“Over the last few years, we have seen a ‘rebirth’ of what we call ‘neural networks’. These are very big computer programs that learn patterns through examples. To devise models for these networks these programs take lots of data and lots of computation,” remarked Prof. Tsaftaris. “Bringing all that data together is just one of the many challenges in this arena, but there are wonderful examples of its success, such as how AI-based programming has provided algorithms that can detect a suspicious mole on somebody's skin from a non-suspicious mole.”
Access to patient data with accurate diagnostic or outcome information is essential in creating effective AI solutions. This data is available in hospitals and healthcare facilities, but making it available to others for innovation, has, up until now, presented significant challenges in protecting patient privacy and ethics.
“We have to take genuine responsibility for control and appropriate use of data because it involves very personal information, for example, scans of an individual’s body,” said Dr. Sutherland. “With proper security and data use in place, I believe we can all play a role by giving permission to allow our data as citizens to be used for scientific research for the ‘greater good’. The only way AI is going to work widely is if we apply good, rigorous science that is accepted by patients, healthcare professionals and the general public.”
“Part of the validation process for these technologies also involves clinicians engaging with these systems to help us try and improve their quality and validate that they work in a useful way,“ he said. “What computers will never replace is the actual decision-making, in my opinion.”
“They may provide a kind of decision support. For example, the AI may be able to provide a measurement of a lesion that indicates to the doctor whether a treatment is working or not, but the interpretation of what that measurement means is still the key role for the clinician, as well as the communication of that information to the patient and others,” he continued. “What we're doing hopefully is ‘turbocharging’ clinicians, enabling them to do more of what's really important, which is providing care with some of the drudgery done by computers.”
“More data and easy access to this data for academic research is very important,” said Professor Tsaftaris. “This will allow for more rapid development of solutions that then the some of the industry then can really try to translate and integrate.”