Biomedicines (Mar 2021)

Discovery through Machine Learning and Preclinical Validation of Novel Anti-Diabetic Peptides

  • Rory Casey,
  • Alessandro Adelfio,
  • Martin Connolly,
  • Audrey Wall,
  • Ian Holyer,
  • Nora Khaldi

DOI
https://doi.org/10.3390/biomedicines9030276
Journal volume & issue
Vol. 9, no. 3
p. 276

Abstract

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While there have been significant advances in drug discovery for diabetes mellitus over the past couple of decades, there is an opportunity and need for improved therapies. While type 2 diabetic patients better manage their illness, many of the therapeutics in this area are peptide hormones with lengthy sequences and a molecular structure that makes them challenging and expensive to produce. Using machine learning, we present novel anti-diabetic peptides which are less than 16 amino acids in length, distinct from human signalling peptides. We validate the capacity of these peptides to stimulate glucose uptake and Glucose transporter type 4 (GLUT4) translocation in vitro. In obese insulin-resistant mice, predicted peptides significantly lower plasma glucose, reduce glycated haemoglobin and even improve hepatic steatosis when compared to treatments currently in use in a clinical setting. These unoptimised, linear peptides represent promising candidates for blood glucose regulation which require further evaluation. Further, this indicates that perhaps we have overlooked the class of natural short linear peptides, which usually come with an excellent safety profile, as therapeutic modalities.

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