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Evaluation of Strain Variability in Inactivation of Campylobacter jejuni in Simulated Gastric Fluid by Using Hierarchical Bayesian Modeling

机译:基于分层贝叶斯建模的空肠弯曲杆菌灭活模拟胃液菌株变异性评价

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摘要

This study was conducted to quantitatively evaluate the variability of stress resistance in different strains of Campylobacter jejuni and the uncertainty of such strain variability. We developed Bayesian statistical models with multilevel analysis to quantify variability within a strain, variability between different strains, and the uncertainty associated with these estimates. Furthermore, we measured the inactivation of 11 strains of C. jejuni in simulated gastric fluid with low pH, using the Weibullian survival model. The model was first developed for separate pH conditions and then analyzed over a range of pH levels. We found that the model parameters developed under separate pH conditions exhibited a clear dependence of survival on pH. In addition, the uncertainty of the variability between different strains could be described as the joint distribution of the model parameters. The latter model, including pH dependency, accurately predicted the number of surviving cells in individual as well as multiple strains. In conclusion, variabilities and uncertainties in inactivation could be simultaneously evaluated and interpreted via a probabilistic approach based on Bayesian theory. Such hierarchical Bayesian models could be useful for understanding individual-strain variability in quantitative microbial risk assessment. IMPORTANCE Since microbial strains vary in their growth and inactivation patterns in food materials, it is important to accurately predict these patterns for quantitative microbial risk assessment. However, most previous studies in this area have used highly resistant strains, which could lead to inaccurate predictions. Moreover, variability, including measurement errors and variability within a strain and between different strains, can contribute to predicted individual-level outcomes. Therefore, a multilevel framework is required to resolve these levels of variability and estimate their uncertainties. We developed a Bayesian predictive model for the
机译:本研究旨在定量评价不同空肠弯曲杆菌菌株抗逆性的变异性及其菌株变异性的不确定性。我们开发了具有多层次分析的贝叶斯统计模型,以量化菌株内的变异性、不同菌株之间的变异性以及与这些估计相关的不确定性。此外,我们使用Weibullian生存模型测量了11株空肠梭菌在低pH值模拟胃液中的失活情况。该模型最初是针对不同的pH条件开发的,然后在一系列pH值水平上进行了分析。我们发现,在不同pH条件下开发的模型参数表现出明显的存活对pH值的依赖性。此外,不同菌株间变异性的不确定性可以描述为模型参数的联合分布。后一种模型,包括pH依赖性,准确地预测了单个和多个菌株中存活的细胞数量。总之,失活的变异性和不确定性可以通过基于贝叶斯理论的概率方法同时进行评估和解释。这种分层贝叶斯模型可能有助于在定量微生物风险评估中理解个体菌株变异性。重要性 由于微生物菌株在食品材料中的生长和灭活模式各不相同,因此准确预测这些模式对于定量微生物风险评估非常重要。然而,该领域的大多数先前研究都使用了高耐药菌株,这可能导致预测不准确。此外,变异性,包括测量误差和菌株内以及不同菌株之间的变异性,有助于预测个体水平的结果。因此,需要一个多层次的框架来解决这些级别的可变性并估计它们的不确定性。我们开发了一个贝叶斯预测模型,用于

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