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Motion artifact removal based on periodical property for ECG monitoring with wearable systems

机译:具有可穿戴系统的ECG监控的期刊属性的运动伪影删除

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摘要

Motion artifact removal (MR) is one of the essential issues in processing raw ECG signals since it could not be simply solved by using classic filtering. In this paper, a QRS detection based Motion Artifact Removal algorithm (QRSMR) is proposed. The proposed method detects the entire QRS complex and removes the noise between two QRS complexes, while recovering P and T-waves. As verified in the tests on simulated noisy ECG signals, QRSMR outputs with seriously contaminated ECG signals have an increase of the correlation with their original clean signals from 40% to nearly 80%, demonstrating the improved noise removal ability of QRSMR. Moreover, in the tests on real ECG signals measured on volunteers with a flexible wearable ECG monitoring device developed at Fudan University, QRSMR is able to recover P-wave and T-wave from the contaminated signal, which shows its enhanced performance on motion artifact reduction comparing with adaptive filtering method and other methods based only on empirical mode decomposition. (C) 2017 Elsevier B.V. All rights reserved.
机译:运动伪影删除(MR)是处理原始ECG信号中的基本问题之一,因为它无法通过使用经典滤波来简单地解决。本文提出了一种基于QRS检测的运动伪影去除算法(QRSMR)。所提出的方法检测到整个QRS复合物并在恢复P和T波的同时去除两个QRS复合物之间的噪声。如在模拟嘈杂的ECG信号的测试中验证,具有严重污染的ECG信号的QRSMR输出具有与其原始清洁信号的相关性,从40%到近80%,展示了QRSMR的改善了噪声去除能力。此外,在志愿者测量的Real ECG信号的测试中,QRSMR能够从污染信号恢复P波和T波,这表明其在运动伪影减少方面的增强性能仅与基于经验模式分解的自适应滤波方法和其他方法比较。 (c)2017 Elsevier B.v.保留所有权利。

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