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使用独立回火的多尺度增强采样技术加速蛋白质的原子级模拟。

Accelerating atomistic simulations of proteins using multiscale enhanced sampling with independent tempering.

机构信息

Department of Chemistry, University of Massachusetts Amherst, Amherst, Massachusetts, USA.

Department of Biochemistry and Molecular Biology, University of Massachusetts Amherst, Amherst, Massachusetts, USA.

出版信息

J Comput Chem. 2021 Feb 15;42(5):358-364. doi: 10.1002/jcc.26461. Epub 2020 Dec 10.

Abstract

Efficient sampling of the conformational space is essential for quantitative simulations of proteins. The multiscale enhanced sampling (MSES) method accelerates atomistic sampling by coupling it to a coarse-grained (CG) simulation. Bias from coupling to the CG model is removed using Hamiltonian replica exchange, such that one could benefit simultaneously from the high accuracy of atomistic models and fast dynamics of CG ones. Here, we extend MSES to allow independent control of the effective temperatures of atomistic and CG simulations, by directly scaling the atomistic and CG Hamiltonians. The new algorithm, named MSES with independent tempering (MSES-IT), supports more sophisticated Hamiltonian and temperature replica exchange protocols to further improve the sampling efficiency. Using a small but nontrivial β-hairpin, we show that setting the effective temperature of CG model in all conditions to its melting temperature maximizes structural transition rates at the CG level and promotes more efficient replica exchange and diffusion in the condition space. As the result, MSES-IT drive faster reversible transitions at the atomic level and leads to significant improvement in generating converged conformational ensembles compared to the original MSES scheme.

摘要

对蛋白质进行定量模拟,高效采样构象空间至关重要。多尺度增强采样(MSES)方法通过将其与粗粒化(CG)模拟耦合来加速原子级采样。通过哈密顿 replica exchange 去除与 CG 模型耦合的偏差,从而可以同时受益于原子级模型的高精度和 CG 模型的快速动力学。在这里,我们通过直接缩放原子和 CG 哈密顿量,将 MSES 扩展到允许独立控制原子和 CG 模拟的有效温度。新算法名为具有独立温度调制的 MSES(MSES-IT),支持更复杂的哈密顿和温度 replica exchange 协议,以进一步提高采样效率。使用一个小但非平凡的β发夹,我们表明在所有条件下将 CG 模型的有效温度设置为其熔点可以最大化 CG 水平的结构转变率,并促进条件空间中更有效的 replica exchange 和扩散。结果,MSES-IT 促使原子级更快的可逆转变,并导致与原始 MSES 方案相比,在生成收敛构象系综方面有显著改善。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6c4c/9049768/dc2fdef4107c/nihms-1793443-f0001.jpg

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