Literature DB >> 17158625

Use of artificial neural networks and a gamma-concept-based approach to model growth of and bacteriocin production by Streptococcus macedonicus ACA-DC 198 under simulated conditions of Kasseri cheese production.

Panayiota Poirazi1, Frédéric Leroy, Marina D Georgalaki, Anastassios Aktypis, Luc De Vuyst, Effie Tsakalidou.   

Abstract

Growth of and bacteriocin production by Streptococcus macedonicus ACA-DC 198 were assessed and modeled under conditions simulating Kasseri cheese production. Controlled fermentations were performed in milk supplemented with yeast extract at different combinations of temperature (25, 40, and 55 degrees C), constant pH (pHs 5 and 6), and added NaCl (at concentrations of 0, 2, and 4%, wt/vol). The data obtained were used to construct two types of predictive models, namely, a modeling approach based on the gamma concept, as well as a model based on artificial neural networks (ANNs). The latter computational methods were used on 36 control fermentations to quantify the complex relationships between the conditions applied (temperature, pH, and NaCl) and population behavior and to calculate the associated biokinetic parameters, i.e., maximum specific growth and cell count decrease rates and specific bacteriocin production. The functions obtained were able to estimate these biokinetic parameters for four validation fermentation experiments and obtained good agreement between modeled and experimental values. Overall, these experiments show that both methods can be successfully used to unravel complex kinetic patterns within biological data of this kind and to predict population kinetics. Whereas ANNs yield a better correlation between experimental and predicted results, the gamma-concept-based model is more suitable for biological interpretation. Also, while the gamma-concept-based model has not been designed for modeling of other biokinetic parameters than the specific growth rate, ANNs are able to deal with any parameter of relevance, including specific bacteriocin production.

Entities:  

Mesh:

Substances:

Year:  2006        PMID: 17158625      PMCID: PMC1800779          DOI: 10.1128/AEM.01721-06

Source DB:  PubMed          Journal:  Appl Environ Microbiol        ISSN: 0099-2240            Impact factor:   4.792


  28 in total

Review 1.  Predictive food microbiology for the meat industry: a review.

Authors:  K McDonald; D W Sun
Journal:  Int J Food Microbiol       Date:  1999-11-01       Impact factor: 5.277

2.  Registered designation of origin areas of fermented food products defined by microbial phenotypes and artificial neural networks.

Authors:  M F Lopes; C I Pereira; F M Rodrigues; M P Martins; M C Mimoso; T C Barros; J J Figueiredo Marques; R P Tenreiro; J S Almeida; M T Barreto Crespo
Journal:  Appl Environ Microbiol       Date:  1999-10       Impact factor: 4.792

3.  Modelling bacterial growth in quantitative microbiological risk assessment: is it possible?

Authors:  Maarten J Nauta
Journal:  Int J Food Microbiol       Date:  2002-03       Impact factor: 5.277

4.  Improving artificial neural networks with a pruning methodology and genetic algorithms for their application in microbial growth prediction in food.

Authors:  Rosa María García-Gimeno; César Hervás-Martínez; SilónizMariaIsabel de
Journal:  Int J Food Microbiol       Date:  2002-01-30       Impact factor: 5.277

5.  Application of artificial neural networks as a non-linear modular modeling technique to describe bacterial growth in chilled food products.

Authors:  A H Geeraerd; C H Herremans; C Cenens; J F Van Impe
Journal:  Int J Food Microbiol       Date:  1998-10-20       Impact factor: 5.277

6.  Rapid detection and identification of Streptococcus macedonicus by species-specific PCR and DNA hybridisation.

Authors:  Marina Papadelli; Eugenia Manolopoulou; George Kalantzopoulos; Effie Tsakalidou
Journal:  Int J Food Microbiol       Date:  2003-03-25       Impact factor: 5.277

Review 7.  Applications of the bacteriocin, nisin.

Authors:  J Delves-Broughton; P Blackburn; R J Evans; J Hugenholtz
Journal:  Antonie Van Leeuwenhoek       Date:  1996-02       Impact factor: 2.271

8.  Computational neural networks for predictive microbiology. II. Application to microbial growth.

Authors:  M N Hajmeer; I A Basheer; Y M Najjar
Journal:  Int J Food Microbiol       Date:  1997-01       Impact factor: 5.277

Review 9.  Potential of bacteriocin-producing lactic acid bacteria for improvements in food safety and quality.

Authors:  L O'Sullivan; R P Ross; C Hill
Journal:  Biochimie       Date:  2002 May-Jun       Impact factor: 4.079

10.  Modelling the growth of Leuconostoc mesenteroides by Artificial Neural Networks.

Authors:  R M García-Gimeno; C Hervás-Martínez; R Rodríguez-Pérez; G Zurera-Cosano
Journal:  Int J Food Microbiol       Date:  2005-07-28       Impact factor: 5.277

View more
  3 in total

Review 1.  Biomass measurement online: the performance of in situ measurements and software sensors.

Authors:  Kristiina Kiviharju; Kalle Salonen; Ulla Moilanen; Tero Eerikäinen
Journal:  J Ind Microbiol Biotechnol       Date:  2008-04-08       Impact factor: 3.346

2.  Optimization of Heavy Metals Biosorption via Artificial Neural Network: A Case Study of Cobalt (II) Sorption by Pseudomonas alcaliphila NEWG-2.

Authors:  Ashraf Elsayed; Zeiad Moussa; Salma Saleh Alrdahe; Maha Mohammed Alharbi; Abeer A Ghoniem; Ayman Y El-Khateeb; WesamEldin I A Saber
Journal:  Front Microbiol       Date:  2022-05-31       Impact factor: 6.064

3.  Evaluation of the Estimation Capability of Response Surface Methodology and Artificial Neural Network for the Optimization of Bacteriocin-Like Inhibitory Substances Production by Lactococcus lactis Gh1.

Authors:  Roslina Jawan; Sahar Abbasiliasi; Joo Shun Tan; Mohd Rizal Kapri; Shuhaimi Mustafa; Murni Halim; Arbakariya B Ariff
Journal:  Microorganisms       Date:  2021-03-12
  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.