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A non-stationary model for functional mapping of complex traits

机译:复杂特征功能映射的非平稳模型

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Understanding the genetic control of growth is fundamental to agricultural, evolutionary and biomedical genetic research. In this article, we present a statistical model for mapping quantitative trait loci (QTL) that are responsible for genetic differences in growth trajectories during ontogenetic development. This model is derived within the maximum likelihood context, implemented with the expectation-maximization algorithm. We incorporate mathematical aspects of growth processes to model the mean vector and structured antedependence models to approximate time-dependent covariance matrices for longitudinal traits. Our model has been employed to map QTL that affect body mass growth trajectories in both male and female mice of an F-2 population derived from the Large and Small mouse strains. The results from this model are compared with those from the autoregressive-based functional mapping approach. Based on results from computer simulation studies, we suggest that these two models are alternative to one another and should be used simultaneously for the same dataset.
机译:了解生长的遗传控制是农业,进化和生物医学遗传研究的基础。在本文中,我们提出了一个统计模型,用于绘制定量性状位点(QTL),后者负责个体发育过程中生长轨迹的遗传差异。该模型是在最大似然上下文中导出的,并使用期望最大化算法实现。我们结合了生长过程的数学方面,以对均值向量和结构化的依存关系模型进行建模,以近似得出纵向特征的时间相关协方差矩阵。我们的模型已被用来绘制QTL,该QTL影响从大型和小型小鼠品系衍生而来的F-2种群的雄性和雌性小鼠的体重增长轨迹。该模型的结果与基于自回归的函数映射方法的结果进行了比较。根据计算机仿真研究的结果,我们建议这两个模型可以互相替代,并且应同时用于同一数据集。

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