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fullfact: an R package for the analysis of genetic and maternal variance components from full factorial mating designs

机译:fullfact:R软件包用于分析来自全因子交配设计的遗传和母体方差成分

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摘要

Full factorial breeding designs are useful for quantifying the amount of additive genetic, nonadditive genetic, and maternal variance that explain phenotypic traits. Such variance estimates are important for examining evolutionary potential. Traditionally, full factorial mating designs have been analyzed using a two‐way analysis of variance, which may produce negative variance values and is not suited for unbalanced designs. Mixed‐effects models do not produce negative variance values and are suited for unbalanced designs. However, extracting the variance components, calculating significance values, and estimating confidence intervals and/or power values for the components are not straightforward using traditional analytic methods. We introduce fullfact – an R package that addresses these issues and facilitates the analysis of full factorial mating designs with mixed‐effects models. Here, we summarize the functions of the fullfact package. The observed data functions extract the variance explained by random and fixed effects and provide their significance. We then calculate the additive genetic, nonadditive genetic, and maternal variance components explaining the phenotype. In particular, we integrate nonnormal error structures for estimating these components for nonnormal data types. The resampled data functions are used to produce bootstrap‐t confidence intervals, which can then be plotted using a simple function. We explore the fullfact package through a worked example. This package will facilitate the analyses of full factorial mating designs in R, especially for the analysis of binary, proportion, and/or count data types and for the ability to incorporate additional random and fixed effects and power analyses.
机译:完整的因子育种设计可用于量化解释表型特征的加性遗传,非加性遗传和母体变异的数量。这样的方差估计对于检查进化潜力很重要。传统上,全因数配合设计是使用方差的双向分析来分析的,这可能会产生负方差值,因此不适合不平衡设计。混合效果模型不会产生负方差值,并且适合于非平衡设计。然而,使用传统的分析方法来提取方差分量,计算显着性值以及估计分量的置信区间和/或功效值并不容易。我们介绍了 fullfact –一个R程序包,它解决了这些问题,并有助于分析具有混合效应模型的全因子配合设计。在这里,我们总结了 fullfact 包的功能。观察到的数据函数提取由随机和固定效应解释的方差,并提供其意义。然后,我们计算可解释表型的加性遗传,非加性遗传和母体方差成分。特别是,我们集成了非正常错误结构,用于估计非正常数据类型的这些组件。重新采样的数据函数用于生成自举时间t置信区间,然后可以使用简单函数对其进行绘制。我们通过一个工作示例探索 fullfact 软件包。该软件包将有助于分析R中的完整因子配合设计,特别是用于分析二进制,比例和/或计数数据类型,并具有合并其他随机和固定效应以及功率分析的能力。

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