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Smooth skyride through a rough skyline: Bayesian coalescent-based inference of population dynamics

机译:通过粗糙的天际线实现顺滑的空中骑乘:基于贝叶斯联盟的人口动态推断

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Kingman's coalescent process opens the door for estimation of population genetics model parameters from molecular sequences. One paramount parameter of interest is the effective population size. Temporal variation of this quantity characterizes the demographic history of a population. Because researchers are rarely able to choose a priori a deterministic model describing effective population size dynamics for data at hand, nonparametric curve-fitting methods based on multiple change-point (MCP) models have been developed. We propose an alternative to change-point modeling that exploits Gaussian Markov random fields to achieve temporal smoothing of the effective population size in a Bayesian framework. The main advantage of our approach is that, in contrast to MCP models, the explicit temporal smoothing does not require strong prior decisions. To approximate the posterior distribution of the population dynamics, we use efficient, fast mixing Markov chain Monte Carlo algorithms designed for highly structured Gaussian models. In a simulation study, we demonstrate that the proposed temporal smoothing method, named Bayesian skyride, successfully recovers "true" population size trajectories in all simulation scenarios and competes well with the MCP approaches without evoking strong prior assumptions. We apply our Bayesian skyride method to 2 real data sets. We analyze sequences of hepatitis C virus contemporaneously sampled in Egypt, reproducing all key known aspects of the viral population dynamics. Next, we estimate the demographic histories of human influenza A hemagglutinin sequences, serially sampled throughout 3 flu seasons.
机译:金曼的合并过程为从分子序列估计种群遗传学模型参数打开了大门。感兴趣的一个最重要的参数是有效人口规模。此数量的时间变化是人口统计历史的特征。由于研究人员很少能够先验地选择描述性模型来描述现有数据的有效种群大小动态,因此已经开发了基于多变化点(MCP)模型的非参数曲线拟合方法。我们提出了一种改变点建模的替代方法,该方法利用高斯马尔可夫随机场在贝叶斯框架中实现有效种群规模的时间平滑。我们的方法的主要优点是,与MCP模型相比,显式的时间平滑不需要强大的先验决策。为了近似总体动力学的后验分布,我们使用为高度结构化的高斯模型设计的高效,快速混合的马尔可夫链蒙特卡罗算法。在仿真研究中,我们证明了所提出的时间平滑方法(称为贝叶斯高空滑行)可以在所有仿真场景中成功地恢复“真实”的人口规模轨迹,并且可以与MCP方法很好地竞争,而无需引起强大的先前假设。我们将贝叶斯的Skyride方法应用于2个真实数据集。我们分析了在埃及同时采样的丙型肝炎病毒的序列,再现了病毒种群动态的所有关键已知方面。接下来,我们估算了人类流感A血凝素序列的人口历史记录,这些序列在3个流感季节连续采样。

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