Department of Human Genetics and Department of Ecology and Evolution, University of Chicago, Chicago, Illinois, USA.
PLoS Genet. 2011 Dec;7(12):e1002395. doi: 10.1371/journal.pgen.1002395. Epub 2011 Dec 1.
Through an analysis of polymorphism within and divergence between species, we can hope to learn about the distribution of selective effects of mutations in the genome, changes in the fitness landscape that occur over time, and the location of sites involved in key adaptations that distinguish modern-day species. We introduce a novel method for the analysis of variation in selection pressures within and between species, spatially along the genome and temporally between lineages. We model codon evolution explicitly using a joint population genetics-phylogenetics approach that we developed for the construction of multiallelic models with mutation, selection, and drift. Our approach has the advantage of performing direct inference on coding sequences, inferring ancestral states probabilistically, utilizing allele frequency information, and generalizing to multiple species. We use a Bayesian sliding window model for intragenic variation in selection coefficients that efficiently combines information across sites and captures spatial clustering within the genome. To demonstrate the utility of the method, we infer selective pressures acting in Drosophila melanogaster and D. simulans from polymorphism and divergence data for 100 X-linked coding regions.
通过分析物种内和物种间的多态性,我们可以了解基因组中突变选择效应的分布、随时间推移而发生的适应景观变化,以及涉及区分现代物种的关键适应的位点位置。我们引入了一种新的方法来分析物种内和物种间选择压力的变化,从基因组的空间和谱系之间的时间上进行分析。我们使用一种联合的群体遗传学-系统发育学方法来明确地模拟密码子进化,该方法是为构建具有突变、选择和漂变的多等位基因模型而开发的。我们的方法具有直接对编码序列进行推断、概率推断祖先状态、利用等位基因频率信息以及推广到多个物种的优势。我们使用基于贝叶斯滑动窗口的模型来分析基因内选择系数的变化,该模型有效地整合了跨位点的信息,并捕捉到了基因组内的空间聚类。为了演示该方法的实用性,我们从 100 个 X 连锁编码区域的多态性和分化数据推断了果蝇和拟果蝇中的选择压力。