Wang Cong, Cheng Yuan, Ma Yuhong, Ji Yuanhui, Huang Dechun, Qian Hongliang
Department of Pharmaceutical Engineering, China Pharmaceutical University, Nanjing 211198, PR China.
Jiangsu Province Hi-Tech Key Laboratory for Biomedical Research, School of Chemistry and Chemical Engineering, Southeast University, Nanjing 211189, PR China.
Int J Pharm. 2023 Nov 5;646:123458. doi: 10.1016/j.ijpharm.2023.123458. Epub 2023 Sep 28.
Although complexation technique has been documented as a promising strategy to enhance the dissolution rate and bioavailability of water-insoluble drugs, prediction of the enhanced drug solubility related to clathrate compositions and operating conditions is still a challenge. Herein, clathrate compositions (drug content (DC), drug molecular weight (M) and molar ratio (Ratio)), operating conditions (drug concentration (C), pH, pressure (P), temperature (T) and dissolution time (t)) under the different excipients (PEG, PVP, HPMC and cyclodextrin) as main solubilizers of the clathrates condition as input parameters were used to predict two indexes (drug dissolved percentage and dissolution efficiency) simultaneously through machine learning methodfor the first time. The results show that PVP as the main solubilizer of clathrates had higher prediction accuracy to the drug dissolved percentage, and HPMC as the main solubilizer of clathrates had higher prediction accuracy to the drug dissolution efficiency. In addition, the influence of various factors and interactions on the target variables were analyzed. This study affords achievable hints to the quantitative prediction of the drug solubility affected by various compositions and different operating conditions.
尽管包合技术已被证明是提高水不溶性药物溶解速率和生物利用度的一种有前景的策略,但预测与包合物组成和操作条件相关的药物溶解度增强情况仍然是一项挑战。在此,以不同辅料(聚乙二醇、聚乙烯吡咯烷酮、羟丙基甲基纤维素和环糊精)作为包合物的主要增溶剂条件下的包合物组成(药物含量(DC)、药物分子量(M)和摩尔比(Ratio))、操作条件(药物浓度(C)、pH值、压力(P)、温度(T)和溶解时间(t))作为输入参数,首次通过机器学习方法同时预测两个指标(药物溶解百分比和溶出效率)。结果表明,以聚乙烯吡咯烷酮作为包合物的主要增溶剂时,对药物溶解百分比具有较高的预测准确性;以羟丙基甲基纤维素作为包合物的主要增溶剂时,对药物溶出效率具有较高的预测准确性。此外,分析了各种因素及其相互作用对目标变量的影响。本研究为定量预测受各种组成和不同操作条件影响的药物溶解度提供了可行的线索。