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基于历史数据定义微生物控制水平的不同计算方法比较

Comparison of Different Calculation Approaches for Defining Microbiological Control Levels Based on Historical Data.

作者信息

Gordon Oliver, Goverde Marcel, Pazdan James, Staerk Alexandra, Roesti David

机构信息

Immunobiology Laboratory, Cancer Research UK London Research Institute, London UK;

MGP Consulting GmbH, Binningen, Switzerland; and.

出版信息

PDA J Pharm Sci Technol. 2015 May-Jun;69(3):383-98. doi: 10.5731/pdajpst.2015.01050.

Abstract

UNLABELLED

In the present work we compared different calculation approaches for their ability to accurately define microbiological control levels based on historical data. To that end, real microbiological data were used for simulation experiments. The results of our study confirmed that assuming a normal distribution is not appropriate for that purpose. In addition, assumption of a Poisson distribution generally underestimated the control level, and the predictive power for future values was highly insufficient. The non-parametric Excel percentile strongly predicted future values in our simulation experiments (although not as good as some of the parametric models). With the limited amount of data used in the simulations, the calculated control levels for the upper percentiles were on average higher and more variable compared to the parametric models. This was due to the fact that the largest observed value was generally defined as the control level. Accordingly, the Excel percentile is less robust towards outliers and requires more data to accurately define control levels as compared to parametric models. The negative binomial as well as the zero-inflated negative binomial distribution, both parametric models, had good predictive power for future values. Nonetheless, on basis of our simulation experiments, we saw no evidence to generally prefer the zero-inflated model over the non-inflated one. Finally, with our data, the gamma distribution on average had at least as good predictive power as the negative binomial distribution and zero-inflated negative binomial distribution for percentiles ≥98%, indicating that it may represent a viable option for calculating microbiological control levels at high percentiles. Presumably, this was based on the fact that the gamma distribution fitted the upper end of the distribution better than other models. Since in general microbiological control levels would be based on the upper percentiles, microbiologists may exclusively rely on the gamma distribution for calculation of their control levels. As the gamma distribution can conveniently be calculated in standard office calculation software, it may represent a superior alternative to the widely used percentile functions or other distribution models.

LAY ABSTRACT

During the manufacturing of pharmaceutical drug products, the counts of microorganisms are monitored in the cleanroom environment, water, the product's raw materials, and the final product. This enables manufacturers to ensure that high numbers of microorganisms that may impair the product's microbiological quality are detected before the product is released to the patient. Microbiological control levels must be set to determine at which number a count is considered too high. Exceeding such levels may require an investigation to determine the root cause explaining why such high numbers of microorganisms occurred, and a set of actions should be performed with the aim of eliminating this root cause. In order to really differentiate higher-than-usual counts, microbiological control levels should be based on historical data. In the present work we analyzed different calculation approaches towards that purpose. We used real microbiological data and performed simulation experiments to determine which statistical method could calculate the most realistic control levels that would provide the best prediction for future routine testing. Better predictions would ensure that only significant contaminations lead to an excursion of the microbiological control level, which would avoid wasting resources by investigating non-issues or normal/controlled conditions.

摘要

未标注

在本研究中,我们比较了不同的计算方法基于历史数据准确界定微生物控制水平的能力。为此,实际微生物数据被用于模拟实验。我们的研究结果证实,假设数据呈正态分布并不适用于此目的。此外,假设数据呈泊松分布通常会低估控制水平,且对未来值的预测能力严重不足。非参数Excel百分位数法在我们的模拟实验中能很好地预测未来值(尽管不如一些参数模型)。在模拟中使用的数据量有限的情况下,与参数模型相比,计算出的较高百分位数的控制水平平均更高且更具变异性。这是因为通常将观测到的最大值定义为控制水平。因此,与参数模型相比,Excel百分位数法对异常值的稳健性较差,需要更多数据才能准确界定控制水平。负二项分布以及零膨胀负二项分布这两种参数模型对未来值都有良好的预测能力。尽管如此,基于我们的模拟实验,我们没有发现普遍更倾向于零膨胀模型而非非膨胀模型的证据。最后,对于我们的数据,对于百分位数≥98%的情况,伽马分布平均至少具有与负二项分布和零膨胀负二项分布一样好的预测能力,这表明它可能是计算高百分位数微生物控制水平的一个可行选择。据推测,这是基于伽马分布比其他模型更能拟合分布上限这一事实。由于一般微生物控制水平将基于较高百分位数,微生物学家在计算其控制水平时可能完全依赖伽马分布。由于伽马分布可以在标准办公计算软件中方便地进行计算,它可能是广泛使用的百分位数函数或其他分布模型的一个更好替代方案。

摘要

在药品生产过程中,洁净室环境、水、产品原材料和最终产品中的微生物数量会受到监测。这使制造商能够确保在产品投放市场前检测到可能损害产品微生物质量的大量微生物。必须设定微生物控制水平,以确定计数达到多少时被认为过高。超过这些水平可能需要进行调查以确定导致出现如此大量微生物的根本原因,并应采取一系列行动以消除该根本原因。为了真正区分高于正常水平的计数,微生物控制水平应基于历史数据。在本研究中,我们为此目的分析了不同的计算方法。我们使用实际微生物数据并进行模拟实验,以确定哪种统计方法能够计算出最现实的控制水平,从而为未来的常规检测提供最佳预测。更好的预测将确保只有显著的污染才会导致微生物控制水平超出范围,这将避免因调查非问题或正常/受控情况而浪费资源。

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