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Improving the iterative Linear Interaction Energy approach using automated recognition of configurational transitions

机译:通过自动识别构型转变来改进迭代线性相互作用能方法

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摘要

Recently an iterative method was proposed to enhance the accuracy and efficiency of ligand-protein binding affinity prediction through linear interaction energy (LIE) theory. For ligand binding to flexible Cytochrome P450s (CYPs), this method was shown to decrease the root-mean-square error and standard deviation of error prediction by combining interaction energies of simulations starting from different conformations. Thereby, different parts of protein-ligand conformational space are sampled in parallel simulations. The iterative LIE framework relies on the assumption that separate simulations explore different local parts of phase space, and do not show transitions to other parts of configurational space that are already covered in parallel simulations. In this work, a method is proposed to (automatically) detect such transitions during the simulations that are performed to construct LIE models and to predict binding affinities. Using noise-canceling techniques and splines to fit time series of the raw data for the interaction energies, transitions during simulation between different parts of phase space are identified. Boolean selection criteria are then applied to determine which parts of the interaction energy trajectories are to be used as input for the LIE calculations. Here we show that this filtering approach benefits the predictive quality of our previous CYP 2D6-aryloxypropanolamine LIE model. In addition, an analysis is performed of the gain in computational efficiency that can be obtained from monitoring simulations using the proposed filtering method and by prematurely terminating simulations accordingly.Electronic supplementary materialThe online version of this article (doi:10.1007/s00894-015-2883-y) contains supplementary material, which is available to authorized users.
机译:最近,提出了一种迭代方法,以通过线性相互作用能(LIE)理论提高配体-蛋白结合亲和力预测的准确性和效率。对于配体与柔性细胞色素P450(CYP)的结合,通过结合不同构象的模拟相互作用能,该方法可降低均方根误差和误差预测的标准偏差。因此,在平行模拟中对蛋白质-配体构象空间的不同部分进行了采样。迭代LIE框架基于以下假设:单独的仿真探索相空间的不同局部部分,并且不显示到并行仿真中已经涵盖的配置空间其他部分的过渡。在这项工作中,提出了一种方法(自动)来检测模拟过程中的这种过渡,以构建LIE模型并预测结合亲和力。通过使用降噪技术和样条曲线来拟合原始数据的时间序列以获取相互作用能,可以确定相空​​间不同部分之间模拟过程中的过渡。然后应用布尔选择标准来确定交互能量轨迹的哪些部分将被用作LIE计算的输入。在这里,我们证明了这种过滤方法有益于我们先前的CYP 2D6-芳氧基丙醇胺LIE模型的预测质量。此外,还对计算效率的增益进行了分析,该增益可以通过使用建议的滤波方法从监视仿真中并通过相应地提前终止仿真来获得。电子补充材料本文的在线版本(doi:10.1007 / s00894-015-2883) -y)包含补充材料,授权用户可以使用。

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