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Efficient single-lead ECG beat classification using Matching Pursuit based features and an Artificial Neural Network

机译:使用匹配的基于追求的特征和人工神经网络有效的单引线ECG击败分类

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In this paper we employ the Matching Pursuit algorithm in order to obtain compact time-frequency representations of ECG data, which are then utilized from an ANN to achieve beat classification. To obtain optimum performance, the effect of the following attributes on the classification performance is examined: number of atoms, type of wavelet and number of ECG samples around the R peak. Our goal is to derive an accurate, efficient and real-time beat classification scheme, which could then be implemented on a resource-constrained portable device such as a cell phone. The proposed scheme is based on an existing beat classification method, but has the following favorable attributes: it utilizes less features, a single ECG lead and also only a single MLP in order to be able to discriminate between various abnormal beats. The performance of our approach is evaluated using the MIT-BIH Arrhythmia database. Provided results illustrate the accuracy of the proposed method (98.7%), which together with its simplicity (a single linear transform is required for feature extraction) justify its use for real-time classification of abnormal heartbeats on a portable heart monitoring system.
机译:在本文中,我们采用匹配的追踪算法,以获得ECG数据的紧凑时频表示,然后从ANN中利用以实现节拍分类。为了获得最佳性能,检查了以下属性对分类性能的影响:原子数,小波类型和R峰周围的ECG样本数量。我们的目标是得出准确,有效和实时的节拍分类方案,然后可以在资源受限的便携式设备上实现,例如蜂窝电话。该方案基于现有的节拍分类方法,但具有以下有利的属性:它利用较少的特征,单个ECG铅,也只有单个MLP,以便能够区分各种异常节拍。使用MIT-BIH Erhythmia数据库进行评估我们的方法的性能。提供的结果说明了所提出的方法(98.7%)的准确性,其与其简单(特征提取需要单线性变换)证明其用于便携式心脏监测系统对异常心跳的实时分类。

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