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An Online Approach for Mining Collective Behaviors from Molecular Dynamics Simulations

机译:一种从分子动力学模拟中挖掘集体行为的在线方法

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Abstract Collective behavior involving distally separate regions in a protein is known to widely affect its function. In this article, we present an online approach to study and characterize collective behavior in proteins as molecular dynamics (MD) simulations progress. Our representation of MD simulations as a stream of continuously evolving data allows us to succinctly capture spatial and temporal dependencies that may exist and analyze them efficiently using data mining techniques. By using tensor analysis we identify (a) collective motions (i.e., dynamic couplings) and (b) time-points during the simulation where the collective motions suddenly change. We demonstrate the applicability of this method on two different protein simulations for barnase and cyclophilin A. We characterize the collective motions in these proteins using our method and analyze sudden changes in these motions. Taken together, our results indicate that tensor analysis is well suited to extracting information from MD trajectories ..." /> rel="meta" type="application/atom+xml" href="http://dx.doi.org/10.1089%2Fcmb.2009.0167" /> rel="meta" type="application/rdf+json" href="http://dx.doi.org/10.1089%2Fcmb.2009.0167" /> rel="meta" type="application/unixref+xml" href="http://dx.doi.org/10.1089%2Fcmb.2009.0167" /> 展开▼
机译:摘要已知涉及蛋白质远端分离区域的集体行为会广泛影响其功能。在本文中,我们提出了一种在线方法,以随着分子动力学(MD)模拟的进行,研究和表征蛋白质中的集体行为。我们将MD模拟表示为不断发展的数据流,这使我们能够简洁地捕获可能存在的时空依赖关系,并使用数据挖掘技术对其进行有效分析。通过张量分析,我们可以识别(a)集体运动(即动态耦合)和(b)在仿真过程中集体运动突然变化的时间点。我们证明了该方法在针对barnase和亲环蛋白A的两种不同蛋白质模拟中的适用性。我们使用我们的方法表征了这些蛋白质中的集体运动,并分析了这些运动的突然变化。两者合计,我们的结果表明张量分析非常适合从MD轨迹中提取信息...“ /> <元名称=“关键字” content =“生化网络,计算分子生物学,机器学习,蛋白质折叠,蛋白质” /> rel =“ meta” type =“适用ation / atom + xml“ href =” http://dx.doi.org/10.1089%2Fcmb.2009.0167“ /> rel =” meta“ type =” application / rdf + json“ href =” http:// dx.doi.org/10.1089%2Fcmb.2009.0167“ /> rel =” meta“ type =” application / unixref + xml“ href =” http://dx.doi.org/10.1089%2Fcmb.2009.0167“ / > <元名称=“ MSSmartTagsPreventParsing” content =“ true

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