Accounting of Receptor Flexibility in Ultra-Large Virtual Screens with VirtualFlow Using a Grey Wolf Optimization Method.

Q2 Computer Science
Christoph Gorgulla, Konstantin Fackeldey, Gerhard Wagner, Haribabu Arthanari
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引用次数: 7

Abstract

Structure-based virtual screening approaches have the ability to dramatically reduce the time and costs associated to the discovery of new drug candidates. Studies have shown that the true hit rate of virtual screenings improves with the scale of the screened ligand libraries. Therefore, we have recently developed an open source drug discovery platform (VirtualFlow), which is able to routinely carry out ultra-large virtual screenings. One of the primary challenges of molecular docking is the circumstance when the protein is highly dynamic or when the structure of the protein cannot be captured by a static pose. To accommodate protein dynamics, we report the extension of VirtualFlow to allow the docking of ligands using a grey wolf optimization algorithm using the docking program GWOVina, which substantially improves the quality and efficiency of flexible receptor docking compared to AutoDock Vina. We demonstrate the linear scaling behavior of VirtualFlow utilizing GWOVina up to 128 000 CPUs. The newly supported docking method will be valuable for drug discovery projects in which protein dynamics and flexibility play a significant role.

Abstract Image

Abstract Image

Abstract Image

基于灰狼优化方法的VirtualFlow对超大虚拟屏幕中受体灵活性的计算。
基于结构的虚拟筛选方法能够显著减少与发现新候选药物相关的时间和成本。研究表明,虚拟筛选的真实命中率随着筛选配体库的规模而提高。因此,我们最近开发了一个开源的药物发现平台(VirtualFlow),它能够常规地进行超大规模的虚拟筛选。分子对接的主要挑战之一是当蛋白质是高度动态的或当蛋白质的结构不能被静态姿态捕获时的情况。为了适应蛋白质动力学,我们报道了VirtualFlow的扩展,允许使用对接程序GWOVina的灰狼优化算法进行配体对接,与AutoDock Vina相比,这大大提高了柔性受体对接的质量和效率。我们演示了利用GWOVina多达128000个cpu的VirtualFlow的线性扩展行为。新支持的对接方法将对蛋白质动力学和灵活性发挥重要作用的药物发现项目有价值。
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来源期刊
Supercomputing Frontiers and Innovations
Supercomputing Frontiers and Innovations Computer Science-Computational Theory and Mathematics
CiteScore
1.60
自引率
0.00%
发文量
7
审稿时长
12 weeks
期刊介绍: The Journal of Supercomputing Frontiers and Innovations (JSFI) is a new peer reviewed publication that addresses the urgent need for greater dissemination of research and development findings and results at the leading edge of high performance computing systems, highly parallel methods, and extreme scaled applications. Key topic areas germane include, but not limited to: Enabling technologies for high performance computing Future generation supercomputer architectures Extreme-scale concepts beyond conventional practices including exascale Parallel programming models, interfaces, languages, libraries, and tools Supercomputer applications and algorithms Distributed operating systems, kernels, supervisors, and virtualization for highly scalable computing Scalable runtime systems software Methods and means of supercomputer system management, administration, and monitoring Mass storage systems, protocols, and allocation Energy and power minimization for very large deployed computers Resilience, reliability, and fault tolerance for future generation highly parallel computing systems Parallel performance and correctness debugging Scientific visualization for massive data and computing both external and in situ Education in high performance computing and computational science.
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