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基于药效团的QSAR模型用于预测中枢神经系统活性的开发与验证。

Development and validation of a pharmacophore-based QSAR model for the prediction of CNS activity.

作者信息

Gozalbes Rafael, Barbosa Frédérique, Nicolaï Eric, Horvath Dragos, Froloff Nicolas

机构信息

Medicinal Chemistry and Molecular Modeling Department, CEREP, Courtaboeuf, France.

出版信息

ChemMedChem. 2009 Feb;4(2):204-9. doi: 10.1002/cmdc.200800282.

Abstract

A QSAR model aimed at predicting central nervous system (CNS) activity was developed based on the structure-activity relationships of compounds from an in-house database of "drug-like" molecules. These compounds were initially identified as "CNS-active" or "CNS-inactive", and pharmacophore 3D descriptors were calculated from multiple conformations for each structure. A linear discriminant analysis (LDA) was performed on this structure-activity matrix, and this QSAR model was able to correctly classify approximately 80 % in both a learning set and a validation set. For validation purposes, the LDA model was applied to compounds for which the blood-brain barrier (BBB) penetration was known, and all of them were correctly predicted. The model was also applied to 960 other in-house compounds for which in vitro binding tests were performed on 20 receptors known to be present at the CNS level, and a high correlation was observed between compounds predicted as CNS-active and experimental hits. Finally, the model was also applied to a set of 700 structures with known CNS activity or inactivity randomly chosen from public sources, and more than 70 % of the compounds were correctly classified, including novel CNS chemotypes. These results demonstrate the applicability of the model to novel chemical structures and its usefulness for designing original CNS-focused compound libraries.

摘要

基于一个内部“类药物”分子数据库中化合物的构效关系,开发了一个旨在预测中枢神经系统(CNS)活性的定量构效关系(QSAR)模型。这些化合物最初被鉴定为“CNS活性”或“CNS非活性”,并从每个结构的多个构象计算药效团3D描述符。对该构效矩阵进行线性判别分析(LDA),该QSAR模型在学习集和验证集中均能正确分类约80%。为了进行验证,将LDA模型应用于已知血脑屏障(BBB)通透性的化合物,所有这些化合物均被正确预测。该模型还应用于960种其他内部化合物,对已知存在于CNS水平的20种受体进行了体外结合试验,在预测为CNS活性的化合物与实验命中结果之间观察到高度相关性。最后,该模型还应用于从公共来源随机选择的一组700个具有已知CNS活性或非活性的结构,超过70%的化合物被正确分类,包括新型CNS化学类型。这些结果证明了该模型对新型化学结构的适用性及其在设计以CNS为重点的原创化合物库方面的有用性。

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