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Kinetics of heat-induced changes in foods: A workflow proposal

机译:热诱导的食物变化的动力学:工作流程提案

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The goal of kinetic modeling is twofold: i) to increase scientific understanding of the process under study, and ii) to predict product properties in product and process design and shelf life. Reviewing food science literature shows that classical two-step kinetic analysis is most common, by first deriving rate constants for an assumed order of reaction (possibly after linearization to make linear regression possible) and then deriving Arrhenius parameters via linear regression, again after log-linearization. This two-step approach is not without problems and this article proposes an alternative general workflow on the untransformed data using nonlinear, global regression. The basic elements consist of: i) a full statistical analysis of the order of the reaction per temperature, ii) a global analysis of all data simultaneously to estimate Arrhenius parameters while characterizing a possibly varying order via multilevel modeling, iii) evaluation of the resulting model and parameters in terms of fitting and, even more importantly, predictive capacity. The proposed workflow is illustrated with a case study on thermal degradation of carnitin (described in literature as a first-order reaction). A Bayesian approach was used to obtain probability distributions of parameters rather than point estimates, but the common standard frequentist approach can also be applied. Kinetic analysis of the carnitin data for each temperature separately showed that the order varied with temperature between 0.9 and 1.6. Multilevel modeling on all data simultaneously was used to better characterize this variation along with the common Arrhenius parameters. Due to the nature of the Arrhenius equation, reparameterization and rescaling is necessary to avoid strong parameter correlation and numerical difficulties during nonlinear regression. Multilevel modeling of all data showed that the variation of the order with temperature was not that strong as suggested from the separate analyses but it did show that the global order was higher than one. The outcome of the suggested workflow was compared to that of the classical two-step kinetic analysis and showed considerable differences in Arrhenius parameters; this appeared to be due to linearization by taking logarithms of concentration data, at least for this case study. Furthermore, it is illustrated that Bayesian regression leads to better insight into behaviour of parameters and models than least-squares regression in terms of density distributions, parameter correlations and joint confidence intervals. Even more importantly, testing of predictive capacity of kinetic models can be done much more rigorously using the Bayesian approach.
机译:动力学建模的目标是双重:i)提高对研究过程中的科学了解,II)预测产品和工艺设计和保质期的产品性质。审查食品科学文献表明,古典两步动力学分析最常见的,通过首先导出速率常数反应的假定顺序(可能的线性化后,使线性回归可能的),再经过对数通过线性回归导出阿列纽斯参数,再次线性化。这种两步方法并非没有问题,本文使用非线性,全局回归提出了在未转化数据上的替代通用工作流程。基本元素包括:i)对每温反应顺序的全部统计分析,ii)同时对所有数据的全局分析,以估计Arrhenius参数,同时通过多级模型,III)评估所产生的可能不同的订单拟合和参数的模型和参数,更重要的是预测能力。所提出的工作流程用肉毒酸热降解的案例研究(在文献中描述为一阶反应)。贝叶斯方法用于获得参数的概率分布而不是点估计,但也可以应用常见的标准频率方法。每个温度的肉毒素数据的动力学分析分别表明,该顺序在0.9和1.6之间的温度变化。同时对所有数据的多级建模用于更好地表征该变化以及常见的Arhenius参数。由于Arrhenius方程的性质,需要在非线性回归期间避免强烈的参数相关性和数值困难所必需的。所有数据的多级建模表明,从单独的分析中提出的情况下,秩序的变化并不强烈,但它确实表明全球秩序高于1。建议的工作流程的结果与经典两步动力学分析的结果进行了比较,并在Arrhenius参数中显示了相当大的差异;这似乎是由于采用浓度数据的对数,至少在这种情况下的线性化。此外,说明贝叶斯回归导致在密度分布,参数相关性和联合置信区间方面更好地了解参数和模型的行为,而不是比分中的最小二乘性。更重要的是,使用贝叶斯方法可以更加严格地进行动力学模型的预测能力的测试。

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