Gianola Daniel, Simianer Henner
Department of Animal Sciences, University of Wisconsin, Madison 53706, USA.
Genetics. 2006 Nov;174(3):1613-24. doi: 10.1534/genetics.106.060673. Epub 2006 Sep 15.
A fully Bayesian method for quantitative genetic analysis of data consisting of ranks of, e.g., genotypes, scored at a series of events or experiments is presented. The model postulates a latent structure, with an underlying variable realized for each genotype or individual involved in the event. The rank observed is assumed to reflect the order of the values of the unobserved variables, i.e., the classical Thurstonian model of psychometrics. Parameters driving the Bayesian hierarchical model include effects of covariates, additive genetic effects, permanent environmental deviations, and components of variance. A Markov chain Monte Carlo implementation based on the Gibbs sampler is described, and procedures for inferring the probability of yet to be observed future rankings are outlined. Part of the model is rendered nonparametric by introducing a Dirichlet process prior for the distribution of permanent environmental effects. This can lead to potential identification of clusters of such effects, which, in some competitions such as horse races, may reflect forms of undeclared preferential treatment.
本文提出了一种完全贝叶斯方法,用于对由例如在一系列事件或实验中评分的基因型等级组成的数据进行数量遗传分析。该模型假定存在一个潜在结构,对于事件中涉及的每个基因型或个体都有一个潜在变量实现。假设观察到的等级反映了未观察到的变量值的顺序,即心理测量学中的经典瑟斯顿模型。驱动贝叶斯层次模型的参数包括协变量效应、加性遗传效应、永久环境偏差和方差分量。描述了基于吉布斯采样器的马尔可夫链蒙特卡罗实现,并概述了推断尚未观察到的未来排名概率的程序。通过为永久环境效应的分布引入狄利克雷过程先验,使模型的一部分变为非参数模型。这可能会潜在地识别出此类效应的聚类,在一些比赛(如赛马)中,这可能反映了未申报的优惠待遇形式。