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首页> 外文期刊>Journal of chemical theory and computation: JCTC >CoCo-MD: A Simple and Effective Method for the Enhanced Sampling of Conformational Space
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CoCo-MD: A Simple and Effective Method for the Enhanced Sampling of Conformational Space

机译:Coco-MD:一种简单有效的化构象空间采样方法

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摘要

CoCo ("complementary coordinates") is a method for ensemble enrichment based on principal component analysis (PCA) that was developed originally for the investigation of NMR data. Here we investigate the potential of the CoCo method, in combination with molecular dynamics simulations (CoCo-MD), to be used more generally for the enhanced sampling of conformational space. Using the alanine penta-peptide as a model system, we find that an iterative workflow, interleaving short multiple-walker MD simulations with long-range jumps through conformational space informed by CoCo analysis, can increase the rate of sampling of conformational space up to 10 times for the same computational effort (total number of MD timesteps). Combined with the reservoir-REMD method, free energies can be readily calculated. An alternative, approximate but fast and practically useful, alternative approach to unbiasing CoCo-MD generated data is also described. Applied to cyclosporine A, we can achieve far greater conformational sampling than has been reported previously, using a fraction of the computational resource. Simulations of the maltose binding protein, begun from the "open" state, effectively sample the "closed" conformation associated with ligand binding. The PCA-based approach means that optimal collective variables to enhance sampling need not be defined in advance by the user but are identified automatically and are adaptive, responding to the characteristics of the developing ensemble. In addition, the approach does not require any adaptations to the associated MD code and is compatible with any conventional MD package.
机译:Coco(“互补坐标”)是基于原始成分分析(PCA)的富集的方法,该分析最初是用于调查NMR数据的研究。在这里,我们研究了COCO方法的潜力,与分子动力学模拟(COCO-MD)组合,以更普遍用于增强的构象空间采样。使用丙氨酸Penta-penta-peptide作为模型系统,我们发现一个迭代的工作流程,交织短的多人助手MD模拟,通过Coco分析了解的整体空间,可以增加一致空间的采样率最多10相同计算工作的时间(MD Simesteps的总数)。结合储层 - REMD方法,可以容易地计算自由能。还描述了替代,近似但快速且实际上是有用的,替代的非偏置CoCo-MD生成数据的方法。应用于环孢菌素A,我们可以实现比以前所报道的更大的构象采样,使用计算资源的一部分。麦芽糖结合蛋白的模拟,从“开放”状态开始,有效地样本与配体结合相关的“闭合”构象。基于PCA的方法意味着用户不需要预先定义增强采样的最佳集体变量,而是自动识别,并且是自适应的,响应显影集合的特征。此外,该方法不需要对相关MD代码的任何适应性,并且与任何传统MD包兼容。

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