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AI shows promise for fracture detection in animals
The study has been shortlisted for the prestigious STEM for Britain 2026 award.

Researchers develop AI system that can detect fractures in racehorses.

Research by the Royal Veterinary College has identified that Artificial Intelligence (AI) has the potential to transform fracture detection in animals. 

The study, published in the journal Bioengineering, revealed that AI can detect and localise fractures in horses by employing knowledge from thousands of images of human fractures.

Led by Dr Ruby Chang, associate professor of statistics at the RVC, the approach is known as ‘transfer learning’, and could pave the way for AI-assisted tools to strengthen fracture diagnosis across veterinary practice.

For the study, Dr Hanya Ahmed compiled a bank of images comprising 100 equine fracture cases from two UK equine hospitals and published literature; 70 feline cases from hospital databases; and approximately 4,000 human fracture images from a public database.

Using these images, Dr Ahmed created an AI system that works in three stages: first, identifying the type of scan (X-ray, CT or MRI), then recognising the image angle, before detecting and precisely locating any fractures.

Dr Ahmed’s approach enabled the model to be trained on a large human dataset before being adapted for veterinary use. As a result, the system achieved fracture localisation accuracy ranging from 71 and 84 per cent, without requiring an excessively large number of equine images.

It is hoped that the findings could lead to faster and more reliable detection of fractures. This could help reduce uncertainty in clinical decision-making and enable earlier treatment, with clear benefits for the welfare and recovery of racehorses and companion animals.

In recognition of the work, the study has been shortlisted for the prestigious STEM for Britain 2026 award.

Dr Chang said: “I am delighted that research from our team, led by the outstanding work of Dr Hanya Ahmed, has been selected as a finalist for the prestigious STEM for Britain 2026. Dr Ahmed has brilliantly translated expertise in medical image analysis to the veterinary field, developing a novel AI system to detect fractures in racehorses.

“This exceptional work has now also been published in Bioengineering. This dual recognition is a testament to Dr Ahmed's skill and dedication, and a wonderful celebration of our team's collaborative effort to advance diagnostic technology.”

Image (C) Shutterstock/Lukas Gojda.

 

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Vets launch new podcast for pet owners

News Story 1
 Two independent vets have launched a podcast to help owners strengthen their bond with pets. Dr Maggie Roberts and Dr Vanessa Howie, who have worked in both veterinary practice and major charities, are keen to use their experience to enable people to give pets a better life.

The venture, called Vets Talking Pets, provides advice and information on a range of topics, including how to select a suitable pet, where to obtain them and how to get the best out of your vet. Maggie and Vanessa will also discuss sensitive subjects, including end-of-life care, raw food diets and the cost of veterinary care.

The podcast can be found on all the usual podcast sites, including Podbean, Apple, Amazon Music and YouTube. 

Click here for more...
News Shorts
VMD issues guidance on AVM-GSL packaging

The Veterinary Medicines Directorate (VMD) has shared advice on its requirements for medicines considered AVM-GSL.

The guidance explains the information that should be on the outer package, and sets out the typical maximum pack size for an AVM-GSL product. It also describes the user-friendly language, structure and phrases required on packaging and product leaflets.

AVM-GSL products do not require discussion between the purchaser and a veterinary professional. This means that clear product information is needed to support sales choices.

The information will be useful for submitting new products to the AVM-GSL category and lowering the distribution category of products from NFA-VPS to AVM-GSL.

The VMD's guidance can be accessed here.