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首页> 外文期刊>Journal of Theoretical Biology >Calculating stochastic inactivation of individual cells in a bacterial population using variability in individual cell inactivation time and initial cell number
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Calculating stochastic inactivation of individual cells in a bacterial population using variability in individual cell inactivation time and initial cell number

机译:使用个体细胞失活时间和初始细胞数的可变性计算细菌群中个体细胞随机灭活

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The traditional log-linear inactivation kinetics model considers microbial inactivation as a process that follows first-order kinetics. A basic concept of log reduction is decimal reduction time (D-value), which means time/dose required to kill 90% of the relevant microorganisms. D-value based on the first-order survival kinetics model is insufficient for reliable estimations of bacterial survivors following inactivation treatment. This is because the model does not consider the inactivation curvature and variability in bacterial inactivation. However, although the D-value has some limitations, it is widely used for risk assessment and sterilization time estimation. In this study, stochastic inactivation models are used in place of the conventional D-value to describe the probability of a population containing survivors. As representative bacterial inactivation normally follows a log-linear or log-Weibull model, we calculate the time required for a specific decrease in the number of cells and the number of survival cells as a probability distribution using the stochastic inactivation of individual cells in a population. We compare the probability of a population containing survivors calculated via the D-value, an inactivation kinetics model, and the stochastic formula. The stochastic calculation can be approximately estimated via a kinetic curvature model with less than 5% difference below the probability of a population containing survivors 0.1. This stochastic formula indicates that the D-value model would over- or under-estimate the probability of a population containing survivors when applied to inactivation kinetics with curvature. The results presented in this study show that stochastic analysis using mathematical models that account for variability in the individual cell inactivation time and initial cell number would lead to a realistic and probabilistic estimation of bacterial inactivation. (C) 2019 Elsevier Ltd. All rights reserved.
机译:传统的逻辑线性失活动力学模型认为微生物失活作为遵循一阶动力学的过程。降低日志减少的基本概念是小数减少时间(D值),这意味着杀死90%相关微生物所需的时间/剂量。基于一阶存活动力学模型的D值不足以可靠地估计灭活治疗后的细菌幸存者。这是因为该模型不考虑细菌失活的灭活曲率和变异性。然而,尽管D值具有一些限制,但它被广泛用于风险评估和灭菌时间估计。在该研究中,使用随机失活模型代替传统的D值以描述含有幸存者的群体的概率。由于代表性细菌灭活通常遵循对数线性或逻辑 - Weibull模型,我们计算使用人口中单个细胞随机灭活的概率分布的细胞数量和存活细胞数量的特异性降低所需的时间。我们比较包含通过D值,灭活动力学模型和随机式计算的幸存者的遗传率的概率。随机计算可以通过动力学曲率模型近似估计,其低于含有幸存者0.1的群体的概率低于5%的差异。该随机配方表明,当用曲率灭活动力学时,D值模型将过度或估计含有幸存者的遗物的可能性。本研究中提出的结果表明,随机分析使用算用于单个细胞失活时间和初始细胞数的可变性的数学模型将导致细菌失活的逼真和概率估计。 (c)2019年elestvier有限公司保留所有权利。

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