El-Hagrasy Arwa S, Delgado-Lopez Miriam, Drennen James K
Process Analytical Technology Group, Pharmaceutical Development Center of Excellence, Pharmaceutical Research Institute, Bristol-Myers Squibb, New Brunswick, New Jersey 08903, USA.
J Pharm Sci. 2006 Feb;95(2):407-21. doi: 10.1002/jps.20466.
The successful implementation of near-infrared spectroscopy (NIRS) in process control of powder blending requires constructing an inclusive spectral database that reflects the anticipated voluntary or involuntary changes in processing conditions, thereby minimizing bias in prediction of blending behavior. In this study, experimental design was utilized as an efficient way of generating blend experiments conducted under varying processing conditions such as humidity, blender speed and component concentration. NIR spectral data, collected from different blending experiments, was used to build qualitative models for prediction of blend homogeneity. Two pattern recognition algorithms: Soft Independent Modeling of Class Analogies (SIMCA) and Principal Component Modified Bootstrap Error-adjusted Single-sample Technique (PC-MBEST) were evaluated for qualitative analysis of NIR blending data. Optimization of NIR models, for the two algorithms, was achieved by proper selection of spectral processing, and training set samples. The models developed were successful in predicting blend homogeneity of independent blend samples under different processing conditions.
近红外光谱(NIRS)在粉末混合过程控制中的成功应用需要构建一个全面的光谱数据库,该数据库能够反映加工条件下预期的有意或无意变化,从而最大限度地减少混合行为预测中的偏差。在本研究中,实验设计被用作一种有效的方法来生成在不同加工条件(如湿度、搅拌机速度和组分浓度)下进行的混合实验。从不同混合实验中收集的近红外光谱数据被用于建立预测混合均匀性的定性模型。评估了两种模式识别算法:类模拟的软独立建模(SIMCA)和主成分修正自举误差调整单样本技术(PC-MBEST),用于近红外混合数据的定性分析。通过适当选择光谱处理和训练集样本,实现了这两种算法的近红外模型优化。所开发的模型成功地预测了不同加工条件下独立混合样本的混合均匀性。