Huggins R
Department of Statistical Science, La Trobe University, Bundoora, Australia.
Biometrics. 2000 Jun;56(2):537-45. doi: 10.1111/j.0006-341x.2000.00537.x.
In the study of longitudinal twin and family data, interest is often in the covariance structure of the data and the decomposition of this covariance structure into genetic and environmental components rather than in estimating the mean function. Various parametric models for covariance structures have been proposed but, e.g., in studies of children where growth spurts occur at various ages, it is difficult to a priori determine an appropriate parametric model for the covariance structure. In particular, there is a general lack of the visualization procedures, such as lowess, that are invaluable in the initial stages of constructing a parametric model for a mean function. Here we use kernel smoothing to modify a cross-sectional approach based on the sample covariance matrices to obtain smoothed estimates of the genetic and environmental variances and correlations for longitudinal twin data. The methods are proposed to be exploratory as an aid to parametric modeling rather than inferential, although approximate asymptotic standard errors are derived in the Appendix.
在纵向双胞胎和家庭数据的研究中,人们通常关注数据的协方差结构以及将这种协方差结构分解为遗传和环境成分,而不是估计均值函数。已经提出了各种用于协方差结构的参数模型,但是,例如,在儿童研究中,生长突增发生在不同年龄,很难先验地确定协方差结构的合适参数模型。特别是,普遍缺乏诸如局部加权散点平滑法(lowess)等可视化程序,而这些程序在构建均值函数的参数模型的初始阶段非常宝贵。在这里,我们使用核平滑来修改基于样本协方差矩阵的横截面方法,以获得纵向双胞胎数据的遗传和环境方差及相关性的平滑估计。尽管附录中推导了近似渐近标准误差,但我们提出这些方法是探索性的,作为参数建模的辅助手段,而不是用于推断。