Jiang Ludi, Chen Jiahua, He Yusu, Zhang Yanling, Li Gongyu
1 School of Chinese Pharmacy, Beijing University of Chinese Medicine, Beijing 100102, P. R. China.
J Bioinform Comput Biol. 2016 Feb;14(1):1650005. doi: 10.1142/S0219720016500050. Epub 2015 Oct 27.
The blood-brain barrier (BBB), a highly selective barrier between central nervous system (CNS) and the blood stream, restricts and regulates the penetration of compounds from the blood into the brain. Drugs that affect the CNS interact with the BBB prior to their target site, so the prediction research on BBB permeability is a fundamental and significant research direction in neuropharmacology. In this study, we combed through the available data and then with the help of support vector machine (SVM), we established an experiment process for discovering potential CNS compounds and investigating the mechanisms of BBB permeability of them to advance the research in this field four types of prediction models, referring to CNS activity, BBB permeability, passive diffusion and efflux transport, were obtained in the experiment process. The first two models were used to discover compounds which may have CNS activity and also cross the BBB at the same time; the latter two were used to elucidate the mechanism of BBB permeability of those compounds. Three optimization parameter methods, Grid Search, Genetic Algorithm (GA), and Particle Swarm Optimization (PSO), were used to optimize the SVM models. Then, four optimal models were selected with excellent evaluation indexes (the accuracy, sensitivity and specificity of each model were all above 85%). Furthermore, discrimination models were utilized to study the BBB properties of the known CNS activity compounds in Chinese herbs and this may guide the CNS drug development. With the relatively systematic and quick approach, the application rationality of traditional Chinese medicines for treating nervous system disease in the clinical practice will be improved.
血脑屏障(BBB)是中枢神经系统(CNS)与血流之间具有高度选择性的屏障,它限制并调节化合物从血液进入大脑的渗透。影响中枢神经系统的药物在到达其靶点之前会与血脑屏障相互作用,因此血脑屏障通透性的预测研究是神经药理学中一个基础且重要的研究方向。在本研究中,我们梳理了现有数据,然后借助支持向量机(SVM)建立了一个实验流程,用于发现潜在的中枢神经系统化合物并研究它们的血脑屏障通透机制,以推动该领域的研究。在实验过程中获得了四种预测模型,分别涉及中枢神经系统活性、血脑屏障通透性、被动扩散和外排转运。前两个模型用于发现可能同时具有中枢神经系统活性且能穿过血脑屏障的化合物;后两个模型用于阐明这些化合物的血脑屏障通透机制。使用了三种优化参数方法,即网格搜索、遗传算法(GA)和粒子群优化(PSO)来优化支持向量机模型。然后,选择了四个具有优异评估指标(每个模型的准确率、灵敏度和特异性均高于85%)的最优模型。此外,利用判别模型研究了中药中已知具有中枢神经系统活性化合物的血脑屏障特性,这可能会指导中枢神经系统药物的开发。通过这种相对系统且快速的方法,将提高传统中药在治疗神经系统疾病临床实践中的应用合理性。