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Optimizing Drug Design by Merging Generative AI With Active Learning Frameworks

Biomolecules 2023-05-11 v1 Artificial Intelligence Machine Learning

Abstract

Traditional drug discovery programs are being transformed by the advent of machine learning methods. Among these, Generative AI methods (GM) have gained attention due to their ability to design new molecules and enhance specific properties of existing ones. However, current GM methods have limitations, such as low affinity towards the target, unknown ADME/PK properties, or the lack of synthetic tractability. To improve the applicability domain of GM methods, we have developed a workflow based on a variational autoencoder coupled with active learning steps. The designed GM workflow iteratively learns from molecular metrics, including drug likeliness, synthesizability, similarity, and docking scores. In addition, we also included a hierarchical set of criteria based on advanced molecular modeling simulations during a final selection step. We tested our GM workflow on two model systems, CDK2 and KRAS. In both cases, our model generated chemically viable molecules with a high predicted affinity toward the targets. Particularly, the proportion of high-affinity molecules inferred by our GM workflow was significantly greater than that in the training data. Notably, we also uncovered novel scaffolds significantly dissimilar to those known for each target. These results highlight the potential of our GM workflow to explore novel chemical space for specific targets, thereby opening up new possibilities for drug discovery endeavors.

Keywords

Cite

@article{arxiv.2305.06334,
  title  = {Optimizing Drug Design by Merging Generative AI With Active Learning Frameworks},
  author = {Isaac Filella-Merce and Alexis Molina and Marek Orzechowski and Lucía Díaz and Yang Ming Zhu and Julia Vilalta Mor and Laura Malo and Ajay S Yekkirala and Soumya Ray and Victor Guallar},
  journal= {arXiv preprint arXiv:2305.06334},
  year   = {2023}
}
R2 v1 2026-06-28T10:31:21.488Z