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SemlaFlow -- Efficient 3D Molecular Generation with Latent Attention and Equivariant Flow Matching

About

Methods for jointly generating molecular graphs along with their 3D conformations have gained prominence recently due to their potential impact on structure-based drug design. Current approaches, however, often suffer from very slow sampling times or generate molecules with poor chemical validity. Addressing these limitations, we propose Semla, a scalable E(3)-equivariant message passing architecture. We further introduce an unconditional 3D molecular generation model, SemlaFlow, which is trained using equivariant flow matching to generate a joint distribution over atom types, coordinates, bond types and formal charges. Our model produces state-of-the-art results on benchmark datasets with as few as 20 sampling steps, corresponding to a two order-of-magnitude speedup compared to state-of-the-art. Furthermore, we highlight limitations of current evaluation methods for 3D generation and propose new benchmark metrics for unconditional molecular generators. Finally, using these new metrics, we compare our model's ability to generate high quality samples against current approaches and further demonstrate SemlaFlow's strong performance.

Ross Irwin, Alessandro Tibo, Jon Paul Janet, Simon Olsson• 2024

Related benchmarks

TaskDatasetResultRank
3D Molecule GenerationQM9 (test)--
55
Molecular GenerationQM9
Validity99
30
3D Molecule GenerationGEOM-DRUG (test)
Atom Stability (%)99.8
22
3D Molecule GenerationGEOM Drugs
Atom. Stability99.8
21
De novo 3D molecule generationQM9
FCD3D1.127
12
Molecule GenerationQM9 (test)
Atom Stability99.9
9
Molecular GenerationGEOM Drugs
Validity93
9
Molecular GenerationGEOM-DRUGS (test)
Atom Stability99.8
4
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