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Discovery of CNS-Like D3R-Selective Antagonists Using 3D Pharmacophore Guided Virtual Screening

机译:使用3D药效团引导的虚拟筛选发现类似CNS的D3R选择性拮抗剂

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摘要

The dopamine D3 receptor is an important CNS target for the treatment of a variety of neurological diseases. Selective dopamine D3 receptor antagonists modulate the improvement of psychostimulant addiction and relapse. In this study, five and six featured pharmacophore models of D3R antagonists were generated and evaluated with the post-hoc score combining two survival scores of active and inactive. Among the Top 10 models, APRRR215 and AHPRRR104 were chosen based on the coefficient of determination (APRRR215: R2training = 0.80; AHPRRR104: R2training = 0.82) and predictability (APRRR215: Q2test = 0.73, R2predictive = 0.82; AHPRRR104: Q2test = 0.86, R2predictive = 0.74) of their 3D-quantitative structure–activity relationship models. Pharmacophore-based virtual screening of a large compound library from eMolecules (>3 million compounds) using two optimal models expedited the search process by a 100-fold speed increase compared to the docking-based screening (HTVS scoring function in Glide) and identified a series of hit compounds having promising novel scaffolds. After the screening, docking scores, as an adjuvant predictor, were added to two fitness scores (from the pharmacophore models) and predicted Ki (from PLSs of the QSAR models) to improve accuracy. Final selection of the most promising hit compounds were also evaluated for CNS-like properties as well as expected D3R antagonism.
机译:多巴胺D3受体是治疗多种神经系统疾病的重要中枢神经系统靶标。选择性多巴胺D3受体拮抗剂可调节精神刺激性成瘾和复发的改善。在这项研究中,生成了D3R拮抗剂的五种和六种特色药效基团模型,并通过事后评分结合了活跃和不活跃两个生存评分来进行评估。在前十个模型中,根据确定系数(APRRR215:R 2 训练= 0.80; AHPRRR104:R 2 训练= 0.82)选择APRRR215和AHPRRR104 (APRRR215:Q 2 test = 0.73,R 2 预测性= 0.82; AHPRRR104:Q 2 test = 0.86,R 2 < / sup> predictive = 0.74)的3D定量结构-活动关系模型。与基于对接的筛选(Glide中的HTVS评分功能)相比,使用两个最佳模型对基于分子的大分子化合物库进行基于药理学的虚拟筛选(使用超过300万种化合物)可将搜索过程加快100倍,从而加快了搜索过程,并确定了一系列具有前景的新型支架的命中化合物。筛选后,将对接得分作为辅助预测因子添加到两个适应性得分(来自药效团模型)和预测Ki(来自QSAR模型的PLS)中,以提高准确性。还对最有希望的命中化合物的最终选择进行了CNS样性质以及预期的D3R拮抗作用的评估。

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