Abstract

Large phylogenomics data sets require fast tree inference methods, especially for maximum-likelihood (ML) phylogenies. Fast programs exist, but due to inherent heuristics to find optimal trees, it is not clear whether the best tree is found. Thus, there is need for additional approaches that employ different search strategies to find ML trees and that are at the same time as fast as currently available ML programs. We show that a combination of hill-climbing approaches and a stochastic perturbation method can be time-efficiently implemented. If we allow the same CPU time as RAxML and PhyML, then our software IQ-TREE found higher likelihoods between 62.2% and 87.1% of the studied alignments, thus efficiently exploring the tree-space. If we use the IQ-TREE stopping rule, RAxML and PhyML are faster in 75.7% and 47.1% of the DNA alignments and 42.2% and 100% of the protein alignments, respectively. However, the range of obtaining higher likelihoods with IQ-TREE improves to 73.3-97.1%. IQ-TREE is freely available at http://www.cibiv.at/software/iqtree.

Keywords

Tree (set theory)InferenceHeuristicsBiologyComputer scienceSoftwarePhylogenomicsAlgorithmMaximum likelihoodPhylogenetic treeMachine learningMathematicsStatisticsArtificial intelligenceCombinatorics

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Year
2014
Type
article
Volume
32
Issue
1
Pages
268-274
Citations
25080
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Closed

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Lam-Tung Nguyen, Heiko A. Schmidt, Arndt von Haeseler et al. (2014). IQ-TREE: A Fast and Effective Stochastic Algorithm for Estimating Maximum-Likelihood Phylogenies. Molecular Biology and Evolution , 32 (1) , 268-274. https://doi.org/10.1093/molbev/msu300

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DOI
10.1093/molbev/msu300