首页> 外文会议>Annual Conference of Japanese Society for Medical and Biological Engineering;Annual International Conference of the IEEE Engineering in Medicine and Biology Society >Employing ensemble empirical mode decomposition for artifact removal: Extracting accurate respiration rates from ECG data during ambulatory activity
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Employing ensemble empirical mode decomposition for artifact removal: Extracting accurate respiration rates from ECG data during ambulatory activity

机译:采用整体经验模式分解来去除伪影:在门诊活动期间从ECG数据中提取准确的呼吸率

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Observation of a patient's respiration signal can provide a clinician with the required information necessary to analyse a subject's wellbeing. Due to an increase in population number and the aging population demographic there is an increasing stress being placed on current healthcare systems. There is therefore a requirement for more of the rudimentary patient testing to be performed outside of the hospital environment. However due to the ambulatory nature of these recordings there is also a desire for a reduction in the number of sensors required to perform the required recording in order to be unobtrusive to the wearer, and also to use textile based systems for comfort. The extraction of a proxy for the respiration signal from a recorded electrocardiogram (ECG) signal has therefore received considerable interest from previous researchers. To allow for accurate measurements, currently employed methods rely on the availability of a clean artifact free ECG signal from which to extract the desired respiration signal. However, ambulatory recordings, made outside of the hospital-centric environment, are often corrupted with contaminating artifacts, the most degrading of which are due to subject motion. This paper presents the use of the ensemble empirical mode decomposition (EEMD) algorithm to aid in the extraction of the desired respiration signal. Two separate techniques are examined; 1) Extraction of the respiration signal directly from the noisy ECG 2) Removal of the artifact components relating to the subject movement allowing for the use of currently available respiration signal detection techniques. Results presented illustrate that the two proposed techniques provide significant improvements in the accuracy of the breaths per minute (BPM) metric when compared to the available true respiration signal. The error reduced from ± 5.9 BPM prior to the use of the two techniques to ± 2.9 and ± 3.3 BPM post processing using the EEMD algorithm - echniques.
机译:观察患者的呼吸信号可以为临床医生提供分析受试者的健康所必需的所需信息。由于人口数量的增加和人口老龄化,当前的医疗系统受到越来越大的压力。因此,需要在医院环境之外进行更多的基本患者测试。然而,由于这些记录的动态特性,还期望减少执行所需记录所需的传感器数量,以对佩戴者不造成干扰,并且还希望使用基于织物的系统来获得舒适感。因此,从先前的研究人员中,从记录的心电图(ECG)信号中提取呼吸信号的代理已经引起了极大的兴趣。为了进行精确的测量,当前采用的方法依赖于无清洁的无伪像的ECG信号的可用性,可从中提取所需的呼吸信号。但是,在以医院为中心的环境之外进行的动态记录通常会被污染的文物破坏,其中最退化的归因于受试者的运动。本文介绍了集成经验模式分解(EEMD)算法的使用,以帮助提取所需的呼吸信号。研究了两种独立的技术; 1)直接从嘈杂的ECG中提取呼吸信号2)去除与受试者运动有关的伪影分量,从而允许使用当前可用的呼吸信号检测技术。呈现的结果表明,与可用的真实呼吸信号相比,这两种提议的技术显着提高了每分钟呼吸(BPM)指标的准确性。使用EEMD算法-echniques后,误差从使用这两种技术之前的±5.9 BPM降低到±2.9和±3.3 BPM。

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