Meyer K
Animal Genetics and Breeding Unit, University of New England, Armidale, NSW 2351, Australia.
J Anim Breed Genet. 2007 Apr;124(2):50-64. doi: 10.1111/j.1439-0388.2007.00637.x.
Multivariate analyses of carcass traits for Angus cattle, consisting of six traits recorded on the carcass and eight auxiliary traits measured by ultrasound scanning of live animals, are reported. Analyses were carried out by restricted maximum likelihood, fitting a number of reduced rank and factor analytic models for the genetic covariance matrix. Estimates of eigenvalues and eigenvectors for different orders of fit are contrasted and implications for the estimates of genetic variances and correlations are examined. Results indicate that at most eight principal components (PCs) are required to model the genetic covariance structure among the 14 traits. Selection index calculations suggest that the first seven of these PCs are sufficient to obtain estimates of breeding values for the carcass traits without loss in the expected accuracy of evaluation. This implied that the number of effects fitted in genetic evaluation for carcass traits can be halved by estimating breeding values for the leading PCs directly.
本文报道了对安格斯牛胴体性状的多变量分析,其中包括胴体上记录的六个性状以及通过对活体动物进行超声扫描测量的八个辅助性状。分析采用限制最大似然法,针对遗传协方差矩阵拟合了多个降秩和因子分析模型。对比了不同拟合阶数的特征值和特征向量估计值,并研究了其对遗传方差和相关性估计的影响。结果表明,对这14个性状的遗传协方差结构进行建模最多需要八个主成分(PC)。选择指数计算表明,其中前七个PC足以获得胴体性状育种值的估计,而不会损失预期的评估准确性。这意味着通过直接估计主要PC的育种值,胴体性状遗传评估中拟合的效应数量可以减半。