Short Steven M, Cogdill Robert P, Anderson Carl A
Duquesne University Center for Pharmaceutical Technology, 410A Mellon Hall, 600 Forbes Avenue, Pittsburgh, PA 15282, USA.
AAPS PharmSciTech. 2007 Nov 9;8(4):E96. doi: 10.1208/pt0804096.
Process analytical technology has elevated the role of sensors in pharmaceutical manufacturing. Often the ideal technology must be selected from many suitable candidates based on limited data. Net analyte signal (NAS) theory provides an effective platform for method characterization based on multivariate figures of merit (FOM). The objective of this work was to demonstrate that these tools can be used to characterize the performance of 2 dissimilar analyzers based on different underlying spectroscopic principles for the analysis of pharmaceutical compacts. A fully balanced, 4-constituent mixture design composed of anhydrous theophylline, lactose monohydrate, microcrystalline cellulose, and starch was generated; it consisted of 29 design points. Six 13-mm tablets were produced from each mixture at 5 compaction levels and were analyzed by near-infrared and Raman spectroscopy. Partial least squares regression and NAS analyses were performed for each component, which allowed for the computation of FOM. Based on the calibration error statistics, both instruments were capable of accurately modeling all constituents. The results of this work indicate that these statistical tools are a suitable platform for comparing dissimilar analyzers and illustrate the complexity of technology selection.
过程分析技术提升了传感器在制药生产中的作用。通常,必须基于有限的数据从众多合适的候选技术中选择理想的技术。净分析物信号(NAS)理论为基于多变量品质因数(FOM)的方法表征提供了一个有效的平台。这项工作的目的是证明这些工具可用于基于不同的基础光谱原理对两种不同的分析仪进行性能表征,以分析药物制剂。生成了一种由无水茶碱、一水乳糖、微晶纤维素和淀粉组成的完全平衡的四组分混合物设计;它由29个设计点组成。在5个压实水平下,从每种混合物中制备6片13毫米的片剂,并通过近红外光谱和拉曼光谱进行分析。对每种成分进行偏最小二乘回归和NAS分析,从而能够计算品质因数。基于校准误差统计,两台仪器都能够准确地对所有成分进行建模。这项工作的结果表明,这些统计工具是比较不同分析仪的合适平台,并说明了技术选择的复杂性。