Bennion Brian J, Be Nicholas A, McNerney M Windy, Lao Victoria, Carlson Emma M, Valdez Carlos A, Malfatti Michael A, Enright Heather A, Nguyen Tuan H, Lightstone Felice C, Carpenter Timothy S
Biosciences and Biotechnology Division, Lawrence Livermore National Laboratory , Livermore, California 94550, United States.
War Related Illness and Injury Study Center, Veterans Affairs , Palo Alto, California 94304, United States.
J Phys Chem B. 2017 May 25;121(20):5228-5237. doi: 10.1021/acs.jpcb.7b02914. Epub 2017 May 12.
Membrane permeability is a key property to consider during the drug design process, and particularly vital when dealing with small molecules that have intracellular targets as their efficacy highly depends on their ability to cross the membrane. In this work, we describe the use of umbrella sampling molecular dynamics (MD) computational modeling to comprehensively assess the passive permeability profile of a range of compounds through a lipid bilayer. The model was initially calibrated through in vitro validation studies employing a parallel artificial membrane permeability assay (PAMPA). The model was subsequently evaluated for its quantitative prediction of permeability profiles for a series of custom synthesized and closely related compounds. The results exhibited substantially improved agreement with the PAMPA data, relative to alternative existing methods. Our work introduces a computational model that underwent progressive molding and fine-tuning as a result of its synergistic collaboration with numerous in vitro PAMPA permeability assays. The presented computational model introduces itself as a useful, predictive tool for permeability prediction.
膜通透性是药物设计过程中需要考虑的关键属性,在处理具有细胞内靶点的小分子时尤为重要,因为它们的疗效高度依赖于其跨膜能力。在这项工作中,我们描述了使用伞形抽样分子动力学(MD)计算模型,通过脂质双层全面评估一系列化合物的被动通透性概况。该模型最初通过采用平行人工膜通透性测定法(PAMPA)的体外验证研究进行校准。随后对该模型进行评估,以定量预测一系列定制合成的密切相关化合物的通透性概况。与其他现有方法相比,结果与PAMPA数据的一致性有了显著提高。我们的工作引入了一个计算模型,由于其与众多体外PAMPA通透性测定法的协同合作,该模型经历了逐步塑造和微调。所提出的计算模型是一种用于通透性预测的有用的预测工具。