Food Inspection and Quarantine Center, Shenzhen Customs, Shenzhen 518000, China.
Management College, Shenzhen Polytechnic, Shenzhen 518055, China.
Food Chem. 2019 Dec 15;301:125137. doi: 10.1016/j.foodchem.2019.125137. Epub 2019 Jul 6.
Multi-isotope and multi-elemental analyses were performed on 600 red wine samples imported into China from 7 different countries and compared with Chinese wine. Carbon and oxygen isotopes and 16 elements were used to determine origin traceability. Our goal was to build a classification tool using data modeling that can verify the geographic origin of wines imported into China. Multivariate analyses of the isotopic and elemental data revealed that it is possible to determine the geographical origin for most imported wines with a high level of confidence (>90%). The results show that Artificial Neural Network method had a high discrimination accuracy and is more suitable than Discrimination Analysis and Random Forest methods when it comes to classifying wine origin on a global scale. In conclusion, stable isotope and trace element analyses followed by multivariate processing of the data is a fast and efficient technique suitable for global wine traceability.
对从 7 个不同国家进口到中国的 600 个红酒样本进行了多同位素和多元素分析,并与中国葡萄酒进行了比较。利用碳氧稳定同位素和 16 种元素来确定产地溯源。我们的目标是建立一个数据建模的分类工具,以验证进口到中国的葡萄酒的地理来源。对同位素和元素数据的多元分析表明,对于大多数进口葡萄酒,可以非常有把握地(>90%)确定其地理来源。结果表明,人工神经网络方法具有较高的判别准确率,在全球范围内对葡萄酒产地进行分类时,比判别分析和随机森林方法更适用。总之,稳定同位素和微量元素分析,以及随后的数据多元处理,是一种快速有效的全球葡萄酒溯源技术。