首页> 外文期刊>The Journal of Chemical Physics >evERdock BAI: Machine-learning-guided selection of protein-protein complex structure
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evERdock BAI: Machine-learning-guided selection of protein-protein complex structure

机译:everdock Bai:机器学习引导的蛋白质 - 蛋白质复合结构选择

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Computational techniques for accurate and efficient prediction of protein-protein complex structures are widely used for elucidating protein-protein interactions, which play important roles in biological systems. Recently, it has been reported that selecting a structure similar to the native structure among generated structure candidates (decoys) is possible by calculating binding free energies of the decoys based on all-atom molecular dynamics (MD) simulations with explicit solvent and the solution theory in the energy representation, which is called evERdock. A recent version of evERdock achieves a higher-accuracy decoy selection by introducing MD relaxation and multiple MD simulations/energy calculations; however, huge computational cost is required. In this paper, we propose an efficient decoy selection method using evERdock and the best arm identification (BAI) framework, which is one of the techniques of reinforcement learning. The BAI framework realizes an efficient selection by suppressing calculations for nonpromising decoys and preferentially calculating for the promising ones. We evaluate the performance of the proposed method for decoy selection problems of three protein-protein complex systems. Their results show that computational costs are successfully reduced by a factor of 4.05 (in the best case) compared to a standard decoy selection approach without sacrificing accuracy. Published under license by AIP Publishing.
机译:用于准确和有效地预测蛋白质 - 蛋白质复合结构的计算技术广泛用于阐明蛋白质 - 蛋白质相互作用,这在生物系统中起重要作用。最近,据报道,通过基于具有明确溶剂的全原子分子动态(MD)模拟和解决方案理论,通过计算诱饵的结合能量和解决方案理论,可以通过计算诱饵的结合能量和解决方案理论来选择与生成的结构候选物(诱饵)中的天然结构相似的结构。在能量表示中,被称为evercock。最近版本的Everdock通过引入MD弛豫和多MD模拟/能量计算来实现更高准确的诱饵选择;但是,需要巨大的计算成本。在本文中,我们提出了一种使用everdock和最佳臂识别(Bai)框架的有效诱饵选择方法,这是加强学习的技术之一。 BAI框架通过抑制非妥协诱饵的计算并优先计算有前途的计算来实现有效的选择。我们评估了三种蛋白质复合体系的诱饵选择问题方法的性能。它们的结果表明,与标准诱饵选择方法相比,计算成本成功减少了4.05(在最佳情况下)而不会牺牲精度。通过AIP发布在许可证下发布。

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