EMG-derived respiration signal using the fixed sample entropy during an Inspiratory load protocol

Extracting clinical information from one single measurement represents a step forward in the assessment of the respiratory muscle function. This attracting idea entails the reduction of the instrumentation and fosters to develop new medical integrated technologies. We present the use of the fixed sample entropy (fSampEn) as a more direct method to non-invasively derive the breathing activity from the diaphragm electromyographic (EMGdi) signal, and thus to extract the respiratory rate, an important vital sign which is cumbersome and time-consuming to be measured by clinicians. fSampEn is a method to evaluate the EMGdi activity that is less sensitive to the cardiac activity (ECG) and its application has proven to be useful to evaluate the load of the respiratory muscles. The behavior of the proposed method was tested in signals from two subjects that performed an inspiratory load protocol, which consists of increments in the inspiratory mouth pressure (Pmouth). Two respiratory signals were derived and compared to the Pmouth signal: the ECG-derived respiration (EDR) signal from the lead-I configuration, and the EMG-derived respiration (EMGDR) signal by applying the fSampEn method over the EMGdi signal. The similitude and the lag between signals were calculated through the cross-correlation between each derived respiratory signal and the Pmouth. The EMGDR signal showed higher correlation and lower lag values (≥ 0.91 and ≤ 0.70 s, respectively) than the EDR signal (≥ 0.83 and ≤0.99 s, respectively). Additionally, the respiratory rate was estimated with the Pmouth, EDR and EMGDR signals showing very similar values. The results from this preliminary work suggest that the fSampEn method can be used to derive the respiration waveform from the respiratory muscle electrical activity.

[1]  Michael A. King,et al.  Respiratory tracking using EDR for list-mode binning in cardiac emission tomography: Comparison with MRI heart motion measurements , 2012, 2012 IEEE Nuclear Science Symposium and Medical Imaging Conference Record (NSS/MIC).

[2]  Rigoberto Pérez de Alejo,et al.  Monitoring breathing rate at home allows early identification of COPD exacerbations. , 2012, Chest.

[3]  Raimon Jané,et al.  Improvement in Neural Respiratory Drive Estimation From Diaphragm Electromyographic Signals Using Fixed Sample Entropy , 2016, IEEE Journal of Biomedical and Health Informatics.

[4]  Raimon Jané,et al.  Evidence towards Improved Estimation of Respiratory Muscle Effort from Diaphragm Mechanomyographic Signals with Cardiac Vibration Interference Using Sample Entropy with Fixed Tolerance Values , 2014, PloS one.

[5]  W. Karlen,et al.  Estimating Respiratory and Heart Rates from the Correntropy Spectral Density of the Photoplethysmogram , 2014, PloS one.

[6]  George B. Moody,et al.  Derivation of Respiratory Signals from Multi-lead ECGs , 2008 .

[7]  J Moxham,et al.  Neural respiratory drive in healthy subjects and in COPD , 2008, European Respiratory Journal.

[8]  D. White,et al.  Electrocardiogram-derived respiration in screening of sleep-disordered breathing. , 2011, Journal of electrocardiology.

[9]  M. Pepper,et al.  Monitoring respiratory activity in neonates using diaphragmatic electromyograph , 1995, Medical and Biological Engineering and Computing.

[10]  G. Moody,et al.  Clinical Validation of the ECG-Derived Respiration (EDR) Technique , 2008 .

[11]  B. Caffo,et al.  Sleep-Disordered Breathing and Mortality: A Prospective Cohort Study , 2009, PLoS medicine.

[12]  J. Richman,et al.  Physiological time-series analysis using approximate entropy and sample entropy. , 2000, American journal of physiology. Heart and circulatory physiology.