基于聚类的偏向蒙特卡罗方法的蛋白质滴定曲线预测。

Arun V Sathanur, Nathan A Baker
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引用次数: 0

摘要

在这项工作中,我们开发了一种有效的方法来计算实体之间具有成对加性能量相互作用的系统中的集成平均。涉及构型空间全枚举的方法导致指数复杂度。采样方法如马尔可夫链蒙特卡罗(MCMC)算法已经被提出来解决这些问题的指数复杂性;然而,在某些情况下,实体之间存在显著的能量耦合,这种算法的效率可能会降低。为了提高MCMC的效率,我们采用了一种策略,利用相互作用能量矩阵中的簇结构对采样进行偏置。我们对有偏差的MCMC运行采用了两种不同的方案,并证明它们是有效的MCMC方案。我们使用合成系统和实际系统来展示与常规MCMC方法相比,我们的有偏差MCMC方法的性能有所提高。特别地,我们将这些算法应用于估计蛋白质中残基的质子化系综平均值和滴定曲线的问题。
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A clustering-based biased Monte Carlo approach to protein titration curve prediction.

In this work, we developed an efficient approach to compute ensemble averages in systems with pairwise-additive energetic interactions between the entities. Methods involving full enumeration of the configuration space result in exponential complexity. Sampling methods such as Markov Chain Monte Carlo (MCMC) algorithms have been proposed to tackle the exponential complexity of these problems; however, in certain scenarios where significant energetic coupling exists between the entities, the efficiency of the such algorithms can be diminished. We used a strategy to improve the efficiency of MCMC by taking advantage of the cluster structure in the interaction energy matrix to bias the sampling. We pursued two different schemes for the biased MCMC runs and show that they are valid MCMC schemes. We used both synthesized and real-world systems to show the improved performance of our biased MCMC methods when compared to the regular MCMC method. In particular, we applied these algorithms to the problem of estimating protonation ensemble averages and titration curves of residues in a protein.

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