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首页> 外文期刊>Journal of molecular modeling >Computational design of new protein kinase 2 inhibitors for the treatment of inflammatory diseases using QSAR, pharmacophore-structure-based virtual screening, and molecular dynamics
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Computational design of new protein kinase 2 inhibitors for the treatment of inflammatory diseases using QSAR, pharmacophore-structure-based virtual screening, and molecular dynamics

机译:新蛋白激酶2抑制剂用于使用QSAR,药物结构基虚拟筛选治疗炎性疾病的抑制剂和分子动力学

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Receptor-interacting protein kinase 2 (RIPK2) plays an essential role in autoimmune response and is suggested as a target for inflammatory diseases. A pharmacophore model was built from a dataset with ponatinib (template) and 18 RIPK2 inhibitors selected from BindingDB database. The pharmacophore model validation was performed by multiple linear regression (MLR). The statistical quality of the model was evaluated by the correlation coefficient (R), squared correlation coefficient (R (2)), explanatory variance (adjusted R (2)), standard error of estimate (SEE), and variance ratio (F). The best pharmacophore model has one aromatic group (LEU24 residue interaction) and two hydrogen bonding acceptor groups (MET98 and TYR97 residues interaction), having a score of 24.739 with 14 aligned inhibitors, which were used in virtual screening via ZincPharmer server and the ZINC database (selected in function of the RMSD value). We determined theoretical values of biological activity (logRA) by MLR, pharmacokinetic and toxicology properties, and made molecular docking studies comparing binding affinity (kcal/mol) results with the most active compound of the study (ponatinib) and WEHI-345. Nine compounds from the ZINC database show satisfactory results, yielding among those selected, the compound ZINC01540228, as the most promising RIPK2 inhibitor. After binding free energy calculations, the following molecular dynamics simulations showed that the receptor protein's backbone remained stable after the introduction of ligands.
机译:受体相互作用的蛋白激酶2(RIPK2)在自身免疫反应中起重要作用,并且建议作为炎性疾病的目标。 Pharmacophore模型由具有Ponatinib(模板)和18 RIPK2抑制器的数据集构建,选自BindingDB数据库。 Pharmacophore模型验证由多元线性回归(MLR)进行。通过相关系数(R),平方相关系数(R(2)),解释方差(调整R(2)),估计的标准误差(参见)和方差比(F)来评估模型的统计质量。(参见)和方差比(f) 。最佳药效线模型具有一个芳族基团(Leu24残基相互作用)和两个氢键受体基团(Met98和Tyr97残基相互作用),得分为24.739,具有14个对齐的抑制剂,其用于通过Zincpharmer服务器和锌数据库进行虚拟筛选(在RMSD值的功能中选择)。我们确定了通过MLR,药代动力学和毒理学性能的生物活性(LOGRA)的理论值,并使分子对接研究比较结合亲和力(KCAL / mol)与研究中最活跃的化合物(Ponatinib)和Wehi-345的结果。来自锌数据库的九种化合物显示出令人满意的结果,在选定的那些中产生,化合物锌01540228,作为最有前景的铅蛋白抑制剂。在结合自由能计算之后,以下分子动力学模拟表明,在引入配体后,受体蛋白的骨干保持稳定。

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