Denoising ECG signals and their analysis using Hybrid Deep learning model

Ankita Shukla, Izharuddin
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Abstract

Proactive illness diagnosis with AI and related technologies has been an intriguing and productive field in the last ten years. Cardiovascular illnesses are among the medical conditions that need regular monitoring. Arrhythmia, a type of coronary heart disease, is frequently observed by clinicians using electrocardiography (ECG). In humans, an ECG records electrical activity and cardiac rhythm. In recent decades, there has been a substantial surge in the use of neural networks to detect cardiovascular abnormalities. It has been shown that using the denoised signal as compared to the raw input signal increases the probability of better identification of arrhythmias. In this paper, rigorous, three-step preprocessing is done to improve classification accuracy. Firstly, denoising is done using a wavelet transform, then, for baseline artifact filtering, five filters have been applied to ECG signals, and lastly, an R peak is detected. A hybrid (CNN+LSTM) model is implemented to automate arrhythmia categorization on a denoised ECG signal. Comparative analysis demonstrates that the suggested model outperforms contemporary models in terms of various performance factors.
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基于混合深度学习模型的心电信号去噪及其分析
在过去的十年里,人工智能和相关技术的主动疾病诊断已经成为一个有趣而富有成效的领域。心血管疾病是需要定期监测的医疗状况之一。心律失常是冠心病的一种,临床医生经常使用心电图(ECG)观察到心律失常。在人类中,心电图记录电活动和心律。近几十年来,神经网络在检测心血管异常方面的应用激增。研究表明,与原始输入信号相比,使用降噪信号可以增加更好地识别心律失常的可能性。本文通过严格的三步预处理来提高分类精度。首先利用小波变换进行去噪,然后对心电信号进行基线伪影滤波,最后检测出一个R峰值。采用CNN+LSTM混合模型对去噪的心电信号进行心律失常自动分类。对比分析表明,所建议的模型在各种性能因素方面优于当代模型。
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