Back close

A novel prediction model for risk stratification in patients with a type 1 Brugada ECG pattern

Publication Type : Journal Article

Thematic Areas : Medical Sciences

Publisher : Journal of Electrocardiology

Source : J Electrocardiol, Volume 55, p.65-71 (2019)

Url : https://www.sciencedirect.com/science/article/abs/pii/S0022073618307891

Campus : Kochi

School : School of Medicine

Department : Cardiology

Year : 2019

Abstract : Background Risk stratification in Brugada syndrome remains a controversial and unresolved clinical problem, especially in asymptomatic patients with a type 1 ECG pattern. The purpose of this study is to derive and validate a prediction model based on clinical and ECG parameters to effectively identify patients with a type 1 ECG pattern who are at high risk of major arrhythmic events (MAE) during follow-up. Methods This study analysed data from 103 consecutive patients with Brugada Type 1 ECG pattern and no history of previous cardiac arrest. The prediction model was derived using logistic regression with MAE as the primary outcome, and patient demographic and electrocardiographic parameters as potential predictor variables. The model was externally validated in an independent cohort of 42 patients. Results The final model (Brugada Risk Stratification [BRS] score) consisted of 4 independent predictors (1 point each) of MAE during follow-up (median 85.3 months): spontaneous type 1 pattern, QRS fragments in inferior leads≥3,S wave upslope duration ratio ≥ 0.8, and T peak – T end ≥ 100 ms. The BRS score (AUC = 0.95,95% CI 0.0.92–0.98) stratifies patients with a type 1 ECG pattern into low (BRS score ≤ 2) and high (BRS score ≥ 3) risk classes, with a class specific risk of MAE of 0–1.1% and 92.3–100% across the derivation and validation cohorts, respectively. Conclusions The BRS score is a simple bed-side tool with high predictive accuracy, for risk stratification of patients with a Brugada Type 1 ECG pattern. Prospective validation of the prediction model is necessary before this score can be implemented in clinical practice.

Cite this Research Publication : M. Subramanian, Prabhu, M. A., Rai, M., Harikrishnan M. S., Saritha Sekhar, Praveen G. Pai, and Natarajan, K. U., “A novel prediction model for risk stratification in patients with a type 1 Brugada ECG pattern”, Journal of Electrocardiology,
Volume 55, July–August 2019, Pages 65-71, DOI: https://doi.org/10.1016/j.jelectrocard.2019.04.006

Admissions Apply Now