Professor Arcot Sowmya
Spotting the early signs of liver cancer with AI

Working with medical scans and medicalised data sets, Professor Arcot Sowmya and her team are using artificial intelligence to help solve specific problems impacting communities each day.
Professor Sowmya Arcot at 麻豆社madou.
A picture may say a thousand words but for Professor Sowmya, this sentiment is particularly true. Through her ongoing research and its applications across medical image analysis and computer-aided diagnostics, she鈥檚 paving the way for improved AI forecasting models of disease and suicide prevention.
This process starts by equipping machines with the capacity to automatically analyse and understand images and video.
听鈥淲e take the collected data and make sense of it all through designing and employing automated methods, as well as repurposing and extending existing methods. This helps us use data-driven insights to answer disease-related questions.鈥澨
- Professor Sowmya
Supported by competitive, industry and government funding, this research has been applied across the broader health area, including biomedical informatics and real-world diagnostics.
Lifting the lid on liver cancer
For those at risk of developing various diseases including liver cancer, Professor Sowmya鈥檚 research can mean earlier diagnosis, intervention and treatment. Working alongside colleagues at 麻豆社madou's Microbiome Research Centre and Faculty of Science, Professor Sowmya and her team are helping to develop microbial-based biomarkers powered by artificial intelligence for early detection of liver cancer 鈥 thereby potentially improving survival rates.
Typically, patients with liver disease would conduct regular blood tests or undergo ultrasound imaging as part of their ongoing monitoring and treatment plans.听Professor Sowmya鈥檚 work however looks at introducing additional testing methods to determine future patient outcomes.
听These include mouth or nasal swabs, which provide the necessary data the team needs to conduct their analysis.听鈥淲e are trying to discover if there are any easy to detect microorganisms or biomarkers, which are potentially associated with liver cancer,鈥 she explains. 鈥淕enetics related data is a whole new world, so we鈥檙e studying what鈥檚 related and not related to liver cancer.鈥
Liver cancer is the fifth most common cancer with incidences continuing to increase. Like most cancers, liver cancer typically develops slowly and quietly, without causing any noticeable symptoms in its early stages.
Patients would then repeat these tests regularly to potentially establish or reveal an identifiable pattern. 鈥淚t all comes down to earlier detection 鈥 the earlier you can detect disease, the more warning you have to offer treatment or intervention to either slow it down or provide a cure.鈥
As this research continues to develop, Professor Sowmya hopes to see it applied where it鈥檚 needed most. 鈥淚t would be really lovely to see the research become usable by the user themselves,鈥 she says.
鈥淚f we discover there鈥檚 a particular set of biomarkers that help with early cancer detection, we鈥檇 like that to become part of the regular tests that patients undergo 鈥 or at the very least have it become a recommendation.鈥
- Professor Sowmya
漏 2023 Everymind
Smart cameras that save lives
Professor Sowmya鈥檚 research has also branched into other data-rich domains, where similar techniques are making just as significant an impact. This includes the mental health domain, where her research is leading to novel approaches for suicide prevention.
Alongside collaborator, and his research group, the team are working on the analysis of data from CCTV footage to identify signs of suicidal distress. 鈥淭o manually review 24-hour CCTV is very challenging, so what if we could instead automatically identify some of the behaviours before a suicide attempt, so that it could be prevented?鈥 asks Professor Sowmya.
To help identify early warning signs and recognise particular behaviour patterns, the team worked closely with a number of leading psychologists. 鈥淯sing their insights, we then analysed video footage to identify those specific behaviours,鈥 she explains.
鈥淥nce we have that and it鈥檚 picked up through the images, we can then raise an alarm for someone to reach out and help the person.鈥
With the desire to push this research further, Professor Sowmya would like to work towards creating software which can analyse video data to create an automated warning of risky behaviour.
鈥淭his could become a product that鈥檚 installed in all CCTV cameras in high-risk public places such as train stations or certain outdoor spaces. If it鈥檚 made usable at the right time and the right place, the impact could be truly life-changing.鈥
- Professor Sowmya
Share this story
Digital Transformation | Health
Read more
Get in touch and see what鈥檚 possible.
Ask how we can help your business, industry, or market through collaboration.
听