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Automated loss of pulse detection on a consumer smartwatch

Author

Listed:
  • Kamal Shah

    (Google Research)

  • Anran Wang

    (Google Research)

  • Yiwen Chen

    (Google Research)

  • Jitender Munjal

    (US Heart & Vascular)

  • Sumeet Chhabra

    (US Heart & Vascular)

  • Anthony Stange

    (Google Research)

  • Enxun Wei

    (Google Research)

  • Tuan Phan

    (Google Research)

  • Tracy Giest

    (Google Research)

  • Beszel Hawkins

    (Google Research)

  • Dinesh Puppala

    (Google Research)

  • Elsina Silver

    (Google Research)

  • Lawrence Cai

    (Google Research)

  • Shruti Rajagopalan

    (Google Research)

  • Edward Shi

    (Google Research)

  • Yun-Ling Lee

    (Google Research)

  • Matt Wimmer

    (Google Research)

  • Pramod Rudrapatna

    (Google Research)

  • Thomas Rea

    (King County Medic One, Emergency Medical Services Seattle, King County
    University of Washington)

  • Shelten Yuen

    (Google Research)

  • Anupam Pathak

    (Google Research)

  • Shwetak Patel

    (Google Research
    University of Washington)

  • Mark Malhotra

    (Google Research)

  • Marc Stogaitis

    (Google Research)

  • Jeanie Phan

    (Google Research)

  • Bakul Patel

    (Google Research)

  • Adam Vasquez

    (Google Research)

  • Christina Fox

    (Google Research)

  • Alistair Connell

    (Google Research)

  • Jim Taylor

    (Google Research)

  • Jacqueline Shreibati

    (Google Research)

  • David Miller

    (DPM Biostatistics)

  • Daniel McDuff

    (Google Research)

  • Pushmeet Kohli

    (Google Deepmind)

  • Tajinder Gadh

    (Google Research)

  • Jake Sunshine

    (Google Research
    University of Washington
    University of Washington)

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 substantial 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 a societal scale. First, using photoplethysmography, we show that wearable photoplethysmography measurements of peripheral pulselessness (induced through an arterial occlusion model) manifest similarly to pulselessness caused by a common cardiac arrest arrhythmia, ventricular fibrillation. On the basis of the similarity of the photoplethysmography signal (from ventricular fibrillation or arterial occlusion), we developed and validated a loss of pulse detection algorithm using data from peripheral pulselessness and free-living conditions. Following its development, 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 of 64.32% to 70.05%) in a prospective arterial occlusion cardiac arrest simulation model. These results indicate an opportunity, deployable at scale, for wearable-based detection of sudden loss of pulse while minimizing societal costs of excess false detections7.

Suggested Citation

  • Kamal Shah & Anran Wang & Yiwen Chen & Jitender Munjal & Sumeet Chhabra & Anthony Stange & Enxun Wei & Tuan Phan & Tracy Giest & Beszel Hawkins & Dinesh Puppala & Elsina Silver & Lawrence Cai & Shruti, 2025. "Automated loss of pulse detection on a consumer smartwatch," Nature, Nature, vol. 642(8066), pages 174-181, June.
  • Handle: RePEc:nat:nature:v:642:y:2025:i:8066:d:10.1038_s41586-025-08810-9
    DOI: 10.1038/s41586-025-08810-9
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