Lwin Thur Zar, Luo Ray
Chemical and Material Physics Graduate Program, University of California, Irvine, CA 92697-3900, USA.
J Chem Phys. 2005 Nov 15;123(19):194904. doi: 10.1063/1.2102871.
An enhanced sampling method is proposed for ab initio protein folding simulations. The new method couples a high-resolution model for accuracy and a low-resolution model for efficiency. It aims to overcome the entropic barrier found in the exponentially large protein conformational space when a high-resolution model, such as an all-atom molecular mechanics force field, is used. The proposed method is designed to satisfy the detailed balance condition so that the Boltzmann distribution can be generated in all sampling trajectories in both high and low resolutions. The method was tested on model analytical energy functions and ab initio folding simulations of a beta-hairpin peptide. It was found to be more efficient than replica-exchange method that is used as its building block. Analysis with the analytical energy functions shows that the number of energy calculations required to find global minima and to converge mean potential energies is much fewer with the new method. Ergodic measure shows that the new method explores the conformational space more rapidly. We also studied imperfect low-resolution energy models and found that the introduction of errors in low-resolution models does decrease its sampling efficiency. However, a reasonable increase in efficiency is still observed when the global minima of the low-resolution models are in the vicinity of the global minimum basin of the high-resolution model. Finally, our ab initio folding simulation of the tested peptide shows that the new method is able to fold the peptide in a very short simulation time. The structural distribution generated by the new method at the equilibrium portion of the trajectory resembles that in the equilibrium simulation starting from the crystal structure.
提出了一种用于从头算蛋白质折叠模拟的增强采样方法。新方法将用于保证准确性的高分辨率模型和用于提高效率的低分辨率模型相结合。其目的是克服在使用高分辨率模型(如全原子分子力学力场)时,在指数级庞大的蛋白质构象空间中发现的熵垒。所提出的方法旨在满足细致平衡条件,以便在高分辨率和低分辨率的所有采样轨迹中都能生成玻尔兹曼分布。该方法在模型分析能量函数和β-发夹肽的从头算折叠模拟上进行了测试。结果发现它比作为其构建模块的副本交换方法更有效。对分析能量函数的分析表明,使用新方法找到全局最小值并使平均势能收敛所需的能量计算次数要少得多。遍历性测量表明,新方法能更快地探索构象空间。我们还研究了不完美的低分辨率能量模型,发现低分辨率模型中引入误差确实会降低其采样效率。然而,当低分辨率模型的全局最小值位于高分辨率模型全局最小盆地附近时,仍能观察到效率有合理的提高。最后,我们对测试肽的从头算折叠模拟表明,新方法能够在非常短的模拟时间内使肽折叠。新方法在轨迹平衡部分生成的结构分布类似于从晶体结构开始的平衡模拟中的分布。