Enhancing Molecular Property Predictions by Learning from Bond Modelling and Interactions
About
Molecule representation learning is crucial for understanding and predicting molecular properties. However, conventional atom-centric models, which treat chemical bonds merely as pairwise interactions, often overlook complex bond-level phenomena like resonance and stereoselectivity. This oversight limits their predictive accuracy for nuanced chemical behaviors. To address this limitation, we introduce \textbf{DeMol}, a dual-graph framework whose architecture is motivated by a rigorous information-theoretic analysis demonstrating the information gain from a bond-centric perspective. DeMol explicitly models molecules through parallel atom-centric and bond-centric channels. These are synergistically fused by multi-scale Double-Helix Blocks designed to learn intricate atom-atom, atom-bond, and bond-bond interactions. The framework's geometric consistency is further enhanced by a regularization term based on covalent radii to enforce chemically plausible structures. Comprehensive evaluations on diverse benchmarks, including PCQM4Mv2, OC20 IS2RE, QM9, and MoleculeNet, show that DeMol establishes a new state-of-the-art, outperforming existing methods. These results confirm the superiority of explicitly modelling bond information and interactions, paving the way for more robust and accurate molecular machine learning.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Molecular property prediction | QM9 (test) | mu0.024 | 229 | |
| Quantum Chemical Prediction | PCQM4M v2 (val) | MAE0.0603 | 89 | |
| molecule property prediction | MoleculeNet (scaffold split) | BBBP75.1 | 85 | |
| Initial Structure to Relaxed Energy | OC20 IS2RE (val) | Energy MAE (ID)0.3663 | 39 |