Publication | Open Access
EPA-ng: Massively Parallel Evolutionary Placement of Genetic Sequences
51
Citations
13
References
2018
Year
Unknown Venue
GeneticsGenomicsSequence AlignmentMicrobial EvolutionHigh Throughput SequencingEvolution StrategyPhylogeneticsMolecular EcologyData AvalancheGenetic AlgorithmEvolution-based MethodParallel Evolutionary PlacementGenetic VariationDistributed Memory ParallelizationPopulation GeneticsBioinformaticsEpa- NgBiologyLong-read SequencingNatural SciencesNext-generation SequencingEvolutionary BiologyComputational BiologyMicrobiologyMedicineSequence Assembly
Abstract Next Generation Sequencing (NGS) technologies have led to a ubiquity of molecular sequence data. This data avalanche is particularly challenging in metagenetics, which focuses on taxonomic identification of sequences obtained from diverse microbial environments. To achieve this, phylogenetic placement methods determine how these sequences fit into an evolutionary context. Previous implementations of phylogenetic placement algorithms, such as the Evolutionary Placement Algorithm (EPA) included in RAxML, or pplacer , are being increasingly used for this purpose. However, due to the steady progress in NGS technologies, the current implementations face substantial scalability limitations. Here we present EPA- ng , a complete reimplementation of the EPA that is substantially faster, offers a distributed memory parallelization, and integrates concepts from both, RAxML-EPA, and pplacer . EPA- ng can be executed on standard shared memory, as well as on distributed memory systems (e.g., computing clusters). To demonstrate the scalability of EPA- ng we placed 1 billion metagenetic reads from the Tara Oceans Project onto a reference tree with 3,748 taxa in just under 7 hours, using 2,048 cores. Our performance assessment shows that EPA- ng outperforms RAxML-EPA and pplacer by up to a factor of 30 in sequential execution mode, while attaining comparable parallel efficiency on shared memory systems. We further show that the distributed memory parallelization of EPA- ng scales well up to 3,520 cores. EPA- ng is available under the AGPLv3 license: https://github.com/Pbdas/epa-ng
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