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Modeling Daily Energy Balance of Dairy Cows in the First Three Lactations

机译:前三个哺乳期奶牛的每日能量平衡模型

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Daily energy balance was calculated for 111 Holstein cows in their first 3 lactations, based on combinations of smoothed preadjusted phenotypic records for milk yield, feed intake, live weight, and body condition score. Two energy balance traits were denned: one based on milk yield and feed intake (EB1) and the other on live weight and body condition score change (EB2). Bessel functions (BF), Legendre polynomials (LP), sinusoidal functions (SF), and cubic splines (CS) were used to model energy balance within and across lactations. Models with BF or LP fitted fixed regressions of order 1 to 6 and random regressions of order 1 to 10. Cubic splines were fitted at 5 to 30 equally spaced knot points. In within-lactation analyses with BF and LP models, likelihood ratio tests revealed that the fit improved significantly up to random regression order of 5 for EB1 and 4 for EB2, independently of the fixed regression order. For EB1 analyses with LP, improvement was marginal albeit significant even for higher random regression order. For CS models, optimal number of knot points was 13 and 12 for EB1 and EB2, respectively. Residual variance and comparisons between actual and predicted energy balance showed that LP of minimum order 8 and 5 modeled, respectively, EB1 and EB2 better than the other 3 functions. In across-lactation analyses with BF and LP models, likelihood ratio tests were significant as the random regression order increased, for any order of the fixed regression. For CS models, optimal number of knot points was 14 and 16 for EB1 and EB2, respectively. Residual variance and comparisons between actual and predicted energy balance showed that models fitting CS and high (>8) random order BF or LP provided the best fit to both traits. However, in an across-lactation analysis, even higher order of LP or BF will be required to provide as good a fit as within-lactation analyses.
机译:根据平滑的经过预先调整的表型记录(包括牛奶产量,采食量,体重和体况评分)的组合,计算了111头荷斯坦奶牛在头3次泌乳中的每日能量平衡。定义了两个能量平衡特征:一个基于产奶量和采食量(EB1),另一个基于活体重和身体状况评分变化(EB2)。贝塞尔函数(BF),勒让德多项式(LP),正弦函数(SF)和三次样条(CS)用于模拟哺乳期和哺乳期的能量平衡。具有BF或LP的模型拟合1到6阶的固定回归,拟合1到10阶的随机回归。在5到30个等距结点处拟合三次样条。在使用BF和LP模型进行的泌乳分析中,似然比测试显示,拟合度显着提高,直到EB1的随机回归顺序为5,EB2的随机回归顺序为4,与固定回归顺序无关。对于使用LP的EB1分析,即使对于更高的随机回归阶数,改善也是微不足道的。对于CS模型,EB1和EB2的最佳结点数分别为13和12。残差方差和实际能量平衡与预测能量平衡之间的比较表明,最小阶数LP的8和5分别建模为EB1和EB2优于其他3个函数。在使用BF和LP模型进行的全乳分析中,对于固定回归的任何顺序,随着随机回归顺序的增加,似然比检验非常显着。对于CS模型,EB1和EB2的最佳结点数分别为14和16。剩余方差以及实际和预测的能量平衡之间的比较表明,拟合CS和高阶(> 8)随机阶BF或LP的模型对这两个特征均提供了最佳拟合。但是,在全乳酸分析中,甚至需要更高阶的LP或BF才能提供与乳酸内分析一样好的拟合度。

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