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首页> 外文期刊>Journal of Computational Chemistry: Organic, Inorganic, Physical, Biological >Pairwise Decomposition of an MMGBSA Energy Function for Computational Protein Design
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Pairwise Decomposition of an MMGBSA Energy Function for Computational Protein Design

机译:用于蛋白质设计的MMGBSA能量函数的成对分解

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摘要

Computational protein design (CPD) aims at predicting new proteins or modifying existing ones. The computational challenge is huge as it requires exploring an enormous sequence and conformation space. The difficulty can be reduced by considering a fixed backbone and a discrete set of sidechain conformations. Another common strategy consists in precalculating a pairwise energy matrix, from which the energy of any sequence/conformation can be quickly obtained. In this work, we examine the pairwise decomposition of protein MMGBSA energy functions from a general theoretical perspective, and an implementation proposed earlier for CPD. It includes a Generalized Born term, whose manybody character is overcome using an effective dielectric environment, and a Surface Area term, for which we present an improved pairwise decomposition. A detailed evaluation of the error introduced by the decomposition on the different energy components is performed. We show that the error remains reasonable, compared to other uncertainties.
机译:计算蛋白质设计(CPD)旨在预测新蛋白质或修饰现有蛋白质。计算挑战是巨大的,因为它需要探索巨大的序列和构象空间。通过考虑固定的骨架和离散的侧链构象集可以降低难度。另一种常见策略是预先计算成对的能量矩阵,从中可以快速获得任何序列/构象的能量。在这项工作中,我们从一般的理论角度研究了蛋白质MMGBSA能量函数的成对分解,以及较早提出的CPD实现方案。它包括一个广义的Born术语(使用有效的介电环境可以克服许多特性)和一个Surface Area术语,为此我们提出了一种改进的成对分解方法。对分解对不同能量分量引入的误差进行了详细评估。与其他不确定性相比,我们表明该误差仍然合理。

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