Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR Fingerprinting

The price of honey, as a highly consumed natural product, depends on its botanical source and its production environment, causing honey to be vulnerable to adulteration through mislabeling and inappropriate, fraudulent production. In this study, a fast and simple approach is proposed to tackle this...

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Main Authors: Chantelle Spiteri, Frederick Lia, Claude Farrugia
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Foods
Subjects:
Online Access:https://www.mdpi.com/2304-8158/9/10/1455
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spelling doaj-67433c5b923449bf8ee38f1c7099d1dc2020-11-25T01:53:34ZengMDPI AGFoods2304-81582020-10-0191455145510.3390/foods9101455Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR FingerprintingChantelle Spiteri0Frederick Lia1Claude Farrugia2Department of Chemistry, University of Malta, 2080 Msida, MSD, MaltaDepartment of Chemistry, University of Malta, 2080 Msida, MSD, MaltaDepartment of Chemistry, University of Malta, 2080 Msida, MSD, MaltaThe price of honey, as a highly consumed natural product, depends on its botanical source and its production environment, causing honey to be vulnerable to adulteration through mislabeling and inappropriate, fraudulent production. In this study, a fast and simple approach is proposed to tackle this issue through non-target one dimensional zg30 and noesypr1d <sup>1</sup>H NMR fingerprint analysis, in combination with multivariate data analysis. Results suggest that composition differences in sugars, amino acids, and carboxylic acid were sufficient to discriminate between the tested honey of Maltese origin and that of non-local origin. Indeed, all chemometric models based on noesypr1d analysis of the whole fraction honey showed better prediction in geographical discrimination. The possibility of discrimination was further investigated through analysis of the honey’s phenolic extract composition. The partial least squares models were deemed unsuccessful to discriminate, however, some of the linear discriminant analysis models achieved a prediction accuracy of 100%. Lastly, the best performing models of both the whole fraction and the phenolic extracts were tested on five samples of unknown geographic for market surveillance, which attained a high agreement within the models. Thus, suggesting the use of non-target <sup>1</sup>H NMR coupled with the multivariate-data analysis and machine learning as a potential alternative to the current time-consuming analytical methods.https://www.mdpi.com/2304-8158/9/10/1455Maltese honeygeographic discriminationmislabelingmultivariate data analysismachine learningfood authenticity
collection DOAJ
language English
format Article
sources DOAJ
author Chantelle Spiteri
Frederick Lia
Claude Farrugia
spellingShingle Chantelle Spiteri
Frederick Lia
Claude Farrugia
Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR Fingerprinting
Foods
Maltese honey
geographic discrimination
mislabeling
multivariate data analysis
machine learning
food authenticity
author_facet Chantelle Spiteri
Frederick Lia
Claude Farrugia
author_sort Chantelle Spiteri
title Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR Fingerprinting
title_short Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR Fingerprinting
title_full Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR Fingerprinting
title_fullStr Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR Fingerprinting
title_full_unstemmed Determination of the Geographical Origin of Maltese Honey Using <sup>1</sup>H NMR Fingerprinting
title_sort determination of the geographical origin of maltese honey using <sup>1</sup>h nmr fingerprinting
publisher MDPI AG
series Foods
issn 2304-8158
publishDate 2020-10-01
description The price of honey, as a highly consumed natural product, depends on its botanical source and its production environment, causing honey to be vulnerable to adulteration through mislabeling and inappropriate, fraudulent production. In this study, a fast and simple approach is proposed to tackle this issue through non-target one dimensional zg30 and noesypr1d <sup>1</sup>H NMR fingerprint analysis, in combination with multivariate data analysis. Results suggest that composition differences in sugars, amino acids, and carboxylic acid were sufficient to discriminate between the tested honey of Maltese origin and that of non-local origin. Indeed, all chemometric models based on noesypr1d analysis of the whole fraction honey showed better prediction in geographical discrimination. The possibility of discrimination was further investigated through analysis of the honey’s phenolic extract composition. The partial least squares models were deemed unsuccessful to discriminate, however, some of the linear discriminant analysis models achieved a prediction accuracy of 100%. Lastly, the best performing models of both the whole fraction and the phenolic extracts were tested on five samples of unknown geographic for market surveillance, which attained a high agreement within the models. Thus, suggesting the use of non-target <sup>1</sup>H NMR coupled with the multivariate-data analysis and machine learning as a potential alternative to the current time-consuming analytical methods.
topic Maltese honey
geographic discrimination
mislabeling
multivariate data analysis
machine learning
food authenticity
url https://www.mdpi.com/2304-8158/9/10/1455
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AT fredericklia determinationofthegeographicaloriginofmaltesehoneyusingsup1suphnmrfingerprinting
AT claudefarrugia determinationofthegeographicaloriginofmaltesehoneyusingsup1suphnmrfingerprinting
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