Faramarzi Sadegh, Kim Marlene T, Volpe Donna A, Cross Kevin P, Chakravarti Suman, Stavitskaya Lidiya
US Food and Drug Administration, Center for Drug Evaluation and Research, Silver Spring, MD, United States.
Instem Inc, Columbus, OH, United States.
Front Pharmacol. 2022 Oct 20;13:1040838. doi: 10.3389/fphar.2022.1040838. eCollection 2022.
Assessing drug permeability across the blood-brain barrier (BBB) is important when evaluating the abuse potential of new pharmaceuticals as well as developing novel therapeutics that target central nervous system disorders. One of the gold-standard methods for determining BBB permeability is rodent log BB; however, like most methods, it is time-consuming and expensive. In the present study, two statistical-based quantitative structure-activity relationship (QSAR) models were developed to predict BBB permeability of drugs based on their chemical structure. The BBB permeability data were harvested for 921 compounds from publicly available literature, non-proprietary drug approval packages, and University of Washington's Drug Interaction Database. The cross-validation performance statistics for the BBB models ranged from 82 to 85% in sensitivity and 80-83% in negative predictivity. Additionally, the performance of newly developed models was assessed using an external validation set comprised of 83 chemicals. Overall, performance of individual models ranged from 70 to 75% in sensitivity, 70-72% in negative predictivity, and 78-86% in coverage. The predictive performance was further improved to 93% in coverage by combining predictions across the two software programs. These new models can be rapidly deployed to predict blood brain barrier permeability of pharmaceutical candidates and reduce the use of experimental animals.
在评估新型药物的滥用潜力以及开发针对中枢神经系统疾病的新型疗法时,评估药物透过血脑屏障(BBB)的通透性非常重要。确定BBB通透性的金标准方法之一是啮齿动物log BB;然而,与大多数方法一样,它既耗时又昂贵。在本研究中,开发了两种基于统计的定量构效关系(QSAR)模型,以根据药物的化学结构预测其BBB通透性。从公开文献、非专利药物批准文件和华盛顿大学药物相互作用数据库中收集了921种化合物的BBB通透性数据。BBB模型的交叉验证性能统计数据显示,灵敏度范围为82%至85%,阴性预测值范围为80%至83%。此外,使用由83种化学物质组成的外部验证集评估了新开发模型的性能。总体而言,各个模型的性能在灵敏度方面为70%至75%,阴性预测值方面为70%至72%,覆盖率方面为78%至86%。通过结合两个软件程序的预测结果,覆盖率的预测性能进一步提高到了93%。这些新模型可以快速部署,以预测候选药物的血脑屏障通透性,并减少实验动物的使用。