Publication | Open Access
Pruning Rogue Taxa Improves Phylogenetic Accuracy: An Efficient Algorithm and Webservice
413
Citations
16
References
2012
Year
Cluster ComputingBootstrap Consensus TreesEngineeringLarge-scale DatasetsPhylogenetic AnalysisPhylogeneticsMolecular EcologyData MiningInformation RetrievalData ScienceEfficient AlgorithmData IntegrationDecision Tree LearningData ManagementPhylogeny ComparisonHigh-performance Data AnalyticsBiodiversityRogue TaxaVery Large DatabaseKnowledge DiscoveryComputer ScienceNew AlgorithmBiologyNatural SciencesEvolutionary BiologyPhylogenetic MethodMassive Data ProcessingBig Data
The presence of rogue taxa (rogues) in a set of trees can frequently have a negative impact on the results of a bootstrap analysis (e.g., the overall support in consensus trees). We introduce an efficient graph-based algorithm for rogue taxon identification as well as an interactive webservice implementing this algorithm. Compared with our previous method, the new algorithm is up to 4 orders of magnitude faster, while returning qualitatively identical results. Because of this significant improvement in scalability, the new algorithm can now identify substantially more complex and compute-intensive rogue taxon constellations. On a large and diverse collection of real-world data sets, we show that our method yields better supported reduced/pruned consensus trees than any competing rogue taxon identification method. Using the parallel version of our open-source code, we successfully identified rogue taxa in a set of 100 trees with 116 334 taxa each. For simulated data sets, we show that when removing/pruning rogue taxa with our method from a tree set, we consistently obtain bootstrap consensus trees as well as maximum-likelihood trees that are topologically closer to the respective true trees.
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