Machine learning prediction of resistance to subinhibitory antimicrobial concentrations from Escherichia coli genomes
bySam Benkwitz-Bedford, Martin Palm, Talip Yasir Demirtas, Ville Mustonen,
Anne Farewell, Jonas Warringer, Leopold Parts, Danesh Moradigaravand
Research ArticleYear:2021
Extra Information
Msystems, 6(4)
Abstract
Escherichia coli is an important cause of bacterial infections
worldwide, with multidrug-resistant strains incurring substantial costs
on human lives. Besides therapeutic concentrations of antimicrobials in
health care settings, the presence of subinhibitory antimicrobial
residues in the environment and in clinics selects for antimicrobial
resistance (AMR), but the underlying genetic repertoire is less well
understood. Here, we used machine learning to predict the population
doubling time and cell growth yield of 1,407 genetically diverse E. coli
strains expanding under exposure to three subinhibitory concentrations
of six classes of antimicrobials from single-nucleotide genetic
variants, accessory gene variation, and the presence of known AMR genes.
We predicted cell growth yields in the held-out test data with an
average correlation (Spearman’s ρ) of 0.63 (0.36 to 0.81 across
concentrations) and cell doubling times with …