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Antibiotic identified by AI

The field of drug discovery is transforming in the advent of artificial intelligence. At the MIT Abdul Latif Jameel Clinic for Machine Learning and Health (MIT Jameel Clinic), co-principal investigators Jim Collins and Regina Barzilay, have leveraged AI technology for the discovery of two antibiotics, halicin and abaucin, the latter of which is effective in targeting the bacterial pathogen Acinetobacter baumannii.

Details

author(s)
Jim Collins
Regina Barzilay
publication date
11 October 2023
source
Nature
related programme
MIT Jameel Clinic
Link to publication
External link ->

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