Bink M C, Van Arendonk J A
Animal Breeding and Genetics Group, Wageningen Institute of Animal Sciences, Wageningen Agricultural University, 6700 AH Wageningen, The
Genetics. 1999 Jan;151(1):409-20. doi: 10.1093/genetics/151.1.409.
Augmentation of marker genotypes for ungenotyped individuals is implemented in a Bayesian approach via the use of Markov chain Monte Carlo techniques. Marker data on relatives and phenotypes are combined to compute conditional posterior probabilities for marker genotypes of ungenotyped individuals. The presented procedure allows the analysis of complex pedigrees with ungenotyped individuals to detect segregating quantitative trait loci (QTL). Allelic effects at the QTL were assumed to follow a normal distribution with a covariance matrix based on known QTL position and identity by descent probabilities derived from flanking markers. The Bayesian approach estimates variance due to the single QTL, together with polygenic and residual variance. The method was empirically tested through analyzing simulated data from a complex granddaughter design. Ungenotyped dams were related to one or more sons or grandsires in the design. Heterozygosity of the marker loci and size of QTL were varied. Simulation results indicated a significant increase in power when ungenotyped dams were included in the analysis.
对于未进行基因分型的个体,通过使用马尔可夫链蒙特卡罗技术,以贝叶斯方法实现标记基因型的增强。将亲属的标记数据和表型数据相结合,以计算未进行基因分型个体的标记基因型的条件后验概率。所提出的程序允许对具有未进行基因分型个体的复杂家系进行分析,以检测分离的数量性状基因座(QTL)。假定QTL处的等位基因效应遵循正态分布,其协方差矩阵基于已知的QTL位置以及从侧翼标记得出的同源概率。贝叶斯方法估计单个QTL引起的方差,以及多基因方差和残差方差。通过分析来自复杂孙女设计的模拟数据,对该方法进行了实证检验。在该设计中,未进行基因分型的母畜与一个或多个儿子或祖父相关。标记位点的杂合性和QTL的大小有所不同。模拟结果表明,当分析中纳入未进行基因分型的母畜时,检验效能显著提高。