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首页> 外文期刊>Livestock Science >Influence of data structure on the estimation of the additive genetic direct and maternal covariance for early growth traits in Nellore cattle.
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Influence of data structure on the estimation of the additive genetic direct and maternal covariance for early growth traits in Nellore cattle.

机译:数据结构对内洛尔牛早期生长性状加性遗传直接和母系协方差估计的影响。

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摘要

The objective of the present study was to investigate the effect of data structure on estimated genetic parameters and predicted breeding values of direct and maternal genetic effects for weaning weight (WW) and weight gain from birth to weaning (BWG), including or not the genetic covariance between direct and maternal effects. Records of 97,490 Nellore animals born between 1993 and 2006, from the Jacarezinho cattle raising farm, were used. Two different data sets were analyzed: DI_all, which included all available progenies of dams without their own performance; DII_all, which included DI_all+20% of recorded progenies with maternal phenotypes. Two subsets were obtained from each data set (DI_all and DII_all): DI_1 and DII_1, which included only dams with three or fewer progenies; DI_5 and DII_5, which included only dams with five or more progenies. (Co)variance components and heritabilities were estimated by Bayesian inference through Gibbs sampling using univariate animal models. In general, for the population and traits studied, the proportion of dams with known phenotypic information and the number of progenies per dam influenced direct and maternal heritabilities, as well as the contribution of maternal permanent environmental variance to phenotypic variance. Only small differences were observed in the genetic and environmental parameters when the genetic covariance between direct and maternal effects was set to zero in the data sets studied. Thus, the inclusion or not of the genetic covariance between direct and maternal effects had little effect on the ranking of animals according to their breeding values for WW and BWG. Accurate estimation of genetic correlations between direct and maternal genetic effects depends on the data structure. Thus, this covariance should be set to zero in Nellore data sets in which the proportion of dams with phenotypic information is low, the number of progenies per dam is small, and pedigree relationships are poorly known.Digital Object Identifier http://dx.doi.org/10.1016/j.livsci.2012.02.004
机译:本研究的目的是研究数据结构对断奶体重(WW)和从出生到断奶的体重增加(BWG)的直接和母亲遗传效应的估计遗传参数和预测育种值的影响,包括或不包括遗传因素。直接影响与产妇影响之间的协方差。使用了Jacarezinho养牛场在1993年至2006年之间出生的97,490只Nellore动物的记录。分析了两个不同的数据集:DI_all,其中包括没有其自身性能的所有可用大坝后代; DII_all,其中包括DI_all + 20%的已记录的具有母亲表型的后代。从每个数据集获得两个子集(DI_all和DII_all):DI_1和DII_1,仅包括具有三个或更少后代的水坝; DI_5和DII_5,仅包括具有五个或更多后代的水坝。 (协)方差成分和遗传力通过使用单变量动物模型通过吉布斯抽样的贝叶斯推断来估计。通常,对于所研究的种群和特征,具有已知表型信息的大坝的比例和每个大坝的后代数量会影响直接和母体的遗传力,以及母体永久性环境变异对表型变异的影响。当直接和母体效应之间的遗传协方差在研究数据集中设为零时,在遗传和环境参数上仅观察到很小的差异。因此,根据WW和BWG的繁殖值,直接和母体效应之间是否包括遗传协方差对动物的排名影响不大。对直接和母体遗传影响之间遗传相关性的准确估计取决于数据结构。因此,在具有表型信息的大坝比例较低,每个大坝的后代数量少,谱系关系知之甚少的Nellore数据集中,应将此协方差设置为零。 doi.org/10.1016/j.livsci.2012.02.004

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