首页> 外文期刊>European journal of human genetics: EJHG >MultiWaver 2.0: modeling discrete and continuous gene flow to reconstruct complex population admixtures.
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MultiWaver 2.0: modeling discrete and continuous gene flow to reconstruct complex population admixtures.

机译:Multiwaver 2.0:建模离散和连续的基因流动重建复杂种群混合。

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Our goal in developing the MultiWaver software series was to be able to infer population admixture history under various complex scenarios. The earlier version of MultiWaver considered only discrete admixture models. Here, we report a newly developed version, MultiWaver 2.0, that implements a more flexible framework and is capable of inferring multiple-wave admixture histories under both discrete and continuous admixture models. MultiWaver 2.0 can automatically select an optimal admixture model based on the length distribution of ancestral tracks of chromosomes, and the program can estimate the corresponding parameters under the selected model. Specifically, for discrete admixture models, we used a likelihood ratio test (LRT) to determine the optimal discrete model and an expectation-maximization algorithm to estimate the parameters. In addition, according to the principles of the Bayesian Information Criterion (BIC), we compared the optimal discrete model with several continuous admixture models. In MultiWaver 2.0, we also applied a bootstrapping technique to provide levels of support for the chosen model and the confidence interval (CI) of the estimations of admixture time. Simulation studies validated the reliability and effectiveness of our method. Finally, the program performed well when applied to real datasets of typical admixed populations, such as African Americans, Uyghurs, and Hazaras.
机译:我们开发多摆动软件系列的目标是在各种复杂情景下推断人口综合历史。早期版本的Multiwaver仅考虑了离散的汇总模型。在这里,我们报告了一个新开发的版本,Multiwaver 2.0,实现更灵活的框架,并且能够在离散和连续的混合物模型下推断多波掺杂历史。 Multiwaver 2.0可以根据染色体血管轨道的长度分布自动选择最佳掺合模型,并且该程序可以估计在所选模型下的相应参数。具体而言,对于离散掺杂模型,我们使用了似然比测试(LRT)来确定最佳分立模型和期望最大化算法来估计参数。此外,根据贝叶斯信息标准(BIC)的原理,我们将最佳离散模型与几种连续的混合物模型进行了比较。在MultiWaver 2.0中,我们还应用了引导技术,以提供对所选择的模型和置信时间的置信区间(CI)的支持水平。仿真研究验证了我们方法的可靠性和有效性。最后,当应用于典型的混合人群的真实数据集时,该程序表现良好,例如非洲裔美国人,Uyghurs和Hazaras。

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    Department of Mathematics School of Science Beijing Jiaotong University Beijing;

    Chinese Academy of Sciences (CAS) Key Laboratory of Computational Biology Max Planck Independent;

    Chinese Academy of Sciences (CAS) Key Laboratory of Computational Biology Max Planck Independent;

    Chinese Academy of Sciences (CAS) Key Laboratory of Computational Biology Max Planck Independent;

    Chinese Academy of Sciences (CAS) Key Laboratory of Computational Biology Max Planck Independent;

    Department of Mathematics School of Science Beijing Jiaotong University Beijing;

    Chinese Academy of Sciences (CAS) Key Laboratory of Computational Biology Max Planck Independent;

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  • 正文语种 eng
  • 中图分类 医学遗传学;
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