Duquesne University , Graduate School of Pharmaceutical Sciences , Pittsburgh , Pennsylvania 15282 , United States.
GlaxoSmithKline , Analytical Sciences and Development , King of Prussia , Pennsylvania 19406 , United States.
Anal Chem. 2018 Jul 17;90(14):8436-8444. doi: 10.1021/acs.analchem.8b01009. Epub 2018 Jul 3.
Inline process analytical technology sensors are the key elements to enable continuous manufacturing. They facilitate real-time monitoring of critical quality attributes of both intermediate materials and finished products. The aim of this study was to demonstrate method development and validation for inline and offline calibration strategies to determine the blend content during tablet compression via Raman spectroscopy. An inline principal component regression model was developed from Raman spectra collected in the feed frame. At the same time, an offline study was conducted over a small amount of the calibration blends using an in-house moving powder setup to simulate the environment of the feed frame. The model developed offline was able to predict the active ingredient content after a bias correction and used only a fraction of the material. The offline method can serve as a simple method to facilitate calibration development when the time and access to the press is limited. The study takes into consideration, the necessary components of method development and offers perspectives on the validation of an inline process analytics method. Method testing and validation was performed for the inline process analytical technology method. The established Raman method was demonstrated as suitable for the determination of bulk assay of the active ingredient in powders inside the feed frame for use during batch and continuous manufacturing processes.
在线过程分析技术传感器是实现连续制造的关键要素。它们有助于实时监测中间物料和成品的关键质量属性。本研究旨在展示通过拉曼光谱法在片剂压缩过程中确定混合物含量的在线和离线校准策略的方法开发和验证。从进料架中收集的拉曼光谱中开发了一个在线主成分回归模型。同时,在一个小数量的校准混合物上进行了离线研究,使用内部的移动粉末装置模拟进料架的环境。离线开发的模型能够在进行偏差校正后预测活性成分的含量,而且只使用了一小部分材料。当时间和进入压片机的机会有限时,离线方法可以作为一种简单的方法来促进校准的开发。本研究考虑了方法开发的必要组成部分,并对在线过程分析方法的验证提供了一些观点。对在线过程分析技术方法进行了方法测试和验证。所建立的拉曼方法被证明适合于在进料架中确定粉末中活性成分的散装含量,可用于分批和连续制造过程。