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Adaptive motion artefact reduction in respiration and ECG signals for wearable healthcare monitoring systems

机译:针对可穿戴式医疗监护系统的呼吸和ECG信号的自适应运动伪影减少

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摘要

Wearable healthcare monitoring systems (WHMSs) have received significant interest from both academia and industry with the advantage of non-intrusive and ambulatory monitoring. The aim of this paper is to investigate the use of an adaptive filter to reduce motion artefact (MA) in physiological signals acquired by WHMSs. In our study, a WHMS is used to acquire ECG, respiration and triaxial accelerometer (ACC) signals during incremental treadmill and cycle ergometry exercises. With these signals, performances of adaptive MA cancellation are evaluated in both respiration and ECG signals. To achieve effective and robust MA cancellation, three axial outputs of the ACC are employed to estimate the MA by a bank of gradient adaptive Laguerre lattice (GALL) filter, and the outputs of the GALL filters are further combined with time-varying weights determined by a Kalman filter. The results show that for the respiratory signals, MA component can be reduced and signal quality can be improved effectively (the power ratio between the MA-corrupted respiratory signal and the adaptive filtered signal was 1.31 in running condition, and the corresponding signal quality was improved from 0.77 to 0.96). Combination of the GALL and Kalman filters can achieve robust MA cancellation without supervised selection of the reference axis from the ACC. For ECG, the MA component can also be reduced by adaptive filtering. The signal quality, however, could not be improved substantially just by the adaptive filter with the ACC outputs as the reference signals.
机译:可穿戴式医疗监控系统(WHMS)凭借非侵入式和非卧式监控的优势,受到了学术界和行业的广泛关注。本文的目的是研究使用自适应滤波器来减少WHMS获取的生理信号中的运动伪影(MA)。在我们的研究中,WHMS用于在增量跑步机和自行车测功过程中获取心电图,呼吸和三轴加速度计(ACC)信号。利用这些信号,可以在呼吸和ECG信号中评估自适应MA消除的性能。为了实现有效且鲁棒的MA消除,ACC的三个轴向输出用于通过一组梯度自适应Laguerre晶格(GALL)滤波器来估计MA,并将GALL滤波器的输出进一步与由卡尔曼滤波器。结果表明,对于呼吸信号,可以减少MA分量,有效改善信号质量(在工作状态下,MA损坏的呼吸信号与自适应滤波信号的功率比为1.31,相应的信号质量得到改善)从0.77到0.96)。 GALL和Kalman滤波器的组合可以实现鲁棒的MA消除,而无需从ACC监督选择参考轴。对于ECG,也可以通过自适应滤波来减少MA分量。然而,仅仅通过将ACC输出作为参考信号的自适应滤波器不能实质上改善信号质量。

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