The importance of honey has been recently increased because of its nutrient and therapeutic effects, but the adulteration of honey in terms of botanical origin has increased, too. The floral origin of honeys is usually determined using melisso-palynological analysis and organoleptic characteristics, but the application of these techniques requires some expertise. A number of papers have confirmed the possibility of characterizing honey samples by selected chemical parameters. In this study high-resolution nuclear magnetic resonance (HR-NMR) and multivariate statistical analysis methods were used to identify and classify honeys of five different floral sources. The 71 honey samples (robinia, chestnut, citrus, eucalyptus, polyfloral) were analyzed by HR-NMR using both 1H NMR and heteronuclear multiple bond correlation spectroscopy (HMBC). Spectral data were analyzed by application of unsupervised and supervised pattern recognition and multivariate statistical techniques such as principal component analysis (PCA) and general discriminant analysis (GDA). The use of 1H−13C HMBC coupled with appropriate statistical analysis seems to be an efficient technique for the classification of honeys.

Classification of Italian Honeys by 2D HR-NMR / Lolli, Massimo; Bertelli, Davide; Plessi, Maria; A. G., Sabatini; Restani, Cinzia. - In: JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY. - ISSN 0021-8561. - STAMPA. - 56:(2008), pp. 1298-1304. [10.1021/jf072763c]

Classification of Italian Honeys by 2D HR-NMR

LOLLI, Massimo;BERTELLI, Davide;PLESSI, Maria;RESTANI, Cinzia
2008

Abstract

The importance of honey has been recently increased because of its nutrient and therapeutic effects, but the adulteration of honey in terms of botanical origin has increased, too. The floral origin of honeys is usually determined using melisso-palynological analysis and organoleptic characteristics, but the application of these techniques requires some expertise. A number of papers have confirmed the possibility of characterizing honey samples by selected chemical parameters. In this study high-resolution nuclear magnetic resonance (HR-NMR) and multivariate statistical analysis methods were used to identify and classify honeys of five different floral sources. The 71 honey samples (robinia, chestnut, citrus, eucalyptus, polyfloral) were analyzed by HR-NMR using both 1H NMR and heteronuclear multiple bond correlation spectroscopy (HMBC). Spectral data were analyzed by application of unsupervised and supervised pattern recognition and multivariate statistical techniques such as principal component analysis (PCA) and general discriminant analysis (GDA). The use of 1H−13C HMBC coupled with appropriate statistical analysis seems to be an efficient technique for the classification of honeys.
2008
56
1298
1304
Classification of Italian Honeys by 2D HR-NMR / Lolli, Massimo; Bertelli, Davide; Plessi, Maria; A. G., Sabatini; Restani, Cinzia. - In: JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY. - ISSN 0021-8561. - STAMPA. - 56:(2008), pp. 1298-1304. [10.1021/jf072763c]
Lolli, Massimo; Bertelli, Davide; Plessi, Maria; A. G., Sabatini; Restani, Cinzia
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/612229
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