Discovering type I cis-AT polyketides through computational mass spectrometry and genome mining with Seq2PKS

Nat Commun. 2024 Jun 25;15(1):5356. doi: 10.1038/s41467-024-49587-1.

Abstract

Type 1 polyketides are a major class of natural products used as antiviral, antibiotic, antifungal, antiparasitic, immunosuppressive, and antitumor drugs. Analysis of public microbial genomes leads to the discovery of over sixty thousand type 1 polyketide gene clusters. However, the molecular products of only about a hundred of these clusters are characterized, leaving most metabolites unknown. Characterizing polyketides relies on bioactivity-guided purification, which is expensive and time-consuming. To address this, we present Seq2PKS, a machine learning algorithm that predicts chemical structures derived from Type 1 polyketide synthases. Seq2PKS predicts numerous putative structures for each gene cluster to enhance accuracy. The correct structure is identified using a variable mass spectral database search. Benchmarks show that Seq2PKS outperforms existing methods. Applying Seq2PKS to Actinobacteria datasets, we discover biosynthetic gene clusters for monazomycin, oasomycin A, and 2-aminobenzamide-actiphenol.

MeSH terms

  • Actinobacteria / genetics
  • Actinobacteria / metabolism
  • Algorithms
  • Biological Products / chemistry
  • Biological Products / metabolism
  • Data Mining / methods
  • Genome, Bacterial
  • Machine Learning
  • Mass Spectrometry* / methods
  • Multigene Family*
  • Polyketide Synthases* / genetics
  • Polyketide Synthases* / metabolism
  • Polyketides* / chemistry
  • Polyketides* / metabolism

Substances

  • Polyketides
  • Polyketide Synthases
  • Biological Products