Phylogenomic Analyses Support Traditional Relationships within Cnidaria

Felipe Zapata(Brown University), Freya Goetz(Brown University), Stephen A. Smith(Brown University), Mark Howison(Brown University), Stefan Siebert(Brown University), Samuel H. Church(Brown University), Steven M. Sanders(University of Kansas), Cheryl Lewis Ames(National Museum of Natural History), Catherine S. McFadden(Harvey Mudd College), Scott C. France(University of Louisiana at Lafayette), Marymegan Daly(The Ohio State University), Allen G. Collins(National Museum of Natural History), Steven H. D. Haddock(Monterey Bay Aquarium Research Institute), Casey W. Dunn(Brown University), Paulyn Cartwright(University of Kansas)
PLoS ONE
October 14, 2015
Cited by 219Open Access
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Abstract

Cnidaria, the sister group to Bilateria, is a highly diverse group of animals in terms of morphology, lifecycles, ecology, and development. How this diversity originated and evolved is not well understood because phylogenetic relationships among major cnidarian lineages are unclear, and recent studies present contrasting phylogenetic hypotheses. Here, we use transcriptome data from 15 newly-sequenced species in combination with 26 publicly available genomes and transcriptomes to assess phylogenetic relationships among major cnidarian lineages. Phylogenetic analyses using different partition schemes and models of molecular evolution, as well as topology tests for alternative phylogenetic relationships, support the monophyly of Medusozoa, Anthozoa, Octocorallia, Hydrozoa, and a clade consisting of Staurozoa, Cubozoa, and Scyphozoa. Support for the monophyly of Hexacorallia is weak due to the equivocal position of Ceriantharia. Taken together, these results further resolve deep cnidarian relationships, largely support traditional phylogenetic views on relationships, and provide a historical framework for studying the evolutionary processes involved in one of the most ancient animal radiations.


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