首页> 外文期刊>Journal of Biomolecular Structure and Dynamics >Novel tumor necrosis factor-α (TNF-α) inhibitors from small molecule library screening for their therapeutic activity profiles against rheumatoid arthritis using target-driven approaches and binary QSAR models
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Novel tumor necrosis factor-α (TNF-α) inhibitors from small molecule library screening for their therapeutic activity profiles against rheumatoid arthritis using target-driven approaches and binary QSAR models

机译:小型肿瘤坏死因子-α(TNF-α)来自小分子文库筛选的抑制剂,用于使用目标驱动方法和二元QSAR模型对类风湿性关节炎的治疗活性谱

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Tumor necrosis factor alpha (TNF-α) is a multifunctional cytokine that acts as a central biological mediator for critical immune functions, including inflammation, infection, and antitumor responses. It plays pivotal role in autoimmune diseases like rheumatoid arthritis (RA). The synthetic antibodies etanercept, infliximab, and adalimumab are approved drugs for the treatment of inflammatory diseases bind to TNF-α directly, preventing its association with the tumor necrosis factor receptor (TNFR). These biologics causes serious side effects such as triggering an autoimmune anti-antibody response or the weakening of the body's immune defenses. Therefore, alternative small-molecule based therapies for TNF-α inhibition is a hot topic both in academia and industry. Most of small-molecule inhibitors reported in the literature target TNF-α, indirectly. In this study, combined in silico approaches have been applied to better understand the important direct interactions between TNF-α and small inhibitors. Our effort executed with the extensive literature review to select the compounds that inhibit TNF-α. High-throughput structure-based and ligand-based virtual screening methods are applied to identify TNF-α inhibitors from 3 different small molecule databases (~256.000 molecules from Otava drug-like green chemical collection,?~?500.000 molecules from Otava Tangible database,?~2.500.000 Enamine small molecule database) and ~240.000 molecules from ZINC natural products libraries. Moreover, therapeutic activity prediction, as well as pharmacokinetic and toxicity profiles are also investigated using MetaCore/MetaDrug platform which is based on a manually curated database of molecular interactions, molecular pathways, gene-disease associations, chemical metabolism and toxicity information, uses binary QSAR models. Particular therapeutic activity and toxic effect predictions are based on the ChemTree ability to correlate structural descriptors to that property using recursive partitioning algorithm. Molecular Dynamics (MD) simulations were also performed for selected hits to investigate their detailed structural and dynamical analysis beyond docking studies. As a result, at least one hit from each database were identified as novel TNF-α inhibitors after comprehensive virtual screening, multiple docking, e-Pharmacophore modeling (structure-based pharmacophore modeling), MD simulations, and MetaCore/MetaDrug analysis. Identified hits show predicted promising anti-arthritic activity and no toxicity.
机译:肿瘤坏死因子α(TNF-α)是一种多功能细胞因子,其作为中央生物介体,用于临界免疫功能,包括炎症,感染和抗肿瘤反应。它在自身免疫性疾病等类风湿性关节炎(RA)中起着枢轴作用。合成抗体Etanercept,Interiximab和Adalimumab是用于治疗炎性疾病的批准药物直接与TNF-α结合,防止其与肿瘤坏死因子受体(TNFR)的关系。这些生物学导致严重的副作用,例如触发自身免疫抗抗体反应或身体免疫防御的弱化。因此,TNF-α抑制的基于替代的小分子疗法是学术界和工业中的热门话题。大多数小分子抑制剂在文献靶TNF-α中,间接靶向。在这项研究中,在硅方法中组合用于更好地了解TNF-α和小抑制剂之间的重要直接相互作用。我们的努力通过广泛的文献综述执行,以选择抑制TNF-α的化合物。施用高通量结构和基于配体的虚拟筛选方法,用于鉴定来自3种不同的小分子数据库的TNF-α抑制剂(来自Otava药物的绿色化学品收集的〜256.000分子,Δ〜500.000分子来自Otava切实数据库, 〜2.500.000烯胺小分子数据库)和来自锌天然产物文库的约240.000分子。此外,还使用基于Metacore / Metadrug平台来研究治疗活性预测,以及药代动力学和毒性谱,该平台基于用于分子相互作用,分子途径,基因疾病关联,化学代谢和毒性信息的手动策划数据库,使用二元Qsar楷模。特定的治疗活动和毒性效果预测基于ChemTree使用递归分区算法将结构描述符相关联的能力。分子动力学(MD)模拟也用于选定的命中,以研究超越对接研究的详细结构和动态分析。结果,在全面的虚拟筛选,多对接,电子药物模型(结构基药长学),MD仿真和Metacore / Metadrug分析中,将来自每个数据库的至少一个击中的次数。鉴定的命中显示预测有前途的抗关节炎活性和无毒。

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