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Non-Targeted HPLC-UV Fingerprinting as Chemical Descriptors for the Classification and Authentication of Nuts by Multivariate Chemometric Methods

机译:非目标HPLC-UV指纹作为化学描述物用于通过多元化学计量学方法对坚果进行分类和鉴定

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摘要

Recently, the authenticity of food products has become a great social concern. Considering the complexity of the food chain and that many players are involved between production and consumption; food adulteration practices are rising as it is easy to conduct fraud without being detected. This is the case for nut fruit processed products, such as almond flours, that can be adulterated with cheaper nuts (hazelnuts or peanuts), giving rise to not only economic fraud but also important effects on human health. Non-targeted HPLC-UV chromatographic fingerprints were evaluated as chemical descriptors to achieve nut sample characterization and classification using multivariate chemometric methods. Nut samples were extracted by sonication and centrifugation, and defatted with hexane; extracting procedure and conditions were optimized to maximize the generation of enough discriminant features. The obtained HPLC-UV chromatographic fingerprints were then analyzed by means of principal component analysis (PCA) and partial least squares-discriminant analysis (PLS-DA) to carry out the classification of nut samples. The proposed methodology allowed the classification of samples not only according to the type of nut but also based on the nut thermal treatment employed (natural, fried or toasted products).
机译:最近,食品的真实性已成为社会关注的焦点。考虑到食物链的复杂性以及生产和消费之间涉及许多参与者;食品掺假做法正在上升,因为很容易进行欺诈而不会被发现。果仁加工产品(例如杏仁粉)就是这种情况,可以与便宜的果仁(榛子或花生)掺假,这不仅造成经济欺诈,而且对人体健康也产生重要影响。将非目标HPLC-UV色谱指纹图谱作为化学描述符进行评估,以使用多元化学计量学方法实现坚果样品的表征和分类。通过超声和​​离心提取坚果样品,然后用己烷脱脂;优化了提取程序和条件,以最大程度地生成足够的判别特征。然后通过主成分分析(PCA)和偏最小二乘判别分析(PLS-DA)对获得的HPLC-UV色谱指纹图谱进行分析,以对坚果样品进行分类。所提出的方法不仅允许根据坚果的类型对样品进行分类,而且还可以基于所采用的坚果热处理(天然,油炸或烤制产品)对样品进行分类。

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