Characterization of Anatolian honeys based on minerals, bioactive components and principal component analysis

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[1] Kaygusuz, Hakan
[2] Tezcan, Filiz
[3] Bedia Erim, F.
[4] Yildiz, Oktay
[5] Sahin, Huseyin
[6] Can, Zehra
[7] Kolayli, Sevgi
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Kolayli, Sevgi (skolayli61@yahoo.com) | 1600年 / Academic Press卷 / 68期
关键词
Anti-oxidant activities - Cupric reducing antioxidant capacity assay - Heather honey - Honey - Inductively coupled plasma-optical emission spectrometry - Laser induced fluorescence - Principal components analysis - Total phenolic content;
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摘要
Our aim is the characterization of Anatolian monofloral and honeydew honeys according to their mineral, vitamin B2, total phenolic contents and antioxidant activities. Five main elements (Ca, K, Fe, Cu, and Mn) were determined in 20 honey samples by inductively coupled plasma - optical emission spectrometry (ICP-OES). The vitamin B2 contents of honey samples were determined by the capillary electrophoresis method coupled with a sensitive laser induced fluorescence (LIF) detector. The total phenolic contents were analyzed with Folin-Ciocalteu's method. Two comparative antioxidant assays, namely cupric reducing antioxidant capacity assay (CUPRAC) and ABTS radical scavenging assay, were applied to detect the antioxidant power of honeys. Heather honeys were distinguished from others with significantly high vitamin B2 and iron contents. Considerably higher antioxidant capacities and Mn contents were observed for oak and chestnut honeys. Principal components analysis was applied to the analysis result in order to classify the honeys from different botanical origins. © 2015 Elsevier Ltd.
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