Weigel K A, Gianola D
Department of Dairy Science, University of Wisconsin, Madison 53706.
J Dairy Sci. 1992 Oct;75(10):2824-33. doi: 10.3168/jds.S0022-0302(92)78045-X.
Genetic evaluation using BLUP can accommodate heterogeneous variances if the necessary variance components are known; this may require estimation of variance components within each heterogeneous subclass. Properties of sire and residual variance estimates obtained by an empirical Bayes approach, which combines within-herd and prior estimates, were examined via simulation. Prior estimates were obtained using REML across herds, as if variances were homogeneous. Convergence was improved by incorporation of prior information such that variance component estimates could be obtained in within-herd situations for which a REML algorithm failed to converge. Accuracy of sire variance estimates was greatest when both within-herd and prior information were used, but improvement in accuracy of residual variance estimates associated with incorporation of prior information was minimal. Correlations between sires' standardized true transmitting abilities and PTA that used empirical Bayes variance estimates were larger than those obtained when heterogeneity was ignored. Proportions of sires selected, based on standardized PTA, from environments with differing genetic and residual variances became more uniform as the relative weight placed on within-herd data in variance estimation increased. Thus, useful variance component estimates can be obtained within individual herds by using empirical Bayes methods with across-herd estimates as prior information; this may allow prediction of breeding values that are less influenced by heterogeneous variances.
如果已知必要的方差分量,使用最佳线性无偏预测(BLUP)进行遗传评估可以处理异质方差;这可能需要估计每个异质子类别的方差分量。通过模拟研究了结合群体内估计和先验估计的经验贝叶斯方法获得的父系方差和残差方差估计的性质。先验估计是使用跨群体的限制最大似然法(REML)获得的,就好像方差是同质的一样。通过纳入先验信息提高了收敛性,从而可以在REML算法未能收敛的群体内情况下获得方差分量估计。当同时使用群体内信息和先验信息时,父系方差估计的准确性最高,但与纳入先验信息相关的残差方差估计准确性的提高最小。使用经验贝叶斯方差估计的父系标准化真实传递能力与预测传递能力(PTA)之间的相关性大于忽略异质性时获得的相关性。随着方差估计中赋予群体内数据的相对权重增加,基于标准化PTA从具有不同遗传方差和残差方差的环境中选择的父系比例变得更加均匀。因此,通过使用以跨群体估计为先验信息的经验贝叶斯方法,可以在个体群体内获得有用的方差分量估计;这可能允许预测受异质方差影响较小的育种值。