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An improved hybrid global optimization method for protein tertiary structure prediction

机译:蛋白质三级结构预测的改进混合全局优化方法

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摘要

First principles approaches to the protein structure prediction problem must search through an enormous conformational space to identify low-energy, near-native structures. In this paper, we describe the formulation of the tertiary structure prediction problem as a nonlinear constrained minimization problem, where the goal is to minimize the energy of a protein conformation subject to constraints on torsion angles and interatomic distances. The core of the proposed algorithm is a hybrid global optimization method that combines the benefits of the αBB deterministic global optimization approach with conformational space annealing. These global optimization techniques employ a local minimization strategy that combines torsion angle dynamics and rotamer optimization to identify and improve the selection of initial conformations and then applies a sequential quadratic programming approach to further minimize the energy of the protein conformations subject to constraints. The proposed algorithm demonstrates the ability to identify both lower energy protein structures, as well as larger ensembles of low-energy conformations.
机译:解决蛋白质结构预测问题的首要原则必须在巨大的构象空间中进行搜索,以识别低能量,近自然结构。在本文中,我们将三级结构预测问题的描述描述为非线性约束的最小化问题,其目标是在受到扭转角和原子间距离约束的情况下,使蛋白质构象的能量最小化。该算法的核心是一种混合全局优化方法,该方法将αBB确定性全局优化方法的优势与构象空间退火相结合。这些全局优化技术采用局部最小化策略,该策略结合了扭转角动力学和旋转异构体优化来识别和改进初始构象的选择,然后应用顺序二次编程方法进一步使受约束的蛋白质构象的能量最小化。所提出的算法证明了识别低能量蛋白质结构以及低能量构象较大集合的能力。

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