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A method for analysis of phenotypic change for phenotypes described by high-dimensional data

机译:分析高维数据表型的表型变化的方法

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摘要

The analysis of phenotypic change is important for several evolutionary biology disciplines, including phenotypic plasticity, evolutionary developmental biology, morphological evolution, physiological evolution, evolutionary ecology and behavioral evolution. It is common for researchers in these disciplines to work with multivariate phenotypic data. When phenotypic variables exceed the number of research subjects—data called ‘high-dimensional data'—researchers are confronted with analytical challenges. Parametric tests that require high observation to variable ratios present a paradox for researchers, as eliminating variables potentially reduces effect sizes for comparative analyses, yet test statistics require more observations than variables. This problem is exacerbated with data that describe ‘multidimensional' phenotypes, whereby a description of phenotype requires high-dimensional data. For example, landmark-based geometric morphometric data use the Cartesian coordinates of (potentially) many anatomical landmarks to describe organismal shape. Collectively such shape variables describe organism shape, although the analysis of each variable, independently, offers little benefit for addressing biological questions. Here we present a nonparametric method of evaluating effect size that is not constrained by the number of phenotypic variables, and motivate its use with example analyses of phenotypic change using geometric morphometric data. Our examples contrast different characterizations of body shape for a desert fish species, associated with measuring and comparing sexual dimorphism between two populations. We demonstrate that using more phenotypic variables can increase effect sizes, and allow for stronger inferences.
机译:表型变化的分析对于包括表型可塑性,进化发育生物学,形态进化,生理进化,进化生态学和行为进化在内的多个进化生物学学科都很重要。这些学科的研究人员通常使用多元表型数据。当表型变量超过研究对象的数量(称为“高维数据”的数据)时,研究人员将面临分析挑战。要求对变量比率进行高度观察的参数测试对研究人员来说是一个悖论,因为消除变量可能会减小比较分析的效应量,但是测试统计量需要比变量更多的观察值。描述“多维”表型的数据使这个问题更加严重,因此对表型的描述需要高维数据。例如,基于地标的几何形态计量数据使用(潜在地)许多解剖学地标的笛卡尔坐标来描述生物体形状。这些形状变量共同描述了生物体的形状,尽管对每个变量进行独立分析对解决生物学问题几乎没有好处。在这里,我们介绍了一种不受效果影响的大小的非参数方法,该方法不受表型变量数量的限制,并通过使用几何形态计量学数据对表型变化进行示例分析来激发其使用。我们的示例对比了沙漠鱼类物种不同的身体形态特征,这些特征与测量和比较两个种群之间的性二态性有关。我们证明使用更多的表型变量可以增加效应的大小,并允许更强的推断。

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