Detection of irregular heartbeats using tensors

Griet Goovaerts, O. D. Wel, B. Vandenberk, R. Willems, S. Huffel
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引用次数: 8

Abstract

Automatic classification of heartbeats in different categories is important for ECG analysis. The number of irregular heartbeats in a signal can for example be used as a risk stratifier for sudden cardiac death. Current heart-beat classification methods typically use time or frequency domain features to characterize heartbeats. We propose the use of tensors to incorporate the structural information that is present in multilead ECG channels. Since different ECG leads provide information on a particular orientation in space, more robust detection can be done if all leads are considered. After preprocessing and heartbeat detection using wavelet-based methods, the ECG signal is segmented beat-by-beat. The different heartbeats are then placed in a three-dimensional tensor with dimensions time, channels and heartbeats. Canonical Polyadic Decomposition is used to decompose the tensor. The results are three loading vectors, corresponding to the dimensions of the original tensor. Through analysis of these loading vectors, irregular heartbeats can be detected using a simple thresholding procedure. The method has been applied to a subset of the St.-Petersburg Institute of Cardiological Technics 12-lead Arrhythmia Database available on Physionet. When applying the method to the first 10 signals, we obtain a mean sensitivity and specificity of more than 90%. These results indicate that the presented method is a new and reliable way of performing irregular heartbeat detection.
利用张量检测不规则心跳
对不同类型的心跳进行自动分类是心电图分析的重要内容。例如,信号中不规则心跳的次数可以用作心源性猝死的风险分层指标。目前的心跳分类方法通常使用时域或频域特征来表征心跳。我们建议使用张量来整合存在于多导联ECG通道中的结构信息。由于不同的ECG导联提供空间中特定方向的信息,如果考虑所有导联,则可以进行更稳健的检测。心电信号经过预处理和基于小波的检测方法,逐拍分割。然后将不同的心跳放置在具有时间、通道和心跳维度的三维张量中。使用正则多元分解对张量进行分解。结果是三个加载向量,对应于原始张量的维度。通过分析这些加载向量,可以使用简单的阈值程序检测不规则心跳。该方法已应用于Physionet上提供的圣彼得堡心脏病技术研究所12导联心律失常数据库的一个子集。当将该方法应用于前10个信号时,我们获得了超过90%的平均灵敏度和特异性。结果表明,该方法是一种新的、可靠的不规则心跳检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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