Using Generative Modeling to Endow with Potency Initially Inert Compounds with Good Bioavailability and Low Toxicity

In the early stages of drug development, large chemical libraries are typically screened to identify compounds of promising potency against the chosen targets. Often, however, the resulting hit compounds tend to have poor drug metabolism and pharmacokinetics (DMPK), with negative developability feat...

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Veröffentlicht in:Journal of chemical information and modeling 2024-02, Vol.64 (3), p.590-596
Hauptverfasser: Horne, Robert I., Wilson-Godber, Jared, González Díaz, Alicia, Brotzakis, Z. Faidon, Seal, Srijit, Gregory, Rebecca C., Possenti, Andrea, Chia, Sean, Vendruscolo, Michele
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Sprache:eng
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Zusammenfassung:In the early stages of drug development, large chemical libraries are typically screened to identify compounds of promising potency against the chosen targets. Often, however, the resulting hit compounds tend to have poor drug metabolism and pharmacokinetics (DMPK), with negative developability features that may be difficult to eliminate. Therefore, starting the drug discovery process with a “null library”, compounds that have highly desirable DMPK properties but no potency against the chosen targets, could be advantageous. Here, we explore the opportunities offered by machine learning to realize this strategy in the case of the inhibition of α-synuclein aggregation, a process associated with Parkinson’s disease. We apply MolDQN, a generative machine learning method, to build an inhibitory activity against α-synuclein aggregation into an initial inactive compound with good DMPK properties. Our results illustrate how generative modeling can be used to endow initially inert compounds with desirable developability properties.
ISSN:1549-9596
1549-960X
1549-960X
DOI:10.1021/acs.jcim.3c01777