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  4. Rapid Detection of Tea Adulteration Using FT-NIR Spectroscopy Combined with t-SNE Analysis
 
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Rapid Detection of Tea Adulteration Using FT-NIR Spectroscopy Combined with t-SNE Analysis

Type
Journal article
Language
English
Date issued
2025
Author
Lima, Clara Mariana Gonçalves
Silveira, Paula Giarolla
Santana, Renata Ferreira
Khalid, Waseem
Mourão, Matheus da Silva
Bonomo, Renata Cristina Ferreira
Coutinho, Henrique Douglas Melo
Dos Anjos, Virgílio de Carvalho
Bell, Maria José Valenzuela
Batista, Luís Roberto
Contado, José Luís
Wawrzyniak, Jolanta 
Verruck, Silvani
Da Rocha, Roney Alves
Faculty
Wydział Nauk o Żywności i Żywieniu
Journal
Food Science and Technology
ISSN
0101-2061
DOI
10.5327/fst.00454
Web address
https://www.fstjournal.com.br/revista/article/view/454
Volume
45
Pages from-to
e00454
Abstract (EN)
Tea is one of the most popular non-alcoholic beverages internationally, and it is not uncommon to find commercial tea preparations mixed with leaves and parts of other plants to increase profit and production volume, which constitutes fraud. The aim of this study was to perform Fourier transform-near-infrared spectroscopic characterization of leaves and pieces (petioles and stems) of three types of medicinal plants (Chamomile, Ginseng, and Quebra-pedras) used in the preparation of teas. Cluster analysis methods were used to evaluate the ability of Fourier transform-near-infrared to identify plant types, with t-SNE presenting the best discriminatory power. The deconvolution of the spectra showed that 15 vibration bands allow a good characterization of the samples, all with R² greater than 0.99.
Keywords (EN)
  • infrared

  • non-linear statistical method

  • fraud

  • medicinal plants

License
cc-bycc-by CC-BY - Attribution
Open access date
April 30, 2025
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