Cubero-Leon Elena, De Rudder Olivier, Maquet Alain
European Commission, Joint Research Centre, Retieseweg 111, 2440 Geel, Belgium.
Food Chem. 2018 Jan 15;239:760-770. doi: 10.1016/j.foodchem.2017.06.161. Epub 2017 Jul 1.
Increasing demand for organic products and their premium prices make them an attractive target for fraudulent malpractices. In this study, a large-scale comparative metabolomics approach was applied to investigate the effect of the agronomic production system on the metabolite composition of carrots and to build statistical models for prediction purposes. Orthogonal projections to latent structures-discriminant analysis (OPLS-DA) was applied successfully to predict the origin of the agricultural system of the harvested carrots on the basis of features determined by liquid chromatography-mass spectrometry. When the training set used to build the OPLS-DA models contained samples representative of each harvest year, the models were able to classify unknown samples correctly (100% correct classification). If a harvest year was left out of the training sets and used for predictions, the correct classification rates achieved ranged from 76% to 100%. The results therefore highlight the potential of metabolomic fingerprinting for organic food authentication purposes.
对有机产品日益增长的需求及其高昂价格,使其成为欺诈行为的诱人目标。在本研究中,采用大规模比较代谢组学方法来研究农艺生产系统对胡萝卜代谢物组成的影响,并建立用于预测目的的统计模型。基于液相色谱 - 质谱法测定的特征,成功应用正交投影到潜在结构判别分析(OPLS - DA)来预测收获胡萝卜的农业系统来源。当用于构建OPLS - DA模型的训练集包含代表每个收获年份的样本时,模型能够正确分类未知样本(分类正确率达100%)。如果将一个收获年份排除在训练集之外并用于预测,所实现的正确分类率范围为76%至100%。因此,结果突出了代谢组指纹图谱在有机食品认证方面的潜力。