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水牛乳、脂、蛋白产量的遗传参数估计的多性状随机回归模型。

Multiple-trait random regression models for the estimation of genetic parameters for milk, fat, and protein yield in buffaloes.

机构信息

Department of Animal Science, São Paulo State University, Jaboticabal, SP, Brazil.

出版信息

J Dairy Sci. 2013 Sep;96(9):5923-32. doi: 10.3168/jds.2012-6023. Epub 2013 Jul 5.

Abstract

In this study, genetic parameters for test-day milk, fat, and protein yield were estimated for the first lactation. The data analyzed consisted of 1,433 first lactations of Murrah buffaloes, daughters of 113 sires from 12 herds in the state of São Paulo, Brazil, with calvings from 1985 to 2007. Ten-month classes of lactation days were considered for the test-day yields. The (co)variance components for the 3 traits were estimated using the regression analyses by Bayesian inference applying an animal model by Gibbs sampling. The contemporary groups were defined as herd-year-month of the test day. In the model, the random effects were additive genetic, permanent environment, and residual. The fixed effects were contemporary group and number of milkings (1 or 2), the linear and quadratic effects of the covariable age of the buffalo at calving, as well as the mean lactation curve of the population, which was modeled by orthogonal Legendre polynomials of fourth order. The random effects for the traits studied were modeled by Legendre polynomials of third and fourth order for additive genetic and permanent environment, respectively, the residual variances were modeled considering 4 residual classes. The heritability estimates for the traits were moderate (from 0.21-0.38), with higher estimates in the intermediate lactation phase. The genetic correlation estimates within and among the traits varied from 0.05 to 0.99. The results indicate that the selection for any trait test day will result in an indirect genetic gain for milk, fat, and protein yield in all periods of the lactation curve. The accuracy associated with estimated breeding values obtained using multi-trait random regression was slightly higher (around 8%) compared with single-trait random regression. This difference may be because to the greater amount of information available per animal.

摘要

本研究旨在估计第一胎次的奶牛产奶量、乳脂率和乳蛋白率的测试日遗传参数。分析数据包含了来自巴西圣保罗州 12 个牛群的 113 头公牛的 1433 个第一胎次,这些牛的配种时间为 1985 年至 2007 年。测试日产奶量的泌乳月分为 10 个等级。使用贝叶斯推断的回归分析,通过 Gibbs 抽样应用动物模型来估计这 3 个性状的(协)方差分量。同期组定义为测试日的牛群-年份-月份。在模型中,随机效应为加性遗传、永久环境和残差。固定效应为同期组和挤奶次数(1 次或 2 次),水牛产犊时的年龄的协变量的线性和二次效应,以及群体的平均泌乳曲线,该曲线由四阶正交勒让德多项式建模。研究性状的随机效应分别由加性遗传和永久环境的三阶和四阶勒让德多项式建模,残差方差考虑 4 个残差等级。性状的遗传力估计值适中(0.21-0.38),在泌乳中期的估计值较高。性状之间和性状内的遗传相关估计值在 0.05 到 0.99 之间。结果表明,任何性状测试日的选择都将导致整个泌乳曲线的产奶量、乳脂率和乳蛋白率的间接遗传增益。与单一性状随机回归相比,多性状随机回归获得的估计育种值的准确性(约 8%)略高。这种差异可能是因为每头动物的信息量更大。

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