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应用体外 PAMPA 技术和计算机模拟计算方法预测新型 CNS 候选药物的血脑屏障通透性。

Application of in vitro PAMPA technique and in silico computational methods for blood-brain barrier permeability prediction of novel CNS drug candidates.

机构信息

University of Belgrade - Faculty of Pharmacy, Department of Pharmaceutical, Chemistry, Vojvode Stepe 450, 11000 Belgrade, Serbia.

University of Belgrade - Faculty of Pharmacy, Department of Pharmaceutical, Chemistry, Vojvode Stepe 450, 11000 Belgrade, Serbia.

出版信息

Eur J Pharm Sci. 2022 Jan 1;168:106056. doi: 10.1016/j.ejps.2021.106056. Epub 2021 Nov 2.

Abstract

Permeability assessment of small molecules through the blood-brain barrier (BBB) plays a significant role in the development of effective central nervous system (CNS) drug candidates. Since in vivo methods for BBB permeability estimation require a lot of time and resources, in silico and in vitro approaches are becoming increasingly popular nowadays for faster and more economical predictions in early phases of drug discovery. In this work, through application of in vitro parallel artificial membrane permeability assay (PAMPA-BBB) and in silico computational methods we aimed to examine the passive permeability of eighteen compounds, which affect serotonin and dopamine levels in the CNS. The data set was consisted of novel six human dopamine transporter (hDAT) substrates that were previously identified as the most promising lead compounds for further optimisation to achieve neuroprotective effect, twelve approved CNS drugs, and their related compounds. Firstly, PAMPA methods was used to experimentally determine effective BBB permeability (P) for all studied compounds and obtained results were further submitted for quantitative structure permeability relationship (QSPR) analysis. QSPR models were built by using three different statistical methods: stepwise multiple linear regression (MLR), partial least square (PLS), and support-vector machine (SVM), while their predictive capability was tested through internal and external validation. Obtained statistical parameters (MLR- R=-0.10; PLS- R=0.64, r=0.69, r=0.44; SVM- R=0.57, r=0.72, r=0.55) indicated that the SVM model is superior over others. The most important molecular descriptors (Hp and SolvEMt_3D) were identified and used to propose structural modifications of the examined compounds in order to improve their BBB permeability. Moreover, steered molecular dynamics (SMD) simulation was employed to comprehensively investigate the permeability pathway of compounds through a lipid bilayer. Taken together, the created QSPR model could be used as a reliable and fast pre-screening tool for BBB permeability prediction of structurally related CNS compounds, while performed MD simulations provide a good foundation for future in silico examination.

摘要

小分子通过血脑屏障(BBB)的渗透评估在有效中枢神经系统(CNS)候选药物的开发中起着重要作用。由于体内方法评估 BBB 通透性需要大量的时间和资源,因此,如今在药物发现的早期阶段,基于体外和计算的方法越来越受欢迎,以便更快、更经济地进行预测。在这项工作中,我们通过应用体外平行人工膜渗透测定法(PAMPA-BBB)和计算方法,旨在研究十八种影响中枢神经系统中血清素和多巴胺水平的化合物的被动渗透性。该数据集由先前鉴定为进一步优化以实现神经保护作用的六种新型人多巴胺转运体(hDAT)底物组成,这是最有前途的先导化合物,以及十二种已批准的 CNS 药物及其相关化合物。首先,使用 PAMPA 方法实验测定所有研究化合物的有效 BBB 渗透性(P),并进一步将获得的结果提交给定量构效关系(QSPR)分析。使用三种不同的统计方法(逐步多元线性回归(MLR)、偏最小二乘(PLS)和支持向量机(SVM))构建 QSPR 模型,通过内部和外部验证测试其预测能力。获得的统计参数(MLR-R=-0.10;PLS-R=0.64,r=0.69,r=0.44;SVM-R=0.57,r=0.72,r=0.55)表明 SVM 模型优于其他模型。确定了最重要的分子描述符(Hp 和 SolvEMt_3D),并用于提出所检查化合物的结构修饰,以提高其 BBB 渗透性。此外,还采用定向分子动力学(SMD)模拟全面研究了化合物通过脂质双层的渗透途径。综上所述,所创建的 QSPR 模型可用作预测结构相关 CNS 化合物 BBB 渗透性的可靠快速预筛选工具,而进行的 MD 模拟为未来的计算研究提供了良好的基础。

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