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Machine learning for collective variable discovery and enhanced sampling in biomolecular simulation

机译:机器学习集体变量发现和生物分子模拟中增强的抽样

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摘要

Classical molecular dynamics simulates the time evolution of molecular systems through the phase space spanned by the positions and velocities of the constituent atoms. Molecular-level thermodynamic, kinetic, and structural data extracted from the resulting trajectories provide valuable information for the understanding, engineering, and design of biological and molecular materials. The cost of simulating many-body atomic systems makes simulations of large molecules prohibitively expensive, and the high-dimensionality of the resulting trajectories presents a challenge for analysis. Driven by advances in algorithms, hardware, and data availability, there has been a flare of interest in recent years in the applications of machine learning - especially deep learning - to molecular simulation. These techniques have demonstrated great power and flexibility in both extracting mechanistic understanding of the important nonlinear collective variables governing the dynamics of a molecular system, and in furnishing good low-dimensional system representations with which to perform enhanced sampling or develop long-timescale dynamical models. It is the purpose of this article to introduce the key machine learning approaches, describe how they are married with statistical mechanical theory into domain-specific tools, and detail applications of these approaches in understanding and accelerating biomolecular simulation.
机译:经典分子动力学通过由组分原子的位置和速度跨越的相空间模拟分子系统的时间演变。从得到的轨迹中提取的分子水平热力学,动力学和结构数据为生物和分子材料的理解,工程和设计提供了有价值的信息。模拟许多身体原子系统的成本使得模拟大分子过于昂贵,并且所产生的轨迹的高度为分析呈现出挑战。通过算法,硬件和数据可用性的进步驱动,近年来在机器学习的应用中有一个兴趣的耀斑 - 特别是深入学习 - 分子模拟。这些技术在提取机械理解方面具有强大的功率和灵活性,所述机械理解对管理分子系统的动态的重要非线性集体变量以及提供增强的采样或开发长时间动态模型的良好低维系统表示。本文介绍了关键机器学习方法的宗旨,描述了它们如何将统计机械理论结婚,并在理解和加速生物分子模拟方面的这些方法的详细应用。

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