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Motion artifact removal from photoplethysmographic signals by combining temporally constrained independent component analysis and adaptive filter

机译:通过结合时间受限的独立分量分析和自适应滤波器,从光电容积描记信号中去除运动伪影

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Background The calculation of arterial oxygen saturation (SpO2) relies heavily on the amplitude information of the high-quality photoplethysmographic (PPG) signals, which could be contaminated by motion artifacts (MA) during monitoring. Methods A new method combining temporally constrained independent component analysis (cICA) and adaptive filters is presented here to extract the clean PPG signals from the MA corrupted PPG signals with the amplitude information reserved. The underlying PPG signal could be extracted from the MA contaminated PPG signals automatically by using cICA algorithm. Then the amplitude information of the PPG signals could be recovered by using adaptive filters. Results Compared with conventional ICA algorithms, the proposed approach is permutation and scale ambiguity-free. Numerical examples with both synthetic datasets and real-world MA corrupted PPG signals demonstrate that the proposed method could remove the MA from MA contaminated PPG signals more effectively than the two existing FFT-LMS and moving average filter (MAF) methods. Conclusions This paper presents a new method which combines the cICA algorithm and adaptive filter to extract the underlying PPG signals from the MA contaminated PPG signals with the amplitude information reserved. The new method could be used in the situations where one wants to extract the interested source automatically from the mixed observed signals with the amplitude information reserved. The results of study demonstrated the efficacy of this proposed method.
机译:背景技术动脉血氧饱和度(SpO 2 )的计算在很大程度上依赖于高质量光电容积描记(PPG)信号的幅度信息,该信号可能在监测过程中被运动伪影(MA)污染。方法本文提出了一种结合时间约束独立分量分析(cICA)和自适应滤波器的新方法,从保留了幅度信息的MA损坏的PPG信号中提取干净的PPG信号。可以使用cICA算法自动从MA污染的PPG信号中提取基础PPG信号。然后,可以通过使用自适应滤波器来恢复PPG信号的幅度信息。结果与传统的ICA算法相比,该方法具有置换性和规模无歧义性。带有合成数据集和真实世界MA损坏的PPG信号的数值示例表明,与现有的两种FFT-LMS和移动平均滤波器(MAF)方法相比,该方法可以更有效地从MA污染的PPG信号中去除MA。结论本文提出了一种新方法,该方法结合了cICA算法和自适应滤波器,从保留有幅度信息的MA污染的PPG信号中提取潜在的PPG信号。这种新方法可以用于需要从保留振幅信息的混合观测信号中自动提取感兴趣源的情况。研究结果证明了该方法的有效性。

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