Ahmadi Hamed, Rodehutscord Markus
Bioscience and Agriculture Modeling Research Unit, College of Agriculture, Tarbiat Modares University, Tehran, Iran.
Institut für Tierernährung, Universität Hohenheim, Stuttgart, Germany.
Front Nutr. 2017 Jun 30;4:27. doi: 10.3389/fnut.2017.00027. eCollection 2017.
In the nutrition literature, there are several reports on the use of artificial neural network (ANN) and multiple linear regression (MLR) approaches for predicting feed composition and nutritive value, while the use of support vector machines (SVM) method as a new alternative approach to MLR and ANN models is still not fully investigated.
The MLR, ANN, and SVM models were developed to predict metabolizable energy (ME) content of compound feeds for pigs based on the German energy evaluation system from analyzed contents of crude protein (CP), ether extract (EE), crude fiber (CF), and starch. A total of 290 datasets from standardized digestibility studies with compound feeds was provided from several institutions and published papers, and ME was calculated thereon. Accuracy and precision of developed models were evaluated, given their produced prediction values.
The results revealed that the developed ANN [ = 0.95; root mean square error (RMSE) = 0.19 MJ/kg of dry matter] and SVM ( = 0.95; RMSE = 0.21 MJ/kg of dry matter) models produced better prediction values in estimating ME in compound feed than those produced by conventional MLR ( = 0.89; RMSE = 0.27 MJ/kg of dry matter).
The developed ANN and SVM models produced better prediction values in estimating ME in compound feed than those produced by conventional MLR; however, there were not obvious differences between performance of ANN and SVM models. Thus, SVM model may also be considered as a promising tool for modeling the relationship between chemical composition and ME of compound feeds for pigs. To provide the readers and nutritionist with the easy and rapid tool, an Excel calculator, namely, SVM_ME_pig, was created to predict the metabolizable energy values in compound feeds for pigs using developed support vector machine model.
在营养文献中,有几篇关于使用人工神经网络(ANN)和多元线性回归(MLR)方法预测饲料组成和营养价值的报道,而支持向量机(SVM)方法作为一种替代MLR和ANN模型的新方法,其应用尚未得到充分研究。
基于德国能量评估系统,利用粗蛋白(CP)、乙醚提取物(EE)、粗纤维(CF)和淀粉的分析含量,开发了MLR、ANN和SVM模型,以预测猪用复合饲料的代谢能(ME)含量。从多个机构和已发表的论文中获取了总共290个来自复合饲料标准化消化率研究的数据集,并据此计算了ME。根据所建立模型产生的预测值,对其准确性和精确性进行了评估。
结果表明,所开发的ANN模型(R² = 0.95;均方根误差(RMSE)= 0.19 MJ/kg干物质)和SVM模型(R² = 0.95;RMSE = 0.21 MJ/kg干物质)在估计复合饲料中的ME时,比传统的MLR模型(R² = 0.89;RMSE = 0.27 MJ/kg干物质)产生了更好的预测值。
所开发的ANN和SVM模型在估计复合饲料中的ME时,比传统的MLR模型产生了更好的预测值;然而,ANN和SVM模型的性能之间没有明显差异。因此,SVM模型也可被视为一种有前途的工具,用于建立猪用复合饲料化学成分与ME之间的关系。为了给读者和营养学家提供一个简单快捷的工具,创建了一个Excel计算器,即SVM_ME_pig,用于使用所开发的支持向量机模型预测猪用复合饲料中的代谢能值。