English

Directly Optimizing for Synthesizability in Generative Molecular Design using Retrosynthesis Models

Biomolecules 2024-07-18 v1

Abstract

Synthesizability in generative molecular design remains a pressing challenge. Existing methods to assess synthesizability span heuristics-based methods, retrosynthesis models, and synthesizability-constrained molecular generation. The latter has become increasingly prevalent and proceeds by defining a set of permitted actions a model can take when generating molecules, such that all generations are anchored in "synthetically-feasible" chemical transformations. To date, retrosynthesis models have been mostly used as a post-hoc filtering tool as their inference cost remains prohibitive to use directly in an optimization loop. In this work, we show that with a sufficiently sample-efficient generative model, it is straightforward to directly optimize for synthesizability using retrosynthesis models in goal-directed generation. Under a heavily-constrained computational budget, our model can generate molecules satisfying a multi-parameter drug discovery optimization task while being synthesizable, as deemed by the retrosynthesis model.

Keywords

Cite

@article{arxiv.2407.12186,
  title  = {Directly Optimizing for Synthesizability in Generative Molecular Design using Retrosynthesis Models},
  author = {Jeff Guo and Philippe Schwaller},
  journal= {arXiv preprint arXiv:2407.12186},
  year   = {2024}
}
R2 v1 2026-06-28T17:43:50.166Z