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Monitoring predictive and informative indicators of the energy status of dairy cows during early lactation in the context of monthly milk recordings using mid-infrared spectroscopy

机译:利用中红外光谱,每月牛奶录制背景下监测奶牛能量状况的预测和信息性指标

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With the onset of lactation, voluntary feed intake does not increase as fast as the milk yield and the energy balance (EB) becomes physiologically negative. The risk of metabolic disorders increases with decreasing EB. During this time the concentration of beta-hydroxybutyrate (BHB) in serum increases. Herd managers cannot calculate the EB as the feed intake is commonly not quantified. Measuring the concentration of BHB in serum is generally not feasible on farms because blood samples must be collected and the respective analyses run. The motivation for developing the presented models was to be able to utilise the potential of the mid-infrared (MIR) spectroscopy spectral data (as part of the monthly milk recording)) for predicting the extensive energy status indicators EB and the BHB in serum in the first crucial lactation weeks (LW). In the first 10 LW, milk and blood samples were sampled from 65 primiparous (n = 20) and multiparous (n = 45) German Holstein cows. Milk samples were analysed by the laboratory of the milk recording organisation (MRO). For the reference data, blood samples were taken for BHB analysis and the EB of each cow was calculated using automatic weighing troughs for the energy intake. To predict the indicators of energy status, linear regression models that are easily applied in real-time were combined with milk spectral data, milk component data, and information on animal lactation number and stage. The linear regression model obtained better accuracy than the partial least square. In the first 4 LW the best linear regression model reached R-2 = 0.55 for EB in the multiparous cows (MC) and R-2 = 0.83 for EB in the primiparous cows (PC); the best model for the 5th to 10th LW reached R-2 = 0.57 for EB in the MC and R-2 = 0.71 for EB in the PC. To predict serum BHB in the first 4 LW the best linear regression model reached R-2 = 0.42. Sensitivity (sen) and specificity (spec) were calculated (cut-off values: BHB 1200 mu mol/L; EB 5% percentile). Cows at risk of an energy status imbalance during early lactation can be screened by the prediction of EB (and serum BHB) in the context of the monthly milk recording. These data provide a basis for further individual animal or herd-based steps to attenuate the risk for diseases in early lactation.
机译:随着哺乳期的开始,随着牛奶产量和能量平衡(EB)变得生理阴性,自愿饲料摄入量不会迅速增加。代谢障碍的风险随着eB的降低而增加。在此期间,血清中β-羟基丁酸酯(BHB)的浓度增加。牛群管理人员无法计算EB,因为饲料摄入量通常没有量化。测量血清中BHB的浓度通常在农场通常不可行,因为必须收集血液样品并相应的分析运行。开发所提出的模型的动机是能够利用中红外(MIR)光谱数据(作为每月牛奶记录的一部分)的电位),用于预测广泛的能量状态指标EB和血清中的BHB第一个至关重要的哺乳期(LW)。在前10LW中,牛奶和血液样品从65次妊娠(n = 20)和德国Holstein奶牛中取样。通过牛奶记录组织(MRO)的实验室分析了牛奶样品。对于参考数据,采用血液样品进行BHB分析,使用用于能量摄入的自动称重槽计算每台母牛的EB。为了预测能量状态指标,实时易于应用的线性回归模型与牛奶谱数据,牛奶成分数据和动物哺乳期和阶段的信息相结合。线性回归模型获得比部分最小正方形更好的精度。在前4 LW中,在初步奶牛(PC)中,Murocous Cows(MC)和R-2 = 0.83的EB达到R-2 = 0.55的最佳线性回归模型;第5至第10 LW的最佳型号达到R-2 = 0.57的EB在MC和R-2 = 0.71的PC中的EB。为了预测前4 LW中的血清BHB,最好的线性回归模型达到R-2 = 0.42。计算灵敏度(SEN)和特异性(规格)(截止值:BHB 1200 mm mol / L; EB 5%百分位数)。在早期哺乳期间的能量状态失调风险的奶牛可以通过在每月牛奶录制的背景下预测EB(和血清BHB)来筛选。这些数据为进一步的个体动物或基于畜群的步骤提供了基础,以减轻早期哺乳期的疾病风险。

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