A Generative Model for Molecular Distance Geometry
About
Great computational effort is invested in generating equilibrium states for molecular systems using, for example, Markov chain Monte Carlo. We present a probabilistic model that generates statistically independent samples for molecules from their graph representations. Our model learns a low-dimensional manifold that preserves the geometry of local atomic neighborhoods through a principled learning representation that is based on Euclidean distance geometry. In a new benchmark for molecular conformation generation, we show experimentally that our generative model achieves state-of-the-art accuracy. Finally, we show how to use our model as a proposal distribution in an importance sampling scheme to compute molecular properties.
Gregor N. C. Simm, Jos\'e Miguel Hern\'andez-Lobato• 2019
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Conformer ensemble generation | GEOM-DRUGS (test) | Coverage R Mean (%)85.33 | 12 | |
| Conformer ensemble generation | GEOM-QM9 (test) | COV-R Mean88.7 | 10 | |
| Conformation Generation | GEOM-QM9 | Mean COV-R73.33 | 8 | |
| Conformation Generation | GEOM-QM9 Domain Generalization | Coverage Recall Mean73.33 | 7 | |
| Conformer ensemble generation | QM9 GEOM (test) | COV-R Mean0.7466 | 5 | |
| Molecular Conformation Generation | GEOM Drugs | COV-R Mean8.27 | 4 |
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