An exploration of descriptive machine learning approaches for antimicrobial resistance: Multidrug resistance patterns in Salmonella enterica

Prev Vet Med. 2024 Sep:230:106261. doi: 10.1016/j.prevetmed.2024.106261. Epub 2024 Jul 2.

Abstract

Salmonellosis is one of the most common foodborne diseases worldwide, with the ability to infect humans and animals. Antimicrobial resistance (AMR) and, particularly, multidrug resistance (MDR) among Salmonella enterica poses a risk to human health. Antimicrobial use (AMU) regulations in livestock have been implemented to reduce AMR and MDR in foodborne pathogens. In this study, we used an integrated machine learning approach to investigate Salmonella AMR and MDR patterns before and after the implementation of AMU restrictions in agriculture in the United States. For this purpose, Salmonella isolates from cattle in the National Antimicrobial Resistance Monitoring System (NARMS) dataset were analysed using three descriptive models consisting of hierarchical clustering, network analysis, and association rule mining. The analysis showed the impact of the United States' 2012 extra-label cephalosporin regulations on AMR trends and revealed a distinctive MDR pattern in the Dublin serotype. The results also indicated that each descriptive model provides insights on a specific aspect of resistance patterns and, therefore, combining these approaches make it possible to gain a deeper understanding of AMR.

Keywords: Antimicrobial resistance; Machine learning; Multidrug resistance; Salmonella enterica.

MeSH terms

  • Animals
  • Anti-Bacterial Agents* / pharmacology
  • Cattle
  • Cattle Diseases / drug therapy
  • Cattle Diseases / microbiology
  • Drug Resistance, Multiple, Bacterial*
  • Machine Learning*
  • Salmonella Infections, Animal* / microbiology
  • Salmonella enterica* / drug effects
  • United States

Substances

  • Anti-Bacterial Agents