1 H NMR combined with chemometrics for the rapid detection of adulteration in camellia oils

Proton nuclear magnetic resonance ( H NMR) and chemometrics were employed to detect the adulteration of camellia oil (CAO) with 3 different cheap vegetable oils. With the intensity of 15 selected H NMR signals as input variables, principal component analysis (PCA) showed good group clustering result...

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Veröffentlicht in:Food chemistry 2018-03, Vol.242, p.308
Hauptverfasser: Shi, Ting, Zhu, MengTing, Chen, Yi, Yan, XiaoLi, Chen, Qian, Wu, XiaoLin, Lin, Jiangnan, Xie, Mingyong
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container_start_page 308
container_title Food chemistry
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creator Shi, Ting
Zhu, MengTing
Chen, Yi
Yan, XiaoLi
Chen, Qian
Wu, XiaoLin
Lin, Jiangnan
Xie, Mingyong
description Proton nuclear magnetic resonance ( H NMR) and chemometrics were employed to detect the adulteration of camellia oil (CAO) with 3 different cheap vegetable oils. With the intensity of 15 selected H NMR signals as input variables, principal component analysis (PCA) showed good group clustering results for pure and nonpure CAO, but unsatisfied identification accuracy for the adulterated oil types, indicating relatively small difference among those oils. Whereas these difference could be revealed by orthogonal projection to latent structures discriminant analysis (OPLS-DA), with identification accuracy higher than 90%. Partial least squares (PLS) was further applied for the prediction of adulteration level in CAO. With less than 6 variables screened out by variable importance in the projection (VIP) scores as potential key markers, the developed PLS models showed better accuracy. The prediction results for 10 hold-out samples also confirmed that this method was accurate and fast for the detection of CAO adulteration.
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subjects Camellia - chemistry
Discriminant Analysis
Food Contamination - analysis
Plant Oils - analysis
Principal Component Analysis
Proton Magnetic Resonance Spectroscopy - methods
title 1 H NMR combined with chemometrics for the rapid detection of adulteration in camellia oils
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