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SPIn: Model Selection for Phylogenetic Mixtures via Linear Invariants
Author(s) -
Anna Kedzierska,
Mathias Drton,
Roderic Guigó,
Marta Casanellas
Publication year - 2011
Publication title -
molecular biology and evolution
Language(s) - Danish
Resource type - Journals
SCImago Journal Rank - 6.637
H-Index - 218
eISSN - 1537-1719
pISSN - 0737-4038
DOI - 10.1093/molbev/msr259
Subject(s) - phylogenetic tree , computational phylogenetics , phylogenetic network , tree (set theory) , tree rearrangement , biology , selection (genetic algorithm) , phylogenetics , inference , heuristics , model selection , evolutionary biology , computational biology , computer science , mathematics , artificial intelligence , genetics , combinatorics , gene , mathematical optimization
In phylogenetic inference, an evolutionary model describes the substitution processes along each edge of a phylogenetic tree. Misspecification of the model has important implications for the analysis of phylogenetic data. Conventionally, however, the selection of a suitable evolutionary model is based on heuristics or relies on the choice of an approximate input tree. We introduce a method for model Selection in Phylogenetics based on linear INvariants (SPIn), which uses recent insights on linear invariants to characterize a model of nucleotide evolution for phylogenetic mixtures on any number of components. Linear invariants are constraints among the joint probabilities of the bases in the operational taxonomic units that hold irrespective of the tree topologies appearing in the mixtures. SPIn therefore requires no input tree and is designed to deal with nonhomogeneous phylogenetic data consisting of multiple sequence alignments showing different patterns of evolution, for example, concatenated genes, exons, and/or introns. Here, we report on the results of the proposed method evaluated on multiple sequence alignments simulated under a variety of single-tree and mixture settings for both continuous- and discrete-time models. In the simulations, SPIn successfully recovers the underlying evolutionary model and is shown to perform better than existing approaches.

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