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A new bayesian method for fitting evolutionary models to comparative data with intraspecific variation

机译:新的贝叶斯方法将进化模型拟合到具有种内变异的比较数据

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Phylogenetic comparative methods that incorporate intraspecific variability are relatively new and, so far, not especially widely used in empirical studies. In the present short article we will describe a new Bayesian method for fitting evolutionary models to comparative data that incorporates intraspecific variability. This method differs from an existing likelihood-based approach in that it requires no a priori inference about species means and variances; rather it takes phenotypic values from individuals and a phylogenetic tree as input, and then samples species means and variances, along with the parameters of the evolutionary model, from their joint posterior probability distribution. One of the most novel and intriguing attributes of this approach is that jointly sampling the species means with the evolutionary model parameters means that the model and tree can influence our estimates of species mean trait values, not just the reverse. In the present implementation, we first apply this method to the most widely used evolutionary model for continuously valued phenotypic trait data (Brownian motion). However, the general approach has broad applicability, which we illustrate by also fitting the λ model, another simple model for quantitative trait evolution on a phylogeny. We test our approach via simulation and by analyzing two empirical datasets obtained from the literature. Finally, we have implemented the methods described herein in a new function for the R statistical computing environment, and this function will be distributed as part of the 'phytools' R library.
机译:结合种内变异性的系统发育比较方法是相对较新的方法,到目前为止,在实证研究中并未特别广泛地使用。在本篇短文中,我们将描述一种新的贝叶斯方法,用于将演化模型拟合到包含种内变异性的比较数据。该方法与现有的基于似然性的方法的不同之处在于,它不需要对物种均值和方差的先验推断。而是从个体的表型值和系统发育树作为输入,然后从物种的均值和方差以及演化模型的参数,从它们的联合后验概率分布中采样。这种方法最新颖,最吸引人的属性之一是,将物种均值与进化模型参数一起进行采样意味着,模型和树会影响我们对物种均值特征值的估计,而不仅是相反的。在本实现中,我们首先将此方法应用于最广泛使用的连续值表型特征数据(布朗运动)的进化模型。但是,一般方法具有广泛的适用性,我们通过拟合λ模型来说明这一点,λ模型是另一个用于系统发育数量性状进化的简单模型。我们通过仿真和分析从文献中获得的两个经验数据集来测试我们的方法。最后,我们已经在R统计计算环境的新功能中实现了本文所述的方法,并且该功能将作为“ phytools” R库的一部分进行分发。

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