Abstract

ABSTRACTDespite effective inactivation procedures, small numbers of bacterial cells may still remain in food samples. The risk that bacteria will survive these procedures has not been estimated precisely because deterministic models cannot be used to describe the uncertain behavior of bacterial populations. We used the Poisson distribution as a representative probability distribution to estimate the variability in bacterial numbers during the inactivation process. Strains of four serotypes of Salmonella enterica, three serotypes of enterohemorrhagic Escherichia coli, and one serotype of Listeria monocytogenes were evaluated for survival. We prepared bacterial cell numbers following a Poisson distribution (indicated by the parameter λ, which was equal to 2) and plated the cells in 96-well microplates, which were stored in a desiccated environment at 10% to 20% relative humidity and at 5, 15, and 25°C. The survival or death of the bacterial cells in each well was confirmed by adding tryptic soy broth as an enrichment culture. Changes in the Poisson distribution parameter during the inactivation process, which represent the variability in the numbers of surviving bacteria, were described by nonlinear regression with an exponential function based on a Weibull distribution. We also examined random changes in the number of surviving bacteria using a random number generator and computer simulations to determine whether the number of surviving bacteria followed a Poisson distribution during the bacterial death process by use of the Poisson process. For small initial cell numbers, more than 80% of the simulated distributions (λ = 2 or 10) followed a Poisson distribution. The results demonstrate that variability in the number of surviving bacteria can be described as a Poisson distribution by use of the model developed by use of the Poisson process.IMPORTANCE We developed a model to enable the quantitative assessment of bacterial survivors of inactivation procedures because the presence of even one bacterium can cause foodborne disease. The results demonstrate that the variability in the numbers of surviving bacteria was described as a Poisson distribution by use of the model developed by use of the Poisson process. Description of the number of surviving bacteria as a probability distribution rather than as the point estimates used in a deterministic approach can provide a more realistic estimation of risk. The probability model should be useful for estimating the quantitative risk of bacterial survival during inactivation.

Highlights

  • Despite effective inactivation procedures, small numbers of bacterial cells may still remain in food samples

  • The results demonstrate that the variability in the numbers of surviving bacteria was described as a Poisson distribution by use of the model developed by use of the Poisson process

  • They suggested using the number of bacteria following a Poisson distribution (␭ ϭ 2) in a stochastic inactivation approach to investigate the variability in the numbers of surviving bacteria

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Summary

Introduction

Small numbers of bacterial cells may still remain in food samples. Koyama et al [13] developed a sample preparation procedure for the probabilistic evaluation of bacterial behavior by obtaining bacterial numbers following a Poisson distribution (indicated by the parameter ␭, which was equal to 2), which represents the variability in the occurrence of a natural event. In their paper, they suggested using the number of bacteria following a Poisson distribution (␭ ϭ 2) in a stochastic inactivation approach to investigate the variability in the numbers of surviving bacteria. To estimate the randomness of the number of bacterial cells that survive a process designed to kill bacteria, which could include heating, desiccation, or acid stress, we considered that the behavior of bacteria after the use of inactivation processes, incorporating the variability in the behavior of individual cells, can be described in a probabilistic model

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