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Enhanced Sampling of the Molecular Potential Energy Surface Using Mutually Orthogonal Latin Squares: Application to Peptide Structures

机译:使用相互正交的拉丁方增强分子势能表面的采样:应用于肽结构。

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摘要

The computational identification of the optimal three-dimensional fold of even a small peptide chain from its sequence, without reference to other known structures, is a complex problem. There have been several attempts at solving this by sampling the potential energy surface of the molecule in a systematic manner. Here we present a new method to carry out the sampling, and to identify low energy conformers of the molecule. The method uses mutually orthogonal Latin squares to select (of the order of) n2 points from the multidimensional conformation space of size mn, where n is the number of dimensions (i.e., the number of conformational variables), and m specifies the fineness of the search grid. The sampling is accomplished by first calculating the value of the potential energy function at each one of the selected points. This is followed by analysis of these values of the potential energy to obtain the optimal value for each of the n-variables separately. We show that the set of the n-optimal values obtained in this manner specifies a low energy conformation of the molecule. Repeated application of the method identifies other low energy structures. The computational complexity of this algorithm scales as the fourth power of the size of the molecule. We applied this method to several small peptides, such as the neuropeptide enkephalin, and could identify a set of low energy conformations for each. Many of the structures identified by this method have also been previously identified and characterized by experiment and theory. We also compared the best structures obtained for the tripeptide (Ala)3 by the present method, with those obtained by an exhaustive grid search, and showed that the algorithm is successful in identifying all the low energy conformers of this molecule.
机译:在不参考其他已知结构的情况下,即使是一条小肽链的最佳三维折叠的计算鉴定也是一个复杂的问题。通过以系统的方式对分子的势能表面进行采样,已经进行了多种尝试来解决该问题。在这里,我们提出了一种进行采样并确定分子的低能构象体的新方法。该方法使用相互正交的拉丁方来从大小为m n 的多维构象空间中选择n个数量级为n 2 的点,其中n是维数(即构象变量的数量),而m指定搜索网格的精细度。通过首先计算每个选定点的势能函数的值来完成采样。接下来是对势能的这些值进行分析,以便分别获得每个n变量的最佳值。我们显示以这种方式获得的一组n最佳值指定了该分子的低能构象。重复应用该方法可以确定其他低能结构。该算法的计算复杂度与分子大小的四次方成正比。我们将此方法应用于几种小肽,例如神经肽脑啡肽,并且可以为每种肽鉴定一组低能构象。通过该方法鉴定的许多结构先前也已通过实验和理论鉴定并表征。我们还比较了通过本方法获得的三肽(Ala)3的最佳结构与通过详尽的网格搜索获得的最佳结构,并表明该算法成功地鉴定了该分子的所有低能构象体。

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