Affiliation:
1. Department of Chemistry Indian Institute of Technology Kanpur Kanpur 208016 UP India
2. Department of Chemistry and Physics La Trobe University Bundoora Victoria 3086 Australia
3. Mehta Family Center for Engineering in Medicine Center for Nanoscience Gangwal School of Medical Sciences and Technology Indian Institute of Technology Kanpur Kanpur 208016 UP India
Abstract
AbstractAntimicrobial resistance (AMR) poses a serious threat to human health worldwide. It is now more challenging than ever to introduce a potent antibiotic to the market considering rapid emergence of antimicrobial resistance, surpassing the rate of antibiotic drug discovery. Hence, new approaches need to be developed to accelerate the rate of drug discovery process and meet the demands for new antibiotics, while reducing the cost of their development. Machine learning holds immense promise of becoming a useful tool, especially since in the last two decades, exponential growth has occurred in computational power and biological big data analytics. Recent advancements in machine learning algorithms for drug discovery have provided significant clues for potential antibiotic classes. Apart from discovery of new scaffolds, the machine learning protocols will significantly impact prediction of AMR patterns and drug metabolism. In this review, we outline power of machine learning in antibiotic drug discovery, metabolic fate, and AMR prediction to support researchers engaged and interested in this field.
Funder
Australian Government
Ministry of Higher Education and Scientific Research
Ministry of Education, India