Cui Yuehua, Kim Dong-Yun, Zhu Jun
Department of Statistics and Probability, Michigan State University, East Lansing 48824, USA.
Genetics. 2006 Dec;174(4):2159-72. doi: 10.1534/genetics.106.061960. Epub 2006 Oct 8.
Statistical methods for mapping quantitative trait loci (QTL) have been extensively studied. While most existing methods assume normal distribution of the phenotype, the normality assumption could be easily violated when phenotypes are measured in counts. One natural choice to deal with count traits is to apply the classical Poisson regression model. However, conditional on covariates, the Poisson assumption of mean-variance equality may not be valid when data are potentially under- or overdispersed. In this article, we propose an interval-mapping approach for phenotypes measured in counts. We model the effects of QTL through a generalized Poisson regression model and develop efficient likelihood-based inference procedures. This approach, implemented with the EM algorithm, allows for a genomewide scan for the existence of QTL throughout the entire genome. The performance of the proposed method is evaluated through extensive simulation studies along with comparisons with existing approaches such as the Poisson regression and the generalized estimating equation approach. An application to a rice tiller number data set is given. Our approach provides a standard procedure for mapping QTL involved in the genetic control of complex traits measured in counts.
用于定位数量性状基因座(QTL)的统计方法已得到广泛研究。虽然大多数现有方法假设表型呈正态分布,但当表型以计数形式测量时,正态性假设很容易被违反。处理计数性状的一个自然选择是应用经典的泊松回归模型。然而,在协变量的条件下,当数据可能存在欠分散或过分散时,泊松均值 - 方差相等的假设可能不成立。在本文中,我们提出了一种针对以计数形式测量的表型的区间定位方法。我们通过广义泊松回归模型对QTL的效应进行建模,并开发基于似然的有效推断程序。这种方法通过EM算法实现,允许在整个基因组范围内扫描QTL的存在情况。通过广泛的模拟研究以及与现有方法(如泊松回归和广义估计方程方法)的比较,评估了所提出方法的性能。给出了一个水稻分蘖数数据集的应用。我们的方法为定位参与以计数形式测量的复杂性状遗传控制的QTL提供了一个标准程序。