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通过多层次计算机模拟方法鉴定新型强效NLRP3抑制剂

Identification of new potent NLRP3 inhibitors by multi-level in-silico approaches.

作者信息

Hayat Chandni, Subramaniyan Vetriselvan, Alamri Mubarak A, Wong Ling Shing, Khalid Asaad, Abdalla Ashraf N, Afridi Sahib Gul, Kumarasamy Vinoth, Wadood Abdul

机构信息

Department of Biochemistry, Abdul Wali Khan University, Mardan, Mardan, 23200, Pakistan.

Pharmacology Unit, Jeffrey Cheah School of Medicine and Health Sciences, Monash University, Malaysia, Jalan Lagoon Selatan, Bandar Sunway, 47500, Subang Jaya, Selangor Darul Ehsan, Malaysia.

出版信息

BMC Chem. 2024 Apr 18;18(1):76. doi: 10.1186/s13065-024-01178-3.

Abstract

Nod-like receptor protein 3 (NLRP-3), is an intracellular sensor that is involved in inflammasome activation, and the aberrant expression of NLRP3 is responsible for diabetes mellitus, its complications, and many other inflammatory diseases. NLRP3 is considered a promising drug target for novel drug design. Here, a pharmacophore model was generated from the most potent inhibitor, and its validation was performed by the Gunner-Henry scoring method. The validated pharmacophore was used to screen selected compounds databases. As a result, 646 compounds were mapped on the pharmacophore model. After applying Lipinski's rule of five, 391 hits were obtained. All the hits were docked into the binding pocket of target protein. Based on docking scores and interactions with binding site residues, six compounds were selected potential hits. To check the stability of these compounds, 100 ns molecular dynamic (MD) simulations were performed. The RMSD, RMSF, DCCM and hydrogen bond analysis showed that all the six compounds formed stable complex with NLRP3. The binding free energy with the MM-PBSA approach suggested that electrostatic force, and van der Waals interactions, played a significant role in the binding pattern of these compounds. Thus, the outcomes of the current study could provide insights into the identification of new potential NLRP3 inflammasome inhibitors against diabetes and its related disorders.

摘要

NOD样受体蛋白3(NLRP - 3)是一种参与炎性小体激活的细胞内传感器,NLRP3的异常表达与糖尿病及其并发症以及许多其他炎症性疾病有关。NLRP3被认为是新型药物设计中有前景的药物靶点。在此,从最有效的抑制剂生成了一个药效团模型,并通过冈纳 - 亨利评分法进行了验证。经验证的药效团用于筛选选定的化合物数据库。结果,646种化合物被映射到药效团模型上。应用Lipinski的五规则后,获得了391个命中物。所有命中物都对接至目标蛋白的结合口袋。基于对接分数和与结合位点残基的相互作用,选择了6种化合物作为潜在命中物。为了检查这些化合物的稳定性,进行了100纳秒的分子动力学(MD)模拟。均方根偏差(RMSD)、均方根波动(RMSF)、动态交联相关系数(DCCM)和氢键分析表明,所有6种化合物都与NLRP3形成了稳定的复合物。采用MM - PBSA方法计算的结合自由能表明,静电力和范德华相互作用在这些化合物的结合模式中起重要作用。因此,本研究结果可为鉴定针对糖尿病及其相关疾病的新型潜在NLRP3炎性小体抑制剂提供见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5fa7/11027297/b1bbbe4c13f3/13065_2024_1178_Fig1_HTML.jpg

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