Barberis Elettra, Amede Elia, Dondero Francesco, Marengo Emilio, Manfredi Marcello
Department of Translational Medicine, University of Piemonte Orientale, 28100 Novara, Italy.
Center for Translational Research on Autoimmune and Allergic Diseases, University of Piemonte Orientale, 28100 Novara, Italy.
Foods. 2021 Dec 29;11(1):89. doi: 10.3390/foods11010089.
Food authentication is very important to protect consumers, sellers, and producers from fraud. Although several methods have been developed using a wide range of analytical techniques, most of them require sample destruction and do not allow in situ sampling or analysis, nor reliable quantification of hundreds of molecules at the same time. To overcome these limitations, we have developed and validated a new noninvasive analytical workflow for food authentication. The method uses a functionalized strip to adsorb small molecules from the surface of the food product, followed by gas chromatography-mass spectrometry analysis of the desorbed analytes. We validated the method and applied it to the classification of five different apple varieties. Molecular concentrations obtained from the analysis of 44 apples were used to identify markers for apple cultivars or, in combination with machine learning techniques, to perform cultivar classification. The overall reproducibility of the method was very good, showing a good coefficient of variation for both targeted and untargeted analysis. The approach was able to correctly classify all samples. In addition, the method was also used to detect pesticides and the following molecules were found in almost all samples: chlorpyrifos-methyl, deltamethrin, and malathion. The proposed approach not only showed very good analytical performance, but also proved to be suitable for noninvasive food authentication and pesticide residue analysis.
食品认证对于保护消费者、销售商和生产商免受欺诈非常重要。尽管已经开发了几种使用广泛分析技术的方法,但大多数方法都需要破坏样品,不允许原位采样或分析,也不能同时对数百种分子进行可靠定量。为了克服这些限制,我们开发并验证了一种用于食品认证的新型非侵入性分析工作流程。该方法使用功能化试纸条从食品表面吸附小分子,然后对解吸的分析物进行气相色谱-质谱分析。我们对该方法进行了验证,并将其应用于五种不同苹果品种的分类。通过对44个苹果的分析获得的分子浓度用于识别苹果品种的标志物,或者与机器学习技术相结合进行品种分类。该方法的整体重现性非常好,在靶向和非靶向分析中均显示出良好的变异系数。该方法能够正确分类所有样品。此外,该方法还用于检测农药,几乎在所有样品中都发现了以下分子:甲基毒死蜱、溴氰菊酯和马拉硫磷。所提出的方法不仅显示出非常好的分析性能,而且还被证明适用于非侵入性食品认证和农药残留分析。