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Development and validation of a molecular predictive model to describe the growth of Listeria monocytogenes in vacuum-packaged chilled pork.

机译:开发并验证了一种分子预测模型,该模型描述了真空包装的冷藏猪肉中李斯特菌的生长。

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The aim of this study was to develop a molecular predictive model from appropriate real-time PCR methods, so as to describe the growth of a cocktail of Listeria monocytogenes strains in vacuum-packaged chilled pork during storage at selected temperature conditions (4, 10, 15, 20 and 25 degrees C). We compared this model with a traditional predictive model which used original data obtained by conventional microbiological methods. Real-time PCR was successfully used in the construction of a predictive model. A sigmoidal trend was observed for all growth curves, and four primary growth models (modified Gompertz, Baranyi, Logistic and Huang) could be used to fit the growth curves. The R2 values were >0.97 and MSE values were 0.2198 log cfu/mL in all models used. Most of the Bf and Af values were within the limit of 1.0 <= Bf <= Af <= 1.1, except for one obtained by real-time PCR at 25 degrees C. The F test showed that the modified Gompertz, Logistic and Baranyi models were sufficient to describe growth curves, but the Huang model was rejected twice in ten cases. No difference was observed in accuracy between the molecular and traditional predictive models for most of growth curves when assessed by F test. Further, no differences in both growth rate and lag phase were observed between real-time PCR and conventional microbiological methods. The application of molecular predictive model not only can aid to establish models of certain pathogens more accurately in the presence of other bacteria, but also save time and labor. Thereby, it will reduce the risk of pathogens and enhance the safety of meat and meat products
机译:这项研究的目的是通过适当的实时PCR方法开发一种分子预测模型,以描述在选定温度条件下储存期间,真空包装的冷藏猪肉中单核细胞增生李斯特菌菌株的混合物的生长情况(4、10, 15、20和25摄氏度)。我们将该模型与使用传统微生物方法获得的原始数据的传统预测模型进行了比较。实时PCR已成功用于预测模型的构建。观察到所有生长曲线呈S形趋势,可以使用四种主要生长模型(改良的Gompertz,Baranyi,Logistic和Huang)拟合生长曲线。在所有使用的模型中,R 2 值均> 0.97,MSE值为0.2198 log cfu / mL。除了在25摄氏度通过实时PCR获得的Bf和Af值之外,大多数Bf和Af值都在1.0 <= Bf <= Af <= 1.1的范围内。F测试表明,改进的Gompertz,Logistic和Baranyi模型足以描述生长曲线,但在十个案例中两次拒绝了Huang模型。通过F检验评估时,大多数生长曲线的分子预测模型与传统预测模型之间的准确性没有差异。此外,在实时PCR和常规微生物方法之间未观察到生长速率和滞后阶段的差异。分子预测模型的应用不仅可以帮助在其他细菌存在下更准确地建立某些病原体的模型,而且可以节省时间和劳力。因此,它将减少病原体的风险并提高肉类和肉制品的安全性

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