Diffusion-based Molecule Generation with Informative Prior Bridges
About
AI-based molecule generation provides a promising approach to a large area of biomedical sciences and engineering, such as antibody design, hydrolase engineering, or vaccine development. Because the molecules are governed by physical laws, a key challenge is to incorporate prior information into the training procedure to generate high-quality and realistic molecules. We propose a simple and novel approach to steer the training of diffusion-based generative models with physical and statistics prior information. This is achieved by constructing physically informed diffusion bridges, stochastic processes that guarantee to yield a given observation at the fixed terminal time. We develop a Lyapunov function based method to construct and determine bridges, and propose a number of proposals of informative prior bridges for both high-quality molecule generation and uniformity-promoted 3D point cloud generation. With comprehensive experiments, we show that our method provides a powerful approach to the 3D generation task, yielding molecule structures with better quality and stability scores and more uniformly distributed point clouds of high qualities.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| 3D point cloud generation | ShapeNet Chair category (test) | MMD (CD)12.25 | 56 | |
| 3D Molecule Generation | QM9 (test) | Validity92 | 55 | |
| 3D point cloud generation | ShapeNet Airplane category (test) | -- | 55 | |
| 3D Molecule Generation | GEOM-DRUG (test) | Atom Stability (%)82.4 | 22 | |
| 3D Molecule Generation | GEOM Drugs | Atom. Stability82.4 | 21 | |
| Molecule Generation | QM9 | Validity A98.8 | 18 | |
| Molecule Generation | GEOM Drugs | A82.4 | 18 | |
| 3D Molecule Generation | QM9 unconditional generation | Atom Stability98.8 | 16 | |
| Unconditional molecular generation | QM9 standard | Atom Fidelity98.8 | 12 | |
| Unconditional molecular generation | GeomDrugs standard | Atom (%)82.4 | 8 |