Rydzewski J, Nowak W
Institute of Physics, Faculty of Physics, Astronomy and Informatics, Nicolaus Copernicus University, Grudziadzka 5, 87-100 Torun, Poland.
J Chem Phys. 2015 Sep 28;143(12):124101. doi: 10.1063/1.4931181.
Ligand diffusion through a protein interior is a fundamental process governing biological signaling and enzymatic catalysis. A complex topology of channels in proteins leads often to difficulties in modeling ligand escape pathways by classical molecular dynamics simulations. In this paper, two novel memetic methods for searching the exit paths and cavity space exploration are proposed: Memory Enhanced Random Acceleration (MERA) Molecular Dynamics (MD) and Immune Algorithm (IA). In MERA, a pheromone concept is introduced to optimize an expulsion force. In IA, hybrid learning protocols are exploited to predict ligand exit paths. They are tested on three protein channels with increasing complexity: M2 muscarinic G-protein-coupled receptor, enzyme nitrile hydratase, and heme-protein cytochrome P450cam. In these cases, the memetic methods outperform simulated annealing and random acceleration molecular dynamics. The proposed algorithms are general and appropriate in all problems where an accelerated transport of an object through a network of channels is studied.
配体在蛋白质内部的扩散是一个控制生物信号传导和酶催化作用的基本过程。蛋白质中复杂的通道拓扑结构常常导致利用经典分子动力学模拟来构建配体逃逸路径模型时出现困难。本文提出了两种用于搜索出口路径和探索腔空间的新型混合算法:记忆增强随机加速(MERA)分子动力学(MD)和免疫算法(IA)。在MERA中,引入了信息素概念来优化排出力。在IA中,利用混合学习协议来预测配体出口路径。它们在三个复杂度不断增加的蛋白质通道上进行了测试:M2毒蕈碱型G蛋白偶联受体、腈水合酶和血红素蛋白细胞色素P450cam。在这些情况下,混合算法的性能优于模拟退火算法和随机加速分子动力学算法。所提出的算法具有通用性,适用于所有研究物体通过通道网络进行加速传输的问题。