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Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise

Food emulsions with high amounts of unsaturated fats, such as mayonnaise, are prone to lipid oxidation. In the food industry, typically accelerated shelf life tests are applied to assess the oxidative stability of different formulations. Here, the appearance of aldehydes at the so-called onset time,...

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Autores principales: Merkx, Donny W. H., Swager, Andries, van Velzen, Ewoud J. J., van Duynhoven, John P. M., Hennebelle, Marie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7919052/
https://www.ncbi.nlm.nih.gov/pubmed/33671957
http://dx.doi.org/10.3390/antiox10020287
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author Merkx, Donny W. H.
Swager, Andries
van Velzen, Ewoud J. J.
van Duynhoven, John P. M.
Hennebelle, Marie
author_facet Merkx, Donny W. H.
Swager, Andries
van Velzen, Ewoud J. J.
van Duynhoven, John P. M.
Hennebelle, Marie
author_sort Merkx, Donny W. H.
collection PubMed
description Food emulsions with high amounts of unsaturated fats, such as mayonnaise, are prone to lipid oxidation. In the food industry, typically accelerated shelf life tests are applied to assess the oxidative stability of different formulations. Here, the appearance of aldehydes at the so-called onset time, typically weeks, is considered a measure for oxidative stability of food emulsions, such as mayonnaise. To enable earlier assessment of compromised shelf-life, a predictive model for volatile off-flavor generation is developed. The model is based on the formation kinetics of hydroperoxides, which are early oxidation products and precursors of volatile aldehydes, responsible for off-flavor. Under accelerated shelf-life conditions (50 °C), hydroperoxide (LOOH) concentration over time shows a sigmoidal curvature followed by an acceleration phase that occurs at a LOOH-concentration between 38–50 mmol/kg, here interpreted as a critical LOOH concentration (CC(LOOH)). We hypothesize that the time at which CC(LOOH) was reached is related to the onset of aldehyde generation and that the characterization of the LOOH-generation curvature could be based on reaction kinetics in the first days. These hypotheses are tested using semi-empirical models to describe the autocatalytic character of hydroperoxide formation in combination with the CC(LOOH). The Foubert function is selected as best describing the LOOH-curvature and is hence used to accurately predict onset of aldehyde generation, in most cases within several days of shelf-life. Furthermore, we find that the defining parameters of this model could be used to recognize antioxidant mechanisms at play.
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spelling pubmed-79190522021-03-02 Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise Merkx, Donny W. H. Swager, Andries van Velzen, Ewoud J. J. van Duynhoven, John P. M. Hennebelle, Marie Antioxidants (Basel) Article Food emulsions with high amounts of unsaturated fats, such as mayonnaise, are prone to lipid oxidation. In the food industry, typically accelerated shelf life tests are applied to assess the oxidative stability of different formulations. Here, the appearance of aldehydes at the so-called onset time, typically weeks, is considered a measure for oxidative stability of food emulsions, such as mayonnaise. To enable earlier assessment of compromised shelf-life, a predictive model for volatile off-flavor generation is developed. The model is based on the formation kinetics of hydroperoxides, which are early oxidation products and precursors of volatile aldehydes, responsible for off-flavor. Under accelerated shelf-life conditions (50 °C), hydroperoxide (LOOH) concentration over time shows a sigmoidal curvature followed by an acceleration phase that occurs at a LOOH-concentration between 38–50 mmol/kg, here interpreted as a critical LOOH concentration (CC(LOOH)). We hypothesize that the time at which CC(LOOH) was reached is related to the onset of aldehyde generation and that the characterization of the LOOH-generation curvature could be based on reaction kinetics in the first days. These hypotheses are tested using semi-empirical models to describe the autocatalytic character of hydroperoxide formation in combination with the CC(LOOH). The Foubert function is selected as best describing the LOOH-curvature and is hence used to accurately predict onset of aldehyde generation, in most cases within several days of shelf-life. Furthermore, we find that the defining parameters of this model could be used to recognize antioxidant mechanisms at play. MDPI 2021-02-15 /pmc/articles/PMC7919052/ /pubmed/33671957 http://dx.doi.org/10.3390/antiox10020287 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Merkx, Donny W. H.
Swager, Andries
van Velzen, Ewoud J. J.
van Duynhoven, John P. M.
Hennebelle, Marie
Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise
title Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise
title_full Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise
title_fullStr Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise
title_full_unstemmed Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise
title_short Quantitative and Predictive Modelling of Lipid Oxidation in Mayonnaise
title_sort quantitative and predictive modelling of lipid oxidation in mayonnaise
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7919052/
https://www.ncbi.nlm.nih.gov/pubmed/33671957
http://dx.doi.org/10.3390/antiox10020287
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