Assessing the Effect of Selection at the Amino Acid Level in Malaria Antigen Sequences Through Bayesian Generalized Linear Models

成果类型:
Article
署名作者:
Merl, Daniel; Prado, Raquel; Escalante, Ananias A.
署名单位:
Duke University; University of California System; University of California Santa Cruz; Arizona State University; Arizona State University-Tempe
刊物名称:
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
ISSN/ISSBN:
0162-1459
DOI:
10.1198/016214508000000850
发表日期:
2008
页码:
1496-1507
关键词:
detecting positive selection plasmodium-falciparum natural-selection statistical-methods maximum-likelihood sites recombination polymorphism accuracy gene
摘要:
We present it statistical approach for identifying residues in DNA sequences for which diversity may be maintained by natural selection. Bayesian generalized linear models (GLMs) are used to describe patterns of mutation in it DNA Sequence alignment. Posterior distributions of key quantities. such as probabilities of nonsynonymous and synonymous mutations per site, are studied. Inference in this class of models is achieved through customary Markov chain Monte Carlo methods. Model selection is dealt with by means of a minimum posterior predictive loss approach. We describe how information on the evolutionary process underlying the sequences can be formally incorporated into the models through sturctured priors. The proposed methodology was designed to analyze several DNA sequences encoding the vaccine candidate apical membrane antigen-1 (AMA-1) of the human malaria parasite The study of genetic Variability in antigen Sequences is relevant to determining whether it particular antigen is a viable target for a vaccine construct. Using a simulation study. We first compare the GLM-based approach to existing methods for detecting sites Under selection that are based on stochastic methods of sequence evolution. We then apply the proposed models to the AMA-1 sequence data, which allows us to identify residues with the greatest disparities between nonsynonymous and synonymous changes. Recent experimental evidence suggests that several of these residues re immunologically relevant, indicating at the proposed models may be Used predictively to identify functionally significant residues in antigens for which experimental results are not yet available.
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