From complex data to clear insights: visualizing molecular dynamics trajectories

Hayet Belghit, Mariano Spivak, Manuel Dauchez, Marc Baaden, J. Jonquet-Prevoteau
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Abstract

Advances in simulations, combined with technological developments in high-performance computing, have made it possible to produce a physically accurate dynamic representation of complex biological systems involving millions to billions of atoms over increasingly long simulation times. The analysis of these computed simulations is crucial, involving the interpretation of structural and dynamic data to gain insights into the underlying biological processes. However, this analysis becomes increasingly challenging due to the complexity of the generated systems with a large number of individual runs, ranging from hundreds to thousands of trajectories. This massive increase in raw simulation data creates additional processing and visualization challenges. Effective visualization techniques play a vital role in facilitating the analysis and interpretation of molecular dynamics simulations. In this paper, we focus mainly on the techniques and tools that can be used for visualization of molecular dynamics simulations, among which we highlight the few approaches used specifically for this purpose, discussing their advantages and limitations, and addressing the future challenges of molecular dynamics visualization.
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从复杂数据到清晰见解:分子动力学轨迹可视化
模拟技术的进步,加上高性能计算技术的发展,使得在越来越长的模拟时间内,对涉及数百万到数十亿原子的复杂生物系统进行物理上精确的动态模拟成为可能。对这些计算模拟的分析至关重要,其中包括对结构和动态数据的解读,以深入了解潜在的生物过程。然而,由于生成系统的复杂性,以及大量的单个运行(从数百到数千个轨迹不等),这种分析变得越来越具有挑战性。原始模拟数据的大量增加带来了额外的处理和可视化挑战。有效的可视化技术在促进分子动力学模拟的分析和解释方面发挥着至关重要的作用。在本文中,我们主要关注可用于分子动力学模拟可视化的技术和工具,其中重点介绍了专门用于此目的的几种方法,讨论了它们的优势和局限性,并探讨了分子动力学可视化的未来挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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