Division of Pharmaceutical Technology, Department of Pharmaceutical Sciences, University of Basel, Klingelbergstrasse 50, Basel, Switzerland.
Molecules. 2012 Aug 31;17(9):10429-45. doi: 10.3390/molecules170910429.
Predicting blood-brain barrier (BBB) permeability is essential to drug development, as a molecule cannot exhibit pharmacological activity within the brain parenchyma without first transiting this barrier. Understanding the process of permeation, however, is complicated by a combination of both limited passive diffusion and active transport. Our aim here was to establish predictive models for BBB drug permeation that include both active and passive transport. A database of 153 compounds was compiled using in vivo surface permeability product (logPS) values in rats as a quantitative parameter for BBB permeability. The open source Chemical Development Kit (CDK) was used to calculate physico-chemical properties and descriptors. Predictive computational models were implemented by machine learning paradigms (decision tree induction) on both descriptor sets. Models with a corrected classification rate (CCR) of 90% were established. Mechanistic insight into BBB transport was provided by an Ant Colony Optimization (ACO)-based binary classifier analysis to identify the most predictive chemical substructures. Decision trees revealed descriptors of lipophilicity (aLogP) and charge (polar surface area), which were also previously described in models of passive diffusion. However, measures of molecular geometry and connectivity were found to be related to an active drug transport component.
预测血脑屏障(BBB)通透性对于药物开发至关重要,因为如果分子不能首先穿过这个屏障,就无法在脑实质中表现出药理活性。然而,渗透过程的理解由于有限的被动扩散和主动转运的结合而变得复杂。我们的目的是建立包括主动和被动转运的 BBB 药物渗透预测模型。使用体内表面渗透性产物(logPS)值作为 BBB 通透性的定量参数,使用开源化学开发工具包(CDK)计算物理化学性质和描述符。使用机器学习范例(决策树归纳)对两个描述符集实施预测计算模型。建立了校正分类率(CCR)为 90%的模型。通过基于蚁群优化(ACO)的二进制分类器分析提供了对 BBB 转运的机制见解,以识别最具预测性的化学亚结构。决策树揭示了脂溶性(aLogP)和电荷(极性表面积)的描述符,这些描述符也在前被动扩散模型中描述过。然而,分子几何形状和连通性的度量被发现与主动药物转运成分有关。