Hiura Satoko, Abe Hiroki, Koyama Kento, Koseki Shige
Graduate School of Agricultural Science, Hokkaido University, Sapporo, Japan.
Front Microbiol. 2021 Jun 24;12:674364. doi: 10.3389/fmicb.2021.674364. eCollection 2021.
Conventional regression analysis using the least-squares method has been applied to describe bacterial behavior logarithmically. However, only the normal distribution is used as the error distribution in the least-squares method, and the variability and uncertainty related to bacterial behavior are not considered. In this paper, we propose Bayesian statistical modeling based on a generalized linear model (GLM) that considers variability and uncertainty while fitting the model to colony count data. We investigated the inactivation kinetic data of with an initial cell count of 10 and the growth kinetic data of with an initial cell count of 10. The residual of the GLM was described using a Poisson distribution for the initial cell number and inactivation process and using a negative binomial distribution for the cell number variation during growth. The model parameters could be obtained considering the uncertainty by Bayesian inference. The Bayesian GLM successfully described the results of over 50 replications of bacterial inactivation with average of initial cell numbers of 10, 10, and 10 and growth with average of initial cell numbers of 10, 10, and 10. The accuracy of the developed model revealed that more than 90% of the observed cell numbers except for growth with initial cell numbers of 10 were within the 95% prediction interval. In addition, parameter uncertainty could be expressed as an arbitrary probability distribution. The analysis procedures can be consistently applied to the simulation process through fitting. The Bayesian inference method based on the GLM clearly explains the variability and uncertainty in bacterial population behavior, which can serve as useful information for risk assessment related to food borne pathogens.
使用最小二乘法的传统回归分析已被用于对数描述细菌行为。然而,在最小二乘法中仅将正态分布用作误差分布,未考虑与细菌行为相关的变异性和不确定性。在本文中,我们提出了基于广义线性模型(GLM)的贝叶斯统计建模方法,该方法在将模型拟合到菌落计数数据时考虑了变异性和不确定性。我们研究了初始细胞数为10的[细菌名称]的失活动力学数据以及初始细胞数为10的[细菌名称]的生长动力学数据。对于初始细胞数和失活过程,GLM的残差使用泊松分布进行描述,对于生长过程中的细胞数变化则使用负二项分布进行描述。通过贝叶斯推断可以在考虑不确定性的情况下获得模型参数。贝叶斯GLM成功地描述了初始细胞数平均为10、10和10的细菌失活以及初始细胞数平均为10、10和10的细菌生长的50多次重复实验结果。所开发模型的准确性表明,除了初始细胞数为10的生长情况外,超过90%的观察到的细胞数在95%预测区间内。此外,参数不确定性可以表示为任意概率分布。通过拟合,分析程序可以一致地应用于模拟过程。基于GLM的贝叶斯推断方法清楚地解释了细菌群体行为中的变异性和不确定性,这可以作为与食源性病原体相关的风险评估的有用信息。