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DeLA-DrugSelf: Empowering multi-objective de novo design through SELFIES molecular representation

Domenico Alberga, G. Lamanna, Giovanni Graziano, Pietro Delre, Maria Cristina Lomuscio, Nicola Corriero, Alessia Ligresti, Dritan Siliqi, Michele Saviano, Marialessandra Contino, Angela Stefanachi, Giuseppe Felice Mangiatordi

2024Computers in Biology and Medicine19 citationsDOIOpen Access PDF

Abstract

In this paper, we introduce DeLA-DrugSelf, an upgraded version of DeLA-Drug [J. Chem. Inf. Model. 62 (2022) 1411-1424], which incorporates essential advancements for automated multi-objective de novo design. Unlike its predecessor, which relies on SMILES notation for molecular representation, DeLA-DrugSelf employs a novel and robust molecular representation string named SELFIES (SELF-referencing Embedded String). The generation process in DeLA-DrugSelf not only involves substitutions to the initial string representing the starting query molecule but also incorporates insertions and deletions. This enhancement makes DeLA-DrugSelf significantly more adept at executing data-driven scaffold decoration and lead optimization strategies. Remarkably, DeLA-DrugSelf explicitly addresses the SELFIES-related collapse issue, considering only collapse-free compounds during generation. These compounds undergo a rigorous quality metrics evaluation, highlighting substantial advancements in terms of drug-likeness, uniqueness, and novelty compared to the molecules generated by the previous version of the algorithm. To evaluate the potential of DeLA-DrugSelf as a mutational operator within a genetic algorithm framework for multi-objective optimization, we employed a fitness function based on Pareto dominance. Our objectives focused on target-oriented properties aimed at optimizing known cannabinoid receptor 2 (CB2R) ligands. The results obtained indicate that DeLA-DrugSelf, available as a user-friendly web platform (https://www.ba.ic.cnr.it/softwareic/delaself/), can effectively contribute to the data-driven optimization of starting bioactive molecules based on user-defined parameters.

Topics & Concepts

Computer scienceRepresentation (politics)Theoretical computer scienceArtificial intelligencePoliticsLawPolitical scienceComputational Drug Discovery MethodsMachine Learning in Materials SciencePharmacogenetics and Drug Metabolism
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