Center of Plastics Innovation, University of Delaware, DE, USA.
Department of Chemical and Biochemical Engineering, Rutgers University, NJ, USA.
Int J Pharm. 2024 May 25;657:124133. doi: 10.1016/j.ijpharm.2024.124133. Epub 2024 Apr 19.
Residence time distribution (RTD) method has been widely used in the pharmaceutical manufacturing for understanding powder dynamics within unit operations and continuous integrated manufacturing lines. The dynamics thus captured is then used to develop predictive models for unit operations and important RTD-based applications ensuring product quality assurance. Despite thorough efforts in tracer selection, data acquisition, and calibration model development to obtain tracer concentration profiles for RTD studies, there can exist significant noise in these profiles. This noise can make it challenging to identify the underlying signal and get a representative RTD of the system under study. Such concerns have previously indicated the importance of noise handling for RTD measurements in literature. However, the literature does not provide sufficient information on noise handling or data treatment strategies for RTD studies. To this end, we investigate the impact of varying levels of noise using different tracers on measurement of RTD profile and its applications. We quantify the impact of different denoising methods (time and frequency averaging methods). Through this investigation, we see that Savitsky Golay filtering turns out to a good method for denoising RTD profiles despite varying noise levels. The investigation is performed such that the key features of the RTD profile (which are important for RTD based applications) are preserved. Subsequently, we also investigate the impact of denoising on RTD-based applications such as out-of-specification (OOS) analysis and RTD modeling. The results show that the degree of noise levels considered in this work do not significantly impact the RTD-based applications.
停留时间分布(RTD)方法已广泛应用于制药行业,用于了解单元操作和连续集成制造线内的粉末动力学。然后,利用捕获到的动力学信息来开发用于单元操作和重要的基于 RTD 的应用的预测模型,以确保产品质量保证。尽管在示踪剂选择、数据采集和校准模型开发方面进行了彻底的努力,以获得 RTD 研究的示踪剂浓度曲线,但这些曲线中可能存在显著的噪声。这种噪声使得识别基础信号并获得研究系统的代表性 RTD 变得具有挑战性。这些问题先前表明了在文献中 RTD 测量中噪声处理的重要性。然而,文献并没有提供足够的关于 RTD 研究的噪声处理或数据处理策略的信息。为此,我们使用不同的示踪剂研究了不同噪声水平对 RTD 曲线测量及其应用的影响。我们量化了不同去噪方法(时间和频率平均方法)的影响。通过这项研究,我们发现 Savitsky Golay 滤波是一种很好的 RTD 曲线去噪方法,即使存在不同的噪声水平。进行这项研究是为了保持 RTD 曲线的关键特征(这对于基于 RTD 的应用很重要)。随后,我们还研究了去噪对基于 RTD 的应用(如不合格品分析和 RTD 建模)的影响。结果表明,本工作中考虑的噪声水平程度不会显著影响基于 RTD 的应用。