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Poster
in
Workshop: Machine Learning and the Physical Sciences

Molecular Fingerprints for Robust and Efficient ML-Driven Molecular Generation

Ruslan Tazhigulov · Joshua Schiller · Jacob Oppenheim · Max Winston


Abstract:

We propose a novel molecular fingerprint-based variational autoencoder applied for molecular generation on real-world drug molecules. We define more suitable and pharma-relevant baseline metrics and tests, focusing on the generation of diverse, drug-like, novel small molecules and scaffolds. When we apply these molecular generation metrics to our novel model, we observe a substantial improvement in chemical synthetic accessibility (∆SAS = -0.83) and in computational efficiency up to 5.9x in comparison to an existing state-of-the-art SMILES-based architecture.

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