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首页> 外文期刊>International Journal of Food Properties >Determination of the floral origin of honey based on its phenolic profile and physicochemical properties coupled with chemometrics
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Determination of the floral origin of honey based on its phenolic profile and physicochemical properties coupled with chemometrics

机译:基于蜂蜜的酚类特征,理化性质和化学计量学确定蜂蜜的花​​香来源

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摘要

Adulteration of honey is a major problem in the food industry. The purpose of the present study was to classify different types of monofloral honey based on physicochemical characterization and analysis of phenolic compounds coupled with chemometrics methods. The methods for classification were trialed on a wide range of honey samples from different floral origins. For thyme, jujube, coriander, barberry, acacia and alfalfa honey samples, principal component analysis combined with discriminant analysis (PCA-DA) and partial least squares combined with discriminant analysis (PLS-DA) were trialed. The results indicate that the botanical origin of the honey affects the profile of flavonoids and phenolic compounds. For example, jujube honey samples had the highest amounts of hesperetin and chrysin, while thyme honey had the maximum amount of caffeic acid; the highest levels of quercetin and p-coumaric acid were found in coriander honey. To reduce the numbers of independent variables for modeling, the principal component analysis (PCA) algorithm was used. The three scores extracted from PCA had 83.17% variance. The classification results show that PLS-DA was successfully used to predict the class membership of honey samples (100%), but PCA-DA gave the lowest correct classification rate (97%).
机译:蜂蜜的掺假是食品工业中的主要问题。本研究的目的是基于酚类化合物的理化特性和分析,结合化学计量学方法,对不同类型的单花蜂蜜进行分类。分类方法在来自不同花卉来源的各种蜂蜜样品上试用。对于百里香,大枣,香菜,伏牛花,阿拉伯胶和苜蓿蜂蜜样品,进行了主成分分析和判别分析(PCA-DA)以及偏最小二乘结合判别分析(PLS-DA)的试验。结果表明,蜂蜜的植物来源会影响类黄酮和酚类化合物的特性。例如,枣蜂蜜中的橙皮素和菊花素含量最高,百里香蜂蜜中的咖啡酸含量最高。香菜蜂蜜中槲皮素和对香豆酸的含量最高。为了减少用于建模的自变量的数量,使用了主成分分析(PCA)算法。从PCA中提取的三个分数的差异为83.17%。分类结果表明,PLS-DA已成功用于预测蜂蜜样品的类别成员(100%),而PCA-DA给出的最低正确分类率(97%)最低。

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