Excellence Center for Animal Science Research and Department of Animal Science, Faculty of Agriculture, Ferdowsi University of Mashhad, PO Box 91775-1163, Iran.
Poult Sci. 2010 Jul;89(7):1562-8. doi: 10.3382/ps.2010-00639.
There has been a considerable and continuous interest to develop equations for rapid and accurate prediction of the ME of meat and bone meal. In this study, an artificial neural network (ANN), a partial least squares (PLS), and a multiple linear regression (MLR) statistical method were used to predict the TME(n) of meat and bone meal based on its CP, ether extract, and ash content. The accuracy of the models was calculated by R(2) value, MS error, mean absolute percentage error, mean absolute deviation, bias, and Theil's U. The predictive ability of an ANN was compared with a PLS and a MLR model using the same training data sets. The squared regression coefficients of prediction for the MLR, PLS, and ANN models were 0.38, 0.36, and 0.94, respectively. The results revealed that ANN produced more accurate predictions of TME(n) as compared with PLS and MLR methods. Based on the results of this study, ANN could be used as a promising approach for rapid prediction of nutritive value of meat and bone meal.
人们一直对开发快速、准确预测肉骨粉 ME 的方程有着浓厚且持续的兴趣。在这项研究中,采用人工神经网络(ANN)、偏最小二乘法(PLS)和多元线性回归(MLR)统计方法,根据肉骨粉的 CP、乙醚提取物和灰分含量来预测 TME(n)。通过 R(2) 值、MS 误差、平均绝对百分比误差、平均绝对偏差、偏差和 Theil 的 U 来计算模型的准确性。使用相同的训练数据集比较了 ANN 与 PLS 和 MLR 模型的预测能力。MLR、PLS 和 ANN 模型的预测平方回归系数分别为 0.38、0.36 和 0.94。结果表明,与 PLS 和 MLR 方法相比,ANN 对 TME(n)的预测更为准确。基于这项研究的结果,ANN 可以作为快速预测肉骨粉营养价值的一种很有前途的方法。