Molecular geometric deep learning
About
Geometric deep learning (GDL) has demonstrated huge power and enormous potential in molecular data analysis. However, a great challenge still remains for highly efficient molecular representations. Currently, covalent-bond-based molecular graphs are the de facto standard for representing molecular topology at the atomic level. Here we demonstrate, for the first time, that molecular graphs constructed only from non-covalent bonds can achieve similar or even better results than covalent-bond-based models in molecular property prediction. This demonstrates the great potential of novel molecular representations beyond the de facto standard of covalent-bond-based molecular graphs. Based on the finding, we propose molecular geometric deep learning (Mol-GDL). The essential idea is to incorporate a more general molecular representation into GDL models. In our Mol-GDL, molecular topology is modeled as a series of molecular graphs, each focusing on a different scale of atomic interactions. In this way, both covalent interactions and non-covalent interactions are incorporated into the molecular representation on an equal footing. We systematically test Mol-GDL on fourteen commonly-used benchmark datasets. The results show that our Mol-GDL can achieve a better performance than state-of-the-art (SOTA) methods. Source code and data are available at https://github.com/CS-BIO/Mol-GDL.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Molecular property prediction | MUV (test) | ROC-AUC67.5 | 93 | |
| Classification | MoleculeNet BBBP (test) | ROC AUC0.728 | 59 | |
| molecule property prediction | HIV MoleculeNet (test) | AUROC80.8 | 40 | |
| Molecular property prediction | MoleculeNet BACE (test) | ROC-AUC86.3 | 16 | |
| Molecular property prediction | MoleculeNet SIDER (test) | ROC-AUC (%)83.1 | 16 | |
| Molecular property prediction | MoleculeNet ClinTox (test) | ROC-AUC96.6 | 16 | |
| Molecular property prediction | MoleculeNet Tox21 (test) | ROC-AUC79.4 | 16 | |
| Molecular Property Prediction (etac) | Polymer | RMSE0.086 | 10 | |
| Molecular Property Prediction (Ei) | Polymer | RMSE0.563 | 10 | |
| Molecular Property Prediction (Eea) | Polymer | RMSE0.552 | 10 |