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通过机器学习和分子建模技术对药物/环糊精/聚合物三元配合物进行计算配方预测。

In silico formulation prediction of drug/cyclodextrin/polymer ternary complexes by machine learning and molecular modeling techniques.

机构信息

State Key Laboratory of Quality Research in Chinese Medicine, Institute of Chinese Medical Sciences (ICMS), University of Macau, Macau, China.

出版信息

Carbohydr Polym. 2022 Jan 1;275:118712. doi: 10.1016/j.carbpol.2021.118712. Epub 2021 Sep 29.

Abstract

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.

摘要

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。

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