De novo antioxidant peptide design via machine learning and DFT studies

Sci Rep. 2024 Mar 18;14(1):6473. doi: 10.1038/s41598-024-57247-z.

Abstract

Antioxidant peptides (AOPs) are highly valued in food and pharmaceutical industries due to their significant role in human function. This study introduces a novel approach to identifying robust AOPs using a deep generative model based on sequence representation. Through filtration with a deep-learning classification model and subsequent clustering via the Butina cluster algorithm, twelve peptides (GP1-GP12) with potential antioxidant capacity were predicted. Density functional theory (DFT) calculations guided the selection of six peptides for synthesis and biological experiments. Molecular orbital representations revealed that the HOMO for these peptides is primarily localized on the indole segment, underscoring its pivotal role in antioxidant activity. All six synthesized peptides exhibited antioxidant activity in the DPPH assay, while the hydroxyl radical test showed suboptimal results. A hemolysis assay confirmed the non-hemolytic nature of the generated peptides. Additionally, an in silico investigation explored the potential inhibitory interaction between the peptides and the Keap1 protein. Analysis revealed that ligands GP3, GP4, and GP12 induced significant structural changes in proteins, affecting their stability and flexibility. These findings highlight the capability of machine learning approaches in generating novel antioxidant peptides.

Keywords: Antioxidant peptides; DFT calculation; De novo design; Deep learning; Machine learning; Molecular dynamics simulations.

MeSH terms

  • Antioxidants* / chemistry
  • Antioxidants* / pharmacology
  • Humans
  • Kelch-Like ECH-Associated Protein 1
  • Machine Learning
  • NF-E2-Related Factor 2*
  • Peptides / chemistry
  • Peptides / pharmacology

Substances

  • Antioxidants
  • Kelch-Like ECH-Associated Protein 1
  • NF-E2-Related Factor 2
  • Peptides