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Detecting structural heart disease from electrocardiograms using AI

Author

Listed:
  • Timothy J. Poterucha

    (Columbia University Irving Medical Center)

  • Linyuan Jing

    (NewYork-Presbyterian Hospital)

  • Ramon Pimentel Ricart

    (Columbia University Irving Medical Center)

  • Michael Adjei-Mosi

    (Columbia University Vagelos College of Physicians and Surgeons)

  • Joshua Finer

    (NewYork-Presbyterian Hospital)

  • Dustin Hartzel

    (NewYork-Presbyterian Hospital)

  • Christopher Kelsey

    (NewYork-Presbyterian Hospital)

  • Aaron Long

    (Columbia University Irving Medical Center
    Columbia University)

  • Daniel Rocha

    (NewYork-Presbyterian Hospital)

  • Jeffrey A. Ruhl

    (NewYork-Presbyterian Hospital)

  • David vanMaanen

    (NewYork-Presbyterian Hospital)

  • Marc A. Probst

    (Columbia University Irving Medical Center)

  • Brock Daniels

    (Weill Cornell Medicine)

  • Shalmali D. Joshi

    (Columbia University)

  • Olivier Tastet

    (Montreal Heart Institute)

  • Denis Corbin

    (Montreal Heart Institute)

  • Robert Avram

    (Montreal Heart Institute)

  • Joshua P. Barrios

    (San Francisco)

  • Geoffrey H. Tison

    (San Francisco)

  • I-Min Chiu

    (Cedars Sinai
    Kaohsiung Chang Gung Memorial Hospital)

  • David Ouyang

    (Cedars Sinai)

  • Alexander Volodarskiy

    (NewYork-Presbyterian Hospital-Queens)

  • Michelle Castillo

    (Columbia University Irving Medical Center)

  • Francisco A. Roedan Oliver

    (Columbia University Irving Medical Center)

  • Paloma P. Malta

    (Columbia University Irving Medical Center)

  • Siqin Ye

    (Columbia University Irving Medical Center)

  • Gregg F. Rosner

    (Columbia University Irving Medical Center)

  • Jose M. Dizon

    (Columbia University Irving Medical Center)

  • Shah R. Ali

    (Columbia University Irving Medical Center)

  • Qi Liu

    (Columbia University Irving Medical Center)

  • Corey K. Bradley

    (Columbia University Irving Medical Center)

  • Prashant Vaishnava

    (Columbia University Irving Medical Center)

  • Carol A. Waksmonski

    (Columbia University Irving Medical Center)

  • Ersilia M. DeFilippis

    (Columbia University Irving Medical Center)

  • Vratika Agarwal

    (Columbia University Irving Medical Center)

  • Mark Lebehn

    (Columbia University Irving Medical Center)

  • Polydoros N. Kampaktsis

    (Columbia University Irving Medical Center)

  • Sofia Shames

    (Columbia University Irving Medical Center)

  • Ashley N. Beecy

    (Weill Cornell Medicine)

  • Deepa Kumaraiah

    (Columbia University Irving Medical Center
    NewYork-Presbyterian Hospital)

  • Shunichi Homma

    (Columbia University Irving Medical Center)

  • Allan Schwartz

    (Columbia University Irving Medical Center)

  • Rebecca T. Hahn

    (Columbia University Irving Medical Center)

  • Martin Leon

    (Columbia University Irving Medical Center
    Cardiovascular Research Foundation)

  • Andrew J. Einstein

    (Columbia University Irving Medical Center
    Columbia University Irving Medical Center)

  • Mathew S. Maurer

    (Columbia University Irving Medical Center)

  • Heidi S. Hartman

    (Columbia University Irving Medical Center)

  • John Weston Hughes

    (Columbia University Irving Medical Center)

  • Christopher M. Haggerty

    (NewYork-Presbyterian Hospital
    Columbia University Vagelos College of Physicians and Surgeons)

  • Pierre Elias

    (Columbia University Irving Medical Center
    Columbia University)

Abstract

Early detection of structural heart disease is critical to improving outcomes, but widespread screening remains limited by the cost and accessibility of imaging tools such as echocardiography1,2. Recent advances in machine learning applied to heart rhythm recordings have shown promise in identifying disease3,4, although previous work has been limited by development in narrow populations or targeting only select heart conditions5. Here we introduce a deep learning model, EchoNext, trained on more than 1 million heart rhythm and imaging records across a large and diverse health system to detect many forms of structural heart disease. The model demonstrated high diagnostic accuracy in internal and external validation, outperforming cardiologists in a controlled evaluation and showing consistent performance across different care settings and racial and/or ethnic groups. The models were prospectively evaluated in a clinical trial of patients without previous cardiac imaging, successfully identifying previously undiagnosed heart disease. These findings support the potential of artificial intelligence to expand access to heart disease screening at scale. To enable further development and transparency, we have publicly released model weights and a large, annotated dataset linking heart rhythm data to imaging-based diagnoses.

Suggested Citation

  • Timothy J. Poterucha & Linyuan Jing & Ramon Pimentel Ricart & Michael Adjei-Mosi & Joshua Finer & Dustin Hartzel & Christopher Kelsey & Aaron Long & Daniel Rocha & Jeffrey A. Ruhl & David vanMaanen & , 2025. "Detecting structural heart disease from electrocardiograms using AI," Nature, Nature, vol. 644(8075), pages 221-230, August.
  • Handle: RePEc:nat:nature:v:644:y:2025:i:8075:d:10.1038_s41586-025-09227-0
    DOI: 10.1038/s41586-025-09227-0
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