Department of Chemistry and Biochemistry, University of Notre Dame, Notre Dame, IN 46556, USA.
University of Liege (ULiege), CIRM, Laboratory of Pharmaceutical Analytical Chemistry, Department of Pharmacy, Liege, Belgium.
J Pharm Biomed Anal. 2024 Aug 15;246:116189. doi: 10.1016/j.jpba.2024.116189. Epub 2024 Apr 30.
Portable near-infrared (NIR) spectrophotometers have emerged as valuable tools for identifying substandard and falsified pharmaceuticals (SFPs). Integration of these devices with chemometric and machine learning models enhances their ability to provide quantitative chemical insights. However, different NIR spectrophotometer models vary in resolution, sensitivity, and responses to environmental factors such as temperature and humidity, necessitating instrument-specific libraries that hinder the wider adoption of NIR technology. This study addresses these challenges and seeks to establish a robust approach to promote the use of NIR technology in post-market pharmaceutical analysis. We developed support vector machine and partial least squares regression models based on binary mixtures of lab-made ciprofloxacin and microcrystalline cellulose, then applied the models to ciprofloxacin dosage forms that were assayed with high performance liquid chromatography (HPLC). A receiver operating characteristic (ROC) analysis was performed to set spectrophotometer independent NIR metrics to evaluate ciprofloxacin dosage forms as "meets standard," "needs HPLC assay," or "fails standard." Over 200 ciprofloxacin tablets representing 50 different brands were evaluated using spectra acquired from three types of NIR spectrophotometer with 85% of the prediction agreeing with HPLC testing. This study shows that non-brand-specific predictive models can be applied across multiple spectrophotometers for rapid screening of the conformity of pharmaceutical active ingredients to regulatory standard.
便携式近红外(NIR)分光光度计已成为识别劣质和假冒药品(SFPs)的有价值工具。将这些设备与化学计量学和机器学习模型集成,可以增强其提供定量化学见解的能力。然而,不同的 NIR 分光光度计在分辨率、灵敏度以及对温度和湿度等环境因素的响应方面存在差异,这就需要针对特定仪器的库,从而阻碍了 NIR 技术的更广泛采用。本研究旨在解决这些挑战,并寻求建立一种稳健的方法,以促进 NIR 技术在药品上市后的分析中的应用。我们基于实验室制备的环丙沙星和微晶纤维素的二元混合物开发了支持向量机和偏最小二乘回归模型,然后将这些模型应用于用高效液相色谱法(HPLC)测定的环丙沙星制剂。进行了接收者操作特征(ROC)分析,以确定分光光度计独立的 NIR 指标,用于评估环丙沙星制剂是否“符合标准”、“需要 HPLC 测定”或“不符合标准”。使用三种类型的 NIR 分光光度计采集的光谱评估了代表 50 个不同品牌的 200 多个环丙沙星片剂,其中 85%的预测结果与 HPLC 测试结果一致。本研究表明,可以在多个分光光度计上应用非品牌特异性预测模型,用于快速筛选药品活性成分是否符合监管标准。