TY - JOUR
T1 - Estimating microbial growth parameters from non-isothermal data
T2 - A case study with Clostridium perfringens
AU - Smith-Simpson, Sarah
AU - Corradini, Maria G.
AU - Normand, Mark D.
AU - Peleg, Micha
AU - Schaffner, Donald W.
N1 - Funding Information:
This work was supported in part by USDA CSREES National Integrated Food Safety Initiative, the New Jersey Agricultural Experiment Station and the Massachusetts Agricultural Experiment Station of Amherst.
PY - 2007/9/30
Y1 - 2007/9/30
N2 - Microbial growth parameters are usually calculated from the fit of a growth model to a set of isothermal growth data gathered at several temperatures. In principle at least, it is also possible to derive them from non-isothermal ('dynamic') growth data. This requires the numerical solution of a rate model whose coefficients are nested terms that include the temperature profile. The methodology is demonstrated with simulated non-isothermal growth data on which random noise had been superimposed to emulate the scatter found in experimental microbial counts. The procedure has been validated by successful retrieval of the known generation parameters from the simulated growth curves. The method was then applied to experimental non-isothermal growth data of C. perfringens cells in cooled ground beef. The growth data collected under one cooling regime were used to predict the organism's growth patterns under different temperature histories. The practicality of the method is currently limited because of the relatively large scatter found in experimental microbial growth data and the relatively low frequency at which they are collected. But if and when the scatter could be reduced and the counts taken at short time intervals, the method could be used to determine the growth model in situ thus enabling to translate the changing temperature during processing, transportation or storage into a corresponding growth curve of the organism in question.
AB - Microbial growth parameters are usually calculated from the fit of a growth model to a set of isothermal growth data gathered at several temperatures. In principle at least, it is also possible to derive them from non-isothermal ('dynamic') growth data. This requires the numerical solution of a rate model whose coefficients are nested terms that include the temperature profile. The methodology is demonstrated with simulated non-isothermal growth data on which random noise had been superimposed to emulate the scatter found in experimental microbial counts. The procedure has been validated by successful retrieval of the known generation parameters from the simulated growth curves. The method was then applied to experimental non-isothermal growth data of C. perfringens cells in cooled ground beef. The growth data collected under one cooling regime were used to predict the organism's growth patterns under different temperature histories. The practicality of the method is currently limited because of the relatively large scatter found in experimental microbial growth data and the relatively low frequency at which they are collected. But if and when the scatter could be reduced and the counts taken at short time intervals, the method could be used to determine the growth model in situ thus enabling to translate the changing temperature during processing, transportation or storage into a corresponding growth curve of the organism in question.
KW - Clostridium perfringens
KW - Growth curves
KW - Kinetic models
KW - Logistic growth
KW - Predictive microbiology
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U2 - 10.1016/j.ijfoodmicro.2007.08.005
DO - 10.1016/j.ijfoodmicro.2007.08.005
M3 - Article
C2 - 17804106
AN - SCOPUS:34548596731
SN - 0168-1605
VL - 118
SP - 294
EP - 303
JO - International journal of food microbiology
JF - International journal of food microbiology
IS - 3
ER -