Ergon Rolf
University of South-Eastern Norway Porsgrunn Norway.
Ecol Evol. 2023 Jul 5;13(7):e10194. doi: 10.1002/ece3.10194. eCollection 2023 Jul.
For theoretical studies, reaction norm evolution in a changing environment can be modeled by means of the multivariate breeder's equation, with the reaction norm parameters treated as traits in their own right. This is, however, not a feasible approach for the use of field data, where the intercept and slope values are not available. An alternative approach is to use infinite-dimensional characters and smooth covariance function estimates found by, e.g., random regression. This is difficult because of the need to find, for example, polynomial basis functions that fit the data reasonably well over time, and because reaction norms in multivariate cases are correlated, such that they cannot be modeled independently. Here, I present an alternative approach based on a multivariate linear mixed model of any order, with dynamical incidence and residual covariance matrices that reflect the changing environment. From such a mixed model follows a dynamical BLUP model for the estimation of the individual reaction norm parameter values at any given parent generation, and for updating of the mean reaction norm parameter values from generation to generation by means of Robertson's secondary theorem of natural selection. This will, for example, make it possible to disentangle the microevolutionary and plasticity components in climate change responses. The BLUP model incorporates the additive genetic relationship matrix in the usual way, and overlapping generations can easily be accommodated. Additive genetic and environmental model parameters are assumed to be known and constant, but it is discussed how they can be estimated by means of a prediction error method. The identifiability by the use of field or laboratory data containing environmental, phenotypic, fitness, and additive genetic relationship data is an important feature of the proposed model.
对于理论研究,不断变化的环境中的反应规范进化可以通过多元育种者方程进行建模,反应规范参数本身被视为性状。然而,对于实地数据的使用而言,这不是一种可行的方法,因为截距和斜率值不可用。一种替代方法是使用无限维特征和通过例如随机回归找到的平滑协方差函数估计。这很困难,因为需要找到例如随时间能较好拟合数据的多项式基函数,并且因为多元情况下的反应规范是相关的,所以它们不能独立建模。在此,我提出一种基于任意阶多元线性混合模型的替代方法,其动态关联和残差协方差矩阵反映不断变化的环境。从这样的混合模型可得出一个动态最佳线性无偏预测(BLUP)模型,用于估计任何给定亲代世代的个体反应规范参数值,并通过罗伯逊自然选择第二定理逐代更新平均反应规范参数值。例如,这将使得有可能区分气候变化响应中的微进化和可塑性成分。BLUP模型以通常方式纳入加性遗传关系矩阵,并且可以轻松处理重叠世代。假设加性遗传和环境模型参数是已知且恒定的,但也讨论了如何通过预测误差方法对它们进行估计。利用包含环境、表型、适合度和加性遗传关系数据的实地或实验室数据进行识别是所提出模型的一个重要特征。