A research team led by UC Berkeley has used deep learning to discover a new biomarker that detects sudden cardiac death (SCD) risk from a routine electrocardiogram (ECG), publishing the findings in Nature on June 24, 2026. The work shows it may be possible to identify high-risk patients—missed by the standard metric of left ventricular ejection fraction (LVEF)—using a test that is cheap and widely available.
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