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基于氢核磁共振(H-NMR)数据的摩德纳传统香醋和摩德纳香醋鉴别的多元统计模型:靶向方法与非靶向方法的比较

Multivariate Statistical Models for the Authentication of Traditional Balsamic Vinegar of Modena and Balsamic Vinegar of Modena on H-NMR Data: Comparison of Targeted and Untargeted Approaches.

作者信息

Truzzi Eleonora, Marchetti Lucia, Piazza Danny Vincenzo, Bertelli Davide

机构信息

Department of Life Sciences, University of Modena and Reggio Emilia, Via Campi 103, 41125 Modena, Italy.

出版信息

Foods. 2023 Mar 29;12(7):1467. doi: 10.3390/foods12071467.

Abstract

This work aimed to compare targeted and untargeted approaches based on NMR data for the construction of classification models for Traditional Balsamic Vinegar of Modena (TBVM) and Balsamic Vinegar of Modena (BVM). Their complexity in terms of composition makes the authentication of these products difficult, which requires the employment of several time-consuming analytical methods. Here, H-NMR spectroscopy was selected as the analytical method for the analysis of TVBM and BVM due to its rapidity and efficacy in food authentication. H-NMR spectra of old (>12 years) and extra-old (>25 years) TVBM and BVM (>60 days) and aged (>3 years) BVM were acquired, and targeted and untargeted approaches were used for building unsupervised and supervised multivariate statistical modes. Targeted and untargeted approaches were based on quantitative results of peculiar compounds present in vinegar obtained through qNMR, and all spectral variables, respectively. Several classification models were employed, and linear discriminant analysis (LDA) demonstrated sensitivity and specificity percentages higher than 85% for both approaches. The most important discriminating variables were glucose, fructose, and 5-hydroxymethylfurfural. The untargeted approach proved to be the most promising strategy for the construction of LDA models of authentication for TVBM and BVM due to its easier applicability, rapidity, and slightly higher predictive performance. The proposed method for authenticating TBVM and BVM could be employed by Italian producers for safeguarding their valuable products.

摘要

这项工作旨在比较基于核磁共振(NMR)数据的靶向和非靶向方法,以构建摩德纳传统香醋(TBVM)和摩德纳香醋(BVM)的分类模型。这些产品在成分方面的复杂性使得其真伪鉴定困难,这需要采用几种耗时的分析方法。在此,由于氢核磁共振(H-NMR)光谱法在食品真伪鉴定方面的快速性和有效性,被选为分析TBVM和BVM的分析方法。采集了陈酿时间超过12年的TBVM、陈酿时间超过25年的TBVM、陈酿时间超过60天的BVM以及陈酿时间超过3年的BVM的H-NMR光谱,并采用靶向和非靶向方法构建无监督和有监督的多元统计模型。靶向和非靶向方法分别基于通过定量核磁共振(qNMR)获得的醋中特有化合物的定量结果以及所有光谱变量。采用了几种分类模型,线性判别分析(LDA)表明两种方法的灵敏度和特异性百分比均高于85%。最重要的判别变量是葡萄糖、果糖和5-羟甲基糠醛。非靶向方法因其更易于应用、快速性以及略高的预测性能,被证明是构建TBVM和BVM鉴别LDA模型最有前景的策略。意大利生产商可采用所提出的TBVM和BVM真伪鉴定方法来保护其珍贵产品。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5298/10093814/21ea2d9ea861/foods-12-01467-g001.jpg

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