Synthetic electrocardiograms for Brugada syndrome: from data generation to expert cardiologists evaluation.
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BORIS DOI
Publisher DOI
PubMed ID
40703115
Description
Aims
Synthetic electrocardiograms (ECGs) for inherited cardiac diseases may overcome the issue related to data scarcity for artificial intelligence (AI)-based algorithms. This study aimed to evaluate experienced cardiologists' ability to differentiate synthetic and real Brugada ECGs.Methods And Results
A total of 2244 ECG instances (50% synthetic generated by a generative adversarial network, 50% real Brugada patients' ECGs) were evaluated by 7 cardiologists, each with >15 years of experience. All ECGs were standard 12-lead recordings acquired with identical settings (paper speed 25 mm/s, amplitude 10 mm/mV) and randomly assigned without identifying markers. The examination was blinded and conducted in 2 rounds with at least 2 h gap between rounds to assess potential learning effects and intra-rater reliability. Each physician classified the recordings as 'real' or 'synthetic' without having any additional information. Performance metrics, including accuracy, sensitivity, specificity, and intra-rater reliability (Cohen's Kappa), were analyzed. Brugada syndrome (BrS) specialists' repeated evaluations were characterized by low accuracy (first round 40%, second round 42%), specificity (first round 22%, second round 26%) and sensitivity (first round 58%, second round 58%). Intra-rater reliability varied widely (Cohen's Kappa: -0.12 to 0.80).Conclusion
Synthetic Brugada ECGs cannot be adequately distinguished from real patients' ECGs by BrS specialists.
Synthetic electrocardiograms (ECGs) for inherited cardiac diseases may overcome the issue related to data scarcity for artificial intelligence (AI)-based algorithms. This study aimed to evaluate experienced cardiologists' ability to differentiate synthetic and real Brugada ECGs.Methods And Results
A total of 2244 ECG instances (50% synthetic generated by a generative adversarial network, 50% real Brugada patients' ECGs) were evaluated by 7 cardiologists, each with >15 years of experience. All ECGs were standard 12-lead recordings acquired with identical settings (paper speed 25 mm/s, amplitude 10 mm/mV) and randomly assigned without identifying markers. The examination was blinded and conducted in 2 rounds with at least 2 h gap between rounds to assess potential learning effects and intra-rater reliability. Each physician classified the recordings as 'real' or 'synthetic' without having any additional information. Performance metrics, including accuracy, sensitivity, specificity, and intra-rater reliability (Cohen's Kappa), were analyzed. Brugada syndrome (BrS) specialists' repeated evaluations were characterized by low accuracy (first round 40%, second round 42%), specificity (first round 22%, second round 26%) and sensitivity (first round 58%, second round 58%). Intra-rater reliability varied widely (Cohen's Kappa: -0.12 to 0.80).Conclusion
Synthetic Brugada ECGs cannot be adequately distinguished from real patients' ECGs by BrS specialists.
Date of Publication
2025-07
Publication Type
Article
Keyword(s)
AI-enabled ECG
•
Artificial Intelligence
•
Brugada Syndrome
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Cardiogenetics
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Machine learning
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Synthetic ECG
Language(s)
en
Contributor(s)
Zanchi, Beatrice | |
Faraci, Francesca Dalia | |
Metaldi, Matteo | |
Brugada, Pedro | |
Sarquella-Brugada, Georgia | |
Behr, Elijah R | |
Brugada, Josep | |
Crotti, Lia | |
Belhassen, Bernard | |
Conte, Giulio |
Additional Credits
Series
European Heart Journal – Digital Health
Publisher
Oxford University Press
ISSN
2634-3916
Access(Rights)
open.access