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Designing highly potent compounds using a chemical language model

Hengwei Chen, Jürgen Bajorath

2023Scientific Reports18 citationsDOIOpen Access PDF

Abstract

Compound potency prediction is a major task in medicinal chemistry and drug design. Inspired by the concept of activity cliffs (which encode large differences in potency between similar active compounds), we have devised a new methodology for predicting potent compounds from weakly potent input molecules. Therefore, a chemical language model was implemented consisting of a conditional transformer architecture for compound design guided by observed potency differences. The model was evaluated using a newly generated compound test system enabling a rigorous assessment of its performance. It was shown to predict known potent compounds from different activity classes not encountered during training. Moreover, the model was capable of creating highly potent compounds that were structurally distinct from input molecules. It also produced many novel candidate compounds not included in test sets. Taken together, the findings confirmed the ability of the new methodology to generate structurally diverse highly potent compounds.

Topics & Concepts

Computer scienceNatural language processingComputational biologyData scienceBiologyComputational Drug Discovery MethodsChemistry and Chemical EngineeringHistory and advancements in chemistry