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Surface-enhanced Raman spectroscopy-based metabolomics for the discrimination of Keemun black teas coupled with chemometrics

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posted on 2023-04-19, 15:10 authored by Yin-feng Ren, Zhi-hao Ye, Xiao-qian Liu, Wei-jing Xia, Yan Yuan, Hai-yan Zhu, Xiao-tong Chen, Ru-yan Hou, Hui-mei Cai, Da-xiang Li, Daniel GranatoDaniel Granato, Chuan-yi Peng

In the present study, the Surface-enhanced Raman Spectroscopy (SERS)-based metabolomics approach coupled  with chemometrics was developed to determine the geographic origins of Keemun black tea. The SERS peaks enhanced by Ag nanoparticles at Δv = 555, 644, 731, 955, 1240, 1321, and 1539 cm− 1 were selected, and the intensities were calculated for chemometric analysis. Linear discriminant analysis (LDA) presented an average discrimination accuracy of 86.3%, with 84.3% cross-validation for evaluation. The recognition of three machine learning algorithms, namely feedforward neural network (FNN), random forest (RF), and K-Nearest Neighbor (KNN), for black tea were 93.5%, 93.5%, and 87.1%, respectively. Herein, this study demonstrates the potential of the SERS technique coupled with AgNPs and chemometrics as an accessible, prompt, and fast method for discriminating the geographic origins of teas. 

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Publication

LWT, 181, 114742

Publisher

Elsevier

Department or School

  • Biological Sciences

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