article
- Published by Oxford University Press (OUP) in Systematic Biology
- Vol. 60 (5), 685-699
- https://doi.org/10.1093/sysbio/syr041
Abstract
Phylogenetic inference and evaluating support for inferred relationships is at the core of many studies testing evolutionary hypotheses. Despite the popularity of nonparametric bootstrap frequencies and Bayesian posterior probabilities, the interpretation of these measures of tree branch support remains a source of discussion. Furthermore, both methods are computationally expensive and become prohibitive for large data sets. Recent fast approximate likelihood-based measures of branch supports (approximate likelihood ratio test [aLRT] and Shimodaira–Hasegawa [SH]-aLRT) provide a compelling alternative to these slower conventional methods, offering not only speed advantages but also excellent levels of accuracy and power. Here we propose an additional method: a Bayesian-like transformation of aLRT (aBayes). Considering both probabilistic and frequentist frameworks, we compare the performance of the three fast likelihood-based methods with the standard bootstrap (SBS), the Bayesian approach, and the recently introduced rapid bootstrap. Our simulations and real data analyses show that with moderate model violations, all tests are sufficiently accurate, but aLRT and aBayes offer the highest statistical power and are very fast. With severe model violations aLRT, aBayes and Bayesian posteriors can produce elevated false-positive rates. With data sets for which such violation can be detected, we recommend using SH-aLRT, the nonparametric version of aLRT based on a procedure similar to the Shimodaira–Hasegawa tree selection. In general, the SBS seems to be excessively conservative and is much slower than our approximate likelihood-based methods.Keywords
This publication has 55 references indexed in Scilit:
- Improved Phylogenomic Taxon Sampling Noticeably Affects Nonbilaterian RelationshipsMolecular Biology and Evolution, 2010
- New Algorithms and Methods to Estimate Maximum-Likelihood Phylogenies: Assessing the Performance of PhyML 3.0Systematic Biology, 2010
- Gene tree discordance, phylogenetic inference and the multispecies coalescentTrends in Ecology & Evolution, 2009
- Efficient computation of the phylogenetic likelihood function on multi-gene alignments and multi-core architecturesPhilosophical Transactions Of The Royal Society B-Biological Sciences, 2008
- Dealing with incongruence in phylogenomic analysesPhilosophical Transactions Of The Royal Society B-Biological Sciences, 2008
- A Rapid Bootstrap Algorithm for the RAxML Web ServersSystematic Biology, 2008
- Suppression of long-branch attraction artefacts in the animal phylogeny using a site-heterogeneous modelBMC Ecology and Evolution, 2007
- RAxML-VI-HPC: maximum likelihood-based phylogenetic analyses with thousands of taxa and mixed modelsBioinformatics, 2006
- Multiple Comparisons of Log-Likelihoods with Applications to Phylogenetic InferenceMolecular Biology and Evolution, 1999
- Evolutionary trees from DNA sequences: A maximum likelihood approachJournal of Molecular Evolution, 1981