Towards Predicting Equilibrium Distributions for Molecular Systems with Deep Learning
Abstract
Advances in deep learning have greatly improved structure prediction of molecules. However, many macroscopic observations that are important for real-world applications are not functions of a single molecular structure, but rather determined from the equilibrium distribution of structures. Traditional methods for obtaining these distributions, such as molecular dynamics simulation, are computationally expensive and often intractable. In this paper, we introduce a novel deep learning framework, called Distributional Graphormer (DiG), in an attempt to predict the equilibrium distribution of molecular systems. Inspired by the annealing process in thermodynamics, DiG employs deep neural networks to transform a simple distribution towards the equilibrium distribution, conditioned on a descriptor of a molecular system, such as a chemical graph or a protein sequence. This framework enables efficient generation of diverse conformations and provides estimations of state densities. We demonstrate the performance of DiG on several molecular tasks, including protein conformation sampling, ligand structure sampling, catalyst-adsorbate sampling, and property-guided structure generation. DiG presents a significant advancement in methodology for statistically understanding molecular systems, opening up new research opportunities in molecular science.
Cite
@article{arxiv.2306.05445,
title = {Towards Predicting Equilibrium Distributions for Molecular Systems with Deep Learning},
author = {Shuxin Zheng and Jiyan He and Chang Liu and Yu Shi and Ziheng Lu and Weitao Feng and Fusong Ju and Jiaxi Wang and Jianwei Zhu and Yaosen Min and He Zhang and Shidi Tang and Hongxia Hao and Peiran Jin and Chi Chen and Frank Noé and Haiguang Liu and Tie-Yan Liu},
journal= {arXiv preprint arXiv:2306.05445},
year = {2023}
}
Comments
80 pages, 11 figures