4.7 Article

Quality Assessment of Goldenrod, Milkweed and Multifloral Honeys Based on Botanical Origin, Antioxidant Capacity and Mineral Content

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出版社

MDPI
DOI: 10.3390/ijms23020769

关键词

honey; pollen spectrum; antioxidant capacity; multielement content; PCA analysis

资金

  1. National Research, Development and Innovation Office [NKFIH K 132044]

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The goal of this study was to evaluate the pollen spectrum, antioxidant capacity, and mineral content of four types of Hungarian honey using multivariate statistical analysis. The results showed significant differences in pollen spectrum, antioxidant capacity, and mineral content among different types of honey, indicating their potential as markers for classification and identification of honey types.
The goal of the study was to evaluate the pollen spectrum, antioxidant capacity and mineral content of four Hungarian honey types, using multivariate statistical analysis. The light colored honeys were represented by milkweed honey and a multifloral (MF) honey with dominant pollen frequency of linden (MF-Tilia); the darker ones were goldenrod honey and a multifloral honey with Lamiaceae pollen majority (MF-Lamiaceae). The pollen spectrum of the samples was established with melissopalynological analysis. The absorbance of the honeys positively correlated with the antioxidant capacity determined with three of the used methods (TRC, TEAC, DPPH), but not with ORAC. The latter method correlated negatively also with other antioxidant methods and with most of the mineral values. MF-Tilia had high ORAC value, K and Na content. The MF-Lamiaceae had the highest K, Mg, P, S, Cu and Zn content, the last five elements showing strict correlation with the TRC method. The darker goldenrod honey had higher SET values and total mineral content, than the milkweed honey. The above character-sets facilitate identification of each honey type and serve as indicators of variety. The antioxidant levels and mineral content of honeys allowed their clear separation by principal component analysis (PCA).

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