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Data standardization strategy to correct the effect of seasonality in the authentication of virgin olive oil

[Display omitted] •Authentication of virgin olive oil from two DOs and four harvests.•A two-class PLS-DA model is established with the fluorescence spectra of one harvest.•A standardization technique is applied to correct the spectra of the other harvests.•An adaptation of the PDS technique is propo...

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Bibliographic Details
Published in:Microchemical journal 2023-12, Vol.195, p.109520, Article 109520
Main Authors: Rovira, Glòria, Ruisánchez, Itziar, Pilar Callao, M.
Format: Article
Language:English
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Summary:[Display omitted] •Authentication of virgin olive oil from two DOs and four harvests.•A two-class PLS-DA model is established with the fluorescence spectra of one harvest.•A standardization technique is applied to correct the spectra of the other harvests.•An adaptation of the PDS technique is proposed as a standardization technique.•The standardization process yields comparable quality parameters for all harvests. This study proposes a standardization strategy for dealing with seasonal variability in the authentication of extra virgin oils from the PDOs Les Garrigues and Siurana. Samples from four harvests were measured by fluorescence spectroscopy. A PLS-DA two-class model was developed and validated from samples from one of the harvests. When samples from three other harvests were predicted with the model developed, it was observed that the sensitivity and specificity were lower than when the model was validated. For the standardization process, we adapted the PDS technique to obtain the transfer function. The results obtained from the transformed spectra show that standardization is a good strategy for extending the usefulness of the models if the samples to be predicted are subject to seasonal variability.
ISSN:0026-265X
1095-9149
DOI:10.1016/j.microc.2023.109520