Xu C, Zhang Y-M, Xu S
Department of Botany and Plant Sciences, University of California, Riverside, CA 92521, USA.
Heredity (Edinb). 2005 Jan;94(1):119-28. doi: 10.1038/sj.hdy.6800583.
Many disease resistance traits in plants have a polygenic background and the disease phenotypes are modified by environmental factors. As a consequence, the phenotypic values usually show a quantitative variation. The phenotypes of such disease traits, however, are often measured in discrete but ordered categories. These traits are called ordinal traits. In terms of disease resistance, they are called quantitative resistance traits, as opposed to qualitative resistance traits, and are controlled by the quantitative resistance loci (QRL). Classical quantitative trait locus mapping methods are not optimal for ordinal trait analysis because the assumption of normal distribution is violated. Methods for mapping binary trait loci are not suitable either because there are more than two categories in ordinal traits. We developed a maximum likelihood method to map these QRL. The method is implemented via a multicycle expectation-conditional-maximization (ECM) algorithm under the threshold model, where we can estimate both the QRL effects and the thresholds that link the disease liability and the categorical phenotype. The method is verified in simulated data under various combinations of the parameters. An SAS program is available to implement the multicycle ECM algorithm. The program can be downloaded from our website at www.statgen.ucr.edu.
植物中的许多抗病性状具有多基因背景,其疾病表型会受到环境因素的影响。因此,表型值通常呈现出数量上的变化。然而,此类疾病性状的表型往往是以离散但有序的类别来衡量的。这些性状被称为有序性状。就抗病性而言,与定性抗病性状相对,它们被称为数量抗病性状,并由数量抗病基因座(QRL)控制。经典的数量性状基因座定位方法对于有序性状分析并非最优选择,因为其正态分布的假设不成立。二元性状基因座定位方法也不合适,因为有序性状有不止两个类别。我们开发了一种最大似然法来定位这些QRL。该方法通过在阈值模型下的多周期期望条件最大化(ECM)算法来实现,在该模型中,我们可以估计QRL效应以及连接疾病易感性和分类表型的阈值。该方法在各种参数组合的模拟数据中得到了验证。有一个SAS程序可用于实现多周期ECM算法。该程序可从我们的网站www.statgen.ucr.edu下载。