Your data on MRCVSonline
The nature of the services provided by Vision Media means that we might obtain certain information about you.
Please read our Data Protection and Privacy Policy for details.

In addition, (with your consent) some parts of our website may store a 'cookie' in your browser for the purposes of
functionality or performance monitoring.
Click here to manage your settings.
If you would like to forward this story on to a friend, simply fill in the form below and click send.

Your friend's email:
Your email:
Your name:
 
 
Send Cancel

Artificial intelligence could recognise pain in cats, study finds
Two AI models were presented with facial images of 84 cats.
Technology could be trained to read cats’ facial expressions.

A new study has suggested that artificial intelligence (AI) could be used to more accurately identify signs of pain in cats.

The technology may have the capability to learn and read the facial expressions of cats, to better understand whether they are experiencing pain.

The research involved two AI models being presented with facial images of 84 cats, captured using a mobile phone. The cats were of different breeds, ages, sex, and medical history and were owned by clients of the Department of Small Animal Medicine and Surgery of the University of Veterinary Medicine Hannover.

The cats were first scored by experienced veterinary surgeons, who used the Glasgow composite measure pain scale (CMPS) to assess changes in the cat’s facial expressions and behaviour, as well as considering the patients’ clinical history. This was used to divide the images into two classes: ‘pain’ or ‘no pain’.

This scoring was used to train AI models in deep learning (DL) and landmark-based (LDM) approaches, which are both based on manual landmark annotations on facial alignment.

The aligned facial images were then input into AI models. While they were entered into the DL model as they were, the LDM model used 48 landmarks in the image to create multi-vectors capturing cats’ ears, noses, mouths and eyes.

The results suggested that the LDM approach was the more accurate model, scoring above 77 per cent accuracy compared to above 65 per cent for the DL approach. A cat’s nose and mouth appeared more important for classifying pain, with ears being less relevant.

However the LDM model also required more time and resources to run, with the 48 landmark annotations needing to be manually created before input.

The researchers conclude that AI could be used to recognise pain in cats, and may even result in more accurate pain recognition in clinical settings after further development.

Currently they say that the dataset used in the study was limited, as was the use of still photos rather than video. They also state that clinical impression should override the binary response of ‘pain/no pain’ that an AI model would provide, and pain relief should be given if there is any doubt.

The study also reflects on the ethical issues that will need to be considered before AI technologies are introduced into clinical practices, to effectively protect pets and their owners.

The full study can be found in the journal Scientific Reports.

Image © Shutterstock

Become a member or log in to add this story to your CPD history

Defra shares new Sanitary and Phytosanitary guidance

News Story 1
 Defra has published guidance for the vet sector ahead of a proposed UK-EU Sanitary and Phytosanitary agreement.

The agreement, which will change the movement and trade of animals and related products, could see reductions in checks, paperwork and certification. As well as describing regulatory developments, the advice highlights the importance of animal ID, registration and traceability in disease control and other compliance arrangements.

The guidance can be found here. More detail is expected as negotiations progress. 

Click here for more...
News Shorts
BSAVA publishes fifth Manual of Canine and Feline Neurology

The BSAVA has published the fifth edition of its BSAVA Manual of Canine and Feline Neurology.

The new edition has been reviewed and updated, including new developments in diagnostics, therapeutic approaches and clinical decision-making. It is structured to support clinicians through diagnosis, treatment and long-term management.

The guide features five new chapters covering acute myelopathies, chronic myelopathies, emergency protocols, neurotoxicology and neuro-oncology.

It also includes over 100 videos, including demonstrations of neurological examinations, clinical presentations and diagnostic procedures.

Nicola Lloyd, publishing manager, said: "Whether you're a general practitioner seeking practical guidance, or a specialist aiming to refine your expertise, this edition remains an indispensable reference for anyone involved in the care of neurologically compromised dogs and cats."