Romero Daniel, Calvo Mireia, Le Rolle Virginie, Béhar Nathalie, Mabo Phillipe, Hernández Alfredo
Institute for Bioengineering of Catalonia (IBEC), Campus Besòs EEBE-UPC, Ave. E. Maristany 16, Building C, L5.3, Barcelona, E-08019, Spain.
CHU Rennes, Inserm, University of Rennes, LTSI - UMR 1099, F-35000, Rennes, France.
Med Biol Eng Comput. 2022 Jan;60(1):81-94. doi: 10.1007/s11517-021-02448-1. Epub 2021 Oct 28.
Identification of asymptomatic patients at higher risk for suffering cardiac events remains controversial and challenging in Brugada syndrome (BS). In this work, we proposed an ECG-based classifier to predict BS-related symptoms, by merging the most predictive electrophysiological features derived from the ventricular depolarization and repolarization periods, along with autonomic-related markers. The initial feature space included local and dynamic ECG markers, assessed during a physical exercise test performed in 110 BS patients (25 symptomatic). Morphological, temporal and spatial properties quantifying the ECG dynamic response to exercise and recovery were considered. Our model was obtained by proposing a two-stage feature selection process that combined a resampled-based regularization approach with a wrapper model assessment for balancing, simplicity and performance. For the classification step, an ensemble was constructed by several logistic regression base classifiers, whose outputs were fused using a performance-based weighted average. The most relevant predictors corresponded to the repolarization interval, followed by two autonomic markers and two other makers of depolarization dynamics. Our classifier allowed for the identification of novel symptom-related markers from autonomic and dynamic ECG responses during exercise testing, suggesting the need for multifactorial risk stratification approaches in order to predict future cardiac events in asymptomatic BS patients. Graphical abstract Pipeline for feature selection and predictive modeling of symptoms in Brugada syndrome.
在 Brugada 综合征(BS)中,识别心脏事件发生风险较高的无症状患者仍然存在争议且具有挑战性。在这项研究中,我们提出了一种基于心电图的分类器来预测 BS 相关症状,方法是将源自心室去极化和复极化期的最具预测性的电生理特征与自主神经相关标志物相结合。初始特征空间包括在 110 例 BS 患者(25 例有症状)进行的体力运动试验期间评估的局部和动态心电图标志物。考虑了量化心电图对运动和恢复的动态反应的形态学、时间和空间特性。我们的模型是通过提出一个两阶段特征选择过程获得的,该过程将基于重采样的正则化方法与用于平衡、简单性和性能的包装模型评估相结合。对于分类步骤,由几个逻辑回归基分类器构建一个集成模型,其输出使用基于性能的加权平均值进行融合。最相关的预测因子对应于复极化间期,其次是两个自主神经标志物和另外两个去极化动力学标志物。我们的分类器能够从运动试验期间的自主神经和动态心电图反应中识别新的症状相关标志物,这表明需要采用多因素风险分层方法来预测无症状 BS 患者未来的心脏事件。图形摘要 Brugada 综合征症状特征选择和预测建模流程。