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Discovery of new JNK3 inhibitory chemotypes via QSAR-Guided selection of docking-based pharmacophores and comparison with other structure-based pharmacophore modeling methods

机译:通过QSAR引导的基于对接的药效线选择的新JNK3抑制性化学品,并与其他基于结构的药物模拟方法进行比较

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摘要

The kinase c-Jun N-terminal Kinase 3 (JNK3) plays an important role in neurodegenerative diseases. JNK3 inhibitors have shown promising results in treating Alzheimer's and Parkinson's diseases. This prompted us to model this interesting target via three established structure-based computational workflows; namely, docking-based Comparative Intermolecular Contacts Analysis (db-CICA), pharmacophore modeling via molecular-dynamics based Ligand-Receptor Contact Analysis (md-LRCA), and QSAR-guided selection of crystallographic pharmacophores. Moreover, we compared the performances of resulting pharmacophores against binding models generated via a newly introduced technique, namely, QSAR-guided selection of docking-based pharmacophores. The resulting pharmacophores were validated by receiver operating characteristic (ROC) curve analysis and used as virtual search queries to screen the National Cancer Institute (NCI) database for promising anti-JNK3 hits of novel chemotypes. Eleven nanomolar and low micromolar hits were identified, three of which were captured by QSAR-guided docking-based pharmacophores. (C) 2019 Elsevier Inc. All rights reserved.
机译:激酶C-JUM N-末端激酶3(JNK3)在神经变性疾病中起重要作用。 JNK3抑制剂表明有希望的结果治疗阿尔茨海默氏症和帕金森病的疾病。这提示我们通过三个基于结构的计算工作流程来模拟这一有趣的目标;即,基于对接的比较分子间触点分析(DB-CICA),通过基于分子动力学的配体 - 受体接触分析(MD-LRCA)的药物模型,以及QSAR引导的晶体类药物选择。此外,我们将所得药物团的性能与通过新引入的技术产生的结合模型进行了比较,即QSAR引导的基于对接的药效线的选择。通过接收器操作特征(ROC)曲线分析验证所得药理验证,并用作虚拟搜索查询,以筛选国家癌症研究所(NCI)数据库,以便有前途的抗JNK3的新型化学型。鉴定了11个纳米摩尔和低微摩尔命中,其中三个由QSAR引导基于对接的药物捕获。 (c)2019 Elsevier Inc.保留所有权利。

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