Broomhead Neal K, Soliman Mahmoud E
Molecular Modelling & Drug Design Research Group, School of Health Sciences, University of KwaZulu-Natal, Westville, Durban, 4001, South Africa.
Cell Biochem Biophys. 2017 Mar;75(1):15-23. doi: 10.1007/s12013-016-0769-y. Epub 2016 Oct 31.
In the field of medicinal chemistry there is increasing focus on identifying key proteins whose biochemical functions can firmly be linked to serious diseases. Such proteins become targets for drug or inhibitor molecules that could treat or halt the disease through therapeutic action or by blocking the protein function respectively. The protein must be targeted at the relevant biologically active site for drug or inhibitor binding to be effective. As insufficient experimental data is available to confirm the biologically active binding site for novel protein targets, researchers often rely on computational prediction methods to identify binding sites. Presented herein is a short review on structure-based computational methods that (i) predict putative binding sites and (ii) assess the druggability of predicted binding sites on protein targets. This review briefly covers the principles upon which these methods are based, where they can be accessed and their reliability in identifying the correct binding site on a protein target. Based on this review, we believe that these methods are useful in predicting putative binding sites, but as they do not account for the dynamic nature of protein-ligand binding interactions, they cannot definitively identify the correct site from a ranked list of putative sites. To overcome this shortcoming, we strongly recommend using molecular docking to predict the most likely protein-ligand binding site(s) and mode(s), followed by molecular dynamics simulations and binding thermodynamics calculations to validate the docking results. This protocol provides a valuable platform for experimental and computational efforts to design novel drugs and inhibitors that target disease-related proteins.
在药物化学领域,越来越关注识别那些其生化功能与严重疾病有明确关联的关键蛋白质。这类蛋白质成为药物或抑制剂分子的作用靶点,这些药物或抑制剂分子可分别通过治疗作用或阻断蛋白质功能来治疗或遏制疾病。蛋白质必须靶向相关的生物活性位点,药物或抑制剂的结合才会有效。由于缺乏足够的实验数据来确认新型蛋白质靶点的生物活性结合位点,研究人员常常依靠计算预测方法来识别结合位点。本文给出了一篇关于基于结构的计算方法的简短综述,这些方法:(i)预测假定的结合位点,(ii)评估蛋白质靶点上预测的结合位点的可成药性。这篇综述简要涵盖了这些方法所基于的原理、可获取这些方法的途径以及它们在识别蛋白质靶点上正确结合位点方面的可靠性。基于这篇综述,我们认为这些方法在预测假定的结合位点方面是有用的,但由于它们没有考虑蛋白质 - 配体结合相互作用的动态性质,所以无法从假定位点的排名列表中明确识别出正确的位点。为克服这一缺点,我们强烈建议使用分子对接来预测最可能的蛋白质 - 配体结合位点和模式,随后进行分子动力学模拟和结合热力学计算以验证对接结果。该方案为设计针对疾病相关蛋白质的新型药物和抑制剂的实验和计算工作提供了一个有价值的平台。