Cogdill Robert P, Anderson Carl A, Delgado Miriam, Chisholm Robert, Bolton Raymond, Herkert Thorsten, Afnan Ali M, Drennen James K
Duquesne University Center for Pharmaceutical Technology, Pittsburgh, PA 16066, USA.
AAPS PharmSciTech. 2005 Oct 6;6(2):E273-83. doi: 10.1208/pt060238.
This article is the second of a series of articles detailing the development of near-infrared (NIR) methods for solid dosage-form analysis. Experiments were conducted at the Duquesne University Center for Pharmaceutical Technology to demonstrate a method for developing and validating NIR models for the analysis of active pharmaceutical ingredient (API) content and hardness of a solid dosage form. Robustness and cross-validation testing were used to optimize the API content and hardness models. For the API content calibration, the optimal model was determined as multiplicative scatter correction with Savitsky-Golay first-derivative preprocessing followed by partial least-squares (PLS) regression including 4 latent variables. API content calibration achieved root mean squared error (RMSE) and root mean square error of cross validation (RMSECV) of 1.48 and 1.80 mg, respectively. PLS regression and baseline-fit calibration models were compared for the prediction of tablet hardness. Based on robustness testing, PLS regression was selected for the final hardness model, with RMSE and RMSECV of 8.1 and 8.8 N, respectively. Validation testing indicated that API content and hardness of production-scale tablets is predicted with root mean square error of prediction of 1.04 mg and 8.5 N, respectively. Explicit robustness testing for high-flux noise and wavelength uncertainty demonstrated the robustness of the API concentration calibration model with respect to normal instrument operating conditions.
本文是一系列详细介绍用于固体剂型分析的近红外(NIR)方法发展的文章中的第二篇。实验在杜肯大学制药技术中心进行,以证明一种开发和验证用于分析固体剂型中活性药物成分(API)含量和硬度的近红外模型的方法。采用稳健性和交叉验证测试来优化API含量和硬度模型。对于API含量校准,确定的最佳模型为采用Savitsky-Golay一阶导数预处理的多元散射校正,随后进行包含4个潜变量的偏最小二乘法(PLS)回归。API含量校准的均方根误差(RMSE)和交叉验证均方根误差(RMSECV)分别为1.48和1.80 mg。比较了PLS回归和基线拟合校准模型对片剂硬度的预测。基于稳健性测试,最终硬度模型选择PLS回归,RMSE和RMSECV分别为8.1和8.8 N。验证测试表明,生产规模片剂的API含量和硬度预测的预测均方根误差分别为1.04 mg和8.5 N。针对高通量噪声和波长不确定性的明确稳健性测试证明了API浓度校准模型在正常仪器操作条件下的稳健性。