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Unification of regression-based methods for the analysis of natural selection

机译:基于回归的自然选择分析方法的统一

摘要

Regression analyses are central to characterization of the form and strength of natural selection in nature. Two common analyses that are currently used to characterize selection are (1) least squares–based approximation of the individual relative fitness surface for the purpose of obtaining quantitatively useful selection gradients, and (2) spline-based estimation of (absolute) fitness functions to obtain flexible inference of the shape of functions by which fitness and phenotype are related. These two sets of methodologies are often implemented in parallel to provide complementary inferences of the form of natural selection. We unify these two analyses, providing a method whereby selection gradients can be obtained for a given observed distribution of phenotype and characterization of a function relating phenotype to fitness. The method allows quantitatively useful selection gradients to be obtained from analyses of selection that adequately model nonnormal distributions of fitness, and provides unification of the two previously separate regression-based fitness analyses. We demonstrate the method by calculating directional and quadratic selection gradients associated with a smooth regression-based generalized additive model of the relationship between neonatal survival and the phenotypic traits of gestation length and birth mass in humans.
机译:回归分析对于表征自然界中自然选择的形式和强度至关重要。当前用于表征选择的两种常见分析是:(1)为了获得定量上有用的选择梯度,对各个相对适应度表面进行基于最小二乘法的逼近;以及(2)对(绝对)适应度函数进行基于样条的估计获得与适应性和表型相关的函数形状的灵活推断。这两组方法通常并行执行,以提供自然选择形式的补充推论。我们将这两个分析统一起来,提供了一种方法,通过该方法,可以为给定的表型分布和对表型与适应性相关的功能进行表征,从而获得选择梯度。该方法允许从足够模拟适应度的非正态分布的选择分析中获得定量有用的选择梯度,并提供两个先前单独的基于回归的适应性分析的统一。我们通过计算方向和二次选择梯度来证明该方法,该梯度与基于平滑回归的新生儿生存率与人的妊娠期长度和出生质量的表型特征之间关系的广义加性模型相关。

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