Atomic Trajectory Modeling with State Space Models for Biomolecular Dynamics
AI 摘要
ATMOS利用状态空间模型生成原子级别生物分子动力学轨迹,性能优于现有方法。
主要贡献
- 提出了基于状态空间模型(SSM)的生成框架ATMOS
- 集成了Pairformer和扩散模型以捕捉长程依赖和生成轨迹
- 在蛋白质单体和蛋白质-配体系统上取得了state-of-the-art的性能
方法论
ATMOS使用Pairformer捕获时间依赖,并使用扩散模型以自回归方式解码轨迹帧,从而生成原子轨迹。
原文摘要
Understanding the dynamic behavior of biomolecules is fundamental to elucidating biological function and facilitating drug discovery. While Molecular Dynamics (MD) simulations provide a rigorous physical basis for studying these dynamics, they remain computationally expensive for long timescales. Conversely, recent deep generative models accelerate conformation generation but are typically either failing to model temporal relationship or built only for monomeric proteins. To bridge this gap, we introduce ATMOS, a novel generative framework based on State Space Models (SSM) designed to generate atom-level MD trajectories for biomolecular systems. ATMOS integrates a Pairformer-based state transition mechanism to capture long-range temporal dependencies, with a diffusion-based module to decode trajectory frames in an autoregressive manner. ATMOS is trained across crystal structures from PDB and conformation trajectory from large-scale MD simulation datasets including mdCATH and MISATO. We demonstrate that ATMOS achieves state-of-the-art performance in generating conformation trajectories for both protein monomers and complex protein-ligand systems. By enabling efficient inference of atomic trajectory of motions, this work establishes a promising foundation for modeling biomolecular dynamics.