Program in Biophysics, Stanford University, USA.
Methods. 2010 Sep;52(1):99-105. doi: 10.1016/j.ymeth.2010.06.002. Epub 2010 Jun 4.
Simulating protein folding has been a challenging problem for decades due to the long timescales involved (compared with what is possible to simulate) and the challenges of gaining insight from the complex nature of the resulting simulation data. Markov State Models (MSMs) present a means to tackle both of these challenges, yielding simulations on experimentally relevant timescales, statistical significance, and coarse grained representations that are readily humanly understandable. Here, we review this method with the intended audience of non-experts, in order to introduce the method to a broader audience. We review the motivations, methods, and caveats of MSMs, as well as some recent highlights of applications of the method. We conclude by discussing how this approach is part of a paradigm shift in how one uses simulations, away from anecdotal single-trajectory approaches to a more comprehensive statistical approach.
由于涉及的时间尺度较长(与可能进行的模拟相比),以及从复杂的模拟数据中获得洞察力的挑战,蛋白质折叠的模拟一直是一个具有挑战性的问题。马尔可夫状态模型(MSM)提供了一种解决这两个挑战的方法,可以在实验相关的时间尺度上进行模拟,具有统计学意义,并且可以进行粗粒化表示,这是人类易于理解的。在这里,我们将向非专业人士介绍这种方法,以便将该方法介绍给更广泛的受众。我们回顾了 MSM 的动机、方法和注意事项,以及该方法的一些最新应用亮点。最后,我们讨论了这种方法如何成为一种范式转变的一部分,即人们如何使用模拟,从轶事性的单轨迹方法转变为更全面的统计方法。