Chemical and Screening Sciences, Wyeth Research, Princeton, CN8000, New Jersey 08543-8000, USA.
J Chem Inf Model. 2010 Jun 28;50(6):1123-33. doi: 10.1021/ci900384c.
Due to the high attrition rate of central nervous system drug candidates during clinical trials, the assessment of blood-brain barrier (BBB) penetration in early research is particularly important. A genetic approximation (GA)-based regression model was developed for predicting in vivo blood-brain partitioning data, expressed as logBB (log[brain]/[blood]). The model was built using an in-house data set of 193 compounds assembled from 22 different therapeutic projects. The final model (cross-validated r(2) = 0.72) with five molecular descriptors was selected based on validation using several large internal and external test sets. We demonstrate the potential utility of the model by applying it to a set of literature reported secretase inhibitors. In addition, we describe a rule-based approach for rapid assessment of brain penetration with several simple molecular descriptors.
由于中枢神经系统候选药物在临床试验中的高淘汰率,因此在早期研究中评估血脑屏障(BBB)的穿透性尤为重要。本文建立了一个基于遗传近似(GA)的回归模型,用于预测体内血脑分配数据,以 logBB(log[脑]/[血])表示。该模型使用来自 22 个不同治疗项目的 193 种化合物的内部数据集构建。最终模型(交叉验证 r(2) = 0.72)使用五个分子描述符,根据几个大型内部和外部测试集的验证结果进行选择。我们通过将该模型应用于一组文献报道的分泌酶抑制剂,展示了该模型的潜在应用价值。此外,我们还描述了一种基于规则的方法,该方法使用几个简单的分子描述符快速评估脑穿透性。