Exploring the conformational ensembles of protein-protein complex with transformer-based generative model

Author:

Wang JianminORCID,Wang Xun,Chu YanyiORCID,Li ChunyanORCID,Li Xue,Meng Xiangyu,Fang YitianORCID,No Kyoung Tai,Mao Jiashun,Zeng XiangxiangORCID

Abstract

Protein-protein interactions are the basis of many protein functions, and understanding the contact and conformational changes of protein-protein interactions is crucial for linking protein structure to biological function. Although difficult to detect experimentally, molecular dynamics (MD) simulations are widely used to study the conformational ensembles and dynamics of protein-protein complexes, but there are significant limitations in sampling efficiency and computational costs. In this study, a generative neural network was trained on protein-protein complex conformations obtained from molecular simulations to directly generate novel conformations with physical realism. We demonstrated the use of a deep learning model based on the transformer architecture to explore the conformational ensembles of protein-protein complexes through MD simulations. The results showed that the learned latent space can be used to generate unsampled conformations of protein-protein complexes for obtaining new conformations complementing pre-existing ones, which can be used as an exploratory tool for the analysis and enhancement of molecular simulations of protein-protein complexes.

Publisher

Cold Spring Harbor Laboratory

Reference60 articles.

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Application of Transformers in Cheminformatics;Journal of Chemical Information and Modeling;2024-05-30

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