Cherry-picking functionally relevant substates from long md trajectories using a stratified sampling approach.

IF 1.5 4区 生物学 Q4 Agricultural and Biological Sciences
Balasubramanian Chandramouli, Giordano Mancini
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引用次数: 0

Abstract

Description: Classical Molecular Dynamics (MD) simulations can provide insights at the nanoscopic scale into protein dynamics. Currently, simulations of large proteins and complexes can be routinely carried out in the ns-μs time regime. Clustering of MD trajectories is often performed to identify selective conformations and to compare simulation and experimental data coming from different sources on closely related systems. However, clustering techniques are usually applied without a careful validation of results and benchmark studies involving the application of different algorithms to MD data often deal with relatively small peptides instead of average or large proteins; finally clustering is often applied as a means to analyze refined data and also as a way to simplify further analysis of trajectories. Herein, we propose a strategy to classify MD data while carefully benchmarking the performance of clustering algorithms and internal validation criteria for such methods. We demonstrate the method on two showcase systems with different features, and compare the classification of trajectories in real and PCA space. We posit that the prototype procedure adopted here could be highly fruitful in clustering large trajectories of multiple systems or that resulting especially from enhanced sampling techniques like replica exchange simulations.

使用分层抽样方法从长md轨迹中挑选功能相关的子状态。
描述:经典分子动力学(MD)模拟可以在纳米尺度上提供蛋白质动力学的见解。目前,大型蛋白质和复合物的模拟通常可以在ns μs的时间范围内进行。MD轨迹的聚类通常用于识别选择性构象,并比较来自密切相关系统的不同来源的模拟和实验数据。然而,聚类技术通常在没有仔细验证结果的情况下应用,涉及将不同算法应用于MD数据的基准研究通常处理相对较小的肽而不是平均或较大的蛋白质;最后,聚类通常被用作分析精细数据的一种手段,也是一种简化进一步分析轨迹的方法。在此,我们提出了一种分类MD数据的策略,同时仔细对聚类算法的性能和此类方法的内部验证标准进行基准测试。我们在两个具有不同特征的展示系统上演示了该方法,并比较了真实空间和主成分分析空间中轨迹的分类。我们假设这里采用的原型程序在聚类多个系统的大型轨迹或特别是由副本交换模拟等增强的采样技术产生的结果方面可能非常富有成效。
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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来源期刊
Theoretical Biology Forum
Theoretical Biology Forum 生物-生物学
CiteScore
0.70
自引率
0.00%
发文量
0
审稿时长
>12 weeks
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