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Models to Estimate Lactation Curves of Milk Yield and Somatic Cell Count in Dairy Cows at the Herd Level for the Use in Simulations and Predictive Models

机译:用于模拟和预测模型的牛群奶牛泌乳曲线和体细胞计数的泌乳曲线模型

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Typically, central milk recording data from dairy herds are recorded less than monthly. Over-fitting early in lactation periods is a challenge, which we explored in different ways by reducing the number of parameters needed to describe the milk yield and somatic cell count of individual cows. Furthermore, we investigated how the parameters of lactation models correlate between parities and from dam to offspring. The aim of the study was to provide simple and robust models for cow level milk yield and somatic cell count (SCC) for fitting to sparse data to parameterise herd- and cow-specific simulation of dairy herds. Data from 610 Danish Holstein herds were used to determine parity traits in milk production regarding milk yield and SCC of individual cows. Parity was stratified in first, second and third and higher for milk, and first to sixth and higher for SCC. Fitting of herd level parameters allowed for cow level lactation curves with three, two or one-parameters per lactation. Correlations of milk yield and SCC were estimated between lactations and between dam and offspring. The shape of the lactation curves varied markedly between farms. The correlation between lactations for milk yield and SCC were 0.2-0.6 and significant on more than 95% of farms. The variation in the daily milk yield was observed to be a source of variation to the SCC, and the total SCC was less correlated with the milk production than somatic cells per ml. A positive correlation was found between relative levels of the total SCC and the milk yield. The variation of lactation and SCC curves between farms highlights the importance of a herd level approach. The one-parameter per cow model using a herd level curve allows for estimating the cow production level from first the recording in the parity, while a two-parameter model requires more recordings for a credible estimate, but may more precisely predict persistence, and given the independence of parameters, these can be easily drawn for use in simulation models. We also conclude that using total SCC may stabilise models and therefore, the dilution factor is of importance in Danish Holstein.
机译:通常,来自奶牛群的中央牛奶记录数据的记录少于每月一次。泌乳早期过度适应是一项挑战,我们通过减少描述单个母牛的产奶量和体细胞计数所需的参数数量,以不同方式进行了探索。此外,我们研究了泌乳模型的参数如何在胎次之间以及从大坝到后代之间相互关联。该研究的目的是为奶牛水平的牛奶产量和体细胞计数(SCC)提供简单而健壮的模型,以适合稀疏数据以参数化特定于牛群和特定于牛群的奶牛群模拟。来自610个丹麦荷斯坦牛群的数据被用于确定与单头母牛的产奶量和SCC有关的产奶量平价性状。牛奶的均等价格分为第一,第二和第三及更高,SCC为第一至第六和更高。牛群水平参数的拟合允许母牛每次泌乳具有三个,两个或一个参数的泌乳水平曲线。估计泌乳之间以及大坝和后代之间的产奶量和SCC的相关性。各个农场之间的泌乳曲线形状明显不同。泌乳与牛奶产量和SCC之间的相关性为0.2-0.6,在超过95%的农场中具有显着性。观察到每日产奶量的变化是SCC变化的根源,与每毫升体细胞相比,总SCC与产奶量的相关性较小。在总SCC的相对水平和产奶量之间发现正相关。农场之间的泌乳和SCC曲线的变化凸显了畜群水平方法的重要性。使用牛群水平曲线的每头奶牛模型一个参数可以从同等记录的第一时间估算奶牛的生产水平,而两参数模型需要更多的记录以进行可靠的估计,但是可以更精确地预测持久性,并给出参数的独立性,可以轻松地绘制这些参数以用于仿真模型。我们还得出结论,使用总SCC可以稳定模型,因此,稀释因子在丹麦Holstein中很重要。

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