A Primary Prevention Clinical Risk Score Model for Patients With Brugada Syndrome (BRUGADA-RISK).

Shohreh Honarbakhsh; Rui Providencia; Jorge Garcia-Hernandez; Claire A Martin; Ross J Hunter; Wei Y Lim; Claire Kirkby; Adam J Graham; Ardalan Sharifzadehgan; Victor Waldmann; +38 more... Eloi Marijon; Carmen Munoz-Esparza; Javier Lacunza; Juan Ramón Gimeno-Blanes; Benedicte Ankou; Philippe Chevalier; Nátalia Antonio; Luís Elvas; Silvia Castelletti; Lia Crotti; Peter Schwartz; Mauricio Scanavacca; Francisco Darrieux; Luciana Sacilotto; Johanna Mueller-Leisse; Christian Veltmann; Alessandro Vicentini; Andrea Demarchi; Nuno Cortez-Dias; Pedro Silverio Antonio; João de Sousa; Pedro Adragao; Diogo Cavaco; Francisco Morosco Costa; Ziad Khoueiry; Serge Boveda; Mario João Sousa; Zeynab Jebberi; Patrick Heck; Sarju Mehta; Giulio Conte; Tardu Ozkartal; Angelo Auricchio; Martin D Lowe; Richard J Schilling; David Prieto-Merino ORCID logo; Pier D Lambiase; Brugada Syndrome Risk Investigators; Brugada Syndrome Risk Investigators; (2021) A Primary Prevention Clinical Risk Score Model for Patients With Brugada Syndrome (BRUGADA-RISK). JACC. Clinical electrophysiology, 7 (2). pp. 210-222. ISSN 2405-500X DOI: 10.1016/j.jacep.2020.08.032
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OBJECTIVES: The goal of this study was to develop a risk score model for patients with Brugada syndrome (BrS). BACKGROUND: Risk stratification in BrS is a significant challenge due to the low event rates and conflicting evidence. METHODS: A multicenter international cohort of patients with BrS and no previous cardiac arrest was used to evaluate the role of 16 proposed clinical or electrocardiogram (ECG) markers in predicting ventricular arrhythmias (VAs)/sudden cardiac death (SCD) during follow-up. Predictive markers were incorporated into a risk score model, and this model was validated by using out-of-sample cross-validation. RESULTS: A total of 1,110 patients with BrS from 16 centers in 8 countries were included (mean age 51.8 ± 13.6 years; 71.8% male). Median follow-up was 5.33 years; 114 patients had VA/SCD (10.3%) with an annual event rate of 1.5%. Of the 16 proposed risk factors, probable arrhythmia-related syncope (hazard ratio [HR]: 3.71; p < 0.001), spontaneous type 1 ECG (HR: 3.80; p < 0.001), early repolarization (HR: 3.42; p < 0.001), and a type 1 Brugada ECG pattern in peripheral leads (HR: 2.33; p < 0.001) were associated with a higher risk of VA/SCD. A risk score model incorporating these factors revealed a sensitivity of 71.2% (95% confidence interval: 61.5% to 84.6%) and a specificity of 80.2% (95% confidence interval: 75.7% to 82.3%) in predicting VA/SCD at 5 years. Calibration plots showed a mean prediction error of 1.2%. The model was effectively validated by using out-of-sample cross-validation according to country. CONCLUSIONS: This multicenter study identified 4 risk factors for VA/SCD in a primary prevention BrS population. A risk score model was generated to quantify risk of VA/SCD in BrS and inform implantable cardioverter-defibrillator prescription.


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