Lindqvist R
Microbiology Division, Department of Research and Development, National Food Administration, P.O. Box 622, SE-751 26 Uppsala, Sweden.
Appl Environ Microbiol. 2006 Jul;72(7):4862-70. doi: 10.1128/AEM.00251-06.
Turbidity methods offer possibilities for generating data required for addressing microorganism variability in risk modeling given that the results of these methods correspond to those of viable count methods. The objectives of this study were to identify the best approach for determining growth parameters based on turbidity data and use of a Bioscreen instrument and to characterize variability in growth parameters of 34 Staphylococcus aureus strains of different biotypes isolated from broiler carcasses. Growth parameters were estimated by fitting primary growth models to turbidity growth curves or to detection times of serially diluted cultures either directly or by using an analysis of variance (ANOVA) approach. The maximum specific growth rates in chicken broth at 17 degrees C estimated by time to detection methods were in good agreement with viable count estimates, whereas growth models (exponential and Richards) underestimated growth rates. Time to detection methods were selected for strain characterization. The variation of growth parameters among strains was best described by either the logistic or lognormal distribution, but definitive conclusions require a larger data set. The distribution of the physiological state parameter ranged from 0.01 to 0.92 and was not significantly different from a normal distribution. Strain variability was important, and the coefficient of variation of growth parameters was up to six times larger among strains than within strains. It is suggested to apply a time to detection (ANOVA) approach using turbidity measurements for convenient and accurate estimation of growth parameters. The results emphasize the need to consider implications of strain variability for predictive modeling and risk assessment.
鉴于比浊法的结果与活菌计数法的结果相对应,比浊法为生成风险建模中解决微生物变异性所需的数据提供了可能性。本研究的目的是确定基于比浊数据和使用Bioscreen仪器确定生长参数的最佳方法,并表征从肉鸡胴体分离的34株不同生物型金黄色葡萄球菌生长参数的变异性。通过将一级生长模型拟合到比浊生长曲线或直接拟合到连续稀释培养物的检测时间,或使用方差分析(ANOVA)方法来估计生长参数。通过检测时间法估计的17℃下鸡汤中的最大比生长速率与活菌计数估计值高度一致,而生长模型(指数模型和Richards模型)低估了生长速率。选择检测时间法进行菌株表征。菌株间生长参数的变异最好用逻辑分布或对数正态分布来描述,但得出明确结论需要更大的数据集。生理状态参数的分布范围为0.01至0.92,与正态分布无显著差异。菌株变异性很重要,生长参数的变异系数在菌株间比在菌株内大六倍。建议采用基于比浊测量的检测时间(ANOVA)方法,以便方便、准确地估计生长参数。结果强调需要考虑菌株变异性对预测建模和风险评估的影响。