Division of Pharmaceutical Analysis, US Food and Drug Administration, St. Louis, Missouri 63101, USA.
J Pharm Sci. 2010 Aug;99(8):3572-8. doi: 10.1002/jps.22094.
Monte Carlo simulations were applied to investigate the propagation of uncertainty in both input variables and response measurements on model prediction for nasal spray product performance design of experiment (DOE) models in the first part of this study, with an initial assumption that the models perfectly represent the relationship between input variables and the measured responses. In this article, we discard the initial assumption, and extended the Monte Carlo simulation study to examine the influence of both input variable variation and product performance measurement variation on the uncertainty in DOE model coefficients. The Monte Carlo simulations presented in this article illustrate the importance of careful error propagation during product performance modeling. Our results show that the error estimates based on Monte Carlo simulation result in smaller model coefficient standard deviations than those from regression methods. This suggests that the estimated standard deviations from regression may overestimate the uncertainties in the model coefficients. Monte Carlo simulations provide a simple software solution to understand the propagation of uncertainty in complex DOE models so that design space can be specified with statistically meaningful confidence levels.
在本研究的第一部分,我们应用蒙特卡罗模拟来研究不确定性在输入变量和响应测量中的传播对鼻腔喷雾产品性能设计实验(DOE)模型的模型预测的影响,初始假设是模型完美地代表了输入变量和测量响应之间的关系。在本文中,我们摒弃了初始假设,并扩展了蒙特卡罗模拟研究,以检查输入变量变化和产品性能测量变化对 DOE 模型系数不确定性的影响。本文介绍的蒙特卡罗模拟说明了在产品性能建模过程中仔细传播误差的重要性。我们的结果表明,基于蒙特卡罗模拟的误差估计会导致模型系数标准偏差小于回归方法的标准偏差。这表明回归方法估计的标准偏差可能高估了模型系数的不确定性。蒙特卡罗模拟为理解复杂 DOE 模型中的不确定性传播提供了一种简单的软件解决方案,以便可以在具有统计学意义的置信水平下指定设计空间。