Multi-resistance in bacteria predicted by AI model
en-GBde-DEes-ESfr-FR

Multi-resistance in bacteria predicted by AI model


An AI model trained on large amounts of genetic data can predict whether bacteria will become antibiotic-resistant. The new study shows that antibiotic resistance is more easily transmitted between genetically similar bacteria and mainly occurs in wastewater treatment plants and inside the human body.

"By understanding how resistance in bacteria arises, we can better combat its spread. This is crucial to protect public health and the healthcare system's ability to treat infections," says Erik Kristiansson, Professor at the Department of Mathematical Sciences at Chalmers University of Technology and the University of Gothenburg in Sweden.
Antibiotic resistance is one of the biggest threats to global health, according to the World Health Organization (WHO). When bacteria become resistant, the effect of antibiotics disappears, which makes conditions such as pneumonia and blood poisoning difficult or impossible to treat. Increased antibiotic-resistant bacteria also make it more difficult to prevent infections associated with many medical procedures, such as organ transplantation and cancer treatment. A fundamental reason for the rapid spread of antibiotic resistance is bacteria's ability to exchange genes, including the genes that make the bacteria resistant.
"Bacteria that are harmful to humans have accumulated many resistance genes. Many of these genes originate from harmless bacteria that live in our bodies or the environment. Our research examines this complex evolutionary process to learn how these genes are transferred to pathogenic bacteria. This makes predicting how future bacteria develop resistance possible," says Erik Kristiansson.

Complex data from all over the world
In the new study, published in Nature Communications and conducted by researchers at the Chalmers University of Technology, the University of Gothenburg, and the Fraunhofer-Chalmers Centre, the researchers developed an AI model to analyse historical gene transfers between bacteria using information about the bacteria's DNA, structure, and habitat. The model was trained on the genomes of almost a million bacteria, an extensive dataset compiled by the international research community over many years.
"AI can be used to the best of its ability in complex contexts, with large amounts of data," says David Lund, doctoral student at the Department of Mathematical Sciences at Chalmers and the University of Gothenburg. “The unique thing about our study is, among other things, the very large amount of data used to train the model, which shows what a poweful tool AI and machine learning is for describing the complex, biological processes that make bacterial infections difficult to treat”.

New conclusions about when antibiotic resistance arises
The study shows in which environments the resistance genes were transferred between different bacteria, and what it is that makes some bacteria more likely than others to swap genes with each other.
"We see that bacteria found in humans and water treatment plants have a higher probability of becoming resistant through gene transfer. These are environments where bacteria carrying resistance genes encounter each other, often in the presence of antibiotics," says David Lund.
Another important factor that increases the likelihood that resistance genes will "jump" from one bacterium to another is the genetic similarity of the bacteria. When a bacterium takes up a new gene, energy is required to store the DNA and produce the protein that the gene codes for, which means a cost for the bacterium.
"Most resistance genes are shared between bacteria with a similar genetic structure. We believe that this reduces the cost of taking up new genes. We are continuing the research to understand the mechanisms that control this process more precisely," says Erik Kristiansson.

Hoping for a model for diagnostics
The model's performance was tested by evaluating it against bacteria, where the researchers knew that the transfer of resistance genes had occurred, but where the AI model was not told in advance. This was used as a kind of exam, where only the researchers had the answers. In four cases out of five, the model could predict whether a transfer of resistance genes would occur. Erik Kristiansson says that future models will be able to be even more accurate, partly by refining the AI model itself and partly by training it on even larger data.
"AI and machine learning make it possible to efficiently analyse and interpret the enormous amounts of data available today. This means that we can really work data-driven to answer complex questions that we have been wrestling with for a long time, but also ask completely new questions”, says Erik Kristiansson.
The researchers hope that in the future, the AI model can be used in systems to quickly identify whether a new resistance gene is at risk of being transferred to pathogenic bacteria, and translate this into practical measures.
"For example, AI models could be used to improve molecular diagnostics to find new forms of multi-resistant bacteria or for monitoring wastewater treatment plants and environments where antibiotics are present," says Erik Kristiansson.



More about the study:
The study, Genetic compatibility and ecological connectivity drive the dissemination of antibiotic resistance genes, was published in Nature Communications.


The study was conducted by David Lund, Marcos Parras-Moltó, Juan S. Inda-Díaz, Stefan Ebmeyer, ProfileD.G. Joakim Larsson, Anna Johnning, Erik Kristiansson. The researchers are active at Chalmers University of Technology, the University of Gothenburg and the Fraunhofer-Chalmers Centre.
Published: 16 March 2025
Genetic compatibility and ecological connectivity drive the dissemination of antibiotic resistance genes
David Lund, Marcos Parras-Moltó, Juan S. Inda-Díaz, Stefan Ebmeyer, D. G. Joakim Larsson, Anna Johnning & Erik Kristiansson
Nature Communications volume 16, Article number: 2595 (2025)
Attached files
  • David Lund
  • Erik Kristiansson
Regions: Europe, Sweden
Keywords: Applied science, Artificial Intelligence, Engineering, Health, Medical

Disclaimer: AlphaGalileo is not responsible for the accuracy of content posted to AlphaGalileo by contributing institutions or for the use of any information through the AlphaGalileo system.

Testimonials

For well over a decade, in my capacity as a researcher, broadcaster, and producer, I have relied heavily on Alphagalileo.
All of my work trips have been planned around stories that I've found on this site.
The under embargo section allows us to plan ahead and the news releases enable us to find key experts.
Going through the tailored daily updates is the best way to start the day. It's such a critical service for me and many of my colleagues.
Koula Bouloukos, Senior manager, Editorial & Production Underknown
We have used AlphaGalileo since its foundation but frankly we need it more than ever now to ensure our research news is heard across Europe, Asia and North America. As one of the UK’s leading research universities we want to continue to work with other outstanding researchers in Europe. AlphaGalileo helps us to continue to bring our research story to them and the rest of the world.
Peter Dunn, Director of Press and Media Relations at the University of Warwick
AlphaGalileo has helped us more than double our reach at SciDev.Net. The service has enabled our journalists around the world to reach the mainstream media with articles about the impact of science on people in low- and middle-income countries, leading to big increases in the number of SciDev.Net articles that have been republished.
Ben Deighton, SciDevNet

We Work Closely With...


  • BBC
  • The Times
  • National Geographic
  • University of Cambridge
  • iesResearch
Copyright 2025 by AlphaGalileo Terms Of Use Privacy Statement