Varady Judith, Wu Xihan, Fang Xueliang, Min Ji, Hu Zengjian, Levant Beth, Wang Shaomeng
Departments of Internal Medicine and Medicinal Chemistry, University of Michigan, 3-316 CCGC Box 0934, 1500 East Medical Center Drive, Ann Arbor, MI 48109-0934, USA.
J Med Chem. 2003 Oct 9;46(21):4377-92. doi: 10.1021/jm030085p.
The dopamine 3 (D3) subtype receptor has been implicated in several neurological conditions, and potent and selective D3 ligands may have therapeutic potential for the treatment of drug addiction, Parkinson's disease, and schizophrenia. In this paper, we report computational homology modeling of the D3 receptor based upon the high-resolution X-ray structure of rhodopsin, extensive structural refinement in the presence of explicit lipid bilayer and water environment, and validation of the refined D3 structural models using experimental data. We further describe the development, validation, and application of a hybrid computational screening approach for the discovery of several classes of novel and potent D3 ligands. This computational approach employs stepwise pharmacophore and structure-based searching of a large three-dimensional chemical database for the identification of potential D3 ligands. The obtained hits are then subjected to structural novelty screening, and the most promising compounds are tested in a D3 binding assay. Using this approach we identified four compounds with K(i) values better than 100 nM and eight compounds with K(i) values better than 1 microM out of 20 compounds selected for testing in the D3 receptor binding assay. Our results suggest that the D3 structural models obtained from this study may be useful for the discovery and design of novel and potent D3 ligands. Furthermore, the employed hybrid approach may be more effective for lead discovery from a large chemical database than either pharmacophore-based or structure-based database screening alone.
多巴胺3(D3)亚型受体与多种神经系统疾病有关,强效且选择性的D3配体可能对治疗药物成瘾、帕金森病和精神分裂症具有治疗潜力。在本文中,我们报告了基于视紫红质高分辨率X射线结构的D3受体计算同源性建模、在存在明确脂质双层和水环境的情况下进行的广泛结构优化,以及使用实验数据对优化后的D3结构模型进行的验证。我们还描述了一种混合计算筛选方法的开发、验证和应用,用于发现几类新型强效D3配体。这种计算方法采用逐步药效团和基于结构的方法在大型三维化学数据库中搜索,以识别潜在的D3配体。然后对获得的命中结果进行结构新颖性筛选,并在D3结合试验中测试最有前景的化合物。使用这种方法,我们在选择用于D3受体结合试验的20种化合物中,鉴定出4种K(i)值优于100 nM的化合物和8种K(i)值优于1 microM的化合物。我们的结果表明,从本研究中获得的D3结构模型可能有助于发现和设计新型强效D3配体。此外,所采用的混合方法可能比单独基于药效团或基于结构的数据库筛选更有效地从大型化学数据库中发现先导化合物。