Giovani Luis Feltes, R. Negri, F. Raidan, L. Feres, V. Ribeiro, J. A. Cobuci
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引用次数: 1
摘要
-本工作的目的是利用可重复性和随机回归模型(RRM)估计遗传参数和育种价值,以提高吉尔奶牛的胚胎和卵母细胞产量。我们使用了1,747名奶牛女孩捐赠者的11,398份卵子采集记录,并评估了16种不同的模型:传统的可重复性模型和15种RRM模型,每种模型都考虑了不同的Legendre多项式回归量组合来描述可加性遗传和永久环境效应。从赤池信息准则(Akaike information criterion, AIC)和贝叶斯信息准则(Bayesian information criterion, BIC)的值来看,4G1P模型(遗传效应的4个回归量和永久环境效应的1个回归量)最适合分析活卵数和总卵母细胞数,3G1P模型最适合分析裂卵数和活卵数。RRM估计的遗传力高于重复性模型估计的遗传力。报告的卵母细胞和胚胎计数特征的高重复性表明,在第一次取卵时具有高卵母细胞和胚胎计数的供者在下一次取卵时应保持这一结果。相邻年龄间遗传相关性高且呈正相关,极端年龄间遗传相关性弱。在评估期间,我们观察到排名靠前的母畜(小母牛和母牛)的重新排名。RRM估计育种值的可靠性随年龄的变化而变化,RRM的预期遗传收益较大。这表明RRM是评价和选择卵母细胞和胚胎数量性状最合适的选择。
Genetic evaluation of oocyte and embryo production in dairy Gir cattle using repeatability and random regression models
- The objective of this work is to estimate genetic parameters and breeding values to improve embryo and oocyte production, using repeatability and random regression models (RRM) for Gir dairy cattle. We used 11,398 records of ovum pick-up from 1,747 dairy Gir donors and evaluated sixteen different models: the traditional repeatability model and fifteen RRM, each of which considered a different combination of Legendre polynomial regressors to describe the additive genetic and permanent environment effects. The 4G1P model (four regressors for the genetic effect and one regressor for the permanent environment effect) is the most suitable model to analyze the number of viable and total oocytes, while the 3G1P is the best model to analyze the number of cleaved and viable embryos, according to the values of the Akaike information criterion (AIC) and the Bayesian information criterion (BIC). The heritability estimated with the RRM was higher than that estimated with the repeatability model. The high repeatability reported for oocyte and embryo count traits indicates that donors, which had high oocyte and embryo counts in the first ovum pick-up, should maintain this result in the next ovum pick-up. Genetic correlations between adjacent ages were high and positive, while genetic correlations between extreme ages were weak. We observed a reranking of the top sires and females (heifers and cows) over the period evaluated. The reliability of the estimated breeding values by RRM showed changes across age, and the expected genetic gains by RRM are larger. This shows that RRM is most suitable alternative for the evaluation and selection of oocyte and embryo count traits.
期刊介绍:
The Revista Brasileira de Zootecnia (RBZ; Brazilian Journal of Animal Science) encompasses all fields of Animal Science Research. The RBZ publishes original scientific articles in the areas of Aquaculture, Biometeorology and Animal Welfare, Forage Crops and Grasslands, Animal and Forage Plants Breeding and Genetics, Animal Reproduction, Ruminant and Non-Ruminant Nutrition, and Animal Production Systems and Agribusiness.