Departamento de Zootecnia, Universidade Federal de Santa Maria, Santa Maria, RS 97105-900, Brazil.
J Anim Sci. 2012 Jul;90(7):2255-63. doi: 10.2527/jas.2011-4252. Epub 2012 Jan 27.
The objective of this study was to develop and evaluate a mathematical model used to estimate the daily amino acid requirements of individual growing-finishing pigs. The model includes empirical and mechanistic model components. The empirical component estimates daily feed intake (DFI), BW, and daily gain (DG) based on individual pig information collected in real time. Based on DFI, BW, and DG estimates, the mechanistic component uses classic factorial equations to estimate the optimal concentration of amino acids that must be offered to each pig to meet its requirements. The model was evaluated with data from a study that investigated the effect of feeding pigs with a 3-phase or daily multiphase system. The DFI and BW values measured in this study were compared with those estimated by the empirical component of the model. The coherence of the values estimated by the mechanistic component was evaluated by analyzing if it followed a normal pattern of requirements. Lastly, the proposed model was evaluated by comparing its estimates with those generated by the existing growth model (InraPorc). The precision of the proposed model and InraPorc in estimating DFI and BW was evaluated through the mean absolute error. The empirical component results indicated that the DFI and BW trajectories of individual pigs fed ad libitum could be predicted 1 d (DFI) or 7 d (BW) ahead with the average mean absolute error of 12.45 and 1.85%, respectively. The average mean absolute error obtained with the InraPorc for the average individual of the population was 14.72% for DFI and 5.38% for BW. Major differences were observed when estimates from InraPorc were compared with individual observations. The proposed model, however, was effective in tracking the change in DFI and BW for each individual pig. The mechanistic model component estimated the optimal standardized ileal digestible Lys to NE ratio with reasonable between animal (average CV = 7%) and overtime (average CV = 14%) variation. Thus, the amino acid requirements estimated by model are animal- and time-dependent and follow, in real time, the individual DFI and BW growth patterns. The proposed model can follow the average feed intake and feed weight trajectory of each individual pig in real time with good accuracy. Based on these trajectories and using classical factorial equations, the model makes it possible to estimate dynamically the AA requirements of each animal, taking into account the intake and growth changes of the animal.
本研究旨在开发和评估一种用于估算个体生长育肥猪每日氨基酸需求的数学模型。该模型包含经验模型和机理模型组件。经验模型基于实时收集的个体猪信息,估算每日采食量(DFI)、体重(BW)和日增重(DG)。基于 DFI、BW 和 DG 的估计值,机理模型组件使用经典析因方程来估算必须提供给每头猪的最佳氨基酸浓度,以满足其需求。该模型使用一项研究的数据进行了评估,该研究调查了饲喂猪三阶段或每日多阶段系统的效果。该研究中测量的 DFI 和 BW 值与模型经验模型组件的估计值进行了比较。通过分析是否遵循正常的需求模式,评估了机理模型组件估计值的一致性。最后,通过将其估计值与现有生长模型(InraPorc)生成的估计值进行比较,评估了所提出的模型。通过平均绝对误差评估了所提出的模型和 InraPorc 估算 DFI 和 BW 的精度。经验模型组件的结果表明,自由采食个体猪的 DFI 和 BW 轨迹可以提前 1 天(DFI)或 7 天(BW)进行预测,平均平均绝对误差分别为 12.45%和 1.85%。对于群体中平均个体,InraPorc 获得的平均平均绝对误差分别为 DFI 的 14.72%和 BW 的 5.38%。当将 InraPorc 的估计值与个体观测值进行比较时,观察到了较大的差异。然而,所提出的模型有效地跟踪了每个个体猪的 DFI 和 BW 的变化。机理模型组件以合理的动物间(平均 CV=7%)和随时间(平均 CV=14%)变化估算最佳标准化回肠可消化赖氨酸与能量比。因此,模型估计的氨基酸需求取决于动物和时间,并实时跟踪个体 DFI 和 BW 生长模式。所提出的模型可以实时准确地跟踪每个个体猪的平均采食量和饲料重量轨迹。基于这些轨迹并使用经典析因方程,该模型可以动态估计每个动物的 AA 需求,考虑到动物的采食量和生长变化。