Machine-Learning-Guided Peptide Drug Discovery: Development of GLP-1 Receptor Agonists with Improved Drug Properties.
Jens Christian NielsenClaudia Hjo RringgaardMads Mo Rup NygaardAnita WesterLisbeth ElsterTrine PorsgaardRandi Bonke MikkelsenSilas RasmussenAndreas Nygaard MadsenMorten SchleinNiels VrangKristoffer RigboltLouise S Dalbo GePublished in: Journal of medicinal chemistry (2024)
Peptide-based drug discovery has surged with the development of peptide hormone-derived analogs for the treatment of diabetes and obesity. Machine learning (ML)-enabled quantitative structure-activity relationship (QSAR) approaches have shown great promise in small molecule drug discovery but have been less successful in peptide drug discovery due to limited data availability. We have developed a peptide drug discovery platform called streaMLine, enabling rigorous design, synthesis, screening, and ML-driven analysis of large peptide libraries. Using streaMLine, this study systematically explored secretin as a peptide backbone to generate potent, selective, and long-acting GLP-1R agonists with improved physicochemical properties. We synthesized and screened a total of 2688 peptides and applied ML-guided QSAR to identify multiple options for designing stable and potent GLP-1R agonists. One candidate, GUB021794, was profiled in vivo (S.C., 10 nmol/kg QD) and showed potent body weight loss in diet-induced obese mice and a half-life compatible with once-weekly dosing.
Keyphrases
- drug discovery
- machine learning
- weight loss
- structure activity relationship
- type diabetes
- big data
- molecular docking
- metabolic syndrome
- bariatric surgery
- cardiovascular disease
- artificial intelligence
- emergency department
- molecular dynamics
- mass spectrometry
- high resolution
- high throughput
- body mass index
- gastric bypass
- combination therapy