Pareto-optimal phylogenetic tree reconciliation is a research paper published in Bioinformatics (2014). On theSindex it has a DataRank of 0.624. It has been cited 63 times.
MotivationPhylogenetic tree reconciliation is a widely used method for reconstructing the evolutionary histories of gene families and species, hosts and parasites and other dependent pairs of entities. Reconciliation is typically performed using maximum parsimony, in which each evolutionary event type is assigned a cost and the objective is to find a reconciliation of minimum total cost. It is generally understood that reconciliations are sensitive to event costs, but little is understood about the relationship between event costs and solutions. Moreover, choosing appropriate event costs is a notoriously difficult problem.ResultsWe address this problem by giving an efficient algorithm for computing Pareto-optimal sets of reconciliations, thus providing the first systematic method for understanding the relationship between event costs and reconciliations. This, in turn, results in new techniques for computing event support values and, for cophylogenetic analyses, performing robust statistical tests. We provide new software tools and demonstrate their use on a number of datasets from evolutionary genomic and cophylogenetic studies.Availability and implementationOur Python tools are freely available at www.cs.hmc.edu/∼hadas/xscape. .
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Base Score Contribution
0.624
From this paper's citation signal
Citation Network Contribution
0
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