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rbrothers: R Package for Bayesian Multiple Change-Point Recombination Detection
Author(s) -
Jan Irvahn,
Sujay Chattopadhyay,
Evgeni V. Sokurenko,
Vladimir N. Minin
Publication year - 2013
Publication title -
evolutionary bioinformatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.502
H-Index - 32
ISSN - 1176-9343
DOI - 10.4137/ebo.s11945
Subject(s) - computer science , phylogenetic tree , bayesian probability , r package , set (abstract data type) , markov chain monte carlo , domain (mathematical analysis) , theoretical computer science , algorithm , data mining , computational biology , artificial intelligence , biology , genetics , mathematics , computational science , programming language , gene , mathematical analysis
Phylogenetic recombination detection is a fundamental task in bioinformatics and evolutionary biology. Most of the computational tools developed to attack this important problem are not integrated into the growing suite of R packages for statistical analysis of molecular sequences. Here, we present an R package, rbrothers, that makes a Bayesian multiple change-point model, one of the most sophisticated model-based phylogenetic recombination tools, available to R users. Moreover, we equip the Bayesian change-point model with a set of pre- and post- processing routines that will broaden the application domain of this recombination detection framework. Specifically, we implement an algorithm that forms the set of input trees required by multiple change-point models. We also provide functionality for checking Markov chain Monte Carlo convergence and creating estimation result summaries and graphics. Using rbrothers, we perform a comparative analysis of two Salmonella enterica genes, fimA and fimH, that encode major and adhesive subunits of the type 1 fimbriae, respectively. We believe that rbrothers, available at R-Forge: http://evolmod.r-forge.r-project.org/, will allow researchers to incorporate recombination detection into phylogenetic workflows already implemented in R.

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