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Artificial intelligence discovers powerful antibiotic
The new machine-learning approach can screen millions of chemical compounds in a matter of days.

New drug works against a wide range of resistant bacteria

A powerful new antibiotic that can work against a wide range of antibiotic-resistant bacteria has been discovered using artificial intelligence (AI).

The antibiotic, called halicin, was identified by a machine-learning algorithm out of 100 million chemical compounds. In laboratory tests, halicin killed many bacterial strains that are resistant to treatment, including Clostridium difficile, Acinetobacter baumannii, and Mycobacterium tuberculosis.


Researchers also used the antibiotic to treat mice infected with A. baumannii, a bacterium that has infected many U.S. soldiers stationed in Iraq and Afghanistan. This particular strain of antibiotic is resistant to all known antibiotics, but the application of a halicin-containing ointment cleared the infections within 24-hours. 


The work was led by Professor James Collins at the Massachusetts Institute of Technology (MIT) and published in the journal Cell.

“We wanted to develop a platform that would allow us to harness the power of artificial intelligence to usher in a new age of antibiotic drug discovery,” explained Professor Collins. “Our approach revealed this amazing molecule which is arguably one of the more powerful antibiotics that has been discovered.”

Antibiotic-resistance is considered to be a serious risk to public health. In 2014, the lack of effectiveness of existing antibiotics combined with the lack of new antibiotic treatments led the World Health Organisation to describe the situation as a "post-antibiotic era" where people could die from simple infections that have been treatable for decades.


Current antibiotic screening methods are expensive, time-consuming and are usually limited to a small range of chemical compounds. With this new machine-led approach, researchers can screen millions of chemical compounds within a few days.

The study identified several other antibiotic candidates which the researchers plan to test further. They say the computer model could also be used to develop new drugs, based on what it has learned about chemical structures that enable drugs to kill bacteria.

“This groundbreaking work signifies a paradigm shift in antibiotic discovery and indeed in drug discovery more generally,” says Roy Kishony, a professor of biology and computer science at Technion (the Israel Institute of Technology), who was not involved in the study.

“Beyond in silica screens, this approach will allow using deep learning at all stages of antibiotic development, from discovery to improved efficacy and toxicity through drug modifications and medicinal chemistry.”

 

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Submissions open for BSAVA Clinical Research Abstracts 2026

News Story 1
 The BSAVA has opened submissions for the BSAVA Clinical Research Abstracts 2026.

It is an opportunity for applicants to present new research on any veterinary subject, such as the preliminary results of a study, discussion of a new technique or a description of an interesting case.

They must be based on high-quality clinical research conducted in industry, practice or academia, and summarised in 250 words.

Applications are welcome from vets, vet nurses, practice managers, and students.

Submissions are open until 6 March 2026. 

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News Shorts
Survey seeks ruminant sector views on antimicrobial stewardship

A new survey is seeking views of people working in the UK ruminant sector on how to tackle the challenge of demonstrating responsible antibiotic stewardship.

Forming part of a wider, collaborative initiative, the results will help identify the types of data available so that challenges with data collection can be better understood and addressed.

Anyone working in the UK farming sector, including vets and farmers,is encouraged to complete the survey, which is available at app.onlinesurveys.jisc.ac.uk