Graduate School of Agricultural Science, Hokkaido University, Kita-9, Nishi-9, Kita-ku, Sapporo 060-8589, Japan.
Graduate School of Agricultural Science, Hokkaido University, Kita-9, Nishi-9, Kita-ku, Sapporo 060-8589, Japan.
Int J Food Microbiol. 2018 Nov 20;285:129-135. doi: 10.1016/j.ijfoodmicro.2018.08.006. Epub 2018 Aug 8.
Stochastic models take into account the uncertainty and variability of predictions in quantitative microbial risk assessment. However, a model that considers thermal inactivation conditions can better predict whether or not bacteria in food are alive. To this end, we describe a novel probabilistic modelling procedure for accurately predicting thermal end point, in contrast to conventional kinetic models that are based on extrapolation of the D value. We used this new model to investigate changes in the survival probability of Salmonella enterica serotype Oranienburg during thermal processing. These changes were accurately described by a cumulative gamma distribution. The predicted total bacterial reduction time with a survival probability of 10-the commercial standard for sterility-was significantly shorter than that predicted by the conventional deterministic kinetic model. Thus, the survival probability distribution can explain the heterogeneity in total reduction time for a bacterial population. Furthermore, whereas kinetic methodologies may overestimate the time required for inactivation, our method for determining survival probability distribution can provide an accurate estimate of thermal inactivation and is therefore an important tool for quantitative microbial risk assessment of foods.
随机模型考虑了定量微生物风险评估中预测的不确定性和可变性。然而,考虑热失活条件的模型可以更好地预测食品中的细菌是否存活。为此,我们描述了一种新的概率建模程序,用于准确预测热终点,与传统的基于 D 值外推的动力学模型形成对比。我们使用这个新模型来研究沙门氏菌肠亚种奥兰宁堡在热加工过程中的存活概率变化。这些变化可以通过累积伽马分布准确描述。存活概率为 10-商业无菌标准的预测总细菌减少时间明显短于传统确定性动力学模型的预测。因此,存活概率分布可以解释细菌群体总减少时间的异质性。此外,虽然动力学方法可能高估失活所需的时间,但我们确定存活概率分布的方法可以对热失活进行准确估计,因此是定量微生物风险评估食品的重要工具。