Normal mode analysis of protein structure dynamics based on residue contact energy

Weitao Sun
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引用次数: 2

Abstract

Normal mode analysis is one of the important methods in the study of protein structural dynamics. NMA makes the harmonic approximation to the potential energy around an equilibrium configuration. Conventional normal mode methods consider residues as uniform particles and inter-particle force constants are all the same. However, the amino acid properties, such as hydrophobicity, hydrophilicity, and residue charge, etc., play key roles in the mutual interactions. The potential energy between different residue pairs should depend on amino acid types. In this work, an amino acid type related force field model is proposed based on residue contact energy. The Atom Distance criteria (ADC) model is used to judge residue contact relationship, rather than a constant cutoff distance between two Ca atoms. The elastic network is facilitated with more realistic force distribution so that structural vibration frequency/mode analysis are much more accurate. Numerical examples show that this new method can improve the calculation of crystal structure B-factor greatly.
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基于剩余接触能的蛋白质结构动力学正态分析
正态分析是研究蛋白质结构动力学的重要方法之一。NMA对平衡位形周围的势能作谐波近似。传统的正态方法将残差视为均匀粒子,粒子间的力常数都是相同的。然而,氨基酸的性质,如疏水性、亲水性和残基电荷等,在相互作用中起着关键作用。不同残基对之间的势能应取决于氨基酸类型。本文提出了基于残馀接触能的氨基酸型相关力场模型。原子距离准则(ADC)模型用于判断残余接触关系,而不是两个Ca原子之间的恒定截止距离。弹性网络具有更真实的受力分布,使结构振动频率/模态分析更加准确。数值算例表明,该方法可以大大提高晶体结构b因子的计算精度。
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