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Genetic parameter estimates for live weight and daily live weight gain obtained for Nellore bulls in a test station using different models

机译:使用不同模型在测试站中获得的内洛尔公牛的活体重和每日活体重增加的遗传参数估计

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摘要

The objective of this study was to estimate (co)variance components and genetic parameters for live weight (LW) and daily live weight gain (LWG) of Nellore bulls in a test station using multi-trait and random regression models. In addition, breeding values for these traits were predicted by multi-trait and random regression analyses, and the rank of animals based on breeding values was compared with the current selection criterion of the test station (own performance). A total of 4758 Nellore bulls tested in a central station of the Beef Cattle Research Center (CPPC) between 1978 and 2007, including 2211 bulls from the CPPC herd and 2547 from commercial herds, were used. During the test, four LWs were recorded at intervals of 56 days (LW1d, LW56d. LW112d and LW168d). LWG was calculated as the difference between two consecutive weights for three periods: 1 to 55 (LWG(1)), 56 to 111 (LWG(2)), and 112 to 168 (LWG(3)) days on test. For LW and LWG, the multi-trait model included the fixed effects of contemporary group (year-month of birth), dam age class, and animal age at recording as covariate. For random regression analysis, direct additive genetic and animal permanent environmental effects were modeled using linear, quadratic and cubic polynomial functions. Residual variances for LW and LWG were modeled using a step function with 1 or 3 classes, respectively. Contemporary group (year-month of birth and month of recording) and dam age class were included as fixed effects. The (co)variance components were estimated by the Restricted Maximum Likelihood method using the WOMBAT software. According to model comparison criterion, the model including cubic and quadratic Legendre polynomials to fit genetic and animal permanent environmental effects, respectively, was the most appropriate to describe the covariance structure of LW. For LWG, the BIC value indicated that the model including quadratic and linear Legendre polynomials was the most appropriate to fit genetic and animal permanent environmental effects, respectively. The variance component and genetic parameter estimates for LW and LWG obtained by random regression and multi-trait analyses were similar. Random regression on Legendre polynomials of days on test was more appropriate than multi-trait models to describe the genetic variation of growth traits in station-tested Nellore bulls. Selection based on breeding values for LWG during the test would result in the selection of bulls different from those chosen if final weight is applied as a selection criterion. (C) 2011 Elsevier B.V. All rights reserved.
机译:这项研究的目的是使用多特征和随机回归模型来评估测试站内罗牛公牛的活重(LW)和每日活重增加(LWG)的(共)方差成分和遗传参数。另外,通过多性状和随机回​​归分析预测了这些性状的育种值,并将基于育种值的动物等级与测试站的当前选择标准(自身性能)进行了比较。在1978年至2007年之间,在牛肉牛研究中心(CPPC)的中央站测试了总共4758头内洛牛,包括来自CPPC牛群的2211头牛和来自商业牛群的2547头。在测试期间,以56天的间隔记录了四个LW(LW1d,LW56d,LW112d和LW168d)。 LWG计算为三个测试期间两个连续权重之间的差:1至55(LWG(1)),56至111(LWG(2))和112至168(LWG(3))天。对于LW和LWG,多特征模型包括当代群体(出生年月),水坝年龄等级和记录为协变量的动物年龄的固定影响。对于随机回归分析,使用线性,二次和三次多项式函数对直接加性遗传和动物永久环境效应进行建模。 LW和LWG的残差方差分别使用1类或3类的阶跃函数建模。固定效应包括当代组(出生年份和记录月份)和水坝年龄。 (协)方差分量通过使用WOMBAT软件的限制最大似然法估计。根据模型比较标准,分别包含三次和二次Legendre多项式以适应遗传和动物永久环境影响的模型最适合描述LW的协方差结构。对于LWG,BIC值表明包含二次和线性Legendre多项式的模型分别最适合遗传和动物永久环境影响。通过随机回归和多特征分析获得的LW和LWG的方差分量和遗传参数估计值相似。测试天数的勒让德多项式的随机回归比多性状模型更适合于描述经过站内测试的内洛尔公牛生长性状的遗传变异。如果在测试过程中基于LWG的育种值进行选择,将导致选择的公牛与将最终重量用作选择标准时所选择的公牛不同。 (C)2011 Elsevier B.V.保留所有权利。

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