Yadav Manisha, Raju Baddipadige, Narendra Gera, Kaur Jasveer, Kumar Manoj, Silakari Om, Sapra Bharti
Department of Pharmaceutical Sciences and Drug Research, Punjabi University, Patiala, Punjab, 147002, India.
Mol Divers. 2024 Dec 16. doi: 10.1007/s11030-024-11062-w.
The present study aimed to develop robust machine learning (ML) models to predict the skin permeability of poorly water-soluble drugs in the presence of menthol and limonene as penetration enhancers (PEs). The ML models were also applied in virtual screening (VS) to identify hydrophobic drugs that exhibited better skin permeability in the presence of permeation enhancers i.e. menthol and limonene. The drugs identified through ML-based VS underwent experimental validation using in vitro skin penetration studies. The developed model predicted 80% probability of permeability enhancement for Sumatriptan Succinate (SS), Voriconazole (VCZ), and Pantoprazole Sodium (PS) with menthol and limonene. The in vitro release studies revealed that menthol increased penetration by approximately 2.49-fold, 2.25-fold, and 4.96-fold for SS, VCZ, and PS, respectively, while limonene enhanced permeability by approximately 1.32-fold, 2.27-fold, and 3.7-fold for SS, VCZ, and PS. The results from in silico and in vitro studies were positively correlated, indicating that the developed ML models could effectively reduce the need for extensive in vitro and in vivo experimentation.
本研究旨在开发强大的机器学习(ML)模型,以预测在薄荷醇和柠檬烯作为渗透促进剂(PEs)存在的情况下难溶性药物的皮肤渗透性。ML模型还应用于虚拟筛选(VS),以识别在渗透促进剂(即薄荷醇和柠檬烯)存在下表现出更好皮肤渗透性的疏水性药物。通过基于ML的VS鉴定出的药物使用体外皮肤渗透研究进行实验验证。所开发的模型预测,对于琥珀酸舒马曲坦(SS)、伏立康唑(VCZ)和泮托拉唑钠(PS),在薄荷醇和柠檬烯存在的情况下,渗透率提高的概率为80%。体外释放研究表明,薄荷醇分别使SS、VCZ和PS的渗透率提高了约2.49倍、2.25倍和4.96倍,而柠檬烯分别使SS、VCZ和PS的渗透率提高了约1.32倍、2.27倍和3.7倍。计算机模拟和体外研究的结果呈正相关,表明所开发的ML模型可以有效减少广泛的体外和体内实验的需求。