School of Pharmacy and Pharmaceutical Sciences, Trinity College Dublin, Ireland; SSPC, The Science Foundation Ireland Research Centre for Pharmaceuticals, Trinity College Dublin, Ireland.
Department of Mechanical, Manufacturing & Biomedical Engineering, Trinity College Dublin, Ireland; SSPC, The Science Foundation Ireland Research Centre for Pharmaceuticals, Trinity College Dublin, Ireland.
Int J Pharm. 2024 Dec 5;666:124778. doi: 10.1016/j.ijpharm.2024.124778. Epub 2024 Sep 28.
The aims of this work were 1) to explore the application of shadowgraph imaging (SGI) as a real time monitoring tool to characterize ibuprofen particle behaviour during dissolution testing under various conditions in the USP 4 flow-through apparatus and 2) to investigate the potential to develop an SGI-based automated agglomeration identification method (AIM) for real time agglomerate detection during dissolution testing. The effect of surfactant addition, changes in the drug mass and flow rate, the use of sieved and un-sieved powder fractions, and the use of different drug crystal habits were investigated. Videos at every sampling time point during dissolution were taken and analysed by SGI. The AIM was developed to characterize agglomerates based on two criteria - size and solidity. All detections were confirmed by manual video observation and a reference agglomerate data set. The method was validated under new dissolution conditions with un-sieved particles. Characterisation of particle dispersion behaviour by SGI enabled interpretation of the impact of dissolution test conditions. Higher numbers of early detections reflected greater dissolution rates with increased surfactant concentration, using sieved fraction or plate-shaped crystals, but was impacted by drug mass tested. An AIM was successfully developed and applied to detect agglomerates during dissolution, suggesting potential, with appropriate method development, for application in quality control.
1)探索阴影成像(SGI)在 USP4 流动装置中各种条件下的溶出试验中作为实时监测工具来描述布洛芬颗粒行为的应用,2)研究在溶出试验中实时检测团聚体的基于 SGI 的自动团聚识别方法(AIM)的开发潜力。考察了添加表面活性剂、药物质量和流速变化、使用筛分和未筛分的粉末部分以及使用不同的药物晶体习性的影响。在溶出过程中的每个采样时间点都拍摄视频,并通过 SGI 进行分析。AIM 是基于大小和密实度这两个标准来描述团聚体的。所有检测都通过手动视频观察和参考团聚数据集进行了确认。该方法在使用未筛分颗粒的新溶出条件下进行了验证。通过 SGI 对颗粒分散行为的表征,能够解释溶出试验条件的影响。随着表面活性剂浓度的增加、使用筛分部分或板状晶体,早期检测的次数增加反映了更高的溶解速率,但受测试药物质量的影响。成功开发并应用 AIM 来检测溶出过程中的团聚体,表明具有适当的方法开发潜力,可应用于质量控制。