Department of Animal Science, University of California, Davis 95616.
J Anim Sci. 2012 Jul;90(7):2285-98. doi: 10.2527/jas.2011-4788. Epub 2012 Feb 3.
The objective of this study was to develop a framework describing the milk production curve in sows as affected by parity, method of milk yield (MY) determination, litter size (LS), and litter gain (LG). A database containing data on LS, LG, dietary protein and fat content, MY, and composition measured on more than 1 d during lactation and method for determining MY from peer reviewed publications and individual sow data from 3 studies was constructed. A Bayesian hierarchical model was developed to analyze milk production data. The classical Wood curve was used to model time trends in MY during lactation, and it was re-parameterized expressing the natural logarithm of MY values at d 5, 20, and 30 as functional parameters. The model incorporated random effects of experiment, sow nested within experiment, and fixed effects of LS, LG, parity, and method through the functional parameters of the Wood curve. A second set of models were constructed to analyze milk composition data, including day in milk, LS, dietary protein, and fat contents. Four scenarios with different LG and LS were constructed using the framework to estimate the energy output in milk at different days during lactation. The estimated energy output was compared with energy output values calculated using the 1998 NRC method. Milk yield was underestimated by approximately 20% with the weigh-suckle-weigh technique compared with the deuterium oxide dilution technique (P < 0.001). The mean LG and LS for the dataset were 2.05 kg/d (1.0; 3.3) and 9.5 piglets (5; 14), respectively. The MY was affected by LS on d 5 and 20 (P < 0.001) and by LG on d 20 (P < 0.001) and d 30 (P = 0.004). The mean time to peak lactation was 18.7 d (SD = 1.06) postpartum and mean MY at peak lactation was 9.23 kg (SD = 0.14). The average protein, lactose, and fat content of milk was 5.22 (SD = 0.06), 5.41 (SD = 0.08), and 7.32% (SD = 0.17%), respectively. The NE requirement for lactation increased from d 5 to 20 because of increased MY. Requirements also increased with increasing LG and LS. The framework could be used to predict energy and protein requirements for lactation under different production expectations and can be incorporated into a whole animal model for determination of energy and nutrient requirements for lactating sows, which can optimize sow performance and longevity.
本研究的目的是建立一个框架,描述受胎次、产奶量(MY)测定方法、窝产仔数(LS)和窝增重(LG)影响的母猪产奶曲线。构建了一个包含 LS、LG、日粮蛋白和脂肪含量、MY 以及哺乳期超过 1 天测量的组成以及来自 3 项研究的同行评审出版物和个体母猪数据的 MY 测定方法的数据的数据库。开发了一个贝叶斯层次模型来分析产奶数据。经典的 Wood 曲线用于在哺乳期建模 MY 的时间趋势,并通过 Wood 曲线的功能参数对其进行重新参数化,将第 5、20 和 30 天的 MY 值的自然对数表示为功能参数。该模型通过 Wood 曲线的功能参数纳入了实验、实验内的母猪、LS、LG、胎次和方法的随机效应。还构建了第二组模型来分析乳成分数据,包括泌乳天数、LS、日粮蛋白和脂肪含量。使用该框架构建了四个不同 LG 和 LS 的情况,以估计哺乳期不同天数的牛奶中能量输出。使用 1998 年 NRC 方法计算的能量输出值与估计的能量输出值进行了比较。与氘氧化物稀释技术相比,称重-哺乳-称重技术对 MY 的估计低了约 20%(P<0.001)。数据集的平均 LG 和 LS 分别为 2.05 kg/d(1.0;3.3)和 9.5 头仔猪(5;14)。MY 受第 5 天和第 20 天 LS 的影响(P<0.001)和第 20 天 LG 的影响(P<0.001)和第 30 天 LG 的影响(P=0.004)。泌乳高峰期的平均时间为产后 18.7 天(SD=1.06),泌乳高峰期的平均 MY 为 9.23 kg(SD=0.14)。牛奶中蛋白质、乳糖和脂肪的平均含量分别为 5.22%(SD=0.06)、5.41%(SD=0.08)和 7.32%(SD=0.17%)。由于 MY 的增加,泌乳第 5 天到第 20 天的泌乳 NE 需要量增加。随着 LG 和 LS 的增加,需求也会增加。该框架可用于预测不同生产预期下的泌乳能量和蛋白质需求,并可纳入用于确定泌乳母猪能量和营养需求的整体动物模型,从而优化母猪性能和寿命。