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Alternative Approach To Modeling Bacterial Lag Time, Using Logistic Regression as a Function of Time, Temperature, pH, and Sodium Chloride Concentration

机译:使用Logistic回归作为时间,温度,pH和氯化钠浓度的函数来建模细菌滞后时间的替代方法

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The objective of this study was to develop a probabilistic model to predict the end of lag time (λ) during the growth of Bacillus cereus vegetative cells as a function of temperature, pH, and salt concentration using logistic regression. The developed λ model was subsequently combined with a logistic differential equation to simulate bacterial numbers over time. To develop a novel model for λ, we determined whether bacterial growth had begun, i.e., whether λ had ended, at each time point during the growth kinetics. The growth of B. cereus was evaluated by optical density (OD) measurements in culture media for various pHs (5.5 ~ 7.0) and salt concentrations (0.5 ~ 2.0%) at static temperatures (10 ~ 20°C). The probability of the end of λ was modeled using dichotomous judgments obtained at each OD measurement point concerning whether a significant increase had been observed. The probability of the end of λ was described as a function of time, temperature, pH, and salt concentration and showed a high goodness of fit. The λ model was validated with independent data sets of B. cereus growth in culture media and foods, indicating acceptable performance. Furthermore, the λ model, in combination with a logistic differential equation, enabled a simulation of the population of B. cereus in various foods over time at static and/or fluctuating temperatures with high accuracy. Thus, this newly developed modeling procedure enables the description of λ using observable environmental parameters without any conceptual assumptions and the simulation of bacterial numbers over time with the use of a logistic differential equation.
机译:这项研究的目的是建立一个概率模型,通过逻辑回归来预测蜡状芽孢杆菌营养细胞生长过程中滞后时间的结束,该滞后时间是温度,pH和盐浓度的函数。随后将开发的λ模型与对数微分方程组合以模拟随时间变化的细菌数。为了建立λ的新模型,我们确定了细菌在生长动力学的每个时间点是否开始生长,即λ是否结束。蜡状芽孢杆菌的生长通过在静态温度(10〜20°C)下各种pH(5.5〜7.0)和盐浓度(0.5〜2.0%)在培养基中的光密度(OD)测量来评估。使用在每个OD测量点获得的关于是否已观察到显着增加的二分式判断来建模λ结束的概率。 λ结束的概率被描述为时间,温度,pH和盐浓度的函数,并且显示出很高的拟合度。 λ模型已通过蜡样芽孢杆菌在培养基和食品中生长的独立数据集进行了验证,表明性能可接受。此外,λ模型与逻辑微分方程相结合,可以高精度地模拟在静态和/或波动温度下各种食物中蜡状芽孢杆菌的种群随时间的变化。因此,这种新开发的建模程序可以使用可观察到的环境参数描述λ,而无需任何概念上的假设,并且可以使用对数微分方程随时间模拟细菌数量。

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