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Minimizing treatment-induced emergence of antibiotic resistance in bacterial infections.

Mathew StracyOlga SnitserIdan YelinYara AmerMiriam ParizadeRachel KatzGalit RimlerTamar WolfEsma HerzelGideon KorenJacob KuintBetsy FoxmanGabriel ChodickVarda ShalevRoy Kishony
Published in: Science (New York, N.Y.) (2022)
Treatment of bacterial infections currently focuses on choosing an antibiotic that matches a pathogen's susceptibility, with less attention paid to the risk that even susceptibility-matched treatments can fail as a result of resistance emerging in response to treatment. Combining whole-genome sequencing of 1113 pre- and posttreatment bacterial isolates with machine-learning analysis of 140,349 urinary tract infections and 7365 wound infections, we found that treatment-induced emergence of resistance could be predicted and minimized at the individual-patient level. Emergence of resistance was common and driven not by de novo resistance evolution but by rapid reinfection with a different strain resistant to the prescribed antibiotic. As most infections are seeded from a patient's own microbiota, these resistance-gaining recurrences can be predicted using the patient's past infection history and minimized by machine learning-personalized antibiotic recommendations, offering a means to reduce the emergence and spread of resistant pathogens.
Keyphrases
  • machine learning
  • case report
  • urinary tract infection
  • deep learning
  • oxidative stress
  • working memory
  • clinical practice
  • multidrug resistant
  • drug induced
  • big data
  • quantum dots