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Researchers develop a heart ‘fingerprint’ to tailor personalised treatments.

New ai technology for advanced heart attack predictions

New work done by Professor Charalambos Antoniades team uses technology developed using artificial intelligence (AI) that could identify people at high risk of a fatal heart attack at least five years before it strikes. The findings are being presented at the 2019  European Society of Cardiology (ESC) Congress in Paris and published in the European Heart Journal.

The researchers developed a new biomarker, or ‘fingerprint’, called the fat radiomic profile (FRP), using machine learning. The fingerprint detects biological red flags in the perivascular space lining blood vessels which supply blood to the heart. It identifies inflammation, scarring and changes to these blood vessels, which are all pointers to a future heart attack.

When someone goes to hospital with chest pain, a standard component of care is to have a coronary CT angiogram (CCTA). This is a scan of the coronary arteries to check for any narrowed or blocked segments. If there is no significant narrowing of the artery, which accounts for about 75 per cent of scans, people are sent home, yet some of them will still have a heart attack at some point in the future.

There are no methods used routinely by doctors that can spot all of the underlying red flags for a future heart attack.

Fat biopsies

In their new study, Professor Charalambos Antoniades and his team firstly used fat biopsies from 167 people undergoing cardiac surgery. They analysed the expression of genes associated with inflammation, scarring and new blood vessel formation, and matched these to the CCTA scan images to determine which features best indicate changes to the fat surrounding the heart vessels, called perivascular fat.

Next, the team compared the CCTA scans of the 101 people (from a pool of 5487 individuals), who went on to have a heart attack or cardiovascular death within five years of having a CCTA, versus similar 'matched' controls who did not. This helped the team understand the changes in the perivascular space which indicate that someone is at higher risk of a heart attack. Using machine learning, they developed the FRP fingerprint that captures the level of risk.

The more heart scans that are added, the more accurate the predictions will become, and the more information that will become ‘core knowledge’.

The team then tested the performance of this perivascular fingerprint in 1,575 people in the SCOT-HEART trial, and found that the FRP had a striking value in predicting heart attacks, above what can be achieved with any of the tools currently used by doctors in clinics. 

Professor Antoniades said: "Just because someone’s scan of their coronary artery shows there’s no narrowing, that does not mean they are safe from a heart attack.

“By harnessing the power of AI, we’ve developed a fingerprint to find ‘bad’ characteristics around people’s arteries. This has huge potential to detect the early signs of disease, and to be able to take all preventative steps before a heart attack strikes, ultimately saving lives.

The research team now  hope that this powerful technology will enable a greater number of people to avoid a heart attack, and plan to roll it out to health care professionals in the next year, with the hope that it will be included in routine NHS practice alongside CCTA scans in the next two years.

 

We genuinely believe this technology could be saving lives within the next year.
- Professor Charalambos Antoniades

Professor Metin Avkiran, Associate Medical Director at the British Heart Foundation, who funded the study, said:
“Every 5 minutes, someone is admitted to a UK hospital due to a heart attack. This research is a powerful example of how innovative use of machine learning technology has the potential to revolutionise how we identify people at risk of a heart attack and prevent them from happening.

“This is a significant advance. The new ‘fingerprint’ extracts additional information about underlying biology from scans used routinely to detect narrowed arteries. Such AI-based technology to predict an impending heart attack with greater precision could represent a big step forward in personalised care for people with suspected coronary artery disease.”

In addition to the BHF, this research was funded by the National Institute for Health Research (NIHR).

Read press coverage in The Times