Literature DB >> 31465824

Predicting physical stability of solid dispersions by machine learning techniques.

Run Han1, Hui Xiong2, Zhuyifan Ye1, Yilong Yang1, Tianhe Huang1, Qiufang Jing2, Jiahong Lu1, Hao Pan3, Fuzheng Ren4, Defang Ouyang5.   

Abstract

Amorphous solid dispersion (SD) is an effective solubilization technique for water-insoluble drugs. However, physical stability issue of solid dispersions still heavily hindered the development of this technique. Traditional stability experiments need to be tested at least three to six months, which is time-consuming and unpredictable. In this research, a novel prediction model for physical stability of solid dispersion formulations was developed by machine learning techniques. 646 stability data points were collected and described by over 20 molecular descriptors. All data was classified into the training set (60%), validation set (20%), and testing set (20%) by the improved maximum dissimilarity algorithm (MD-FIS). Eight machine learning approaches were compared and random forest (RF) model achieved the best prediction accuracy (82.5%). Moreover, the RF models revealed the contribution of each input parameter, which provided us the theoretical guidance for solid dispersion formulations. Furthermore, the prediction model was confirmed by physical stability experiments of 17β-estradiol (ED)-PVP solid dispersions and the molecular mechanism was investigated by molecular modeling technique. In conclusion, an intelligent model was developed for the prediction of physical stability of solid dispersions, which benefit the rational formulation design of this technique. The integrated experimental, theoretical, modeling and data-driven AI methodology is also able to be used for future formulation development of other dosage forms.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Machine learning; Molecular modeling; Physical stability; Solid dispersion

Year:  2019        PMID: 31465824     DOI: 10.1016/j.jconrel.2019.08.030

Source DB:  PubMed          Journal:  J Control Release        ISSN: 0168-3659            Impact factor:   9.776


  11 in total

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Review 10.  State-of-the-Art Review of Artificial Neural Networks to Predict, Characterize and Optimize Pharmaceutical Formulation.

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