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储能系统技术 储能系统 深度学习 ★ 4.0

自监督心电图去噪

Self-Supervised Electrocardiograph De-Noising

作者 Xiaoqiang Liu · Yisen Huang · Yubin Wang · Chanchan Lin · Yingxuan Huang · Xiaobo Liu
期刊 IEEE Access
出版日期 2025年1月
技术分类 储能系统技术
技术标签 储能系统 深度学习
相关度评分 ★★★★ 4.0 / 5.0
关键词 心电图去噪 神经网络 心电图信号 噪声 自适应
语言:

中文摘要

心电图记录心跳,具有潜在救命价值,但ECG信号严重受噪声干扰,包括有意义的心脏偏转、其他生物波和监测设备噪声,导致心脏疾病分析不准确,需在诊断前进行去噪预处理。以往方法基于滤波或波分解算法,未深入考虑ECG特定数据结构,不能适应不同设备和电极记录的信号。本文提出神经网络实现的新ECG去噪方法,无需清洁信号监督。通过估计和仿真噪声信号,再由神经网络减去仿真噪声获得去噪信号。公开数据集实验验证该方法适应不同患者和设备,基于所提去噪方法的ECG分类优于传统方法。

English Abstract

The electrocardiogram (ECG) records heartbeats and is potentially life-saving. However, the ECG signals (e.g., recorded by the standard ECG monitoring system or the Holter ECG monitoring system) heavily suffered from the noises. Thus, the recorded signals involve meaningful cardiac deflections, other biological waves (e.g., caused by the muscle or electrode movements), and even some noises from the monitoring devices (e.g., the power cables). These noise sources would result in inaccurate analyses of cardiac diseases, thus requiring the ECG de-noising methods in data pre-processing phase before the diagnoses. Previous work provided various ECG de-noising approaches, typically based on some filter algorithms or some wave decomposition algorithms. Most of these approaches did not profoundly consider the ECG signals’ specific data structure, and were not adaptive to the signals recorded by various devices or different skin electrodes. Inspired by the ECG recording theory, we find it available to extract noise information from noisy ECG signals directly. We propose a new ECG de-noising method implemented by the neural network, which de-noise the ECG signals without the supervision of the clean signals. The procedure in the self-supervision is straightforward: we first estimate and simulate the noise signals according to the given noisy ECG signals, and then “subtract” the simulated noises to obtain the de-noised ECG signals by the neural network. Experiments on a public dataset verify that our approach is adaptive to ECG signals from different patients and devices. Also, it is proven that the classification on the ECG signals de-noised by the proposed de-noising methods outperforms those with the traditional de-noising methods.
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SunView 深度解读

该自监督去噪技术对阳光电源储能系统信号处理具有启发。阳光ST储能变流器需要处理电网电压电流信号中的谐波和噪声,该神经网络去噪方法可应用于电能质量监测。阳光可开发无监督信号处理算法,提升电网扰动检测和谐波分析精度,优化并网控制策略,增强系统电网适应性和稳定性。