ECG-Derived Respiration Using a Real-Time QRS Detector Based on Empirical Mode Decomposition

Christina Kozia, R. Herzallah, D. Lowe
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引用次数: 4

Abstract

Respiration Rate (RR) is an important physiological indicator and plays a major role in health deterioration monitoring. Despite that, it has been neglected in hospital wards due to inadequate nursing skills and insufficient equipment. ECG signal, which is always monitored in a clinical setting, is modulated by respiration which renders it a highly enticing mean for the automatic RR estimation. In addition, accurate QRS detection is pivotal to RR estimation from the ECG signal. The investigation of QRS complexes is a continuing concern in ECG analysis because current methods are still inaccurate and miss heart beats. This paper presents a frequency domain RR estimation method which uses a novel real-time QRS detector based on Empirical Mode Decomposition (EMD). Another novelty of the proposed work stems from the RR estimation in the frequency domain as opposed to some of the current methods which rely on a time domain analysis. As will be shown later, the RR extraction in the frequency domain provides more accurate results compared to the time domain methods. Moreover, our novel QRS detector uses an adaptive threshold over a sliding window and differentiates large Q- from R-peaks, facilitating a more accurate RR estimation. The performance of our methods was tested on real data from Capnobase dataset. An average mean absolute error of less than 0.5 breath per minute was achieved using our frequency domain method, compared to 6 breaths per minute of the time domain analysis. Moreover, our modified QRS detector shows comparable results to other published methods. achieving a detection rate over 99.80%.
基于经验模态分解的实时QRS检测器的心电图衍生呼吸
呼吸速率(RR)是一项重要的生理指标,在健康恶化监测中起着重要作用。尽管如此,由于护理技能不足和设备不足,它在医院病房中一直被忽视。在临床环境中经常监测的心电信号是由呼吸调节的,这使得它成为自动RR估计的一个非常诱人的方法。此外,准确的QRS检测对心电信号的RR估计至关重要。QRS复合体的研究一直是心电分析中关注的问题,因为目前的方法仍然不准确,遗漏了心跳。本文提出了一种基于经验模态分解(EMD)的实时QRS检测器的频域RR估计方法。提出的工作的另一个新颖之处源于频域的RR估计,而不是当前依赖于时域分析的一些方法。正如后面所示,与时域方法相比,频域的RR提取提供了更准确的结果。此外,我们的新型QRS检测器在滑动窗口上使用自适应阈值,并区分大Q-峰和r -峰,从而促进更准确的RR估计。在Capnobase数据集的实际数据上对我们的方法进行了性能测试。使用我们的频域方法实现的平均绝对误差小于每分钟0.5次呼吸,而时域分析为每分钟6次呼吸。此外,我们改进的QRS检测器显示出与其他已发表的方法相当的结果。检测率达到99.80%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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