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Coalescent-Based Method for Learning Parameters of Admixture Events from Large-Scale Genetic Variation Data

机译:基于聚类的大规模遗传变异数据学习混合物事件参数的方法

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摘要

Detecting and quantifying the timing and the genetic contributions of parental populations to a hybrid population is an important but challenging problem in reconstructing evolutionary histories from genetic variation data. With the advent of high throughput genotyping technologies, new methods suitable for large-scale data are especially needed. Furthermore, existing methods typically assume the assignment of individuals into subpopulations is known, when that itself is a difficult problem often unresolved for real data. Here, we propose a novel method that combines prior work for inferring nonreticulate population structures with an MCMC scheme for sampling over admixture scenarios to both identify population assignments and learn divergence times and admixture proportions for those populations using genome-scale admixed genetic variation data. We validated our method using coalescent simulations and a collection of real bovine and human variation data. On simulated sequences, our methods show better accuracy and faster runtime than leading competitive methods in estimating admixture fractions and divergence times. Analysis on the real data further shows our methods to be effective at matching our best current knowledge about the relevant populations.
机译:在从遗传变异数据重建进化历史的过程中,检测和量化父母群体对杂交群体的时间和遗传贡献是一个重要但具有挑战性的问题。随着高通量基因分型技术的出现,特别需要适用于大规模数据的新方法。此外,现有方法通常假设将个人分配到子种群中是已知的,而这本身是一个难题,而对于实际数据通常无法解决。在这里,我们提出了一种新颖的方法,该方法将推断非网状种群结构的先前工作与用于混合场景采样的MCMC方案相结合,以使用基因组规模的混合遗传变异数据来识别种群分配并了解这些种群的发散时间和混合比例。我们使用合并模拟和一组真实的牛和人类变异数据验证了我们的方法。在模拟序列上,我们的方法在估计混合比和发散时间方面比领先的竞争方法显示出更好的准确性和更快的运行时间。对真实数据的分析进一步表明,我们的方法可以有效地匹配我们有关相关人群的最新知识。

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