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首页> 外文期刊>Journal of molecular graphics & modelling >Ligand and structure based virtual screening of chemical databases to explore potent small molecule inhibitors against breast invasive carcinoma using recent computational technologies
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Ligand and structure based virtual screening of chemical databases to explore potent small molecule inhibitors against breast invasive carcinoma using recent computational technologies

机译:基于配体和基于结构的化学数据库的虚拟筛选,利用最近的计算技术探索患有乳腺侵入性癌的有效的小分子抑制剂

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Breast carcinoma is the most common invasive cancer to affect the women in the North America and the world. Cancer of breast is the number one cancer overall with estimated 1.5 lakh new cases during 2016. The success of the current endocrine therapies is often limited due to the development of resistance. Therefore, there is a need to develop new lead compounds for breast cancer treatment. As 70% of breast carcinoma is ER+, and it is well known previously that estrogen receptor alpha (ER alpha) is overexpressed in ER + cases, so in the current work we attempt to develop some novel potent analogues against ER alpha. To achieve this, we have adopted an integrative computational approach that involves multiple sequence alignment, virtual screening (ligand and structure based), molecular docking, fingerprint based clustering and molecular dynamics simulation. The approach envisaged vital information about the binding site residues, conserved sequence among different species, ligand and protein conformations, binding energy of compound to bind into the active site of the receptor. Molecular docking analysis revealed that some analogues exhibited significant binding towards ER alpha. The top docked complexes showing good docking scores, hydrogen bond and hydrophobic interactions were selected for molecular dynamics simulation studies. RMSD revealed that the systems were quite stable with RMSD value below 3 angstrom. The RMSF analysis calculated residue wise fluctuations and revealed that the residues are flexible enough to interact with the ligand. The residue at C-terminal showed more flexibility as compared to other residues. To confirm binding of these analogues, MMGBSA analysis was performed which revealed binding energy of the ligands. Further, per-residue decomposition energy analysis revealed that Glu353, Leu346, Leu387 and Arg394 contributed towards ligand binding. The results visibly indicated that MMGBSA can act as filter in virtual screening experiments and play a major role in facilitating drug discovery. (C) 2020 Elsevier Inc. All rights reserved.
机译:乳腺癌是影响北美和世界的妇女最常见的侵袭性癌症。乳腺癌是一整体癌症,2016年估计新病例为1.5万左右。目前的内分泌疗法的成功往往是由于抵抗的发展而受到限制。因此,需要开发新的乳腺癌治疗铅化合物。由于70%的乳腺癌是ER +,以前众所周知,雌激素受体α(ERα)在ER +病例中过表达,因此在当前的工作中,我们试图开发一些针对ERα的新型高效类似物。为此,我们采用了一种综合计算方法,涉及多个序列对准,虚拟筛选(配体和基于配体和结构),分子对接,基于指纹的聚类和分子动力学模拟。该方法设想了有关结合位点残留物,不同物种,配体和蛋白质构象的保守序列的重要信息,化合物的结合能量结合到受体的活性位点中。分子对接分析显示,一些类似物表现出对ERα的显着结合。选择显示良好对接评分,氢键和疏水相互作用的顶部停靠复合物用于分子动力学模拟研究。 RMSD透露,该系统在3埃以下的RMSD值非常稳定。 RMSF分析计算残留明智波动并显示残留物足够灵活以与配体相互作用。与其他残基相比,C末端的残基显示出更大的柔韧性。为了确认这些类似物的结合,进行MMGBSA分析,其显示配体的结合能。此外,每残基分解能量分析显示Glu353,Leu346,Leu387和Arg394促进配体结合。结果明显表示,MMGBSA可以在虚拟筛选实验中充当过滤,并在促进药物发现中发挥重要作用。 (c)2020 Elsevier Inc.保留所有权利。

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