Shukla Diwakar, Lawrenz Morgan, Pande Vijay S
Department of Chemistry, Stanford University, Stanford, California, USA; SIMBIOS NIH Center for Biomedical Computation, Stanford University, Stanford, California, USA.
Department of Chemistry, Stanford University, Stanford, California, USA.
Methods Enzymol. 2015;557:551-72. doi: 10.1016/bs.mie.2014.12.007. Epub 2015 Mar 24.
G-protein-coupled receptors (GPCRs) are a versatile family of membrane-bound signaling proteins. Despite the recent successes in obtaining crystal structures of GPCRs, much needs to be learned about the conformational changes associated with their activation. Furthermore, the mechanism by which ligands modulate the activation of GPCRs has remained elusive. Molecular simulations provide a way of obtaining detailed an atomistic description of GPCR activation dynamics. However, simulating GPCR activation is challenging due to the long timescales involved and the associated challenge of gaining insights from the "Big" simulation datasets. Here, we demonstrate how cloud-computing approaches have been used to tackle these challenges and obtain insights into the activation mechanism of GPCRs. In particular, we review the use of Markov state model (MSM)-based sampling algorithms for sampling milliseconds of dynamics of a major drug target, the G-protein-coupled receptor β2-AR. MSMs of agonist and inverse agonist-bound β2-AR reveal multiple activation pathways and how ligands function via modulation of the ensemble of activation pathways. We target this ensemble of conformations with computer-aided drug design approaches, with the goal of designing drugs that interact more closely with diverse receptor states, for overall increased efficacy and specificity. We conclude by discussing how cloud-based approaches present a powerful and broadly available tool for studying the complex biological systems routinely.
G蛋白偶联受体(GPCRs)是一类多样的膜结合信号蛋白家族。尽管最近在获得GPCRs的晶体结构方面取得了成功,但仍有许多关于其激活相关构象变化的知识有待了解。此外,配体调节GPCRs激活的机制仍然难以捉摸。分子模拟提供了一种获得GPCR激活动力学详细原子描述的方法。然而,由于涉及的时间尺度较长以及从“大数据”模拟数据集中获取见解的相关挑战,模拟GPCR激活具有挑战性。在这里,我们展示了云计算方法如何被用于应对这些挑战并深入了解GPCRs的激活机制。特别是,我们回顾了基于马尔可夫状态模型(MSM)的采样算法用于采样主要药物靶点G蛋白偶联受体β2-肾上腺素能受体(β2-AR)毫秒级动力学的应用。激动剂和反向激动剂结合的β2-AR的MSM揭示了多种激活途径以及配体如何通过调节激活途径的集合发挥作用。我们用计算机辅助药物设计方法针对这一构象集合,目标是设计出能与多种受体状态更紧密相互作用的药物,以全面提高疗效和特异性。我们通过讨论基于云的方法如何为常规研究复杂生物系统提供一个强大且广泛可用的工具来结束本文。