Abstract
Free energy calculations are revolutionizing early-stage drug-discovery campaigns. Robust free energy methods can rapidly provide accurate on-target and off-target potency predictions to identify promising chemical matter for synthesis, thus, inspiring further rounds of ideation and optimization. Here, we present a free energy framework for efficiently achieving kinome-wide selectivity that led to the discovery of novel selective Wee1 kinase inhibitors. With ligand-based relative binding free energy calculations, multiple novel promising scaffolds were rapidly identified. With protein residue mutation free energy calculations that perturbed the Wee1 gatekeeper residue, off-target liabilities across the kinome of these promising series were efficiently reduced. With judicious identification of a selectivity handle, applying this computational strategy could effectively streamline the optimization of on-target and off-target profiles, thereby accelerating drug discovery timelines and decreasing unanticipated off-target toxicities.
Supplementary materials
Title
Supplementary Information
Description
Supplementary Information contains location of subpanel kinases on a phylogenetic tree of the human kinome, more detailed simulation results and experimental procedures and characterization data for proprietary compounds.
Actions
Title
Supplementary Information - Gatekeeper assignments
Description
csv containing kinase gatekeeper assignments (Dataset 1)
Actions