Does the choice of nucleotide substitution models matter topologically?

Michael Hoff,Stefan Orf, Benedikt Riehm,Diego Darriba,Alexandros Stamatakis

BMC Bioinformatics(2016)

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摘要
In the context of a master level programming practical at the computer science department of the Karlsruhe Institute of Technology, we developed and make available an open-source code for testing all 203 possible nucleotide substitution models in the Maximum Likelihood (ML) setting under the common Akaike, corrected Akaike, and Bayesian information criteria. We address the question if model selection matters topologically, that is, if conducting ML inferences under the optimal, instead of a standard General Time Reversible model, yields different tree topologies. We also assess, to which degree models selected and trees inferred under the three standard criteria (AIC, AICc, BIC) differ. Finally, we assess if the definition of the sample size (#sites versus #sites × #taxa) yields different models and, as a consequence, different tree topologies.
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关键词
Phylogenetics,Nucleotide substitution,Model selection,Information criterion,BIC,AIC
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