State Key Laboratory of Quality Research in Chinese Medicine, Institute of Chinese Medical Sciences (ICMS), University of Macau, Macau, China.
Carbohydr Polym. 2022 Jan 1;275:118712. doi: 10.1016/j.carbpol.2021.118712. Epub 2021 Sep 29.
Ternary cyclodextrin (CD) complexes (drug/CD/polymer) can effectively improve the solubility of water-insoluble drugs with large size than binary CD formulations. However, ternary formulations are screened by a trial-and-error approach, which is laborious and material-wasting. Current research aims to develop a prediction model for ternary CD formulations by combined machine learning and molecular modeling. 596 ternary formulations data were collected to build a prediction model by machine learning. The random forest model achieved good performance with R = 0.887 in S prediction and R = 0.815 in S/S prediction. Two ternary formulations (Hydrocortisone/β-CD/HPMC and dovitinib/γ-CD/CMC) were used to validate the prediction model. Molecular modeling results showed that HPMC not only warped around hydrocortisone but also prevented CD molecules from self-aggregation to increase solubility. In conclusion, a prediction model for the ternary CD formulations was successfully developed, which will significantly accelerate the formulation screening process to benefit the formulation development of water-insoluble drugs.
三元环糊精(CD)复合物(药物/CD/聚合物)可以有效地提高比二元 CD 制剂尺寸更大的水不溶性药物的溶解度。然而,三元配方是通过试错法筛选的,既费力又浪费材料。目前的研究旨在通过机器学习和分子建模相结合开发三元 CD 配方的预测模型。收集了 596 个三元配方数据,通过机器学习构建预测模型。随机森林模型在 S 预测中取得了良好的性能,R²为 0.887,在 S/S 预测中取得了良好的性能,R²为 0.815。使用两种三元配方(氢化可的松/β-CD/HPMC 和多韦替尼/γ-CD/CMC)验证预测模型。分子建模结果表明,HPMC 不仅使氢化可的松变形,而且还阻止 CD 分子自聚集以增加溶解度。总之,成功开发了三元 CD 配方的预测模型,这将显著加速配方筛选过程,有利于水不溶性药物的配方开发。