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A Local Rigid Body Framework for Global Optimization of Biomolecules

机译:用于生物分子全局优化的局部刚体框架

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We present a local rigid body framework for simulations of biomolecules. In this framework, arbritrary sets of atoms may be treated as rigid bodies. Such groupings reduce the number of degrees of freedom, which can result in a significant reduction of computational time. As benchmarks, we consider global optimization for the tryptophan zipper (trpzip 1, 1LEO; using the CHARMM force field) and chignolin (1UAO; using the AMBER force field). We use a basin-hopping algorithm to find the global minima and compute the mean first encounter time from random starting configurations with and without the local rigid body framework. Minimal groupings are used, where only peptide bonds, termini, and side chain rings are considered rigid. Finding the global minimum is 4.2 and 2.5 times faster, respectively, for trpzip 1 and chignolin, within the local rigid body framework. We further compare O(10~5) low-lying local minima to the fully relaxed unconstrained representation for trpzip 1 at different levels of rigidification. The resulting Pearson correlation coefficients, and thus the apparent intrinsic rigidity of the various groups, appear in the following order: side chain rings >termini >trigonal planar centers ≥ peptide bonds side chains. This approach is likely to be even more beneficial for structure prediction in larger biomolecules.
机译:我们提出了一个用于模拟生物分子的局部刚体框架。在此框架中,原子的任意集合可被视为刚体。这样的分组减少了自由度的数量,这可以导致计算时间的显着减少。作为基准,我们考虑对色氨酸拉链(trpzip 1,1LEO;使用CHARMM力场)和chignolin(1UAO;使用AMBER力场)进行全局优化。我们使用盆地跳跃算法来找到全局最小值,并从具有和不具有局部刚体框架的随机起始配置中计算出平均首次遇到时间。使用最小的分组,其中仅肽键,末端和侧链环被认为是刚性的。在局部刚体框架内,找到trpzip 1和chignolin的全局最小值分别快4.2倍和2.5倍。我们进一步将O(10〜5)的低洼局部最小值与不同刚性等级的trpzip 1的完全松弛无约束表示进行了比较。所得的Pearson相关系数以及各个组的表观固有刚性按以下顺序显示:侧链环>末端>三角平面中心≥肽键侧链。对于较大生物分子中的结构预测,这种方法可能更有益。

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