基于自主神经反应的Brugada综合征患者睡眠、运动和平视倾斜测试的多变量分类

M. Calvo, V. Rolle, D. Romero, N. Béhar, P. Gomis, P. Mabo, Alfredo I. Hernández
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引用次数: 0

摘要

对44名BS患者进行夜间、运动和头向上倾斜(HUT)测试时的几种自主神经标志物进行评估,以设计能够区分不同风险水平患者的分类器。比较基于步进的机器学习方法优化构建的预测模型的分类性能,以确定最能区分有症状和无症状患者的自主协议和标记。虽然运动和HUT测试一起比单独评估时产生更好的预测结果,但在所有分析组合中,使用最少特征的基于夜间的分类器表现出最佳性能(AUC = 95%)。这个最佳特征子集主要由凌晨4点至5点之间提取的标记组成。因此,结果为夜间分析(主要是在睡眠的最后几个小时)在BS风险分层中的作用提供了进一步的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multivariate Classification of Brugada Syndrome Patients Based on the Autonomic Response During Sleep, Exercise and Head-up Tilt Testing
Several autonomic markers were estimated overnight and during exercise and head-up tilt (HUT) testing for 44 BS patients, to design classifiers capable of distinguishing patients at different levels of risk. The classification performance of predictive models built from the optimization of a step-based machine-learning method were compared, so as to identify those autonomic protocols and markers best distinguishing between symptomatic and asymptomatic patients. Although exercise and HUT testing together led to better predictive results than when they were separately assessed, among all analyzed combinations, the night-based classifier presented the best performance (AUC = 95%), using the least amount of features. This optimal features subset was mostly composed of markers extracted between 4 a.m. - 5 a.m. Thus, results provide further evidence for the role of nighttime analysis, mainly during the last hours of sleep, for risk stratification in BS.
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