Abstract

Species demarcation in <i>Bacteria</i> and <i>Archaea</i> is mainly based on overall genome relatedness, which serves a framework for modern microbiology. Current practice for obtaining these measures between two strains is shifting from experimentally determined similarity obtained by DNA-DNA hybridization (DDH) to genome-sequence-based similarity. Average nucleotide identity (ANI) is a simple algorithm that mimics DDH. Like DDH, ANI values between two genome sequences may be different from each other when reciprocal calculations are compared. We compared 63 690 pairs of genome sequences and found that the differences in reciprocal ANI values are significantly high, exceeding 1 % in some cases. To resolve this problem of not being symmetrical, a new algorithm, named OrthoANI, was developed to accommodate the concept of orthology for which both genome sequences were fragmented and only orthologous fragment pairs taken into consideration for calculating nucleotide identities. OrthoANI is highly correlated with ANI (using BLASTn) and the former showed approximately 0.1 % higher values than the latter. In conclusion, OrthoANI provides a more robust and faster means of calculating average nucleotide identity for taxonomic purposes. The standalone software tools are freely available at http://www.ezbiocloud.net/sw/oat.

Keywords

ReciprocalBiologyGenomeIdentity (music)Similarity (geometry)SoftwareNucleotideComputational biologyNucleic acid sequenceGeneticsDNA sequencingDNAGeneComputer scienceImage (mathematics)Artificial intelligencePhysics

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Year
2015
Type
article
Volume
66
Issue
2
Pages
1100-1103
Citations
2917
Access
Closed

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Imchang Lee, Yeong Ouk Kim, Sang‐Cheol Park et al. (2015). OrthoANI: An improved algorithm and software for calculating average nucleotide identity. INTERNATIONAL JOURNAL OF SYSTEMATIC AND EVOLUTIONARY MICROBIOLOGY , 66 (2) , 1100-1103. https://doi.org/10.1099/ijsem.0.000760

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DOI
10.1099/ijsem.0.000760