{rfName}
Su

Indexed in

License and use

Citations

Altmetrics

Analysis of institutional authors

Isabel-Roquero A.AuthorArbelo E.Author

Share

December 5, 2024
Publications
>
Proceedings Paper
Green

Supervised Classification of Brugada Syndrome Patients by ECG-Derived Markers

Publicated to:2013 40th Computing In Cardiology Conference, Cinc 2013. - 2023-01-01 (), DOI: 10.22489/CinC.2023.179

Authors: Isabel-Roquero A; Gomis P; Tortosa L; Leva A; Palmieri F; Arbelo E

Affiliations

Fundació de Recerca Sant Joan de Déu; Esplugues; Barcelona; Spain - Author
Institut d' Investigació August Pi y Sunyer (IDIBAPS); Barcelona; Spain - Author
Institut d' Investigació August Pi y Sunyer (IDIBAPS); Barcelona; Spain; Arrhythmias Section; Hospital Clínic; Barcelona; Spain; European Reference Network for Rare; Low Prevalence Complex Diseases of the Heart; Ern GUARD-Heart - Author
Universitat Politècnica de Catalunya; Eebe; Creb; Esaii Dept; Barcelona; Spain - Author
Universitat Politècnica de Catalunya; Eebe; Creb; Esaii Dept; Barcelona; Spain; Fundació de Recerca Sant Joan de Déu; Esplugues; Barcelona; Spain - Author
See more

Abstract

Brugada syndrome (BrS) has been associated with risk of ventricular fibrillation and sudden cardiac death (SCD). Its risk stratification remains challenging as the only accepted factor is the presence of resuscitated cardiac arrest or arrhythmogenic syncope and the majority of patients are diagnosed in the asymptomatic phase. Moreover, the only treatment available to prevent SCD is the implantation of a cardiac defibrillator, which can lead to adverse events such as inappropriate shocks. In this study, we present Machine Learning (ML)/supervised classification tools for BrS risk stratification based on the automatic analysis of long-term high-resolution electrocar-diographic information. For this purpose, 12-lead ECG 24h Holter and clinical variables from 64 Brugada subjects were used. ECG signals were preprocessed with a signal-averaging algorithm to reduce noise and obtain individual ECG beats for delineation, resulting in 11 ECG biomarkers. Subsequently, 4 different ML/supervised algorithms based on Decision Tree, XGBoost, K-Nearest Neighbors and support vector machine algorithms were tested. AUC results were around 90%, however sensitivity results were around 50%. The results do not efficiently predict BrS symptomatic patients at risk of SCD, which is mainly caused by the reduced number of symptomatic patients. Further studies with additional subjects and variables may improve this prognosis. © 2023 CinC.

Keywords

Adverse eventsAutomatic analysisBiomedical signal processingCardiac arrestCardiac deathClassification (of information)Classification toolDecision treesElectrocardiogramsHigh resolutionMachine-learningNearest neighbor searchRisk assessmentRisk stratificationSupervised classificationSupport vector machinesVentricular fibrillation

Quality index

Impact and social visibility

From the perspective of influence or social adoption, and based on metrics associated with mentions and interactions provided by agencies specializing in calculating the so-called "Alternative or Social Metrics," we can highlight as of 2025-07-09:

  • The use of this contribution in bookmarks, code forks, additions to favorite lists for recurrent reading, as well as general views, indicates that someone is using the publication as a basis for their current work. This may be a notable indicator of future more formal and academic citations. This claim is supported by the result of the "Capture" indicator, which yields a total of: 12 (PlumX).

It is essential to present evidence supporting full alignment with institutional principles and guidelines on Open Science and the Conservation and Dissemination of Intellectual Heritage. A clear example of this is:

  • The work has been submitted to a journal whose editorial policy allows open Open Access publication.

Leadership analysis of institutional authors

There is a significant leadership presence as some of the institution’s authors appear as the first or last signer, detailed as follows: First Author (Isabel Roquero, Alba) and Last Author (Arbelo Lainez, Elena).