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使用差异选择密码子模型检测定向适应的一致模式。

Detecting consistent patterns of directional adaptation using differential selection codon models.

作者信息

Parto Sahar, Lartillot Nicolas

机构信息

Département de Biochimie et Médecine Moléculaire, Centre Robert Cedergren, Bio-Informatique et Génomique, Université de Montréal, Montréal, Québec, Canada.

Laboratoire de Biométrie et Biologie Évolutive, Université Lyon 1, CNRS, UMR 5558, Lyon, France.

出版信息

BMC Evol Biol. 2017 Jun 23;17(1):147. doi: 10.1186/s12862-017-0979-y.

Abstract

BACKGROUND

Phylogenetic codon models are often used to characterize the selective regimes acting on protein-coding sequences. Recent methodological developments have led to models explicitly accounting for the interplay between mutation and selection, by modeling the amino acid fitness landscape along the sequence. However, thus far, most of these models have assumed that the fitness landscape is constant over time. Fluctuations of the fitness landscape may often be random or depend on complex and unknown factors. However, some organisms may be subject to systematic changes in selective pressure, resulting in reproducible molecular adaptations across independent lineages subject to similar conditions.

RESULTS

Here, we introduce a codon-based differential selection model, which aims to detect and quantify the fine-grained consistent patterns of adaptation at the protein-coding level, as a function of external conditions experienced by the organism under investigation. The model parameterizes the global mutational pressure, as well as the site- and condition-specific amino acid selective preferences. This phylogenetic model is implemented in a Bayesian MCMC framework. After validation with simulations, we applied our method to a dataset of HIV sequences from patients with known HLA genetic background. Our differential selection model detects and characterizes differentially selected coding positions specifically associated with two different HLA alleles.

CONCLUSION

Our differential selection model is able to identify consistent molecular adaptations as a function of repeated changes in the environment of the organism. These models can be applied to many other problems, ranging from viral adaptation to evolution of life-history strategies in plants or animals.

摘要

背景

系统发育密码子模型常用于描述作用于蛋白质编码序列的选择机制。最近的方法学发展导致了一些模型,通过沿着序列对氨基酸适应度景观进行建模,明确考虑了突变与选择之间的相互作用。然而,到目前为止,这些模型大多假定适应度景观随时间保持不变。适应度景观的波动可能通常是随机的,或者取决于复杂且未知的因素。然而,一些生物体可能会受到选择压力的系统性变化影响,导致在受类似条件影响的独立谱系中出现可重复的分子适应性变化。

结果

在此,我们引入了一种基于密码子的差异选择模型,旨在检测和量化蛋白质编码水平上精细的一致适应模式,该模式是所研究生物体经历的外部条件的函数。该模型对全局突变压力以及位点和条件特异性氨基酸选择偏好进行参数化。这种系统发育模型在贝叶斯MCMC框架中实现。经过模拟验证后,我们将我们的方法应用于来自具有已知HLA基因背景患者的HIV序列数据集。我们的差异选择模型检测并表征了与两种不同HLA等位基因特异性相关的差异选择编码位置。

结论

我们的差异选择模型能够识别出作为生物体环境中反复变化函数的一致分子适应性变化。这些模型可应用于许多其他问题,从病毒适应性到植物或动物生活史策略的进化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b22b/5481935/de065287efdd/12862_2017_979_Fig1_HTML.jpg

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