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.

Zanchi, B., Monachino, G., Faraci, F., Metaldi, M., Brugada, P., Sarquella-Brugada, G., et al. (2025). Synthetic electrocardiograms for Brugada syndrome: from data generation to expert cardiologists evaluation. EUROPEAN HEART JOURNAL. DIGITAL HEALTH, 6(4), 683-687 [10.1093/ehjdh/ztaf039].

Synthetic electrocardiograms for Brugada syndrome: from data generation to expert cardiologists evaluation

Crotti L.;
2025

Abstract

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.
Articolo in rivista - Articolo scientifico
AI-enabled ECG; Artificial Intelligence; Brugada Syndrome; Cardiogenetics; Machine learning; Synthetic ECG;
English
24-apr-2025
2025
6
4
683
687
open
Zanchi, B., Monachino, G., Faraci, F., Metaldi, M., Brugada, P., Sarquella-Brugada, G., et al. (2025). Synthetic electrocardiograms for Brugada syndrome: from data generation to expert cardiologists evaluation. EUROPEAN HEART JOURNAL. DIGITAL HEALTH, 6(4), 683-687 [10.1093/ehjdh/ztaf039].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/595903
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