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基于脉冲神经网络的低功耗环境下心电图分类方法综述。

Review on spiking neural network-based ECG classification methods for low-power environments.

作者信息

Choi Hansol, Park Jangsoo, Lee Jongseok, Sim Donggyu

机构信息

Department of Computer Engineering, Kwangwoon University, Seoul, Korea.

出版信息

Biomed Eng Lett. 2024 Jun 14;14(5):917-941. doi: 10.1007/s13534-024-00391-2. eCollection 2024 Sep.

Abstract

This paper reviews arrhythmia classification studies using electrocardiogram (ECG) signals. Research on automatically diagnosing arrhythmia in daily life has been actively underway for early detection and treatment of heart disease. Development of automatic arrhythmia classification using ECG signal began based on handcrafted morphological feature extraction and machine learning-based classification methods. As deep neural networks (DNN) show excellent performance in the signal processing field, studies using various types of DNN are also being conducted in ECG classification. However, these DNN-based studies have extremely high computational complexity, making it challenging to perform real-time classification, and are unsuitable for low-power environments such as wearable devices due to high power consumption. Currently, research based on spiking neural network (SNN), which mimics the low-power operation of the human nervous system, is attracting attention as a method that can dramatically reduce complexity and power consumption. The classification accuracy of the SNN-based ECG classification studies is close to that of the DNN-based studies. When combined with neuromorphic hardware, it shows ultra-low-power performance, suggesting the possibility of use in lightweight devices. In this paper, the SNN-based ECG classification studies for low-power environments are mainly reviewed, and prior to this, conventional and DNN-based ECG classification studies are also reviewed. We hope that this review will be helpful to researchers and engineers interested in the field of ECG classification.

摘要

本文综述了利用心电图(ECG)信号进行心律失常分类的研究。为了心脏病的早期检测和治疗,日常生活中自动诊断心律失常的研究一直在积极开展。基于手工形态特征提取和基于机器学习的分类方法,开始了利用ECG信号进行自动心律失常分类的研究。由于深度神经网络(DNN)在信号处理领域表现出优异的性能,因此在ECG分类中也在进行使用各种类型DNN的研究。然而,这些基于DNN的研究具有极高的计算复杂度,使得实时分类具有挑战性,并且由于功耗高而不适用于可穿戴设备等低功耗环境。目前,基于脉冲神经网络(SNN)的研究模仿了人类神经系统的低功耗运行,作为一种可以显著降低复杂度和功耗的方法正受到关注。基于SNN的ECG分类研究的分类准确率与基于DNN的研究相近。当与神经形态硬件结合时,它显示出超低功耗性能,表明了在轻量级设备中使用的可能性。本文主要综述了针对低功耗环境的基于SNN的ECG分类研究,在此之前,还综述了传统的和基于DNN的ECG分类研究。我们希望这篇综述对心电图分类领域感兴趣的研究人员和工程师有所帮助。

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