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Genetic parameters for first lactation dairy traits in the Alpine and Saanen goat breeds using a random regression test-day model

机译:使用随机回归测试日模型的高山和Saanen Goat品种的遗传参数

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Random regression models (RRM) are widely used to analyze longitudinal data in genetic evaluation systems because they can better account for time-course changes in environmental effects and additive genetic values of animals by fitting the test-day (TD) specific effects. Our objective was to implement a random regression model for the evaluation of dairy production traits in French goats. The data consisted of milk TD records from 30,186 and 32,256 first lactations of Saanen and Alpine goats. Milk yield, fat yield, protein yield, fat content and protein content were considered. Splines were used to model the environmental factors. The genetic and permanent environmental effects were modeled by the same Legendre polynomials. The goodness-of-fit and the genetic parameters derived from functions of the polynomials of orders 0 to 4 were tested. Results were also compared to those from a lactation model with total milk yield calculated over 250 days and to those of a multiple-trait model that considers performance in six periods throughout lactation as different traits. Genetic parameters were consistent between models. Models with fourth-order Legendre polynomials led to the best fit of the data. In order to reduce complexity, computing time, and interpretation, a rank reduction of the variance covariance matrix was performed using eigenvalue decomposition. With a reduction to rank 2, the first two principal components correctly summarized the genetic variability of milk yield level and persistency, with a correlation close to 0 between them. A random regression model was implemented in France to evaluate and select goats for yield traits and persistency, which are independent i.e. no genetic correlation between them, in first lactation.
机译:随机回归模型(RRM)被广泛用于分析遗传评估系统中的纵向数据,因为它们可以更好地考虑通过拟合测试日(TD)特异性效果来进行环境效应和动物添加剂遗传值的时间变化。我们的目标是为法国山羊的乳制品生产性评估进行随机回归模型。这些数据由30,186和32,256次哺乳酸的牛奶TD记录组成。考虑牛奶产量,脂肪产率,蛋白质产量,脂肪含量和蛋白质含量。花键被用来建模环境因素。遗传和永久性环境影响由同一传说者多项式进行建模。测试了良好的健康和源自订单0至4的多项式的遗传参数。结果也与来自哺乳期模型的结果进行了比较,总牛奶产量超过250天,并在整个哺乳期间考虑在六个时期的性能,以在不同的特征中考虑表现。遗传参数在模型之间是一致的。第四阶Legendre多项式的模型导致了数据的最佳拟合。为了降低复杂性,计算时间和解释,使用特征值分解来执行方差协方差矩阵的秩减少。随着秩2的减少,前两个主要成分正确总结了牛奶产量水平和持续性的遗传变异性,它们之间的相关性接近0。在法国实施了随机回归模型,以评估并选择山羊的收益率特征和持久性,其是独立的I.E.它们之间没有遗传相关性,在第一哺乳期间。

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