a Institute of Pharmaceutics and Biopharmaceutics , Heinrich-Heine-University , Düsseldorf , Germany.
b Institute of Electrical Engineering and Information Technology , Christian-Albrechts-University , Kiel , Germany.
Drug Dev Ind Pharm. 2018 Jun;44(6):961-968. doi: 10.1080/03639045.2018.1425427. Epub 2018 Jan 18.
Recently, microwave resonance technology (MRT) sensor systems operating at four resonances instead of a single resonance frequency were established as a process analytical technology (PAT) tool for moisture monitoring. The additional resonance frequencies extend the technologies' possible application range in pharmaceutical production processes remarkably towards higher moisture contents. In the present study, a novel multi-resonance MRT sensor was installed in a bottom-tangential-spray fluidized bed granulator in order to provide a proof-of-concept of the recently introduced technology in industrial pilot-scale equipment. The mounting position within the granulator was optimized to allow faster measurements and thereby even tighter process control. As the amount of data provided by using novel MRT sensor systems has increased manifold by the additional resonance frequencies and the accelerated measurement rate, it permitted to investigate the benefit of more sophisticated evaluation methods instead of the simple linear regression which is used in established single-resonance systems. Therefore, models for moisture prediction based on multiple linear regression (MLR), principal component regression (PCR), and partial least squares regression (PLS) were built and assessed. Correlation was strong (all R > 0.988) and predictive abilities were rather acceptable (all RMSE ≤0.5%) for all models over the whole granulation process up to 16% residual moisture. While PCR provided best predictive abilities, MLR proofed as a simple and valuable alternative without the need of chemometric data evaluation.
最近,微波共振技术(MRT)传感器系统采用四个共振频率而不是单一共振频率,被确立为一种用于水分监测的过程分析技术(PAT)工具。额外的共振频率显著扩展了该技术在制药生产过程中的可能应用范围,使其能够处理更高的水分含量。在本研究中,一种新型多共振 MRT 传感器被安装在底部切向喷雾流化床造粒机中,以证明该技术在工业中试规模设备中的应用。该传感器在造粒机中的安装位置进行了优化,以实现更快的测量速度,从而实现更严格的过程控制。由于新型 MRT 传感器系统提供的测量数据量通过额外的共振频率和加速的测量速率而大大增加,因此可以研究更复杂的评估方法的优势,而不是在传统的单共振系统中使用的简单线性回归。因此,建立并评估了基于多元线性回归(MLR)、主成分回归(PCR)和偏最小二乘回归(PLS)的水分预测模型。对于整个造粒过程中高达 16%的残余水分,所有模型的相关性都很强(所有 R 值均大于 0.988),预测能力也相当可接受(所有 RMSE 值均小于等于 0.5%)。虽然 PCR 提供了最佳的预测能力,但 MLR 作为一种简单而有价值的替代方法,无需化学计量数据评估。