Learning Neural Generative Dynamics for Molecular Conformation Generation
About
We study how to generate molecule conformations (i.e., 3D structures) from a molecular graph. Traditional methods, such as molecular dynamics, sample conformations via computationally expensive simulations. Recently, machine learning methods have shown great potential by training on a large collection of conformation data. Challenges arise from the limited model capacity for capturing complex distributions of conformations and the difficulty in modeling long-range dependencies between atoms. Inspired by the recent progress in deep generative models, in this paper, we propose a novel probabilistic framework to generate valid and diverse conformations given a molecular graph. We propose a method combining the advantages of both flow-based and energy-based models, enjoying: (1) a high model capacity to estimate the multimodal conformation distribution; (2) explicitly capturing the complex long-range dependencies between atoms in the observation space. Extensive experiments demonstrate the superior performance of the proposed method on several benchmarks, including conformation generation and distance modeling tasks, with a significant improvement over existing generative models for molecular conformation sampling.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Conformer ensemble generation | GEOM-DRUGS (test) | Coverage R Mean (%)91.25 | 12 | |
| Conformer ensemble generation | GEOM-QM9 (test) | COV-R Mean75.45 | 10 | |
| Conformation Generation | GEOM-QM9 | Mean COV-R78.05 | 8 | |
| Conformation Generation | GEOM-QM9 Domain Generalization | Coverage Recall Mean78.05 | 7 | |
| Conformer ensemble generation | QM9 GEOM (test) | COV-R Mean0.6947 | 5 |