4.7 Article

ABGD, Automatic Barcode Gap Discovery for primary species delimitation

Journal

MOLECULAR ECOLOGY
Volume 21, Issue 8, Pages 1864-1877

Publisher

WILEY
DOI: 10.1111/j.1365-294X.2011.05239.x

Keywords

DNA barcoding; integrative taxonomy; pairwise differences; speciation

Funding

  1. Agence Nationale pour la Recherche (French national research agency) [07-GMGE-004-04]
  2. JSPS
  3. Agence Nationale pour la Recherche [BLAN06-3 146282 MAEV, NT09 545511 MANEGE]
  4. Centre National de la Recherche Scienfitique

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Within uncharacterized groups, DNA barcodes, short DNA sequences that are present in a wide range of species, can be used to assign organisms into species. We propose an automatic procedure that sorts the sequences into hypothetical species based on the barcode gap, which can be observed whenever the divergence among organisms belonging to the same species is smaller than divergence among organisms from different species. We use a range of prior intraspecific divergence to infer from the data a model-based one-sided confidence limit for intraspecific divergence. The method, called Automatic Barcode Gap Discovery (ABGD), then detects the barcode gap as the first significant gap beyond this limit and uses it to partition the data. Inference of the limit and gap detection are then recursively applied to previously obtained groups to get finer partitions until there is no further partitioning. Using six published data sets of metazoans, we show that ABGD is computationally efficient and performs well for standard prior maximum intraspecific divergences (a few per cent of divergence for the five data sets), except for one data set where less than three sequences per species were sampled. We further explore the theoretical limitations of ABGD through simulation of explicit speciation and population genetics scenarios. Our results emphasize in particular the sensitivity of the method to the presence of recent speciation events, via (unrealistically) high rates of speciation or large numbers of species. In conclusion, ABGD is fast, simple method to split a sequence alignment data set into candidate species that should be complemented with other evidence in an integrative taxonomic approach.

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