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Expectation-Maximization Algorithm for Determining Natural Selection of Y-Linked Genes Through Two-Sex Branching Processes

机译:通过两性分支过程确定Y连锁基因的自然选择的期望最大化算法

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摘要

>A two-dimensional bisexual branching process has recently been presented for the analysis of the generation-to-generation evolution of the number of carriers of a Y-linked gene. In this model, preference of females for males with a specific genetic characteristic is assumed to be determined by an allele of the gene. It has been shown that the behavior of this kind of Y-linked gene is strongly related to the reproduction law of each genotype. In practice, the corresponding offspring distributions are usually unknown, and it is necessary to develop their estimation theory in order to determine the natural selection of the gene. Here we deal with the estimation problem for the offspring distribution of each genotype of a Y-linked gene when the only observable data are each generation's total numbers of males of each genotype and of females. We set out the problem in a non parametric framework and obtain the maximum likelihood estimators of the offspring distributions using an expectation-maximization algorithm. From these estimators, we also derive the estimators for the reproduction mean of each genotype and forecast the distribution of the future population sizes. Finally, we check the accuracy of the algorithm by means of a simulation study.
机译:>最近提出了一种二维双性恋分支过程,用于分析Y连锁基因携带者数量的代际进化。在该模型中,假定女性对具有特定遗传特征的男性的偏爱由该基因的等位基因决定。已经表明,这种Y连锁基因的行为与每种基因型的繁殖规律密切相关。在实践中,通常不知道相应的后代分布,因此有必要发展它们的估计理论以确定该基因的自然选择。当唯一可观察的数据是每种基因型的雄性和雌性的每一代的总数时,我们在这里处理Y连锁基因的每种基因型的后代分布的估计问题。我们在非参数框架中提出了问题,并使用期望最大化算法获得了后代分布的最大似然估计。从这些估计量中,我们还可以得出每个基因型的繁殖均值的估计量,并预测未来人口规模的分布。最后,我们通过仿真研究来检验算法的准确性。

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