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首页> 外文期刊>Analytica chimica acta >NMR and Chemometric methods: A powerful combination for characterization of Balsamic and Traditional Balsamic Vinegar of Modena
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NMR and Chemometric methods: A powerful combination for characterization of Balsamic and Traditional Balsamic Vinegar of Modena

机译:NMR和化学计量学方法:摩德纳香醋和传统香醋表征的强大组合

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This work presents the capability of NMR spectroscopy combined with Chemometrics in predicting the ageing of Balsamic and Traditional Balsamic Vinegar of Modena. The need of an analytical method is an important requirement for both research oriented and commercial evaluation of these very valuable products. ~1H NMR spectroscopy, based on the advantage of rapid sample analysis without any manipulation or derivatization, is here proposed as a valid tool to describe Balsamic and Traditional Balsamic Vinegar of Modena. For this purpose, 72 reliable samples, were divided into three different groups according to their ageing process: young (<12 years), old (>12 and <25 years) and extra old (>25 years). Hierarchical Projection to Latent Structures Discriminant Analysis (PLS-DA) allowed us to characterize the ageing process. Variables showing the largest VIP (Variable Importance in the Projection) were extracted from PLS-DA model, thus shedding lights onto the role played by specific compounds in this complex ageing process. Two robust classification models, were built by PLS-DA and Naive Bayes classifier and compared to prove the accuracy of the representation on both training and test sets. The predictions obtained for 41 "unknown" vinegar samples with these both methods gave more than 80% agreement among them.
机译:这项工作展示了NMR光谱结合化学计量学预测摩德纳香醋和传统香醋的老化能力。对于这些非常有价值的产品,无论是面向研究的方向还是商业评估,都需要一种分析方法。本文提出了基于1H NMR光谱的快速样品分析方法,无需进行任何操作或衍生化处理,这是描述摩德纳香醋和传统香醋的有效工具。为此,将72个可靠的样本按照其老化过程分为三个不同的组:年轻(<12岁),老(> 12岁和<25岁)和特老(> 25岁)。对潜在结构的层次投影判别分析(PLS-DA)使我们能够表征老化过程。从PLS-DA模型中提取出显示最大VIP(投影中的可变重要性)的变量,从而使特定化合物在此复杂的老化过程中所扮演的角色成为现实。 PLS-DA和朴素贝叶斯分类器建立了两个鲁棒的分类模型,并进行了比较,以证明训练和测试集上表示的准确性。通过这两种方法对41种“未知”醋样品获得的预测在它们之间的一致性超过80%。

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