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An eigenvector method for estimating phylogenetic inertia

机译:估计系统发生惯性的特征向量法

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We propose a new method to estimate and correct for phylogenetic inertia in comparative data analysis. The method, called phylogenetic eigenvector regression (PVR) starts by performing a principal coordinate analysis on a pairwise phylogenetic distance matrix between species. Traits under analysis are regressed on eigenvectors retained by a broken-stick model in such a way that estimated values express phylogenetic trends in data and residuals express independent evolution of each species. This partitioning is similar to that realized by the spatial autoregressive method, but the method proposed here overcomes the problem of low statistical performance that occurs with autoregressive method when phylogenetic correlation is low or when sample size is too small to detect it. Also, PVR is easier to perform with large samples because it is based on well-known techniques of multivariate and regression analyses. We evaluated the performance of PVR and compared it with the autoregressive method using real datasets and simulations. A detailed worked example using body size evolution of Carnivora mammals indicated that phylogenetic inertia in this trait is elevated and similarly estimated by both methods. In this example, Type I error at alpha = 0.05 of PVR was equal to 0.048, but an increase in the number of eigenvectors used in the regression increases the error. Also, similarity between PVR and the autoregressive method, defined by correlation between their residuals, decreased by overestimating the number of eigenvalues necessary to express the phylogenetic distance matrix. To evaluate the influence of cladogram topology on the distribution of eigenvalues extracted from the double-centered phylogenetic distance matrix, we analyzed 100 randomly generated cladograms (up Ito 100 species). Multiple linear regression of log transformed variables indicated that the number of eigenvalues extracted by the broken-stick model can be fully explained by cladogram topology. Therefore, the broken-stick model is an adequate criterion for determining the correct number of eigenvectors to be used by PVR. We also simulated distinct levels of phylogenetic inertia by producing a trend across 10, 25, and 50 species arranged in "comblike" cladograms and then adding random vectors with increased residual variances around this trend. In doing so, we provide an evaluation of the performance of both methods with data generated under different evolutionary models than tested previously. The results showed that both PVR and autoregressive method are efficient in detecting inertia in data when sample size is relatively high (more than 25 species) and when phylogenetic inertia is high. However, PVR is more efficient at smaller sample sizes and when level of phylogenetic inertia is low. These conclusions were also supported by the analysis of 10 real datasets regarding body size evolution in different animal clades. We concluded that PVR can be a useful alternative to an autoregressive method in comparative data analysis. [References: 72]
机译:我们提出了一种新的方法来估计和校正比较数据分析中的系统发生惯性。该方法称为系统发育本征向量回归(PVR),首先对物种之间的成对系统发育距离矩阵执行主坐标分析。将分析中的性状以折断模型保留的特征向量进行回归,以使估计值表示数据的系统发生趋势,而残差表示每个物种的独立进化。这种划分类似于通过空间自回归方法实现的划分,但是此处提出的方法克服了在系统发育相关性低或样本量太小而无法检测时自回归方法发生的统计性能低的问题。同样,由于PVR基于众所周知的多元分析和回归分析技术,因此更易于对大样本执行。我们评估了PVR的性能,并将其与使用真实数据集和模拟的自回归方法进行了比较。一个详细的工作实例利用食肉目哺乳动物的体型进化表明,该性状的系统发育惯性得到了提高,并且两种方法均相似地对其进行了估计。在此示例中,PVR的alpha = 0.05时的I类错误等于0.048,但是回归中使用的特征向量数量增加会增加该错误。同样,通过高估表达系统发育距离矩阵所需的特征值数量,可以降低PVR和自回归方法之间的相似性(由其残差之间的相关性定义)。为了评估分支图拓扑结构对从双中心系统发生距离矩阵中提取的特征值分布的影响,我们分析了100个随机生成的分支图(最多Ito 100种)。对数转换变量的多元线性回归表明,折线图模型可以充分说明折断模型提取的特征值的数量。因此,折杆模型是确定PVR要使用的正确特征向量数量的适当标准。我们还通过在“梳状”枝形图中排列的10、25和50种物种产生趋势,然后添加随机矢量,并在此趋势周围增加残留方差,来模拟不同水平的系统发生惯性。在此过程中,我们提供了两种方法的性能评估,以及使用与以前测试不同的演化模型生成的数据。结果表明,当样本量相对较高(超过25种)和系统发生惯性较高时,PVR和自回归方法都可以有效地检测数据的惰性。但是,PVR在较小的样本量以及系统发生惯性水平较低时更为有效。这些结论也得到了有关不同动物进化枝体大小演变的10个真实数据集的分析的支持。我们得出的结论是,在比较数据分析中,PVR可以替代自回归方法。 [参考:72]

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