Classification and authentication of tea according to their harvest season based on FT-IR fingerprinting using pattern recognition methods
DATE:
2023-01
UNIVERSAL IDENTIFIER: http://hdl.handle.net/11093/4112
EDITED VERSION: https://linkinghub.elsevier.com/retrieve/pii/S0889157522006135
DOCUMENT TYPE: article
ABSTRACT
The potential of FT-IR spectral fingerprinting was investigated to classify tea samples based on the harvest season
(May and September). Tea samples were collected from five geographical regions (north of Iran) during the
harvesting period 2019–2020. Principal component analysis (PCA), principal component analysis-linear
discriminant analysis (PCA-LDA) and partial least square-linear discriminant analysis (PLS-LDA) were
employed in order to assess the feasibility of discrimination of tea samples based on their harvest season using
their FT-IR spectral data. The results showed that the tea samples from two harvest seasons can be identified
based on FT-IR spectral fingerprints. All calibration samples were correctly classified (100.0 %) by the PCA-LDA
and PLS-LDA models using leave-one-out cross validation. The mean sensitivity and specificity (for prediction
set) were both 98.6 % for PCA-LDA model and 100.0 % for PLS-LDA mode. A high percentage of correct classifications
for the training set shows the strong relationship between the FT-IR spectral fingerprinting and the
harvest season, while the satisfactory results for the prediction set demonstrates the ability to identify the harvest
season of an unknown tea sample based on its FT-IR spectral data.