首页|Recent advances in protein conformation sampling by combining machine learning with molecular simulation

Recent advances in protein conformation sampling by combining machine learning with molecular simulation

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The rapid advancement and broad application of machine learning(ML)have driven a groundbreaking revolution in computational biology.One of the most cutting-edge and important applications of ML is its integration with molecular simulations to improve the sampling efficiency of the vast conformational space of large biomolecules.This review focuses on recent studies that utilize ML-based techniques in the exploration of protein conformational landscape.We first highlight the recent development of ML-aided enhanced sampling methods,including heuristic algorithms and neural networks that are designed to refine the selection of reaction coordinates for the construction of bias potential,or facilitate the exploration of the unsampled region of the energy landscape.Further,we review the development of autoencoder based methods that combine molecular simulations and deep learning to expand the search for protein conformations.Lastly,we discuss the cutting-edge methodologies for the one-shot generation of protein conformations with precise Boltzmann weights.Collectively,this review demonstrates the promising potential of machine learning in revolutionizing our insight into the complex conformational ensembles of proteins.

machine learningmolecular simulationprotein conformational spaceenhanced sampling

唐一鸣、杨中元、姚逸飞、周运、谈圆、王子超、潘瞳、熊瑞、孙俊力、韦广红

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Department of Physics,State Key Laboratory of Surface Physics,and Key Laboratory for Computational Physical Sciences(Ministry of Education),Shanghai 200438,China

国家重点研发计划国家自然科学基金国家自然科学基金上海市自然科学基金中国博士后科学基金

2023YFF1204402120740791237420822ZR14068002022M720815

2024

中国物理B(英文版)
中国物理学会和中国科学院物理研究所

中国物理B(英文版)

CSTPCDEI
影响因子:0.995
ISSN:1674-1056
年,卷(期):2024.33(3)
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