氨氯地平
缬沙坦
人工神经网络
计算机科学
材料科学
色谱法
生物系统
化学
人工智能
医学
生物
血压
放射科
作者
Máté Ficzere,Lilla Alexandra Mészáros,Anna Diószegi,Zoltán Bánrévi,Attila Farkas,Sándor Lenk,Dorián László Galata,Zsombor Kristóf Nagy
标识
DOI:10.1016/j.ijpharm.2024.124174
摘要
This paper presents a novel high-resolution and rapid (50 ms) UV imaging system, which was used for at-line, non-destructive API content determination of tablets. For the experiments, amlodipine and valsartan were selected as two colourless APIs with different UV induced fluorescent properties according to the measured solid fluorescent spectra. Images were captured with a LED-based UV illumination (385–395 nm) of tablets containing amlodipine or valsartan and common tableting excipients. Blue or green colour components from the RGB colour space were extracted from the images and used as an input dataset to execute API content prediction with artificial neural networks. The traditional destructive, solution-based transmission UV measurement was applied as reference method. After the optimization of the number of hidden layer neurons it was found that the relative error of the content prediction was 4.41 % and 3.98 % in the case of amlodipine and valsartan containing tablets respectively. The results open the possibility to use the proposed UV imaging-based system as a rapid, in-line tool for 100 % API content screening in order to greatly improve pharmaceutical quality control and process understanding.
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