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优化蛋白质动力学和变构的弹性网络模型:空间和模态截止值及骨架刚性。

Optimising Elastic Network Models for Protein Dynamics and Allostery: Spatial and Modal Cut-offs and Backbone Stiffness.

机构信息

Department of Physics, University of York, UK.

Department of Physics, University of York, UK.

出版信息

J Mol Biol. 2022 Sep 15;434(17):167696. doi: 10.1016/j.jmb.2022.167696. Epub 2022 Jul 8.

DOI:10.1016/j.jmb.2022.167696
PMID:35810792
Abstract

The family of coarse-grained models for protein dynamics known as Elastic Network Models (ENMs) require careful choice of parameters to represent well experimental measurements or fully-atomistic simulations. The most basic ENM that represents each protein residue by a node at the position of its C-alpha atom, all connected by springs of equal stiffness, up to a cut-off in distance. Even at this level a choice is required of the optimum cut-off distance and the upper limit of elastic normal modes taken in any sum for physical properties, such as dynamic correlation or allosteric effects on binding. Additionally, backbone-enhanced ENM (BENM) may improve the model by allocating a higher stiffness to springs that connect along the protein backbone. This work reports on the effect of varying these three parameters (distance and mode cutoffs, backbone stiffness) on the dynamical structure of three proteins, Catabolite Activator Protein (CAP), Glutathione S-transferase (GST), and the SARS-CoV-2 Main Protease (M pro ). Our main results are: (1) balancing B-factor and dispersion-relation predictions, a near-universal optimal value of 8.5 Å is advisable for ENMs; (2) inhomogeneity in elasticity brings the first mode containing spatial structure not well-resolved by the ENM typically within the first 20; (3) the BENM only affects modes in the upper third of the distribution, and, additionally to the ENM, is only able to model the dispersion curve better in this vicinity; (4) BENM does not typically affect fluctuation-allostery, which also requires careful treatment of the effector binding to the host protein to capture.

摘要

粗粒化模型家族,即弹性网络模型(ENM),用于描述蛋白质动力学,其参数选择需要谨慎,以准确反映实验测量或全原子模拟的结果。最基本的 ENM 模型将每个蛋白质残基表示为其 Cα 原子位置的节点,所有节点通过具有相同刚度的弹簧连接,直到距离的截止值。即使在这种简化水平上,也需要选择最佳的截止距离和在任何物理性质(如动态相关性或变构效应对结合的影响)的总和中采用的弹性正则模态的上限。此外,增强型骨干弹性网络模型(BENM)可以通过为连接蛋白质骨干的弹簧分配更高的刚度来改进模型。本工作报告了这三个参数(距离和模态截止值、骨干刚度)变化对三种蛋白质(CAP、GST 和 SARS-CoV-2 主蛋白酶(M pro ))动态结构的影响。我们的主要结果是:(1)平衡 B 因子和弥散关系预测,ENM 的近通用最优值为 8.5 Å;(2)弹性的非均匀性使得包含空间结构的第一模态通常不能很好地由 ENM 分辨,通常在前十个模态中;(3)BENM 仅影响分布的上三分之一的模态,并且除了 ENM 之外,仅能在该附近更好地模拟弥散曲线;(4)BENM 通常不会影响波动变构,这也需要仔细处理效应物与宿主蛋白的结合以捕获。

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