Comparing the Performance of Published Risk Scores in Brugada Syndrome: A Multi-center Cohort Study

作者:Lee, Sharen; Zhou, Jiandong; Chung, Cheuk To; Lee, Rebecca On Yu; Bazoukis, George; Letsas, Konstantinos P.; Wong, Wing Tak; Wong, Ian Chi Kei; Mok, Ngai Shing; Liu, Tong; Zhang, Qingpeng; Tse, Gary*
来源:Current Problems in Cardiology, 2022, 47(12): 101381.
DOI:10.1016/j.cpcardiol.2022.101381

摘要

The management of Brugada Syndrome (BrS) patients at intermediate risk of arrhythmic events remains controversial. The present study evaluated the predictive performance of different risk scores in an Asian BrS population and its intermediate risk subgroup. This retrospective cohort study included consecutive patients diagnosed with BrS from January 1, 1997 to June 20, 2020 from Hong Kong. The primary outcome is sustained ventricular tachyarrhythmias. Two novel risk risk scores and 7 machine learning-based models (random survival forest, Ada boost classifier, Gaussian nayve Bayes, light gradient boosting machine, random forest classifier, gradient boosting classifier and decision tree classifier) were developed. The area under the receiver operator characteristic curve (AUC) [95% confidence intervals] was compared between the different models. This study included 548 consecutive BrS patients (7% female, age at diagnosis: 50 +/- 16 years, follow-up: 84 +/- 55 months). For the whole cohort, the score developed by Sieira et al showed the best performance (AUC: 0.806 [0.747-0.865]). A novel risk score was developed using the Sieira score and additional variables significant on univariable Cox regression (AUC: 0.855 [0.808-0.901]). A simpler score based on non-invasive results only showed a statistically comparable AUC (0.784 [0.724-0.845]), improved using random survival forests (AUC: 0.942 [0.913-0.964]). For the intermediate risk subgroup (N = 274), a gradient boosting classifier model showed the best performance (AUC: 0.814 [0.791-0.832]). A simple risk score based on clinical and electrocardiographic variables showed a good performance for predicting VT/VF, improved using machine learning.