Sheehan Sara, Song Yun S
Department of Computer Science, Smith College, Northampton, Massachusetts, United States of America.
Computer Science Division, UC Berkeley, Berkeley, California, United States of America.
PLoS Comput Biol. 2016 Mar 28;12(3):e1004845. doi: 10.1371/journal.pcbi.1004845. eCollection 2016 Mar.
Given genomic variation data from multiple individuals, computing the likelihood of complex population genetic models is often infeasible. To circumvent this problem, we introduce a novel likelihood-free inference framework by applying deep learning, a powerful modern technique in machine learning. Deep learning makes use of multilayer neural networks to learn a feature-based function from the input (e.g., hundreds of correlated summary statistics of data) to the output (e.g., population genetic parameters of interest). We demonstrate that deep learning can be effectively employed for population genetic inference and learning informative features of data. As a concrete application, we focus on the challenging problem of jointly inferring natural selection and demography (in the form of a population size change history). Our method is able to separate the global nature of demography from the local nature of selection, without sequential steps for these two factors. Studying demography and selection jointly is motivated by Drosophila, where pervasive selection confounds demographic analysis. We apply our method to 197 African Drosophila melanogaster genomes from Zambia to infer both their overall demography, and regions of their genome under selection. We find many regions of the genome that have experienced hard sweeps, and fewer under selection on standing variation (soft sweep) or balancing selection. Interestingly, we find that soft sweeps and balancing selection occur more frequently closer to the centromere of each chromosome. In addition, our demographic inference suggests that previously estimated bottlenecks for African Drosophila melanogaster are too extreme.
给定来自多个个体的基因组变异数据,计算复杂群体遗传模型的可能性通常是不可行的。为了解决这个问题,我们引入了一种新的无似然推断框架,通过应用深度学习,这是机器学习中一种强大的现代技术。深度学习利用多层神经网络从输入(例如,数百个相关的数据汇总统计量)到输出(例如,感兴趣的群体遗传参数)学习基于特征的函数。我们证明深度学习可以有效地用于群体遗传推断和学习数据的信息特征。作为一个具体应用,我们专注于联合推断自然选择和人口统计学(以种群大小变化历史的形式)这一具有挑战性的问题。我们的方法能够将人口统计学的全局性质与选择的局部性质区分开来,而无需对这两个因素进行顺序步骤。联合研究人口统计学和选择的动机来自果蝇,其中普遍存在的选择混淆了人口统计学分析。我们将我们的方法应用于来自赞比亚的197个非洲黑腹果蝇基因组,以推断它们的总体人口统计学以及其基因组中处于选择状态的区域。我们发现基因组中有许多区域经历了硬扫荡,而在现有变异(软扫荡)或平衡选择下处于选择状态的区域较少。有趣的是,我们发现软扫荡和平衡选择在每条染色体的着丝粒附近更频繁地发生。此外,我们的人口统计学推断表明,先前估计的非洲黑腹果蝇瓶颈过于极端。