首页> 外文期刊>Journal of Animal Breeding and Genetics >Alternative parameterizations of the multiple-trait random regression model for milk yield and somatic cell score via recursive links between phenotypes
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Alternative parameterizations of the multiple-trait random regression model for milk yield and somatic cell score via recursive links between phenotypes

机译:通过表型之间的递归联系,对牛奶产量和体细胞得分进行多特征随机回归模型的替代参数化

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Multiple-trait random regression models with recursive phenotypic link from somatic cell score (SCS) to milk yield on the same test day and with different restrictions on co-variances between these traits were fitted to the first-lactation Canadian Holstein data. Bayesian methods with Gibbs sampling were used to derive inferences about parameters for all models. Bayes factor indicated that the recursive model with uncorrelated environmental effects between traits was the most plausible specification in describing the data. Goodness of fit in terms of a within-trait weighted mean square error and correlation between observed and predicted data was the same for all parameterizations. All recursive models estimated similar negative causal effects from SCS to milk yield (up to -0.4 in 46-115 days in milk in lactation). Estimates of heritabilities, genetic and environmental correlations for the first two regression coefficients (overall level of a trait and lactation persistency) within both traits were similar among models. Genetic correlations between milk and SCS were dependent on the restrictions on genetic co-variances for these traits. Recursive model with uncorrelated system genetic effects between milk and SCS gave estimates of genetic correlations of the opposite sign compared with a regular multiple-trait model. Phenotypic recursion between milk and SCS seemed, however, to be the only source of environmental correlations between these two traits. Rankings of sires for total milk yield in lactation, average daily SCS and persistency for both traits were similar among models. Multiple-trait model with recursive links between milk and SCS and uncorrelated random environmental effects could be an attractive alternative for a regular multiple-trait model in terms of model parsimony and accuracy.
机译:在第一个泌乳期加拿大荷斯坦奶牛的数据中拟合了多性状随机回归模型,该模型具有从同一天的体细胞评分(SCS)到牛奶产量的递归表型联系,并且这些性状之间的协方差具有不同的限制。使用带有Gibbs采样的贝叶斯方法来得出关于所有模型的参数的推论。贝叶斯因子表明,在性状之间具有不相关环境影响的递归模型是描述数据的最合理的说明。对于所有参数设置,就特征内加权均方误差而言的拟合优度以及观察到的数据与预测数据之间的相关性是相同的。所有递归模型都估计了从SCS到牛奶产量的相似的负因果效应(泌乳期46-115天牛奶中的-0.4高达-0.4)。在两个性状中,前两个回归系数(性状的总体水平和泌乳持续性)的遗传力,遗传和环境相关性估计在模型之间相似。牛奶和SCS之间的遗传相关性取决于这些性状在遗传协方差上的限制。与常规的多性状模型相比,在牛奶和SCS之间具有不相关的系统遗传效应的递归模型可以估计相反符号的遗传相关性。但是,牛奶和SCS之间的表型递归似乎是这两个特征之间环境相关性的唯一来源。在两个模型中,哺乳期总奶产量,平均每日SCS和两个特性的持久性的父亲排名相似。就模型简约性和准确性而言,在牛奶和SCS之间具有递归联系以及不相关的随机环境影响的多特征模型可能是常规多特征模型的一种有吸引力的替代方法。

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