摘要:In-line monitoring of granule water content during fluid bed granulation is important to control drug product qualities.In this study, a practical scale-free soft sensor to predict water content was proposed to cope with the manufacturing scale changes in drug product development.The proposed method exploits two key ideas to construct a scale-free soft sensor.First, to accommodate the changes in the manufacturing scale, the process parameters (PPs) that are critical to water content at different manufacturing scales were selected as input variables.Second, to construct an accurate statistical model, locally weighted partial least squares regression (LW-PLSR), which can cope with collinearity and nonlinearity, was utilized.The soft sensor was developed using both laboratory (approx.4 kg) data and pilot (approx.25 kg) scale data, and the prediction accuracy in the commercial (approx.100 kg) scale was evaluated based on the assumption that the process was scaled-up from the pilot scale to the commercial scale.The developed soft sensor exhibited a high prediction accuracy, which was equivalent to the commonly used near-infrared (NIR) spectra-based method.The proposed method requires only standard instruments; therefore, it is expected to be a cost-effective alternative to the NIR spectra-based method.
关键词:soft sensor;in-line monitoring;fluid bed granulation;scale-up;locally weighted partial least squares regression (LW-PLSR)