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Deep Learning-Based Stacked Denoising and Autoencoder for ECG Heartbeat Classification

机译:基于深度学习的堆叠去噪与ECG心跳分类

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The electrocardiogram (ECG) is a widely used, noninvasive test for analyzing arrhythmia. However, the ECG signal is prone to contamination by different kinds of noise. Such noise may cause deformation on the ECG heartbeat waveform, leading to cardiologists' mislabeling or misinterpreting heartbeats due to varying types of artifacts and interference. To address this problem, some previous studies propose a computerized technique based on machine learning (ML) to distinguish between normal and abnormal heartbeats. Unfortunately, ML works on a handcrafted, feature-based approach and lacks feature representation. To overcome such drawbacks, deep learning (DL) is proposed in the pre-training and fine-tuning phases to produce an automated feature representation for multi-class classification of arrhythmia conditions. In the pre-training phase, stacked denoising autoencoders (DAEs) and autoencoders (AEs) are used for feature learning; in the fine-tuning phase, deep neural networks (DNNs) are implemented as a classifier. To the best of our knowledge, this research is the first to implement stacked autoencoders by using DAEs and AEs for feature learning in DL. Physionet's well-known MIT-BIH Arrhythmia Database, as well as the MIT-BIH Noise Stress Test Database (NSTDB). Only four records are used from the NSTDB dataset: 118 24 dB, 118 -6 dB, 119 24 dB, and 119 -6 dB, with two levels of signal-to-noise ratio (SNRs) at 24 dB and -6 dB. In the validation process, six models are compared to select the best DL model. For all fine-tuned hyperparameters, the best model of ECG heartbeat classification achieves an accuracy, sensitivity, specificity, precision, and F1-score of 99.34%, 93.83%, 99.57%, 89.81%, and 91.44%, respectively. As the results demonstrate, the proposed DL model can extract high-level features not only from the training data but also from unseen data. Such a model has good application prospects in clinical practice.
机译:心电图(ECG)是广泛使用的,非侵入性试验,用于分析心律失常。然而,ECG信号易于通过不同种类的噪声污染。这种噪音可能导致ECG心跳波形的变形,导致心脏病学家的误标记或由于不同类型的伪影和干扰而误解心跳。为了解决这个问题,一些先前的研究提出了一种基于机器学习(ML)的计算机化技术,以区分正常和异常的心跳。不幸的是,ML以手工制作,基于功能的方法工作,缺乏特征表示。为了克服这种缺点,在预训练和微调阶段提出了深度学习(DL),以产生用于对心律失常条件的多级分类的自动特征表示。在预训练阶段,用于特征学习的堆叠的去噪自动化器(DAES)和AutoEncoders(AES);在微调阶段,深度神经网络(DNN)被实现为分类器。据我们所知,本研究是第一个通过使用DAT和AES在DL中使用DAE和AES实现堆叠的AutoEncoders。 Physioneet的众所周知的MIT-BIH心律失常数据库,以及MIT-BIH噪声应力测试数据库(NSTDB)。在NSTDB数据集中仅使用四个记录:118 24 dB,118 -6 dB,119 24 dB和119 -6 dB,具有24 dB和-6 dB的两级信噪比(SNR)。在验证过程中,比较六种模型,以选择最佳DL模型。对于所有微调的超参数,ECG心跳分类的最佳模型可分别实现精度,敏感性,特异性,精度,精度,F1分,分别为99.34%,93.83%,99.57%,89.81%和91.44%。结果表明,所提出的DL模型不仅可以从训练数据中提取高级功能,而且可以从看不见的数据提取高级别功能。这种模型在临床实践中具有良好的应用前景。

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