Literature DB >> 15453600

Concepts and tools for predictive modeling of microbial dynamics.

Kristel Bernaerts1, Els Dens, Karen Vereecken, Annemie H Geeraerd, Arnout R Standaert, Frank Devlieghere, Johan Debevere, Jan F Van Impe.   

Abstract

Description of microbial cell (population) behavior as influenced by dynamically changing environmental conditions intrinsically needs dynamic mathematical models. In the past, major effort has been put into the modeling of microbial growth and inactivation within a constant environment (static models). In the early 1990s, differential equation models (dynamic models) were introduced in the field of predictive microbiology. Here, we present a general dynamic model-building concept describing microbial evolution under dynamic conditions. Starting from an elementary model building block, the model structure can be gradually complexified to incorporate increasing numbers of influencing factors. Based on two case studies, the fundamentals of both macroscopic (population) and microscopic (individual) modeling approaches are revisited. These illustrations deal with the modeling of (i) microbial lag under variable temperature conditions and (ii) interspecies microbial interactions mediated by lactic acid production (product inhibition). Current and future research trends should address the need for (i) more specific measurements at the cell and/or population level, (ii) measurements under dynamic conditions, and (iii) more comprehensive (mechanistically inspired) model structures. In the context of quantitative microbial risk assessment, complexity of the mathematical model must be kept under control. An important challenge for the future is determination of a satisfactory trade-off between predictive power and manageability of predictive microbiology models.

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Year:  2004        PMID: 15453600     DOI: 10.4315/0362-028x-67.9.2041

Source DB:  PubMed          Journal:  J Food Prot        ISSN: 0362-028X            Impact factor:   2.077


  2 in total

1.  Praedicere Possumus: An Italian web-based application for predictive microbiology to ensure food safety.

Authors:  Pierluigi Polese; Manuela Del Torre; Mara Lucia Stecchini
Journal:  Ital J Food Saf       Date:  2018-04-09

2.  A Novel LSSVM Based Algorithm to Increase Accuracy of Bacterial Growth Modeling.

Authors:  Masoud Salehi Borujeni; Mostafa Ghaderi-Zefrehei; Farzan Ghanegolmohammadi; Saeid Ansari-Mahyari
Journal:  Iran J Biotechnol       Date:  2018-05-15       Impact factor: 1.671

  2 in total

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