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启动镇静作用的与苯二氮䓬受体/GABA(A)受体结合的配体识别的决定因素。

Determinants of recognition of ligands binding to benzodiazepine receptor/GABA(A) receptors initiating sedation.

作者信息

Harris D L, DeLorey T M, He X, Cook J M, Loew G H

机构信息

Molecular Research Institute, 2495 Old Middlefield Way, 94043, Mountain View, CA, USA.

出版信息

Eur J Pharmacol. 2000 Aug 11;401(3):271-87. doi: 10.1016/s0014-2999(00)00462-3.

Abstract

Complementary behavioral and computational studies of 21 structurally diverse, gamma-amino butyric acid (GABA)(A) benzodiazepine receptor ligands that influence spontaneous locomotor activity have been performed in this work. This behavioral endpoint is a well-accepted indicator of sedation particularly for GABA(A)/benzodiazepine receptor ligands. The goal of the work presented here is the identification and assessment of the minimum requirements for ligand recognition of GABA(A)/benzodiazepine receptors leading to activity at the sedation endpoint embedded in a common 3D pharmacophore for recognition. Using the experimental results, together with a systematic computational procedure developed in our laboratory, a five-component 3D pharmacophore for recognition of the GABA(A) receptor subtypes associated with the sedative behavioral response has been developed consisting of: two proton-accepting moieties, a hydrophobic region, a ring with polar moieties and an aromatic ring in a common geometric arrangement in all ligands having an effect at the sedation endpoint. To provide further evidence that the 3D pharmacophore developed embodied common requirements for receptor recognition, a pharmacophore analysis was performed for agonists, inverse agonists and antagonists separately. Each of the resulting pharmacophores contained the same five moieties at comparable distances to those found for the pharmacophore generated using all of them together. This result confirms that this pharmacophore constitutes a recognition pharmacophore representing required features in the overlapping portion of their binding sites. The reliability of this 3D pharmacophore was then assessed in several ways. First, it was determined that ligands that had no effect at the sedation endpoint did not comply with the pharmacophore requirements. Second, four benzodiazepine receptor ligands known to have an effect at the sedation endpoint, but not used in the pharmacophore development were found to satisfy the requirements of this pharmacophore. Third, the geometric and chemical requirements embedded in this pharmacophore were used to search 3D databases resulting in the identification of benzodiazepine receptor ligands known to affect sedation, but not included in the pharmacophore development. Finally, a 3D-quantitative structure analysis procedure (QSAR) model was developed based upon the ligands in the training set superimposed at their sedation pharmacophore points. The 3D-QSAR model shows good predictivity for binding of these ligands to receptor subtypes containing alpha1 but not alpha5 subunits. The pharmacophore developed for the sedation endpoint thus provides a predictive binding model for diverse ligand binding to alpha1 containing receptor subtypes.

摘要

在这项研究中,我们对21种结构各异、影响自发运动活性的γ-氨基丁酸(GABA)(A)苯二氮䓬受体配体进行了补充性的行为学和计算研究。这个行为学终点是一个被广泛认可的镇静指标,尤其适用于GABA(A)/苯二氮䓬受体配体。本文的研究目的是识别和评估GABA(A)/苯二氮䓬受体配体识别的最低要求,这些要求导致在一个共同的3D药效团中嵌入的镇静终点处产生活性。利用实验结果,结合我们实验室开发的系统计算程序,开发了一种用于识别与镇静行为反应相关的GABA(A)受体亚型的五组分3D药效团,它由以下部分组成:两个质子接受基团、一个疏水区域、一个带有极性基团的环和一个芳香环,所有在镇静终点处有作用的配体都具有共同的几何排列。为了进一步证明所开发的3D药效团体现了受体识别的共同要求,我们分别对激动剂、反向激动剂和拮抗剂进行了药效团分析。每个所得的药效团在与将它们全部一起使用时生成的药效团相当的距离处包含相同的五个部分。这一结果证实,这个药效团构成了一个识别药效团,代表了它们结合位点重叠部分所需的特征。然后,我们通过几种方式评估了这个3D药效团的可靠性。首先,确定在镇静终点处无作用的配体不符合药效团要求。其次,发现四种已知在镇静终点处有作用但未用于药效团开发的苯二氮䓬受体配体满足该药效团的要求。第三,利用这个药效团中嵌入的几何和化学要求搜索3D数据库,可以识别出已知影响镇静但未包含在药效团开发中的苯二氮䓬受体配体。最后,基于训练集中配体在其镇静药效团点处的叠加,开发了一个3D定量结构分析程序(QSAR)模型。该3D-QSAR模型对这些配体与含有α1但不含有α5亚基的受体亚型的结合具有良好的预测性。因此,为镇静终点开发的药效团为多种配体与含有α1的受体亚型的结合提供了一个预测性结合模型。

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