Department of Biosystems and Agricultural Engineering, University of Kentucky, Lexington, KY, USA; Department of Biosystems and Agricultural Engineering, Alexandria University, Alexandria, Egypt.
Department of Biosystems and Agricultural Engineering, University of Kentucky, Lexington, KY, USA.
Meat Sci. 2018 Feb;136:59-67. doi: 10.1016/j.meatsci.2017.10.014. Epub 2017 Oct 24.
The main objective of this study was to investigate the use of spectroscopic systems in the range of 400-1000nm (visible/near-infrared or Vis-NIR) and 900-1700nm (NIR) to assess and estimate plant and animal proteins as potential adulterants in minced beef and pork. Multiple machine learning techniques were used for classification, adulterant prediction, and wavelength selection. Samples were first evaluated for the presence or absence of adulterants (6 classes), and secondly for adulterant type (6 classes) and level. Selected wavelengths models generally resulted in better classification and prediction outputs than full wavelengths. The first stage classification rates were 96% and 100% for pure/unadulterated and adulterated samples, respectively. Whereas, the second stage had classification rates of 69-100%. The optimal models for predicting adulterant levels yielded correlation coefficient, r of 0.78-0.86 and ratio of performance to deviation, RPD, of 1.19-1.98. The results from this study illustrate potential application of spectroscopic technology to rapidly and accurately detect adulterants in minced beef and pork.
本研究的主要目的是探讨在 400-1000nm(可见/近红外或 Vis-NIR)和 900-1700nm(NIR)范围内使用光谱系统来评估和估计植物和动物蛋白质作为牛肉和猪肉中的潜在掺杂物。本研究使用了多种机器学习技术进行分类、掺杂物预测和波长选择。样品首先评估是否存在掺杂物(6 类),其次评估掺杂物类型(6 类)和水平。与全波长相比,所选波长模型通常会产生更好的分类和预测结果。对于纯/未掺假和掺假样品,第一阶段的分类率分别为 96%和 100%。而第二阶段的分类率为 69-100%。预测掺杂物水平的最佳模型的相关系数 r 为 0.78-0.86,性能偏差比 RPD 为 1.19-1.98。本研究结果表明,光谱技术具有快速、准确检测牛肉和猪肉中掺杂物的潜力。