Rantanen Jukka, Wikström Håkan, Rhea Francis E, Taylor Lynne S
Viikki Drug Discovery Technology Center (DDTC), Pharmaceutical Technology Division, FIN-00014 University of Helsinki, Finland.
Appl Spectrosc. 2005 Jul;59(7):942-51. doi: 10.1366/0003702054411670.
Different spectroscopic approaches have proved to be excellent analytical tools for monitoring process-induced transformations of active pharmaceutical ingredients during pharmaceutical unit operations. In order to use these tools effectively, it is necessary to build calibration models that describe the relationship between the amount of each solid-state form of interest and the spectroscopic signal. In this study, near-infrared (NIR) and Raman spectroscopic methods have been evaluated for the quantification of hydrate and anhydrate forms in pharmaceutical powders. Process type spectrometers were used to collect the data and the role of the sampling procedure was examined. Multivariate regression models were compared with traditional univariate calibrations and special emphasis was placed on data treatment prior to multivariate modeling by partial least squares (PLS). It was found that the measured sample volume greatly affected the performance of the model whereby the calibrations were significantly improved by utilizing a larger sampling area. In addition, multivariate regression did not always improve the predictability of the data compared to univariate analysis. The data treatment prior to multivariate modeling had a significant influence on the quality of predictions with standard normal variate transformation generally proving to be the best preprocessing method. When the appropriate sampling techniques and data analysis methods were utilized, both NIR and Raman spectroscopy were found to be suitable methods for the quantification of anhydrate/hydrate in powder systems, and thus the method of choice will depend on the conditions in the process under investigation.
不同的光谱方法已被证明是监测药物单元操作过程中活性药物成分的过程诱导转变的出色分析工具。为了有效使用这些工具,有必要建立校准模型,描述每种感兴趣的固态形式的量与光谱信号之间的关系。在本研究中,已对近红外(NIR)和拉曼光谱方法进行评估,以定量药物粉末中的水合物和无水物形式。使用过程型光谱仪收集数据,并研究了采样程序的作用。将多元回归模型与传统单变量校准进行了比较,并特别强调了通过偏最小二乘法(PLS)进行多元建模之前的数据处理。结果发现,测量的样品体积对模型性能有很大影响,通过使用更大的采样面积可显著改善校准。此外,与单变量分析相比,多元回归并不总是能提高数据的可预测性。多元建模之前的数据处理对预测质量有重大影响,标准正态变量变换通常被证明是最佳的预处理方法。当采用适当的采样技术和数据分析方法时,发现NIR和拉曼光谱都是粉末系统中无水物/水合物定量的合适方法,因此选择的方法将取决于所研究过程的条件。