Waste to resource: Mining antimicrobial peptides in sludge from metagenomes using machine learning

Environ Int. 2024 Apr:186:108574. doi: 10.1016/j.envint.2024.108574. Epub 2024 Mar 11.

Abstract

The emergence of antibiotic-resistant bacteria poses a huge threat to the treatment of infections. Antimicrobial peptides are a class of short peptides that widely exist in organisms and are considered as potential substitutes for traditional antibiotics. Here, we use metagenomics combined with machine learning to find antimicrobial peptides from environmental metagenomes and successfully obtained 16,044,909 predicted AMPs. We compared the abundance of potential antimicrobial peptides in natural environments and engineered environments, and found that engineered environments also have great potential. Further, we chose sludge as a typical engineered environmental sample, and tried to mine antimicrobial peptides from it. Through metaproteome analysis and correlation analysis, we mined 27 candidate AMPs from sludge. We successfully synthesized 25 peptides by chemical synthesis, and experimentally verified that 21 peptides had antibacterial activity against the 4 strains tested. Our work highlights the potential for mining new antimicrobial peptides from engineered environments and demonstrates the effectiveness of mining antimicrobial peptides from sludge.

Keywords: Antimicrobial peptides; Machine learning; Metagenome; Sludge.

MeSH terms

  • Anti-Bacterial Agents / pharmacology
  • Antimicrobial Peptides* / pharmacology
  • Bacteria / drug effects
  • Machine Learning*
  • Metagenome*
  • Metagenomics
  • Sewage* / microbiology

Substances

  • Sewage
  • Antimicrobial Peptides
  • Anti-Bacterial Agents