Abstract

Abstract Here, we describe Assemble Species by Automatic Partitioning (ASAP), a new method to build species partitions from single locus sequence alignments (i.e., barcode data sets). ASAP is efficient enough to split data sets as large 10 4 sequences into putative species in several minutes. Although grounded in evolutionary theory, ASAP is the implementation of a hierarchical clustering algorithm that only uses pairwise genetic distances, avoiding the computational burden of phylogenetic reconstruction. Importantly, ASAP proposes species partitions ranked by a new scoring system that uses no biological prior insight of intraspecific diversity. ASAP is a stand‐alone program that can be used either through a graphical web‐interface or that can be downloaded and compiled for local usage. We have assessed its power along with three others programs (ABGD, PTP and GMYC) on 10 real COI barcode data sets representing various degrees of challenge (from small and easy cases to large and complicated data sets). We also used Monte‐Carlo simulations of a multispecies coalescent framework to assess the strengths and weaknesses of ASAP and the other programs. Through these analyses, we demonstrate that ASAP has the potential to become a major tool for taxonomists as it proposes rapidly in a full graphical exploratory interface relevant species hypothesis as a first step of the integrative taxonomy process.

Keywords

Coalescent theoryBarcodeBiologyPairwise comparisonCluster analysisDNA barcodingGraphical user interfacePhylogenetic treeComputer scienceInterface (matter)Data miningEvolutionary biologyMachine learningArtificial intelligenceProgramming languageGenetics

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Publication Info

Year
2020
Type
article
Volume
21
Issue
2
Pages
609-620
Citations
1400
Access
Closed

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Cite This

Nicolas Puillandre, Sophie Brouillet, Guillaume Achaz (2020). ASAP: assemble species by automatic partitioning. Molecular Ecology Resources , 21 (2) , 609-620. https://doi.org/10.1111/1755-0998.13281

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DOI
10.1111/1755-0998.13281