Abstract
In the analysis of longitudinal data, before assuming a parametric model, an idea of the shape of the variance and correlation functions for both the genetic and environmental parts should be known. When a small number of observations is available for each subject at a fixed set of times, it is possible to estimate unstructured covariance matrices, but not when the number of observations over time is large and when individuals are not measured at all times. The non-parametric approach, based on the variogram, presented by Diggle & Verbyla (1998), is specially adapted for exploratory analysis of such data. This paper presents a generalization of their approach to genetic analyses. The methodology is applied to daily records for milk production in dairy cattle and data on age-specific fertility in Drosophila.
Cite
CITATION STYLE
Jaffrézic, F., Pletcher, S. D., & Hill, W. G. (2002). Non-parametric exploratory analysis of the covariance structure for genetic analysis of repeated measures and other function-value traits. Genetical Research, 80(1), 47–53. https://doi.org/10.1017/S0016672302005700
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.