4.7 Article

Artificial neural network-based predictive model for bacterial growth in a simulated medium of modified-atmosphere-packed cooked meat products

期刊

JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY
卷 49, 期 4, 页码 1799-1804

出版社

AMER CHEMICAL SOC
DOI: 10.1021/jf000650m

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artificial neural networks; response surface model; bacterial growth; Lactobacillus sake; modified-atmosphere-packed meat

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The data of Devilieghere et al. (Int. J. Food Microbiol. 1999, 46, 57-70) on bacterial growth in a simulated medium of modified-atmosphere-packed cooked meat products was processed for estimating maximum specific growth rate mu (max) and lag phase lambda of Lactobacillus sake using artificial neural networks-based model (ANNM) computation. The comparison between ANNM and response surface methodology (RSM) model showed that the accuracy of ANNM prediction was higher than that of RSM. Two-dimensional and three-dimensional plots of the response surfaces revealed that the relationships of water activity a,, temperature T, and dissolved CO2 concentration with mu (max) and lambda. were complicated, not just linear or second-order relations. Furthermore, it was possible to compute the sensitivity of the model outputs against each input parameter by using ANNM. The results showed that mu (max) was most sensitive to a(w) T, and dissolved CO2 in this order; whereas lambda was sensitive to T the most, followed by a(w) and dissolved CO2 concentrations.

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