Literature DB >> 18398766

Inferring species membership using DNA sequences with back-propagation neural networks.

A B Zhang1, D S Sikes, C Muster, S Q Li.   

Abstract

DNA barcoding as a method for species identification is rapidly increasing in popularity. However, there are still relatively few rigorous methodological tests of DNA barcoding. Current distance-based methods are frequently criticized for treating the nearest neighbor as the closest relative via a raw similarity score, lacking an objective set of criteria to delineate taxa, or for being incongruent with classical character-based taxonomy. Here, we propose an artificial intelligence-based approach - inferring species membership via DNA barcoding with back-propagation neural networks (named BP-based species identification) - as a new advance to the spectrum of available methods. We demonstrate the value of this approach with simulated data sets representing different levels of sequence variation under coalescent simulations with various evolutionary models, as well as with two empirical data sets of COI sequences from East Asian ground beetles (Carabidae) and Costa Rican skipper butterflies. With a 630-to 690-bp fragment of the COI gene, we identified 97.50% of 80 unknown sequences of ground beetles, 95.63%, 96.10%, and 100% of 275, 205, and 9 unknown sequences of the neotropical skipper butterfly to their correct species, respectively. Our simulation studies indicate that the success rates of species identification depend on the divergence of sequences, the length of sequences, and the number of reference sequences. Particularly in cases involving incomplete lineage sorting, this new BP-based method appears to be superior to commonly used methods for DNA-based species identification.

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Year:  2008        PMID: 18398766     DOI: 10.1080/10635150802032982

Source DB:  PubMed          Journal:  Syst Biol        ISSN: 1063-5157            Impact factor:   15.683


  19 in total

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4.  Machine learning approaches outperform distance- and tree-based methods for DNA barcoding of Pterocarpus wood.

Authors:  Tuo He; Lichao Jiao; Alex C Wiedenhoeft; Yafang Yin
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5.  A simple 2D non-parametric resampling statistical approach to assess confidence in species identification in DNA barcoding--an alternative to likelihood and bayesian approaches.

Authors:  Qian Jin; Li-Jun He; Ai-Bing Zhang
Journal:  PLoS One       Date:  2012-12-11       Impact factor: 3.240

6.  Quantifying species diversity with a DNA barcoding-based method: Tibetan moth species (Noctuidae) on the Qinghai-Tibetan Plateau.

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7.  The effect of geographical scale of sampling on DNA barcoding.

Authors:  Johannes Bergsten; David T Bilton; Tomochika Fujisawa; Miranda Elliott; Michael T Monaghan; Michael Balke; Lars Hendrich; Joja Geijer; Jan Herrmann; Garth N Foster; Ignacio Ribera; Anders N Nilsson; Timothy G Barraclough; Alfried P Vogler
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8.  Phylogenetic reconstruction and DNA barcoding for closely related pine moth species (Dendrolimus) in China with multiple gene markers.

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Journal:  PLoS One       Date:  2012-04-03       Impact factor: 3.240

9.  Learning to classify species with barcodes.

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10.  Molecular taxonomy of phytopathogenic fungi: a case study in Peronospora.

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Journal:  PLoS One       Date:  2009-07-29       Impact factor: 3.240

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