基于k近邻的自动体外除颤器冲击建议算法

D. Hai, N. Tuan, Nguyen Thi Thu Hang, L. Châu
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引用次数: 0

摘要

震荡性心律,即心室颤动和室性心动过速,是心脏骤停(SCA)的主要原因,可以通过自动体外除颤器(AED)设备快速检测到。本文提出了一种简单高效的冲击建议算法,可实际应用于AED。该算法由k近邻分类器和36个最优特征组成,这些特征是利用改进变分模分解(MVMD)技术从原始心电信号和可震、非可震信号中提取出来的。交叉验证过程和顺序前向特征选择仔细地从整个特征空间中选择最优集。性能结果表明,MVMD是SCA检测性能的关键因素,与先前发表的算法相比,该算法在计算效率高的同时具有更高的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Shock Advice Algorithm based on K-Nearest Neighbors for Automated External Defibrillators
Shockable rhythms, namely ventricular fibrillation, and ventricular tachycardia, are the main cause of sudden cardiac arrests (SCA), which can be detected quickly by the automated external defibrillator (AED) devices. In this paper, a simple and efficient shock advice algorithm is developed, and it can be practically applied in AED. The proposed algorithm consists of K-nearest neighbor classifier and an optimal set of 36 features, which are extracted from original ECG and shockable, non-shockable signals using modified variational mode decomposition (MVMD) technique. Cross validation procedure and sequential forward feature selection are carefully applied to select an optimal set from entire feature space. The performance results show that the MVMD is the key element for SCA detection performance, and the proposed algorithm is computationally efficient while featuring greater detection performance compared to previous publications.
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