Variational Mode Extraction: A New Efficient Method to Derive Respiratory Signals from ECG

ECG-derived respiratory (EDR) signal is an effective and inexpensive method to monitor the respiration. Previous studies have shown that the empirical mode decomposition (EMD) techniques can satisfactorily extract the EDR signal, however, their performances are degraded at the presence of noise. On...

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Veröffentlicht in:IEEE journal of biomedical and health informatics 2018-07, Vol.22 (4), p.1059-1067
Hauptverfasser: Nazari, Mojtaba, Sakhaei, Sayed Mahmoud
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description ECG-derived respiratory (EDR) signal is an effective and inexpensive method to monitor the respiration. Previous studies have shown that the empirical mode decomposition (EMD) techniques can satisfactorily extract the EDR signal, however, their performances are degraded at the presence of noise. On the other hand, variational mode decomposition (VMD) performs good robustness against noise. In applications such as EDR extraction, where a specific mode is in interest, VMD imposes unnecessary computational cost. In this paper, we consider the extraction of EDR as a problem of obtaining a specific mode of a signal and suggest a new method named as variational mode extraction (VME). The method is established on the similar basis as VMD, with a new criterion: The residual signal after extracting the specific mode should have no or less energy at the center frequency of the mode. In this regard, VME is capable of solving the EDR problem by considering the EDR signal as a mode with approximate center frequency of zero. For verification, the respiratory rate signal is detected from EDR signal extracted by VME and compared it with those obtained by VMD, EMD-based methods, and bandpass filtering. The results confirm that the new method can extract the EDR signal with a better accuracy, while performing much lower computational cost and higher convergence rate.
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Previous studies have shown that the empirical mode decomposition (EMD) techniques can satisfactorily extract the EDR signal, however, their performances are degraded at the presence of noise. On the other hand, variational mode decomposition (VMD) performs good robustness against noise. In applications such as EDR extraction, where a specific mode is in interest, VMD imposes unnecessary computational cost. In this paper, we consider the extraction of EDR as a problem of obtaining a specific mode of a signal and suggest a new method named as variational mode extraction (VME). The method is established on the similar basis as VMD, with a new criterion: The residual signal after extracting the specific mode should have no or less energy at the center frequency of the mode. In this regard, VME is capable of solving the EDR problem by considering the EDR signal as a mode with approximate center frequency of zero. 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subjects Algorithms
Bandpass filters
Bandwidth
Computational efficiency
Computer applications
Decomposition
ECG
EKG
Electrocardiography
Electrocardiography - methods
Fourier transform
Hilbert transform
Humans
Informatics
Lagrangian multiplier
mode extraction
Monitoring
Noise
Respiration
Respiratory rate
Respiratory Rate - physiology
respiratory signal
Robustness
Signal Processing, Computer-Assisted
Transforms
variational problem
Wiener filters
title Variational Mode Extraction: A New Efficient Method to Derive Respiratory Signals from ECG
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