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Directly optimizing for synthesizability in generative molecular design using retrosynthesis models

Jeff Guo, Philippe Schwaller

2025Chemical Science22 citationsDOIOpen Access PDF

Abstract

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 multi-parameter drug discovery optimization tasks while being synthesizable, as deemed by retrosynthesis models. We reaffirm previous findings that common synthesizability heuristics (formulated based on known bio-active molecules) can be well correlated with retrosynthesis models' solvability, such that optimizing for the latter may not be an optimal allocation of computational resources. However, going further, we show that moving to other classes of molecules, such as functional materials, current heuristics' correlations diminish, such that there is an advantage to incorporating retrosynthesis models directly in the optimization loop. Finally, we demonstrate that over-reliance on synthesizability heuristics can overlook promising molecules. The codebase is available at https://github.com/schwallergroup/saturn.

Topics & Concepts

Retrosynthetic analysisGenerative grammarComputer scienceArtificial intelligenceMachine learningEngineeringChemistryStereochemistryTotal synthesisComputational Drug Discovery MethodsChemistry and Chemical EngineeringMachine Learning in Materials Science