Echo state networks for the recognition of type 1 Brugada syndrome from conventional 12-LEAD ECG

Artificial Intelligence (AI) applications and Machine Learning (ML) methods have gained much attention in recent years for their ability to automatically detect patterns in data without being explicitly taught rules. Specific features characterise the ECGs of patients with Brugada Syndrome (BrS); ho...

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Veröffentlicht in:Heliyon 2024-02, Vol.10 (3), p.e25404-e25404, Article e25404
Hauptverfasser: Vozzi, Federico, Pedrelli, Luca, Dimitri, Giovanna Maria, Micheli, Alessio, Persiani, Elisa, Piacenti, Marcello, Rossi, Andrea, Solarino, Gianluca, Pieragnoli, Paolo, Checchi, Luca, Zucchelli, Giulio, Mazzocchetti, Lorenzo, De Lucia, Raffaele, Nesti, Martina, Notarstefano, Pasquale, Morales, Maria Aurora
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Sprache:eng
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Zusammenfassung:Artificial Intelligence (AI) applications and Machine Learning (ML) methods have gained much attention in recent years for their ability to automatically detect patterns in data without being explicitly taught rules. Specific features characterise the ECGs of patients with Brugada Syndrome (BrS); however, there is still ambiguity regarding the correct diagnosis of BrS and its differentiation from other pathologies. This work presents an application of Echo State Networks (ESN) in the Recurrent Neural Networks (RNN) class for diagnosing BrS from the ECG time series. 12-lead ECGs were obtained from patients with a definite clinical diagnosis of spontaneous BrS Type 1 pattern (Group A), patients who underwent provocative pharmacological testing to induce BrS type 1 pattern, which resulted in positive (Group B) or negative (Group C), and control subjects (Group D). One extracted beat in the V2 lead was used as input, and the dataset was used to train and evaluate the ESN model using a double cross-validation approach. ESN performance was compared with that of 4 cardiologists trained in electrophysiology. The model performance was assessed in the dataset, with a correct global diagnosis observed in 91.5 % of cases compared to clinicians (88.0 %). High specificity (94.5 %), sensitivity (87.0 %) and AUC (94.7 %) for BrS recognition by ESN were observed in Groups A + B vs. C + D. Our results show that this ML model can discriminate Type 1 BrS ECGs with high accuracy comparable to expert clinicians. Future availability of larger datasets may improve the model performance and increase the potential of the ESN as a clinical support system tool for daily clinical practice. [Display omitted] •Brugada Syndrome is an arrhythmogenic disease with a peculiar pattern challenging to recognise in ECG.•Machine learning automatic methodologies could help clinicians in the diagnosis of the disease.•ESN could recognise BrS with performance comparable to or better than the expert cardiologists.•ESN analyse the ECG time series without the need for specific features pre-processing.
ISSN:2405-8440
2405-8440
DOI:10.1016/j.heliyon.2024.e25404