Addressing antibiotic resistance: computational answers to a biological problem?

Journal: Current opinion in microbiology
Published Date:

Abstract

The increasing prevalence of infections caused by antibiotic-resistant bacteria is a global healthcare crisis. Understanding the spread of resistance is predicated on the surveillance of antibiotic resistance genes within an environment. Bioinformatics and artificial intelligence (AI) methods applied to metagenomic sequencing data offer the capacity to detect known and infer yet-unknown resistance mechanisms, and predict future outbreaks of antibiotic-resistant infections. Machine learning methods, in particular, could revive the waning antibiotic discovery pipeline by helping to predict the molecular structure and function of antibiotic resistance compounds, and optimising their interactions with target proteins. Consequently, AI has the capacity to play a central role in guiding antibiotic stewardship and future clinical decision-making around antibiotic resistance.

Authors

  • Anna H Behling
    Liggins Institute, University of Auckland, Auckland, New Zealand.
  • Brooke C Wilson
    Liggins Institute, University of Auckland, Auckland, New Zealand.
  • Daniel Ho
    Stanford Law School, Stanford, CA, USA.
  • Marko Virta
    Department of Microbiology, University of Helsinki, Helsinki, Finland.
  • Justin M O'Sullivan
    Liggins Institute, The University of Auckland, New Zealand; New Zealand National Science Challenge "High-Value Nutrition", New Zealand.
  • Tommi Vatanen
    Broad Institute of MIT and Harvard, Cambridge, MA, USA.