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http://dx.doi.org/10.5851/kosfa.2020.e64

Description of Kinetic Behavior of Pathogenic Escherichia coli in Cooked Pig Trotters under Dynamic Storage Conditions Using Mathematical Equations  

Ha, Jimyeong (Risk Analysis Research Center, Sookmyung Women's University)
Lee, Jeeyeon (Department of Food and Nutrition, Dong-eui University)
Oh, Hyemin (Department of Food and Nutrition, Sookmyung Women's University)
Kim, Hyun Jung (Department of Food and Nutrition, Sookmyung Women's University)
Choi, Yukyung (Department of Food and Nutrition, Sookmyung Women's University)
Lee, Yewon (Department of Food and Nutrition, Sookmyung Women's University)
Kim, Yujin (Department of Food and Nutrition, Sookmyung Women's University)
Lee, Heeyoung (Food Standard Research Center, Korea Food Research Institute)
Kim, Sejeong (Risk Analysis Research Center, Sookmyung Women's University)
Yoon, Yohan (Risk Analysis Research Center, Sookmyung Women's University)
Publication Information
Food Science of Animal Resources / v.40, no.6, 2020 , pp. 938-945 More about this Journal
Abstract
A dynamic model was developed to predict the Escherichia coli cell counts in pig trotters at changing temperatures. Five-strain mixture of pathogenic E. coli at 4 Log CFU/g were inoculated to cooked pig trotter samples. The samples were stored at 10℃, 20℃, and 25℃. The cell count data was analyzed with the Baranyi model to compute the maximum specific growth rate (μmax) (Log CFU/g/h) and lag phase duration (LPD) (h). The kinetic parameters were analyzed using a polynomial equation, and a dynamic model was developed using the kinetic models. The model performance was evaluated using the accuracy factor (Af), bias factor (Bf), and root mean square error (RMSE). E. coli cell counts increased (p<0.05) in pig trotter samples at all storage temperatures (10℃-25℃). LPD decreased (p<0.05) and μmax increased (p<0.05) as storage temperature increased. In addition, the value of h0 was similar at 10℃ and 20℃, implying that the physiological state was similar between 10℃ and 20℃. The secondary models used were appropriate to evaluate the effect of storage temperature on LPD and μmax. The developed kinetic models showed good performance with RMSE of 0.618, Bf of 1.02, and Af of 1.08. Also, performance of the dynamic model was appropriate. Thus, the developed dynamic model in this study can be applied to describe the kinetic behavior of E. coli in cooked pig trotters during storage.
Keywords
Escherichia coli; pig trotters; dynamic model; mathematical model;
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Times Cited By KSCI : 8  (Citation Analysis)
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