Department of Chemical and Biomolecular Engineering, University of Delaware, Newark, DE, USA.
Department of Chemical and Biochemical Engineering, Rutgers - The State University of New Jersey, Piscataway, NJ, USA.
Int J Pharm. 2022 Nov 25;628:122326. doi: 10.1016/j.ijpharm.2022.122326. Epub 2022 Oct 21.
Residence time distribution (RTD) is a probability density function that describes the time materials spend inside a system. It is a promising tool for mixing behavior characterization, material traceability, and real-time quality control in pharmaceutical manufacturing. However, RTD measurements are accompanied with some degree of uncertainties because of process fluctuation and variation, measurement error, and experimental variation among different replicates. Due to the strict quality control requirements of drug manufacturing, it is essential to consider RTD uncertainty and characterize its effects on RTD-based predictions and applications. Towards this end, two approaches were developed in this work, namely model-based and data-based approaches. The model-based approach characterizes the RTD uncertainty via RTD model parameters and uses Monte Carlo sampling to propagate and analyze the effects on downstream processes. To avoid bias and possible reduction of uncertainty during model fitting, the data-based approach characterizes RTD uncertainty using the raw experimental data and utilizes interval arithmetic for uncertainty propagation. A constrained optimization approach was also proposed to overcome the drawback of interval arithmetic in the data-based approach. Results depict probability intervals around the upstream disturbance tracking profile and the funnel plot, facilitating better decision-making for quality control under uncertainty.
停留时间分布(RTD)是一种概率密度函数,用于描述物料在系统内的停留时间。它是一种很有前途的工具,可用于混合行为表征、物料可追溯性以及制药生产中的实时质量控制。然而,由于过程波动和变化、测量误差以及不同重复实验之间的实验变化,RTD 测量会伴随一定程度的不确定性。由于药品制造的严格质量控制要求,考虑 RTD 不确定性并表征其对基于 RTD 的预测和应用的影响至关重要。为此,本工作提出了两种方法,即基于模型的方法和基于数据的方法。基于模型的方法通过 RTD 模型参数来描述 RTD 不确定性,并使用蒙特卡罗抽样来传播和分析对下游过程的影响。为了避免在模型拟合过程中产生偏差和可能的不确定性降低,基于数据的方法使用原始实验数据来描述 RTD 不确定性,并利用区间算术进行不确定性传播。还提出了一种约束优化方法来克服基于数据的方法中区间算术的缺点。结果描绘了上游干扰跟踪轮廓和漏斗图的概率区间,为不确定条件下的质量控制提供了更好的决策支持。