4.7 Article

Region, vintage, and grape maturity co-shaped the ionomic signatures of the Cabernet Sauvignon wines

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FOOD RESEARCH INTERNATIONAL
卷 163, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.foodres.2022.112165

关键词

Element; Wine; Soil; Petiole; ICP-MS; O2PLS-DA

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In this experiment, 19 elements in wine samples from different regions, vintages, and grape maturity levels were detected. The results showed that certain elements can be used to distinguish different regions and grape maturities. Additionally, the correlation between soil pH and elemental content in wine was observed.
The ionic elements in wine and in vineyards are gaining attention due to characterization of the wine traits, wine origin tracing, and vine nutrient judging. In this experiment, 19 elements were detected by inductively coupled plasma mass spectrometry (ICP-MS) in 69 wine samples from 4 regions, 3 vintages, and 3 grape maturity levels. Furthermore, the elements related to vine development, such as N, P, K, Ca, Mg, Cu, Fe, Zn and Cu in the vineyard soil and petioles were determined. Two orthogonal partial least squares discriminant analysis (O2PLS-DA) showed that K, Mn, Co, Sr, B, Si, Pb, Ni, Cu, and Zn were important elements in distinguishing the regions. High-temperature vintages can bring wines with high levels of Sr in wine. Na, Ca, K, Mg, Rb, Al, Rb, Pb and Fe can be used as signature elements to distinguish wines made from 2 grape maturities. And Cu, Zn, and Mn were the key elements used to differentiate the petioles in the 4 regions. Partial square regression (PLSR) analysis showed that soil pH was positively correlated with Al, B, Ba, K, Pb, Mn, Sr and Rb in wine, and K in wine was significantly positively correlated with element K in the soil. In conclusion, the elemental contents in wine are shaped by the combination of origin, vintage and grape maturity, while some key elements can be used as in-dicators of origin traceability.

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