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KMID : 0385520210340030134
Analytical Science & Technology
2021 Volume.34 No. 3 p.134 ~ p.141
Discrimination of the geographical origin of commercial sesame oils using fatty acids composition combined with linear discriminant analysis
Kim Nam-Hoon

Choi Chae-Man
Lee Young-Ju
Kim Na-Young
Hong Mi-Sun
Yu In-Sil
Abstract
In this study, the fatty acid (FA) composition of commercial sesame oils (n = 62) was investigated using gas chromatography with flame ionization detector (GC-FID). Multivariate statistical techniques, including principal component analysis (PCA) and linear discriminant analysis (LDA), were applied to the chromatographic data of the FAs to discriminate the geographical origin of sesame oils. A statistically significant difference was observed in the content of C16:0, C18:0, C18:1, and C18:2 between domestic and imported sesame oils. A satisfactory recovery rate of 82.8-100.2 % was achieved for C16:0, C18:0, C18:1, C18:2, and C18:3. The correlation of C16:0, C18:1, and C18:2 in domestic sesame oils showed opposite trends compared to imported oils. The PCA plot demonstrated that sesame oils were clustered in distinct groups according to their origin.
LDA was used to predict sesame oil samples in one of the two groups. C16:0 (Wilks ¥ë = 0.361) and C18:1 (Wilks ¥ë = 0.637) demonstrated the highest discriminant power for classifying the origin of the samples. The correct prediction rates were 88.9 % and 100 % for the domestic and imported samples, respectively. Further, 60 of the 62 sesame oil samples (96.8 %) were correctly classified, indicating that this approach can be used as a valuable tool to predict and classify the geographical origin of sesame oils.
KEYWORD
sesame oils, fatty acid, correlation matrix, principal component analysis, linear discriminant analysis
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