Extraction of physically fatigue feature in exercise using electromyography, electroencephalography and electrocardiography

In this study, we employed Morlet wavelet, sample entropy, and fractal dimension on EEG and EMG signal to extract the feature of physical fatigue in the exercise. The result may be helpful for rehabilitation in effectiveness evaluation. Twenty healthy subjects participated in cycling exercise, and their physiological signals, including EEG, EMG, and ECG were recorded. In addition, we recorded subjects' feeling of fatigue since each subject has different physical strength and tolerance of non-stopping exercise. Signals in different stages, namely, resting, early, middle and late stages of exercising, were analyzed. ECG signal was used to categorize subjects into two groups, namely, moderate fatigue and severe fatigue. In EEG results, the averaged power, sample entropy, and fractal dimension of signals indicated that resting stages before and after the exercise were distinct from exercising stage. In severe fatigue, the averaged power within each frequency band of EEG increased with the duration of exercise whereas the power ratio, denoted by (theta+ alpha)/ beta, decreased gradually from the beginning of exercise until the resting after exercise. In addition, the EEG (C3) results of SE complexity ratio and FD complexity ratio decreased gradually from resting to last session of exercise in the moderate fatigue whereas in severe fatigue these ratios increased at the late exercising stage. Our results demonstrate that different patterns between moderate fatigue and severe fatigue can be effectively extracted by using the proposed methods.

[1]  R. Meeusen,et al.  Spatial memory is improved by aerobic and resistance exercise through divergent molecular mechanisms , 2012, Neuroscience.

[2]  Gabrielle Todd,et al.  Supraspinal fatigue does not explain the sex difference in muscle fatigue of maximal contractions. , 2006, Journal of applied physiology.

[3]  C. Cotman,et al.  Exercise and time-dependent benefits to learning and memory , 2010, Neuroscience.

[4]  S. Gandevia,et al.  The effect of sustained low‐intensity contractions on supraspinal fatigue in human elbow flexor muscles , 2006, The Journal of physiology.

[5]  N Arjmand,et al.  Sensitivity of kinematics-based model predictions to optimization criteria in static lifting tasks. , 2006, Medical engineering & physics.

[6]  D. Gordon E. Robertson,et al.  Research Methods in Biomechanics , 2004 .

[7]  J. Ushiba,et al.  Muscle fatigue-induced enhancement of corticomuscular coherence following sustained submaximal isometric contraction of the tibialis anterior muscle. , 2011, Journal of applied physiology.

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

[9]  Paramesran Raveendran,et al.  EEG Peak Alpha Frequency as an Indicator for Physical Fatigue , 2007 .

[10]  E. Bruce,et al.  Sample Entropy Tracks Changes in Electroencephalogram Power Spectrum With Sleep State and Aging , 2009, Journal of clinical neurophysiology : official publication of the American Electroencephalographic Society.

[11]  P. Cochat,et al.  Et al , 2008, Archives de pediatrie : organe officiel de la Societe francaise de pediatrie.

[12]  Alexandre Bernardino,et al.  A Real-Time Gabor Primal Sketch for Visual Attention , 2005, IbPRIA.

[13]  Tetsuo Kida,et al.  Changes in arousal level by differential exercise intensity , 2004, Clinical Neurophysiology.

[14]  Kuo-Kai Shyu,et al.  Fractal dimension analysis for quantifying cerebellar morphological change of multiple system atrophy of the cerebellar type (MSA-C) , 2010, NeuroImage.

[15]  Adrian Lees,et al.  Electromyography of selected lower-limb muscles fatigued by exercise at the intensity of soccer match-play. , 2006, Journal of electromyography and kinesiology : official journal of the International Society of Electrophysiological Kinesiology.

[16]  A. Grossmann,et al.  Cycle-octave and related transforms in seismic signal analysis , 1984 .

[17]  R. Dishman,et al.  Brain electrocortical activity during and after exercise: a quantitative synthesis. , 2004, Psychophysiology.

[18]  Brian Litt,et al.  A comparison of waveform fractal dimension algorithms , 2001 .

[19]  W. Marsden I and J , 2012 .