Wellcome Trust Centre for Human Genetics, University of Oxford, Oxford, United Kingdom.
Genetics. 2013 Mar;193(3):973-84. doi: 10.1534/genetics.112.147611. Epub 2013 Jan 10.
Inferring the nature and magnitude of selection is an important problem in many biological contexts. Typically when estimating a selection coefficient for an allele, it is assumed that samples are drawn from a panmictic population and that selection acts uniformly across the population. However, these assumptions are rarely satisfied. Natural populations are almost always structured, and selective pressures are likely to act differentially. Inference about selection ought therefore to take account of structure. We do this by considering evolution in a simple lattice model of spatial population structure. We develop a hidden Markov model based maximum-likelihood approach for estimating the selection coefficient in a single population from time series data of allele frequencies. We then develop an approximate extension of this to the structured case to provide a joint estimate of migration rate and spatially varying selection coefficients. We illustrate our method using classical data sets of moth pigmentation morph frequencies, but it has wide applications in settings ranging from ecology to human evolution.
推断选择的性质和程度是许多生物学背景下的一个重要问题。通常,在估计一个等位基因的选择系数时,假设样本是从混合群体中抽取的,并且选择在整个群体中均匀作用。然而,这些假设很少得到满足。自然种群几乎总是有结构的,而且选择性压力很可能会有差异。因此,关于选择的推断应该考虑到结构。我们通过考虑空间种群结构的简单格模型中的进化来实现这一点。我们开发了一种基于隐藏马尔可夫模型的最大似然方法,用于从等位基因频率的时间序列数据中估计单个群体中的选择系数。然后,我们将其扩展到结构化情况,以提供迁移率和空间变化选择系数的联合估计。我们使用蛾类色素形态频率的经典数据集来说明我们的方法,但它在从生态学到人进化的各种环境中都有广泛的应用。