Tarlak Fatih
Department of Nutrition and Dietetics, Faculty of Health Sciences, Istanbul Gedik University, Kartal, Istanbul 34876, Turkey.
Foods. 2023 Dec 13;12(24):4461. doi: 10.3390/foods12244461.
Microbial shelf life refers to the duration of time during which a food product remains safe for consumption in terms of its microbiological quality. Predictive microbiology is a field of science that focuses on using mathematical models and computational techniques to predict the growth, survival, and behaviour of microorganisms in food and other environments. This approach allows researchers, food producers, and regulatory bodies to assess the potential risks associated with microbial contamination and spoilage, enabling informed decisions to be made regarding food safety, quality, and shelf life. Two-step and one-step modelling approaches are modelling techniques with primary and secondary models being used, while the machine learning approach does not require using primary and secondary models for describing the quantitative behaviour of microorganisms, leading to the spoilage of food products. This comprehensive review delves into the various modelling techniques that have found applications in predictive food microbiology for estimating the shelf life of food products. By examining the strengths, limitations, and implications of the different approaches, this review provides an invaluable resource for researchers and practitioners seeking to enhance the accuracy and reliability of microbial shelf life predictions. Ultimately, a deeper understanding of these techniques promises to advance the domain of predictive food microbiology, fostering improved food safety practices, reduced waste, and heightened consumer confidence.
微生物货架期是指食品在微生物质量方面保持食用安全的持续时间。预测微生物学是一门科学领域,专注于使用数学模型和计算技术来预测食品及其他环境中微生物的生长、存活和行为。这种方法使研究人员、食品生产商和监管机构能够评估与微生物污染和腐败相关的潜在风险,从而就食品安全、质量和货架期做出明智的决策。两步建模法和一步建模法是使用初级模型和次级模型的建模技术,而机器学习方法不需要使用初级和次级模型来描述微生物的定量行为,这会导致食品腐败。这篇综述深入探讨了在预测食品微生物学中用于估计食品货架期的各种建模技术。通过研究不同方法的优势、局限性和影响,本综述为寻求提高微生物货架期预测准确性和可靠性的研究人员和从业人员提供了宝贵的资源。最终,对这些技术的更深入理解有望推动预测食品微生物学领域的发展,促进更好的食品安全实践、减少浪费并增强消费者信心。