Nature Communications (Nov 2024)

Personalised antimicrobial susceptibility testing with clinical prediction modelling informs appropriate antibiotic use

  • Alex Howard,
  • David M. Hughes,
  • Peter L. Green,
  • Anoop Velluva,
  • Alessandro Gerada,
  • Simon Maskell,
  • Iain E. Buchan,
  • William Hope

DOI
https://doi.org/10.1038/s41467-024-54192-3
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 13

Abstract

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Abstract Antimicrobial susceptibility testing is a key weapon against antimicrobial resistance. Diagnostic microbiology laboratories use one-size-fits-all testing approaches that are often imprecise, inefficient, and inequitable. Here, we report a personalised approach that adapts laboratory testing for urinary tract infection to maximise the number of appropriate treatment options for each patient. We develop and assess susceptibility prediction models for 12 antibiotics on real-world healthcare data using an individual-level simulation study. When combined with decision thresholds that prioritise selection of World Health Organisation Access category antibiotics (those least likely to induce antimicrobial resistance), the personalised approach delivers more susceptible results (results that encourage prescription of that antibiotic) per specimen for Access category antibiotics than a standard testing approach, without compromising provision of susceptible results overall. Here, we show that personalised antimicrobial susceptibility testing could help tackle antimicrobial resistance by safely providing more Access category antibiotic treatment options to clinicians managing urinary tract infection.