With AI, researchers discover new way to detect sudden cardiac death risk - Berkeley News
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With AI, researchers discover new way to detect sudden cardiac death risk
A UC Berkeley-led project trained an AI system on hundreds of thousands of EKGs. The resulting risk predictions are much better than existing methods, paving the way to save lives at scale.
By Jason Pohl
Using a custom AI tool, UC Berkeley researchers discovered a previously unrecognized signal in electrocardiograms that can better detect high-risk patients before their heart stops.
Joshua Chehov via Unsplash
June 24, 2026
Key takeaways
Sudden cardiac arrest kills more than 300,000 people in the U.S. each year.
A new AI system trained on heart scans can better identify those at risk.
It may also have discovered something new about heart physiology.
Findings were published today (June 24) in the journal Nature.
Each year in the U.S., more than 300,000 people die from sudden cardiac arrest, a condition where the heart’s electrical system malfunctions without warning. The medical emergency can kill both high-risk older adults and young athletes with no history of heart issues, and while internal defibrillators that shock the heart can save lives, figuring out who actually needs one remains a high-stakes guessing game.
With a new tool that could transform how that game is played, UC Berkeley researchers have discovered a previously unrecognized signal in electrocardiograms that can better detect high-risk patients before their heart stops.
Using more than 440,000 EKGs from Sweden paired with information from death certificates, researchers trained an artificial intelligence model to analyze the spikes and waveforms produced by the heart’s electrical currents. They fed the model scans from healthy people, at-risk patients and those who later suffered cardiac death until it recognized waveform patterns for people who later suffered sudden cardiac death. Over multiple years, researchers tested the model on thousands of other patient files from both the U.S. and Taiwan.
Ziad Obermeyer
They found that the algorithm’s read on patient EKGs outperformed standard clinical tests, which measure how much blood the heart ejects with each beat. Those tests identify a high-risk group with a 4.6% annual rate of sudden cardiac death. The AI system isolates a high-risk group with a 7% annual rate — a difference of thousands of patients annually, the vast majority of whom look low-risk by current standards
In other words, the model flagged a larger high-risk pool and better predicted who would suffer sudden cardiac death — all based on images that are widely available at medical centers around the world.
The study, published today in the prestigious journal Nature, could lead doctors to better identify who needs an internal defibrillator. It also opens the door for new research about the physiological mechanism that the AI tool homed in on that appears related to the heart suddenly and fatally misfiring.
"Medical decisions are really hard, and I think that’s why AI is so exciting for me," said Ziad Obermeyer, an associate professor at UC Berkeley’s School of Public Health and the study’s lead author. "We can not only make better decisions, but also start to understand what’s actually going on with these patients before their heart stops."
Whereas a heart attack stems from restricted blood flow to the heart, cardiac arrest occurs when the heart’s electrical current suddenly stops firing. CPR and a shock from an automated external defibrillator can save lives, but approximately 90% of those who suffer sudden cardiac arrest outside of a hospital will die within minutes.
Obermeyer puts sudden cardiac death near the top of the list of stubborn medical mysteries. Because people die so abruptly, it’s hard to know what was happening inside the heart before it stopped. Autopsies can reveal some details about its structure, like blocked vessels or hardened tissues. But the actual functioning before death remains something of a black box to Obermeyer, an emergency physician who does research at the intersection of machine learning, medicine and health policy.
"One thing that makes the problem very tragic, but also very well suited for AI, is that we have the cure for this problem," Obermeyer said. "If you knew you were one of the people who was going to drop dead, you would go to a cardiologist and you’d get a defibrillator implanted. The problem is that doctors can’t figure out who needs one before it’s too late."
The most commonly used method to identify at-risk patients measures how much blood the heart squeezes with each contraction. If that rate is below a certain threshold, the patient might qualify for an implantable defibrillator.
That test requires patients to have a more involved medical evaluation, something the vast majority of victims never knew they needed. Additionally, two-thirds of implants for those...