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Statistical Quantification of Individual Differences (SQuID): an educational and statistical tool for understanding multilevel phenotypic data in linear mixed models

机译:个体差异的统计量化(SQuID):一种用于了解线性混合模型中多级表型数据的教育和统计工具

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摘要

Phenotypic variation exists in and at all levels of biological organization: variation exists among species, among-individuals within-populations, and in the case of l within-populations abile traits, within-individuals. Mixed-effects models represent ideal tools to quantify multilevel measurements of traits and are being increasingly used in evolutionary ecology. Mixed-effects models are relatively complex, and two main issues may be hampering their proper usage: (i) the relatively few educational resources available to teach new users how to implement and interpret them and (ii) the lack of tools to ensure that the statistical parameters of interest are correctly estimated. In this paper, we introduce Statistical Quantification of Individual Differences (SQuID), a simulation-based tool that can be used for research and educational purposes. SQuID creates a virtual world inhabited by subjects whose phenotypes are generated by a user-defined phenotypic equation, which allows easy translation of biological hypotheses into quantifiable parameters. Statistical Quantification of Individual Differences currently models normally distributed traits with linear predictors, but SQuID is subject to further development and will adapt to handle more complex scenarios in the future. The current framework is suitable for performing simulation studies, determining optimal sampling designs for user-specific biological problems and making simulation-based inferences to aid in the interpretation of empirical studies. Statistical Quantification of Individual Differences is also a teaching tool for biologists interested in learning, or teaching others, how to implement and interpret linear mixed-effects models when studying the processes causing phenotypic variation. Interface-based modules allow users to learn about these issues. As research on effects of sampling designs continues, new issues will be implemented in new modules, including nonlinear and non-Gaussian data.
机译:表型变异存在于生物组织中以及在生物组织的所有层次上:物种之间,种群内部个体之间存在变异,而对于l种群内部敏捷性状而言,个体内部存在变异。混合效应模型代表了量化性状多层次测量的理想工具,并且在进化生态学中越来越多地使用。混合效果模型相对复杂,可能存在两个主要问题,这妨碍了它们的正确使用:(i)教给新用户如何实现和解释它们的教育资源相对较少,以及(ii)缺乏确保正确估计感兴趣的统计参数。在本文中,我们介绍了个体差异的统计量化(SQuID),这是一种基于模拟的工具,可用于研究和教育目的。 SQuID创建了一个虚拟世界,这些虚拟世界被表述由用户定义的表型方程式生成的主题所占据,从而可以轻松地将生物学假设转化为可量化的参数。目前,个体差异的统计量化使用线性预测因子对正态分布的特征进行建模,但是SQuID有待进一步开发,并将在将来适应更复杂的情况。当前的框架适用于进行模拟研究,确定针对特定用户的生物学问题的最佳采样设计以及进行基于模拟的推论,以帮助解释经验研究。个体差异的统计量化也是有兴趣学习或教其他人如何在研究造成表型变异的过程时实现和解释线性混合效应模型的生物学工具。基于接口的模块使用户可以了解这些问题。随着对采样设计效果的研究的继续,将在新模块中实现新问题,包括非线性和非高斯数据。

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