Title | Detecting structural heart disease from electrocardiograms using AI. |
Publication Type | Journal Article |
Year of Publication | 2025 |
Authors | Poterucha TJ, Jing L, Ricart RPimentel, Adjei-Mosi M, Finer J, Hartzel D, Kelsey C, Long A, Rocha D, Ruhl JA, vanMaanen D, Probst MA, Daniels B, Joshi SD, Tastet O, Corbin D, Avram R, Barrios JP, Tison GH, Chiu I-M, Ouyang D, Volodarskiy A, Castillo M, Oliver FARoedan, Malta PP, Ye S, Rosner GF, Dizon JM, Ali SR, Liu Q, Bradley CK, Vaishnava P, Waksmonski CA, DeFilippis EM, Agarwal V, Lebehn M, Kampaktsis PN, Shames S, Beecy AN, Kumaraiah D, Homma S, Schwartz A, Hahn RT, Leon M, Einstein AJ, Maurer MS, Hartman HS, Hughes JWeston, Haggerty CM, Elias P |
Journal | Nature |
Volume | 644 |
Issue | 8075 |
Pagination | 221-230 |
Date Published | 2025 Aug |
ISSN | 1476-4687 |
Keywords | Adult, Aged, Artificial Intelligence, Deep Learning, Early Diagnosis, Electrocardiography, Female, Heart Diseases, Heart Rate, Humans, Male, Middle Aged, Prospective Studies, Reproducibility of Results |
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. |
DOI | 10.1038/s41586-025-09227-0 |
Alternate Journal | Nature |
PubMed ID | 40670798 |
PubMed Central ID | PMC12328201 |
Grant List | R01 HL149680 / HL / NHLBI NIH HHS / United States |