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通过近红外光谱法对粉末混合过程进行表征:混合终点及其他方面。

Process characterization of powder blending by near-infrared spectroscopy: blend end-points and beyond.

作者信息

Shi Zhenqi, Cogdill Robert P, Short Steve M, Anderson Carl A

机构信息

Graduate School of Pharmaceutical Sciences, Duquesne University, Pittsburgh, PA 15282, USA.

出版信息

J Pharm Biomed Anal. 2008 Aug 5;47(4-5):738-45. doi: 10.1016/j.jpba.2008.03.013. Epub 2008 Mar 22.

Abstract

The purpose of this paper is to utilize near-infrared (NIR) spectroscopy to characterize powder blending in-line. A multivariate model-based approach was used to determine end-point and variability at the end-point of blending processes. Two monitoring positions for NIR spectrometers were evaluated; one was located on the top of the Bin-blender and the other was on the rotation axis. A ternary powder mixture including acetaminophen (APAP, fine and coarse powder), lactose (LAC) and microcrystalline cellulose (MCC, Avicel 101 and 200) was used as a test system. A Plackett-Burman design of experiments (DOE) for different blending parameters and compositions was utilized to compare the robustness of end-point determination between the multivariate model-based algorithm and reference algorithms. The end-point determination algorithm, including root mean square from nominal value (RMSNV) and two-tailed Student's t-test, was developed based on PLS predicted concentrations of all three constituents. Mean and standard deviation of RMSNV after end-point were used to characterize blending variability at the end-point. The blending end-point and variability of two sensors were also compared. The multivariate model-based algorithm proved to be more robust on end-point determination compared to the reference algorithms. Blending behavior at the two sensor locations demonstrated a significant difference in terms of end-point and blending variability, indicating the advantage to employ process monitoring via NIR spectroscopy on more than one location on the Bin-blender.

摘要

本文的目的是利用近红外(NIR)光谱对在线粉末混合进行表征。采用基于多变量模型的方法来确定混合过程终点及终点处的变异性。对近红外光谱仪的两个监测位置进行了评估;一个位于料仓混合器顶部,另一个位于旋转轴上。使用包含对乙酰氨基酚(APAP,细粉和粗粉)、乳糖(LAC)和微晶纤维素(MCC,微晶纤维素101和200)的三元粉末混合物作为测试系统。利用针对不同混合参数和组成的Plackett-Burman实验设计(DOE)来比较基于多变量模型的算法与参考算法在终点确定方面的稳健性。基于偏最小二乘法(PLS)预测的所有三种成分的浓度,开发了终点确定算法,包括偏离标称值的均方根(RMSNV)和双尾学生t检验。终点后RMSNV的均值和标准差用于表征终点处的混合变异性。还比较了两个传感器的混合终点和变异性。与参考算法相比,基于多变量模型的算法在终点确定方面被证明更稳健。两个传感器位置处的混合行为在终点和混合变异性方面表现出显著差异,这表明在料仓混合器的多个位置通过近红外光谱进行过程监测具有优势。

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