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Laser-induced breakdown spectroscopy as a reliable analytical method for classifying commercial cheese samples based on their cooking/stretching process. | LitMetric

AI Article Synopsis

  • The study evaluates the use of laser-induced breakdown spectroscopy (LIBS) and chemometric methods to classify Kashar cheese and processed cheese based on their cooking/stretching processes.
  • The analysis showed that LIBS data, combined with principal component analysis, could distinguish Kashar cheese with a 97.02% explained variance, while partial least squares discriminant analysis achieved 100% prediction accuracy for Kashar samples.
  • Calibration models for key elements in both cheese types were developed with high correlation and low errors, suggesting that LIBS coupled with chemometrics is an effective and rapid method for cheese classification.

Article Abstract

The present work evaluates the possibility of using laser-induced breakdown spectroscopy (LIBS) coupled with chemometric methods to classify cheese samples (namely Kashar cheese and processed cheese) based on their cooking/stretching process. Chemometric analysis of the data provided by LIBS and ICP-OES/AAS analyses made it possible to discriminate between the two cheese types regarding their elemental profiles. The principal component analysis model was able to discriminate the Kashar cheese with an explained variance of 97.02%. Furthermore, the partial least squares discriminant analysis model perfectly classified the Kashar samples with a prediction ability of 100%. Furthermore, calibration and validation models for Mg, Ca, Na, P, Zn, and K elements for both Kashar and processed cheese samples were developed using partial least square regression yielding high correlation coefficients and low root mean square errors. Overall, this study indicates that LIBS with chemometrics can be an easy-to-use and rapid monitoring system for cheese classification.

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Source
http://dx.doi.org/10.1016/j.foodchem.2022.132946DOI Listing

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