Dashti Abolfazl, Müller-Maatsch Judith, Weesepoel Yannick, Parastar Hadi, Kobarfard Farzad, Daraei Bahram, AliAbadi Mohammad Hossein Shojaee, Yazdanpanah Hassan
Department of Toxicology and Pharmacology, School of Pharmacy, Shahid Beheshti University of Medical Sciences, Tehran P.O. Box 14155-6153, Iran.
Food Safety Research Center, Shahid Beheshti University of Medical Sciences, Tehran P.O. Box 14155-6153, Iran.
Foods. 2021 Dec 29;11(1):71. doi: 10.3390/foods11010071.
Handheld visible-near-infrared (Vis-NIR) and near-infrared (NIR) spectroscopy can be cost-effective, rapid, non-destructive and transportable techniques for identifying meat species and may be valuable for enforcement authorities, retail and consumers. In this study, a handheld Vis-NIR (400-1000 nm) and a handheld NIR (900-1700 nm) spectrometer were applied to discriminate halal meat species from pork (halal certification), as well as speciation of intact and ground lamb, beef, chicken and pork (160 meat samples). Several types of class modeling multivariate approaches were applied. The presented one-class classification (OCC) approach, especially with the Vis-NIR sensor (95-100% correct classification rate), was found to be suitable for the application of halal from non-halal meat-species discrimination. In a discriminant approach, using the Vis-NIR data and support vector machine (SVM) classification, the four meat species tested could be classified with accuracies of 93.4% and 94.7% for ground and intact meat, respectively, while with partial least-squares discriminant analysis (PLS-DA), classification accuracies were 87.4% (ground) and 88.6% (intact). Using the NIR sensor, total accuracies of the SVM models were 88.2% and 81.5% for ground and intact meats, respectively, and PLS-DA classification accuracies were 88.3% (ground) and 80% (intact). We conclude that the Vis-NIR sensor was most successful in the halal certification (OCC approaches) and speciation (discriminant approaches) for both intact and ground meat using SVM.
手持式可见-近红外(Vis-NIR)和近红外(NIR)光谱技术具有成本效益高、快速、无损且便于携带的特点,可用于肉类品种鉴定,对执法部门、零售商和消费者可能具有重要价值。在本研究中,使用手持式Vis-NIR(400-1000 nm)和手持式NIR(900-1700 nm)光谱仪来区分清真肉类品种与猪肉(清真认证),以及完整和绞碎的羊肉、牛肉、鸡肉和猪肉的品种鉴定(160个肉类样本)。应用了几种类型的类建模多元方法。所提出的单类分类(OCC)方法,特别是使用Vis-NIR传感器时(正确分类率为95-100%),被发现适用于清真与非清真肉类品种的鉴别应用。在判别方法中,使用Vis-NIR数据和支持向量机(SVM)分类,对于绞碎和完整的肉类,所测试的四种肉类品种的分类准确率分别为93.4%和94.7%,而使用偏最小二乘判别分析(PLS-DA)时,分类准确率分别为87.4%(绞碎)和88.6%(完整)。使用NIR传感器时,SVM模型对绞碎和完整肉类的总准确率分别为88.2%和81.5%,PLS-DA分类准确率分别为88.3%(绞碎)和80%(完整)。我们得出结论,Vis-NIR传感器在使用SVM对完整和绞碎肉类的清真认证(OCC方法)和品种鉴定(判别方法)中最为成功。