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Capturing the Phylogeny of Holometabola with Mitochondrial Genome Data and Bayesian Site-Heterogeneous Mixture Models.

Authors :
Fan Song
Hu Li
Pei Jiang
Xuguo Zhou
Jinpeng Liu
Changhai Sun
Vogler, Alfried P.
Wanzhi Cai
Source :
Genome Biology & Evolution. May2016, Vol. 8 Issue 5, p1411-1426. 16p.
Publication Year :
2016

Abstract

After decades of debate, a mostly satisfactory resolution of relationships among the 11 recognized holometabolan orders of insects has been reached based on nucleargenes, resolving one of the most substantial branches of the tree-of-life, but the relationships are still not well established with mitochondrial genome data. The main reasons have been the absence of sufficient data in several orders and lack of appropriate phylogenetic methods that avoid the systematic errors from compositional and mutational biases in insect mitochondrial genomes. In this study, we assembled the richest taxon sampling of Holometabola to date (199 species in 11 orders), and analyzed both nucleotide and amino acid data sets using several methods. We find the standard Bayesian inference and maximum-likelihood analyses were strongly affected by systematic biases, but the site-heterogeneous mixture model implemented in PhyloBayes avoided the false grouping of unrelated taxa exhibiting similar base composition and accelerated evolutionary rate. The inclusion of rRNAgenes and removal of fast-evolving sites with the observed variability sorting method for identifying sites deviating from the mean rates improved the phylogenetic inferences under a site-heterogeneous model, correctly recovering most deep branches of the Holometabola phylogeny. We suggest that the use of mitochondrial genome data for resolving deep phylogenetic relationships requires an assessment of the potential impact of substitutional saturation and compositional biases through data deletion strategies and by using site-heterogeneous mixture models. Our study suggests a practical approach for how to use densely sampled mitochondrial genome data in phylogenetic analyses. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
17596653
Volume :
8
Issue :
5
Database :
Academic Search Index
Journal :
Genome Biology & Evolution
Publication Type :
Academic Journal
Accession number :
116210689
Full Text :
https://doi.org/10.1093/gbe/evw086