Skandamis Panagiotis N, Jeanson Sophie
Laboratory of Food Quality Control and Hygiene, Department of Food Science and Human Nutrition, University of Athens Athens, Greece.
Institut National de la Recherche Agronomique, UMR1253 Science and Technology of Milk and Eggs Rennes, France ; AGROCAMPUS OUEST, UMR1253 Science and Technology of Milk and Eggs Rennes, France.
Front Microbiol. 2015 Oct 29;6:1178. doi: 10.3389/fmicb.2015.01178. eCollection 2015.
Predictive models are mathematical expressions that describe the growth, survival, inactivation, or biochemical processes of foodborne bacteria. During processing of contaminated raw materials and food preparation, bacteria are entrapped into the food residues, potentially transferred to the equipment surfaces (abiotic or inert surfaces) or cross-contaminate other foods (biotic surfaces). Growth of bacterial cells can either occur planktonically in liquid or immobilized as colonies. Colonies are on the surface or confined in the interior (submerged colonies) of structured foods. For low initial levels of bacterial population leading to large colonies, the immobilized growth differs from planktonic growth due to physical constrains and to diffusion limitations within the structured foods. Indeed, cells in colonies experience substrate starvation and/or stresses from the accumulation of toxic metabolites such as lactic acid. Furthermore, the micro-architecture of foods also influences the rate and extent of growth. The micro-architecture is determined by (i) the non-aqueous phase with the distribution and size of oil particles and the pore size of the network when proteins or gelling agent are solidified, and by (ii) the available aqueous phase within which bacteria may swarm or swim. As a consequence, the micro-environment of bacterial cells when they grow in colonies might greatly differs from that when they grow planktonically. The broth-based data used for modeling (lag time and generation time, the growth rate, and population level) are poorly transferable to solid foods. It may lead to an over-estimation or under-estimation of the predicted population compared to the observed population in food. If the growth prediction concerns pathogen bacteria, it is a major importance for the safety of foods to improve the knowledge on immobilized growth. In this review, the different types of models are presented taking into account the stochastic behavior of single cells in the growth of a bacterial population. Finally, the recent advances in the rules controlling different modes of growth, as well as the methodological approaches for monitoring and modeling such growth are detailed.
预测模型是描述食源细菌生长、存活、失活或生化过程的数学表达式。在受污染原材料的加工和食品制备过程中,细菌会被困在食品残渣中,有可能转移到设备表面(非生物或惰性表面)或交叉污染其他食品(生物表面)。细菌细胞的生长既可以在液体中浮游生长,也可以固定为菌落生长。菌落在结构化食品的表面或内部(淹没菌落)。对于导致形成大菌落的低初始细菌数量水平,由于物理限制和结构化食品内的扩散限制,固定化生长与浮游生长不同。实际上,菌落中的细胞会经历底物饥饿和/或来自有毒代谢产物(如乳酸)积累的压力。此外,食品的微观结构也会影响生长的速率和程度。微观结构由以下因素决定:(i)当蛋白质或胶凝剂固化时,油滴的分布和大小以及网络孔径的非水相;(ii)细菌可能聚集或游动的可用水相。因此,细菌细胞在菌落中生长时的微环境可能与浮游生长时的微环境有很大不同。用于建模的基于肉汤的数据(延迟时间和世代时间、生长速率和种群水平)很难转移到固体食品中。与食品中观察到的种群相比,这可能导致对预测种群的高估或低估。如果生长预测涉及病原菌,提高对固定化生长的认识对食品安全至关重要。在这篇综述中,考虑了细菌种群生长中单个细胞的随机行为,介绍了不同类型的模型。最后,详细阐述了控制不同生长模式的规则的最新进展以及监测和建模此类生长的方法。