Estimating the rate of molecular evolution: incorporating non-contemporaneous sequences into maximum likelihood phylogenies

2000 Bioinformatics 426 citations

Abstract

Abstract Motivation: TipDate is a program that will use sequences that have been isolated at different dates to estimate their rate of molecular evolution. The program provides a maximum likelihood estimate of the rate and also the associated date of the most recent common ancestor of the sequences, under a model which assumes a constant rate of substitution (molecular clock) but which accommodates the dates of isolation. Confidence intervals for these parameters are also estimated. Results: The approach was applied to a sample of 17 dengue virus serotype 4 sequences, isolated at dates ranging from 1956 to 1994. The rate of substitution for this serotype was estimated to be 7.91 × 10−4 substitutions per site per year (95% confidence intervals of 6.07 × 10−4, 9.86 × 10−4). This is compatible with a date of 1922 (95% confidence intervals of 1900–1936) for the most recent common ancestor of these sequences. Availability: TipDate can be obtained by WWW from http://evolve.zoo.ox.ac.uk/software. The package includes the source code, manual and example files. Both UNIX and Apple Macintosh versions are available from the same site. Contact: andrew.rambaut@zoo.ox.ac.uk

Keywords

Confidence intervalMolecular clockUnixBiologySoftwareStatisticsMaximum likelihoodEvolutionary biologyComputer scienceGeneticsPhylogeneticsProgramming languageMathematicsGene

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Year
2000
Type
article
Volume
16
Issue
4
Pages
395-399
Citations
426
Access
Closed

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Andrew Rambaut (2000). Estimating the rate of molecular evolution: incorporating non-contemporaneous sequences into maximum likelihood phylogenies. Bioinformatics , 16 (4) , 395-399. https://doi.org/10.1093/bioinformatics/16.4.395

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DOI
10.1093/bioinformatics/16.4.395