Abstract
Out-of-hospital cardiac arrest is a time-sensitive emergency that requires prompt identification and intervention: sudden, unwitnessed cardiac arrest is nearly unsurvivable1–3. A cardinal sign of cardiac arrest is sudden loss of pulse4. Automated biosensor detection of unwitnessed cardiac arrest, and dispatch of medical assistance, may improve survivability given the significant prognostic role of time3,5, but only if the false positive burden on public emergency medical systems is minimized5–7. Here we show that a multimodal, machine learning-based algorithm on a smartwatch can reach performance thresholds making it deployable at societal scale. First, using photoplethysmography (PPG), we show that wearable PPG measurements of peripheral pulselessness (induced via an arterial occlusion model) manifest similarly to pulselessness caused by a common cardiac arrest arrhythmia, ventricular fibrillation (VF). Based on the similarity of the PPG signal (from VF or arterial occlusion), we developed and validated a loss of pulse detection algorithm using data from peripheral pulselessness and free-living conditions. Once developed, we evaluated the end-to-end algorithm prospectively: there was 1 unintentional emergency call per 21.67 user-years across two prospective studies; the sensitivity was 67.23% (95% confidence interval, 64.32%–70.05%) in a prospective arterial occlusion cardiac arrest simulation model. These results suggest a new opportunity, deployable at scale, for wearable-based detection of sudden loss of pulse while minimizing societal costs of excess false detections7.
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Supplementary information
Supplementary Information
This Supplementary Information file contains Supplementary Tables 1-4 and Supplementary Methods. The Supplementary Methods consist of pseudocode of the Loss of Pulse Detection algorithm, along with a figure showing how the algorithm components culminate in a user-facing notification in the event that a loss of pulse event is detected.
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Shah, K., Wang, A., Chen, Y. et al. Automated loss of pulse detection on a consumer smartwatch. Nature (2025). https://doi.org/10.1038/s41586-025-08810-9
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DOI: https://doi.org/10.1038/s41586-025-08810-9