血脑屏障
化学
磁导率
中枢神经系统
生物物理学
神经科学
膜
生物化学
生物
作者
Fleur M.G. Cornelissen,Greta Markert,Ghislaine Deutsch,Maria Antonara,Noa Faaij,Imke H. Bartelink,David P. Noske,W. Peter Vandertop,Andreas Bender,Bart A. Westerman
标识
DOI:10.1021/acs.jmedchem.2c01824
摘要
The blood-brain barrier (BBB) represents a major obstacle to delivering drugs to the central nervous system (CNS), resulting in the lack of effective treatment for many CNS diseases including brain cancer. To accelerate CNS drug development, computational prediction models could save the time and effort needed for experimental evaluation. Here, we studied BBB permeability focusing on active transport (influx and efflux) as well as passive diffusion using previously published and self-curated data sets. We created prediction models based on physicochemical properties, molecular substructures, or their combination to understand which mechanisms contribute to BBB permeability. Our results show that features that predicted passive diffusion over membranes overlap with features that explain endothelial permeation of approved CNS-active drugs. We also identified physical properties and molecular substructures that positively or negatively predicted BBB transport. These findings provide guidance toward identifying BBB-permeable compounds by optimally matching physicochemical and molecular properties to BBB transport mechanisms.
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