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天然产物的药代动力学性质的计算机模拟:血脑屏障通透性的分类模型、其在中药中的应用及体外实验验证。

In silico modeling on ADME properties of natural products: Classification models for blood-brain barrier permeability, its application to traditional Chinese medicine and in vitro experimental validation.

作者信息

Zhang Xiuqing, Liu Ting, Fan Xiaohui, Ai Ni

机构信息

Pharmaceutical Informatics Institute, College of Pharmaceutical Sciences, Zhejiang University, No. 866 Yuhangtang Road, Hangzhou, 310058, China.

Pharmaceutical Informatics Institute, College of Pharmaceutical Sciences, Zhejiang University, No. 866 Yuhangtang Road, Hangzhou, 310058, China.

出版信息

J Mol Graph Model. 2017 Aug;75:347-354. doi: 10.1016/j.jmgm.2017.05.021. Epub 2017 Jun 7.

Abstract

In silico modeling of blood-brain barrier (BBB) permeability plays an important role in early discovery of central nervous system (CNS) drugs due to its high-throughput and cost-effectiveness. Natural products (NP) have demonstrated considerable therapeutic efficacy against several CNS diseases. However, BBB permeation property of NP is scarcely evaluated both experimentally and computationally. It is well accepted that significant difference in chemical spaces exists between NP and synthetic drugs, which calls into doubt on suitability of available synthetic chemical based BBB permeability models for the evaluation of NP. Herein poor discriminative performance on BBB permeability of NP are first confirmed using internal constructed and previously published drug-derived computational models, which warrants the need for NP-oriented modeling. Then a quantitative structure-property relationship (QSPR) study on a NP dataset was carried out using four different machine learning methods including support vector machine, random forest, Naïve Bayes and probabilistic neural network with 67 selected features. The final consensus model was obtained with approximate 90% overall accuracy for the cross-validation study, which is further taken to predict passive BBB permeability of a large dataset consisting of over 10,000 compounds from traditional Chinese medicine (TCM). For 32 selected TCM molecules, their predicted BBB permeability were evaluated by in vitro parallel artificial membrane permeability assay and overall accuracy for in vitro experimental validation is around 81%. Interestingly, our in silico model successfully predicted different BBB permeation potentials of parent molecules and their known in vivo metabolites. Finally, we found that the lipophilicity, the number of hydrogen bonds and molecular polarity were important molecular determinants for BBB permeability of NP. Our results suggest that the consensus model proposed in current work is a reliable tool for prioritizing potential CNS active NP across the BBB, which would accelerate their development and provide more understanding on their mechanisms, especially those with pharmacologically active metabolites.

摘要

血脑屏障(BBB)通透性的计算机模拟在中枢神经系统(CNS)药物的早期发现中起着重要作用,因为它具有高通量和成本效益。天然产物(NP)已显示出对几种中枢神经系统疾病具有相当大的治疗效果。然而,NP的BBB渗透特性在实验和计算方面都很少被评估。众所周知,NP和合成药物之间在化学空间上存在显著差异,这使得现有的基于合成化学的BBB通透性模型对NP评估的适用性受到质疑。在此,首先使用内部构建的和先前发表的药物衍生计算模型证实了NP在BBB通透性方面的判别性能较差,这表明需要建立面向NP的模型。然后,使用包括支持向量机、随机森林、朴素贝叶斯和概率神经网络在内的四种不同机器学习方法,对一个NP数据集进行了定量结构-性质关系(QSPR)研究,共选择了67个特征。交叉验证研究得到的最终共识模型总体准确率约为90%,该模型进一步用于预测一个由超过10000种中药(TCM)化合物组成的大型数据集的被动BBB通透性。对于32种选定的中药分子,通过体外平行人工膜通透性试验评估了它们预测的BBB通透性,体外实验验证的总体准确率约为81%。有趣的是,我们的计算机模型成功预测了母体分子及其已知体内代谢物的不同BBB渗透潜力。最后,我们发现亲脂性、氢键数量和分子极性是NP的BBB通透性的重要分子决定因素。我们的结果表明,当前工作中提出的共识模型是一种可靠工具,可用于对跨越BBB的潜在中枢神经系统活性NP进行优先级排序,这将加速它们的开发,并为其作用机制提供更多理解,特别是那些具有药理活性代谢物的NP。

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