Department of Chemistry, National Dong Hwa University, Shoufeng, Hualien 97401, Taiwan.
Graduate Institute of Marine Biology, National Dong Hwa University, Pingtung 94450, Taiwan.
Int J Mol Sci. 2019 Jun 28;20(13):3170. doi: 10.3390/ijms20133170.
Oral administration is the preferred and predominant route of choice for medication. As such, drug absorption is one of critical drug metabolism and pharmacokinetics (DM/PK) parameters that should be taken into consideration in the process of drug discovery and development. The cell-free in vitro parallel artificial membrane permeability assay (PAMPA) has been adopted as the primary screening to assess the passive diffusion of compounds in the practical applications. A classical quantitative structure-activity relationship (QSAR) model and a machine learning (ML)-based QSAR model were derived using the partial least square (PLS) scheme and hierarchical support vector regression (HSVR) scheme to elucidate the underlying passive diffusion mechanism and to predict the PAMPA effective permeability, respectively, in this study. It was observed that HSVR executed better than PLS as manifested by the predictions of the samples in the training set, test set, and outlier set as well as various statistical assessments. When applied to the mock test, which was designated to mimic real challenges, HSVR also showed better predictive performance. PLS, conversely, cannot cover some mechanistically interpretable relationships between descriptors and permeability. Accordingly, the synergy of predictive HSVR and interpretable PLS models can be greatly useful in facilitating drug discovery and development by predicting passive diffusion.
口服是药物首选和主要的给药途径。因此,药物吸收是药物发现和开发过程中需要考虑的关键药物代谢动力学(DM/PK)参数之一。无细胞体外平行人工膜渗透率测定(PAMPA)已被用作初步筛选,以评估化合物在实际应用中的被动扩散。本研究采用偏最小二乘(PLS)方案和分层支持向量回归(HSVR)方案,分别建立经典的定量构效关系(QSAR)模型和基于机器学习(ML)的 QSAR 模型,以阐明潜在的被动扩散机制,并预测 PAMPA 的有效渗透率。结果表明,HSVR 的表现优于 PLS,表现在对训练集、测试集和离群样本的预测以及各种统计评估上。当应用于模拟真实挑战的模拟测试时,HSVR 也表现出更好的预测性能。相反,PLS 不能涵盖描述符和渗透性之间一些具有机制解释性的关系。因此,预测性 HSVR 和可解释性 PLS 模型的协同作用可极大地有助于通过预测被动扩散来促进药物发现和开发。