| Literature DB >> 34165856 |
Michael Moret1, Moritz Helmstädter2, Francesca Grisoni1, Gisbert Schneider1, Daniel Merk3.
Abstract
Chemical language models enable de novo drug design without the requirement for explicit molecular construction rules. While such models have been applied to generate novel compounds with desired bioactivity, the actual prioritization and selection of the most promising computational designs remains challenging. In this work, we leveraged the probabilities learnt by chemical language models with the beam search algorithm as a model-intrinsic technique for automated molecule design and scoring. Prospective application of this method yielded three novel inverse agonists of retinoic acid receptor-related orphan receptors (RORs). Each design was synthesizable in three reaction steps and presented low-micromolar to nanomolar potency towards RORγ. This model-intrinsic sampling technique eliminates the strict need for external compound scoring functions, thereby further extending the applicability of generative artificial intelligence to data-driven drug discovery.Entities:
Keywords: de novo design; deep learning; drug discovery; neural network; nuclear receptor
Year: 2021 PMID: 34165856 DOI: 10.1002/anie.202104405
Source DB: PubMed Journal: Angew Chem Int Ed Engl ISSN: 1433-7851 Impact factor: 15.336