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微生物风险评估中生长固有变异性的考量。

Accounting for inherent variability of growth in microbial risk assessment.

作者信息

Marks H M, Coleman M E

机构信息

Food Safety and Inspection Service, U.S. Department of Agriculture, USA.

出版信息

Int J Food Microbiol. 2005 Apr 15;100(1-3):275-87. doi: 10.1016/j.ijfoodmicro.2004.10.031.

Abstract

Risk assessments of pathogens need to account for the growth of small number of cells under varying conditions. In order to determine the possible risks that occur when there are small numbers of cells, stochastic models of growth are needed that would capture the distribution of the number of cells over replicate trials of the same scenario or environmental conditions. This paper provides a simple stochastic growth model, accounting only for inherent cell-growth variability, assuming constant growth kinetic parameters, for an initial, small, numbers of cells assumed to be transforming from a stationary to an exponential phase. Two, basic, microbial sets of assumptions are considered: serial, where it is assume that cells transform through a lag phase before entering the exponential phase of growth; and parallel, where it is assumed that lag and exponential phases develop in parallel. The model is based on, first determining the distribution of the time when growth commences, and then modelling the conditional distribution of the number of cells. For the latter distribution, it is found that a Weibull distribution provides a simple approximation to the conditional distribution of the relative growth, so that the model developed in this paper can be easily implemented in risk assessments using commercial software packages.

摘要

病原体的风险评估需要考虑在不同条件下少量细胞的生长情况。为了确定存在少量细胞时可能出现的风险,需要有能捕捉在相同场景或环境条件下重复试验中细胞数量分布的生长随机模型。本文提供了一个简单的随机生长模型,该模型仅考虑内在的细胞生长变异性,假设生长动力学参数恒定,适用于初始少量假定从稳定期转变为指数期的细胞。考虑了两组基本的微生物假设:连续型,即假设细胞在进入指数生长期之前要经过一个延迟期;平行型,即假设延迟期和指数期并行发展。该模型首先基于确定生长开始时间的分布,然后对细胞数量的条件分布进行建模。对于后一种分布,发现威布尔分布为相对生长的条件分布提供了一个简单的近似,这样本文所开发的模型就可以很容易地在风险评估中使用商业软件包来实现。

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