6533b85ffe1ef96bd12c0f6a
RESEARCH PRODUCT
Variable selection for the determination of total polar materials in fried oils by near infrared spectroscopy
Salvador GarriguesMari Merce CascantMiguel De La Guardiasubject
Materials scienceTEC010401 analytical chemistryNear-infrared spectroscopyAnalytical chemistryFeature selection04 agricultural and veterinary sciences040401 food science01 natural sciences0104 chemical sciences0404 agricultural biotechnologyPartial least squares regressionPolarNear infrared radiationSpectroscopydescription
Total polar materials (TPM) content is considered as the best indicator and the most common parameter to check the quality of deep-frying oils. The development of simpler and quicker analytical techniques than the available methods to monitor oil quality in restaurants and fried food outlets is an important topic related to the human health. This paper reports a comparison of the variable selection of near infrared (NIR) spectra by multiple linear regression (MLR-NIR) with partial least squares (PLS-NIR) models for the quantification of TPM in fried vegetable oils. The use of PLS-NIR offers an alternative in laboratory bench equipment for the determination of TPM in oils employed for frying different kinds of foods with relative prediction errors of 6.5%, a coefficient of determination for prediction of 0.99 and a residual predictive deviation (RPD) of 9.2 when selected wavenumber intervals were employed. MLR-NIR allows the selection of a reduced number of wavenumber in order to develop low cost instruments to evaluate the frying oil quality. Based on the NIR signals at four wavenumbers, the relative prediction error was 12.1%, the coefficient of determination for prediction was 0.96 and the RPD was 5.0.
year | journal | country | edition | language |
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2018-11-26 | Journal of Near Infrared Spectroscopy |