Raman mapping-based non-destructive dissolution prediction of sustained-release tablets

被引:36
作者
Galata, Dorian Laszlo [1 ]
Zsiros, Boldizsar [1 ]
Meszaros, Lilla Alexandra [1 ]
Nagy, Brigitta [1 ]
Szabo, Edina [1 ]
Farkas, Attila [1 ]
Nagy, Zsombor Kristof [1 ]
机构
[1] Budapest Univ Technol & Econ, Dept Organ Chem & Technol, Muegyet Rakpart 3, H-1111 Budapest, Hungary
关键词
Raman chemical imaging; Dissolution prediction; Sustained-release tablets; Particle size data; Artificial neural network; Machine learning; PARTICLE-SIZE;
D O I
10.1016/j.jpba.2022.114661
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
In this paper, the applicability of Raman chemical imaging for the non-destructive prediction of the in vitro dissolution profile of sustained-release tablets is demonstrated for the first time. Raman chemical maps contain a plethora of information about the spatial distribution and the particle size of the components, compression force and even polymorphism. With proper data analysis techniques, this can be converted into simple numerical information which can be used as input in a machine learning model. In our work, sustained-release tablets using hydroxypropyl methylcellulose (HPMC) as matrix polymer are prepared, the concentration and particle size of this component varied between samples. Chemical maps of HPMC are converted into histograms with two different methods, an approach based on discretizing concentration values and a wavelet analysis technique. These histograms are then subjected to Principal Component Analysis, the score value of the first two principal components was found to represent HPMC content and particle size. These values are used as input in Artificial Neural Networks which are trained to predict the dissolution profile of the tablets. As a result, accurate predictions were obtained for the test tablets (the average f(2) similarity value is higher than 59 with both methods). The presented methodology lays the foundations of the analysis of far more extensive datasets acquired with the emerging fast Raman imaging technology.
引用
收藏
页数:9
相关论文
共 25 条
[21]   Enabling real time release testing by NIR prediction of dissolution of tablets made by continuous direct compression (CDC) [J].
Pawar, Pallavi ;
Wang, Yifan ;
Keyvan, Golshid ;
Callegari, Gerardo ;
Cuitino, Alberto ;
Muzzio, Fernando .
INTERNATIONAL JOURNAL OF PHARMACEUTICS, 2016, 512 (01) :96-107
[22]   Hyperspectral Raman Line Mapping as an Effective Tool To Monitor the Coating Thickness of Pharmaceutical Tablets [J].
Song, Si Won ;
Kim, Jaejin ;
Eum, Changhwan ;
Cho, Youngho ;
Park, Chan Ryang ;
Woo, Young-Ah ;
Kim, Hyung Min ;
Chung, Hoeil .
ANALYTICAL CHEMISTRY, 2019, 91 (09) :5810-5816
[23]  
USP, 2018, Ritonavir capsules
[24]   Predicting the dissolution behavior of pharmaceutical tablets with NIR chemical imaging [J].
Yekpe, Ketsia ;
Abatzoglou, Nicolas ;
Bataille, Bernard ;
Gosselin, Ryan ;
Sharkawi, Tahmer ;
Simard, Jean-Sebastien ;
Cournoyer, Antoine .
INTERNATIONAL JOURNAL OF PHARMACEUTICS, 2015, 486 (1-2) :242-251
[25]   First-Principles and Empirical Approaches to Predicting In Vitro Dissolution for Pharmaceutical Formulation and Process Development and for Product Release Testing [J].
Zaborenko, Nikolay ;
Shi, Zhenqi ;
Corredor, Claudia C. ;
Smith-Goettler, Brandye M. ;
Zhang, Limin ;
Hermans, Andre ;
Neu, Colleen M. ;
Alam, Md Anik ;
Cohen, Michael J. ;
Lu, Xujin ;
Xiong, Leah ;
Zacour, Brian M. .
AAPS JOURNAL, 2019, 21 (03)