Department of Plant and Soil Sciences, University of Delaware, Newark 19716, USA.
Phytopathology. 2012 Nov;102(11):1016-25. doi: 10.1094/PHYTO-10-11-0268.
ABSTRACT The mixed linear model (MLM) is an advanced statistical technique applicable to many fields of science. The multivariate MLM can be used to model longitudinal data, such as repeated ratings of disease resistance taken across time. In this study, using an example data set from a multi-environment trial of northern leaf blight disease on 290 maize lines with diverse levels of resistance, multivariate MLM analysis was performed and its utility was examined. In the population and environments tested, genotypic effects were highly correlated across disease ratings and followed an autoregressive pattern of correlation decay. Because longitudinal data are often converted to the univariate measure of area under the disease progress curve (AUDPC), comparisons between univariate MLM analysis of AUDPC and multivariate MLM analysis of longitudinal data were made. Univariate analysis had the advantage of simplicity and reduced computational demand, whereas multivariate analysis enabled a comprehensive perspective on disease development, providing the opportunity for unique insights into disease resistance. To aid in the application of multivariate MLM analysis of longitudinal data on disease resistance, annotated program syntax for model fitting is provided for the software ASReml.
摘要 混合线性模型(MLM)是一种适用于许多科学领域的高级统计技术。多变量 MLM 可用于对纵向数据进行建模,例如在时间上对疾病抗性的重复评分。在这项研究中,使用来自对具有不同抗性水平的 290 个玉米品系进行的北方叶斑病多环境试验的示例数据集,进行了多变量 MLM 分析,并检验了其效用。在所测试的群体和环境中,基因型效应在疾病评分上高度相关,并遵循自回归相关衰减模式。由于纵向数据通常转换为疾病进展曲线下面积(AUDPC)的单变量度量,因此对 AUDPC 的单变量 MLM 分析与纵向数据的多变量 MLM 分析进行了比较。单变量分析具有简单性和降低计算需求的优势,而多变量分析则使人们能够全面了解疾病的发展,有机会深入了解疾病抗性。为了帮助在疾病抗性的纵向数据的多变量 MLM 分析中应用,为 ASReml 软件提供了用于模型拟合的注释程序语法。