降低误报的基于信号质量的频率解调心电图呼吸频率估计方法

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Aditya Nalwaya;M. Sabarimalai Manikandan;Ram Bilas Pachori
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引用次数: 0

摘要

在这封信中,我们提出了一种基于信号质量感知频率解调(FD)的心电图(ECG)衍生呼吸频率(FD-ECG-derived RR)自动估算方法,该方法可减少静息和非卧床健康监测应用中不可避免的高噪声心电信号下的误报。所提出的 FD-ECG 导出呼吸频率估计方法包括三个主要步骤:信号质量检查以剔除高噪声心电信号;使用频率解调包络检测器提取呼吸诱导频率变化(RIFV)波形,通过使用简单的 R 峰检测器确定导数心电图波形的峰值;以及使用提取的 RIFV 波形的傅立叶幅值谱进行呼吸频率估计。在标准 Capnobase 和 BIDMC 数据库中,拟议的 FD-ECG 导出呼吸频率估计方法取得了良好的结果,平均绝对误差值分别为 5.01 和 5.37 次/分钟。所使用的信号质量感知 RR 估算方法通过剔除噪声心电信号,可降低 84.85${\%}$ 的误报率,质量评估准确率为 85.25${/%}$。所提出的简单方法具有轻量级的信号处理方法,因此适用于实时健康监测应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signal Quality-Aware Frequency Demodulation-Based ECG-Derived Respiration Rate Estimation Method With Reduced False Alarms
In this letter, we present an automated signal quality-aware frequency demodulation (FD)-based electrocardiogram (ECG)-derived respiration rate (FD-ECG-derived RR) estimation method with reduced false alarms under noisy ECG signals, which are unavoidable in resting and ambulatory health monitoring applications. The proposed FD-ECG-derived RR estimation method includes three major steps of signal quality checking to discard noisy ECG signals, respiratory-induced frequency variation (RIFV) waveform extraction using a frequency demodulation envelope detector by determining peaks of the derivative ECG waveform using a simple R-peak detector, and respiration rate estimation using the Fourier magnitude spectrum of the extracted RIFV waveform. On the standard Capnobase and BIDMC databases, the proposed FD-ECG-derived RR estimation method provides promising results with mean absolute error values of 5.01 and 5.37 breaths/min, respectively. The signal quality-aware RR estimation method used can reduce false alarm rate of 84.85 ${\%}$ by discarding noisy ECG signals with quality assessment accuracy of 85.25 ${\%}$ . The proposed simplistic method having lightweight signal processing approaches makes it suitable for real-time health monitoring applications.
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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