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On the comparison of the strength of morphological integration across morphometric datasets

机译:关于形态计量数据集形态整合强度的比较

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Evolutionary morphologists frequently wish to understand the extent to which organisms are integrated, and whether the strength of morphological integration among subsets of phenotypic variables differ among taxa or other groups. However, comparisons of the strength of integration across datasets are difficult, in part because the summary measures that characterize these patterns (RV coefficient and r(PLS)) are dependent both on sample size and on the number of variables. As a solution to this issue, we propose a standardized test statistic (a z-score) for measuring the degree of morphological integration between sets of variables. The approach is based on a partial least squares analysis of trait covariation, and its permutation-based sampling distribution. Under the null hypothesis of a random association of variables, the method displays a constant expected value and confidence intervals for datasets of differing sample sizes and variable number, thereby providing a consistent measure of integration suitable for comparisons across datasets. A two-sample test is also proposed to statistically determine whether levels of integration differ between datasets, and an empirical example examining cranial shape integration in Mediterranean wall lizards illustrates its use. Some extensions of the procedure are also discussed.
机译:进化形态学家经常希望了解生物整合的程度,以及表型变量子集之间形态整合的强度在分类群或其他群体之间是否有所不同。但是,很难比较整个数据集的整合强度,部分原因是表征这些模式的摘要度量(RV系数和r(PLS))既取决于样本量,也取决于变量数量。作为此问题的解决方案,我们提出了一种标准化的测试统计量(z评分),用于测量变量集之间的形态学整合程度。该方法基于特征协方差及其基于排列的采样分布的偏最小二乘分析。在变量随机关联的零假设下,该方法为不同样本量和变量数的数据集显示恒定的期望值和置信区间,从而提供了一种适用于跨数据集比较的一致的集成度量。还提出了两个样本的测试来统计确定数据集之间的整合程度是否不同,并且通过一个示例实例检查地中海壁蜥蜴中的颅骨形状整合情况来说明其用途。还讨论了该过程的某些扩展。

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