Literature DB >> 12032251

Accuracy and power of bayes prediction of amino acid sites under positive selection.

Maria Anisimova1, Joseph P Bielawski, Ziheng Yang.   

Abstract

Bayes prediction quantifies uncertainty by assigning posterior probabilities. It was used to identify amino acids in a protein under recurrent diversifying selection indicated by higher nonsynonymous (d(N)) than synonymous (d(S)) substitution rates or by omega = d(N)/d(S) > 1. Parameters were estimated by maximum likelihood under a codon substitution model that assumed several classes of sites with different omega ratios. The Bayes theorem was used to calculate the posterior probabilities of each site falling into these site classes. Here, we evaluate the performance of Bayes prediction of amino acids under positive selection by computer simulation. We measured the accuracy by the proportion of predicted sites that were truly under selection and the power by the proportion of true positively selected sites that were predicted by the method. The accuracy was slightly better for longer sequences, whereas the power was largely unaffected by the increase in sequence length. Both accuracy and power were higher for medium or highly diverged sequences than for similar sequences. We found that accuracy and power were unacceptably low when data contained only a few highly similar sequences. However, sampling a large number of lineages improved the performance substantially. Even for very similar sequences, accuracy and power can be high if over 100 taxa are used in the analysis. We make the following recommendations: (1) prediction of positive selection sites is not feasible for a few closely related sequences; (2) using a large number of lineages is the best way to improve the accuracy and power of the prediction; and (3) multiple models of heterogeneous selective pressures among sites should be applied in real data analysis.

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Year:  2002        PMID: 12032251     DOI: 10.1093/oxfordjournals.molbev.a004152

Source DB:  PubMed          Journal:  Mol Biol Evol        ISSN: 0737-4038            Impact factor:   16.240


  184 in total

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9.  Identification of genes subject to positive selection in uropathogenic strains of Escherichia coli: a comparative genomics approach.

Authors:  Swaine L Chen; Chia-Seui Hung; Jian Xu; Christopher S Reigstad; Vincent Magrini; Aniko Sabo; Darin Blasiar; Tamberlyn Bieri; Rekha R Meyer; Philip Ozersky; Jon R Armstrong; Robert S Fulton; J Phillip Latreille; John Spieth; Thomas M Hooton; Elaine R Mardis; Scott J Hultgren; Jeffrey I Gordon
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