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Automated arrhythmia classification based on a combination network of CNNandLSTM

机译:基于CNN和LSTM组合网络的自动心律失常分类

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Arrhythmia is an abnormal heartbeat rhythm, and its prevalence increases with age. An electrocardiogram (ECG) is a standard tool for detecting cardiac activity. However, because of the low amplitude, complexity, and non-linearity of the ECG signal, it is difficult to manually perform a rapid and accurate classification. Therefore, an automatic system that can identify different abnormal heartbeats from a large amount of ECG data should be developed for use in the healthcare field. This study proposed an approach based on deep learning that combined convolutional neural networks (CNNs) and long short-term memory networks (LSTM) to automatically identify six types of ECG signals: normal (N) sinus rhythm segments, atrial fibrillation (AFIB), ventricular bigeminy (B), pacing rhythm (13), atrial flutter (AFL), and sinus bradycardia (SBR). The proposed network applied a multi-input structure to process 10 s ECG signal segments and corresponding RR intervals from the MIT-BIH arrhythmia database. With a five-fold cross-validation strategy, this network achieved 99.32 % accuracy. Then, the diversity of the subjects was increased in the training data by supplementing database, improving the previous network model. The method was validated using two additional databases, which are independent of the training database of the network. For the new N and AFIB in additional databases, the proposed method achieved an average accuracy of 97.15 %. The results showed that the proposed model had robust generalization performance and could be used as an auxiliary tool to help clinicians diagnose arrhythmia after training with a larger database. (C) 2019 Elsevier Ltd. All rights reserved.
机译:心律失常是一种异常的心律,其患病率随年龄增长而增加。心电图(ECG)是用于检测心脏活动的标准工具。但是,由于ECG信号的振幅低,复杂度高和非线性,因此很难手动执行快速而准确的分类。因此,应该开发一种可以从大量ECG数据中识别出不同异常心跳的自动系统,以用于医疗保健领域。这项研究提出了一种基于深度学习的方法,该方法结合了卷积神经网络(CNN)和长短期记忆网络(LSTM)来自动识别六种类型的ECG信号:正常(N)窦性心律节段,房颤(AFIB),心室重婚(B),起搏节律(13),房扑(AFL)和窦性心动过缓(SBR)。拟议的网络应用了一种多输入结构来处理MIT-BIH心律失常数据库中的10 s ECG信号段和相应的RR间隔。通过五重交叉验证策略,该网络达到了99.32%的准确性。然后,通过补充数据库,改进以前的网络模型,增加了训练数据中受试者的多样性。使用另外两个数据库验证了该方法,这两个数据库与网络的培训数据库无关。对于附加数据库中的新N和AFIB,所提方法的平均准确度达到97.15%。结果表明,所提出的模型具有强大的泛化性能,可以作为辅助工具来帮助临床医生在使用较大的数据库进行训练后诊断心律失常。 (C)2019 Elsevier Ltd.保留所有权利。

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