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ECG-Based Heartbeat Classification Using Two-Level Convolutional Neural Network and RR Interval Difference

机译:基于二级卷积神经网络和RR间隔差异的基于ECG的心跳分类

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Arrhythmia classification based on electrocardiogram (ECG) is crucial in automatic cardiovascular disease diagnosis. The classification methods used in the current practice largely depend on hand-crafted manual features. However, extracting hand-crafted manual features may introduce significant computational complexity, especially in the transform domains. In this study, an accurate method for patient-specific ECG beat classification is proposed, which adopts morphological features and timing information. As to the morphological features of heartbeat, an attention-based two-level 1-D CNN is incorporated in the proposed method to extract different grained features automatically by focusing on various parts of a heartbeat. As to the timing information, the difference between previous and post RR intervels is computed as a dynamic feature. Both the extracted morphological features and the interval difference are used by multi-layer perceptron (MLP) for classifing ECG signals. In addition, to reduce memory storage of ECG data and denoise to some extent, an adaptive heartbeat normalization technique is adopted which includes amplitude unification, resolution modification, and signal difference. Based on the MIT-BIH arrhythmia database, the proposed classification method achieved sensitivity Sen =93.4% and positive predictivity Ppr =94.9% in ventricular ectopic beat (VEB) detection, sensitivity Sen =86.3% and positive predictivity Ppr =80.0% in supraventricular ectopic beat (SVEB) detection, and overall accuracy OA =97.8% under 6-bit ECG signal resolution. Compared with the state-of-the-art automatic ECG classification methods, these results show that the proposed method acquires comparable accuracy of heartbeat classification though ECG signals are represented by lower resolution.
机译:基于心电图(ECG)的心律失常分类在自动心血管疾病诊断中至关重要。当前实践中使用的分类方法在很大程度上取决于手工制作的手动功能。但是,提取手工制作的手动特征可能会导致相当大的计算复杂性,尤其是在变换域中。在这项研究中,提出了一种准确的针对患者的心电图心跳分类的方法,该方法采用了形态特征和时间信息。关于心跳的形态特征,在提出的方法中结合了基于注意力的两级一维CNN,以通过关注心跳的各个部分来自动提取不同的粒状特征。关于定时信息,将前RR间隔和后RR间隔之间的差计算为动态特征。提取的形态特征和间隔差异都被多层感知器(MLP)用于对ECG信号进行分类。另外,为了在某种程度上减少ECG数据的存储器存储和降噪,采用了一种自适应心跳归一化技术,该技术包括幅度统一,分辨率修改和信号差。基于MIT-BIH心律失常数据库,所提出的分类方法在室性异位搏动(VEB)检测中达到灵敏度 Sen = 93.4%和阳性预测率 Ppr = 94.9%,灵敏度 Sen = 86.3%和在室上性异位搏动(SVEB)检测中,阳性预测率Ppr = 80.0%,在6位ECG信号分辨率下,总体准确度 97.8%。与最新的自动心电图分类方法相比,这些结果表明,尽管以较低的分辨率表示心电图信号,但该方法仍具有相当的心跳分类精度。

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