McKellar R C, Lu X
Food Research Program, Agriculture and Agri-Food Canada, 93 Stone Road West, Guelph, Ontario NIG 5C9, Canada.
Int J Food Microbiol. 2005 Apr 15;100(1-3):33-40. doi: 10.1016/j.ijfoodmicro.2004.10.019.
Our ability to predict the lag (lambda) prior to growth of foodborne pathogens is limited by our lack of understanding of the physiological changes taking place in the individual cell during the adaptation process. Theoretical models have been developed to describe the stochastic nature of individual cells, and probability distributions have been used to assign hypothetical values of the physiological state to individual cells (p(i)). The aim of this study is to develop a polynomial model which will link distributions of p(i) values to the physiological state of the population (h(0)), and thus to the lambda. Risk analysis software was used to simulate values of p(i) for populations of cells drawn from lognormal distributions with parameters alpha and beta, and growth curves were simulated using a modified continuous-discrete-continuous (CDC) model. Values for h(0) were then obtained for each growth curve by fitting with the heterogeneous population model (HPM). Multiple regression analysis was used to develop a polynomial function which described the subsequent h(0) value as a function of alpha and beta (R(2)=0.9957). Outputs from simulations using the polynomial model agree well with results from related stochastic models, and suggest that distributions can accurately describe the physiological state of cell populations.
我们预测食源性病原体生长之前的延迟期(λ)的能力,因我们对单个细胞在适应过程中发生的生理变化缺乏了解而受到限制。已经开发出理论模型来描述单个细胞的随机性质,并且概率分布已被用于为单个细胞分配生理状态的假设值(p(i))。本研究的目的是开发一个多项式模型,该模型将把p(i)值的分布与群体的生理状态(h(0))联系起来,进而与λ联系起来。使用风险分析软件来模拟从具有参数α和β的对数正态分布中抽取的细胞群体的p(i)值,并使用改进的连续 - 离散 - 连续(CDC)模型模拟生长曲线。然后通过与异质群体模型(HPM)拟合,为每条生长曲线获得h(0)值。使用多元回归分析来开发一个多项式函数,该函数将随后的h(0)值描述为α和β的函数(R² = 0.9957)。使用多项式模型进行模拟的输出结果与相关随机模型的结果非常吻合,并表明分布能够准确描述细胞群体的生理状态。