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首页> 外文期刊>Evolution: International Journal of Organic Evolution >Comparing the strength of modular signal, and evaluating alternative modular hypotheses, using covariance ratio effect sizes with morphometric data
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Comparing the strength of modular signal, and evaluating alternative modular hypotheses, using covariance ratio effect sizes with morphometric data

机译:比较模块化信号的强度,并评估替代模块化假设,使用具有形态学数据的协方差效应尺寸

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摘要

The study of modularity is paramount for understanding trends of phenotypic evolution, and for determining the extent to which covariation patterns are conserved across taxa and levels of biological organization. However, biologists currently lack quantitative methods for statistically comparing the strength of modular signal across datasets, and a robust approach for evaluating alternative modular hypotheses for the same dataset. As a solution to these challenges, we propose an effect size measure (Z_(CR)) derived from the covariance ratio, and develop hypothesis-testing procedures for their comparison. Computer simulations demonstrate that Z_(CR) displays appropriate statistical properties and low levels of mis-specification, implying that it correctly identifies modular signal, when present. By contrast, alternative methods based on likelihood (EMMLi) and goodness of fit (MINT) suffer from high false positive rates and high model mis-specification rates. An empirical example in sigmodontine rodent mandibles is provided to illustrate the utility of Z_(CR) for comparing modular hypotheses. Overall, we find that covariance ratio effect sizes are useful for comparing patterns of modular signal across datasets or for evaluating alternative modular hypotheses for the same dataset. Finally, the statistical philosophy for pairwise model comparisons using effect sizes should accommodate any future analytical developments for characterizing modular signal.
机译:模块化的研究对于了解表型进化的趋势至关重要,以及确定协变度在跨征集的程度和生物组织水平的程度。然而,生物学家目前缺乏定量方法,用于统计地比较数据集的模块化信号的强度,以及用于评估相同数据集的替代模块假设的鲁棒方法。作为对这些挑战的解决方案,我们提出了源自协方差比的效果尺寸测量(Z_(CR)),并开发了对比较的假设测试程序。计算机仿真表明,Z_(CR)显示适当的统计特性和低水平的MIS规范,这意味着它在当前正确识别模块化信号。相比之下,基于可能性(EMMLI)和贴合性的替代方法(薄荷)的良好方法遭受高误率和高模型的MIS规范率。提供了Sigmodontine啮齿动物颌骨的经验实例,以说明用于比较模块化假设的Z_(CR)的效用。总的来说,我们发现协方差比效应大小对于比较数据集的模块信号模式或用于评估相同数据集的替代模块假设。最后,使用效果大小的成对型号比较的统计哲学应适应任何未来用于表征模块信号的分析开发。

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