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Determination of seed content in red pepper powders by 1H NMR and second-derivative FT-IR spectroscopy combined with statistical analysesDetermination of seed content in red pepper powders by 1H NMR and second‐derivative FT‐IR spectroscopy combined with statistical analyses

Authors
Choi, YuriHong, JunyoungKim, Byung HeeAhn, Sangdoo
Issue Date
Mar-2022
Publisher
John Wiley and Sons Inc
Keywords
H-1 NMR; canonical discriminant analysis; multiple linear regression analysis; red pepper powder; second derivative FT-IR; seed content
Citation
Bulletin of the Korean Chemical Society, v.43, no.3, pp 450 - 459
Pages
10
Journal Title
Bulletin of the Korean Chemical Society
Volume
43
Number
3
Start Page
450
End Page
459
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/54829
DOI
10.1002/bkcs.12476
ISSN
0253-2964
1229-5949
Abstract
This study focuses on discriminating the seed content in red pepper powders using 1H NMR and second-derivative FT-IR Spectroscopy with canonical discriminant and multiple linear regression analyses. We used 165 test samples prepared by varying the seed content for spectroscopic analyses. The canonical discriminant functions derived from 21 peak variables were used to properly discriminate the red pepper powder samples based on their seed content with a 97.6% hit ratio. Additionally, we observed an average error of 7.0% while discriminating 42 blind samples. Multiple linear regression analysis was performed to directly determine the seed content of new samples without running a statistical program. The best regression model constructed with only two variables showed an average error of 6.2% when applied to the blind samples. These results verify the feasibility of using 1H NMR and FT-IR Spectroscopy with statistical analyses to determine the seed content in red pepper powders. © 2022 Korean Chemical Society, Seoul & Wiley-VCH GmbH
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자연과학대학 (화학과)
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