Exploring use of unsupervised clustering to associate signaling profiles of GPCR ligands to clinical response.
Date
2019-09-01Author
Benredjem, BesmaGallion, Jonathan
Pelletier, Dennis
Dallaire, Paul
Charbonneau, Johanie
Cawkill, Darren
Nagi, Karim
Gosink, Mark
Lukasheva, Viktoryia
Jenkinson, Stephen
Ren, Yong
Somps, Christopher
Murat, Brigitte
Van Der Westhuizen, Emma
Le Gouill, Christian
Lichtarge, Olivier
Schmidt, Anne
Bouvier, Michel
Pineyro, Graciela
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Metadata
Show full item recordAbstract
Signaling diversity of G protein-coupled (GPCR) ligands provides novel opportunities to develop more effective, better-tolerated therapeutics. Taking advantage of these opportunities requires identifying which effectors should be specifically activated or avoided so as to promote desired clinical responses and avoid side effects. However, identifying signaling profiles that support desired clinical outcomes remains challenging. This study describes signaling diversity of mu opioid receptor (MOR) ligands in terms of logistic and operational parameters for ten different in vitro readouts. It then uses unsupervised clustering of curve parameters to: classify MOR ligands according to similarities in type and magnitude of response, associate resulting ligand categories with frequency of undesired events reported to the pharmacovigilance program of the Food and Drug Administration and associate signals to side effects. The ability of the classification method to associate specific in vitro signaling profiles to clinically relevant responses was corroborated using β2-adrenergic receptor ligands.
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