...
首页> 外文期刊>Molecular ecology >Bayesian inference of selection in a heterogeneous environment from genetic time-series data
【24h】

Bayesian inference of selection in a heterogeneous environment from genetic time-series data

机译:从遗传时间序列数据在异构环境中进行选择的贝叶斯推断

获取原文
获取原文并翻译 | 示例
           

摘要

Evolutionary geneticists have sought to characterize the causes and molecular targets of selection in natural populations for many years. Although this research programme has been somewhat successful, most statistical methods employed were designed to detect consistent, weak to moderate selection. In contrast, phenotypic studies in nature show that selection varies in time and that individual bouts of selection can be strong. Measurements of the genomic consequences of such fluctuating selection could help test and refine hypotheses concerning the causes of ecological specialization and the maintenance of genetic variation in populations. Herein, I proposed a Bayesian nonhomogeneous hidden Markov model to estimate effective population sizes and quantify variable selection in heterogeneous environments from genetic time-series data. The model is described and then evaluated using a series of simulated data, including cases where selection occurs on a trait with a simple or polygenic molecular basis. The proposed method accurately distinguished neutral loci from non-neutral loci under strong selection, but not from those under weak selection. Selection coefficients were accurately estimated when selection was constant or when the fitness values of genotypes varied linearly with the environment, but these estimates were less accurate when fitness was polygenic or the relationship between the environment and the fitness of genotypes was nonlinear. Past studies of temporal evolutionary dynamics in laboratory populations have been remarkably successful. The proposed method makes similar analyses of genetic time-series data from natural populations more feasible and thereby could help answer fundamental questions about the causes and consequences of evolution in the wild.
机译:进化遗传学家多年来一直试图描述自然种群中选择的原因和分子靶标。尽管该研究计划取得了一定的成功,但大多数采用的统计方法都是设计用来检测一致的,从弱到中等的选择。相比之下,自然界中的表型研究表明,选择的时间会有所不同,而且单个选择的回合可能很强。对这种波动选择的基因组后果的测量可以帮助检验和完善有关生态专业化原因和维持种群遗传变异的假设。在这里,我提出了一种贝叶斯非均质隐马尔可夫模型,用于估计有效种群数量并根据遗传时间序列数据量化异构环境中的变量选择。对模型进行描述,然后使用一系列模拟数据进行评估,包括在具有简单或多基因分子基础的性状上进行选择的情况。所提出的方法可以准确区分强选择下的中性位点与非中性位点,而不是弱选择下的中性位点。当选择恒定或基因型的适应度值随环境线性变化时,可以准确估计选择系数,但是当适应度为多基因或环境与基因型适应度之间的关系为非线性时,这些估计的准确性较差。过去实验室人群中时间进化动力学的研究非常成功。所提出的方法使对来自自然种群的遗传时间序列数据的类似分析更加可行,从而可以帮助回答有关野外进化的原因和后果的基本问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号