| Literature DB >> 25479326 |
Morufu Olusola Ibitoye1, Nur Azah Hamzaid2, Jorge M Zuniga3, Nazirah Hasnan4, Ahmad Khairi Abdul Wahab5.
Abstract
The research conducted in the last three decades has collectively demonstrated that the skeletal muscle performance can be alternatively assessed by mechanomyographic signal (MMG) parameters. Indices of muscle performance, not limited to force, power, work, endurance and the related physiological processes underlying muscle activities during contraction have been evaluated in the light of the signal features. As a non-stationary signal that reflects several distinctive patterns of muscle actions, the illustrations obtained from the literature support the reliability of MMG in the analysis of muscles under voluntary and stimulus evoked contractions. An appraisal of the standard practice including the measurement theories of the methods used to extract parameters of the signal is vital to the application of the signal during experimental and clinical practices, especially in areas where electromyograms are contraindicated or have limited application. As we highlight the underpinning technical guidelines and domains where each method is well-suited, the limitations of the methods are also presented to position the state of the art in MMG parameters extraction, thus providing the theoretical framework for improvement on the current practices to widen the opportunity for new insights and discoveries. Since the signal modality has not been widely deployed due partly to the limited information extractable from the signals when compared with other classical techniques used to assess muscle performance, this survey is particularly relevant to the projected future of MMG applications in the realm of musculoskeletal assessments and in the real time detection of muscle activity.Entities:
Mesh:
Year: 2014 PMID: 25479326 PMCID: PMC4299047 DOI: 10.3390/s141222940
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Basic steps in MMG parameters extraction.
Figure 2.An example of an increase in the magnitude of MMG amplitude with increasing isometric force levels (5, 10, 20, 40, 60, 80, 100) N for 20 s contraction and 20 s resting between contractions [78].
Summary of the common MMG signal features extraction methods.
| R&F | Time | Simple analysis procedure. | Sensitive to environmental interfaces, muscle tremor and deformation. | Assessment of muscle force to estimate the muscle contraction level/effort. Assesses the relative strength of the signal and contraction. | [ |
| FFT | Frequency | Analysis with the application of the frequency shift of the power spectrum. | Inability to track the rapid changes in the frequency content of the input signal. | Estimates the level of muscle contraction/effort. Patterns of the spectral compression have been widely used to track muscle fatigue. | [ |
| STFT | TF | Simply tracks spectral variation with time. | It requires the selection of a predefined time window which may lead to a compromise of the frequency resolution. | Signal decomposition and classification. Assessment of force changes especially during ramp contraction. | [ |
| WT | TF | Multi-resolution representation, good frequency and time resolution. | The distribution of the power among different wavelets require special consideration. | Signal decomposition and classification. Automation of the muscle fatigue estimation | [ |
| WVT | TF | The Power spectrum displays good localization properties. Energy conservation (energy of the signal can be easily obtained). | It generates interference terms (noise that overlaps the signal terms, and disallows the high TF resolution) that dominate the events distribution. Not suited to analyse multi component signal. | Identification of the muscle resonance frequency during contraction. | [ |
| Wavelet analysis | Time scale | Computes spectra in a very short time window and interval. Gives an overview of the spectral, temporal, and intensity attributes of the signal. | Inability to analyse chirp-like signal, | Signal decomposition and classification. Reliable estimation of the muscle fatigue phenomenon. Well suited to analysis non-stationary signals. | [ |
Abbreviation: R&F: Rectification and filtering; FFT: Fast Fourier transform; STFT: Short time Fourier transform; WT: Wavelet transform; WVT: Wigner Ville transform; TF: Time frequency.
Figure 3.Relationship between MMG amplitude and force during repetitive electrical stimulation (5 Hz, 10 Hz, 15 Hz, 20 Hz) of a motor unit (MU) (a) MU with shortest twitch duration (163.2 ms) (b) MU with longest twitch (220.6 ms) from the media gastrocnemius muscle of a healthy volunteer. Systematic reductions in the MMG amplitude and force reductions were evident as the stimulation frequency increased [128].
Figure 4.The relationship between the stimuli evoked human tibialis anterior muscle's mechanical changes during pre fatigue, post fatigue, recovery state and MMG-PTP amplitude. Stimulation pattern (six single twitches and the 1–50 Hz sweep), the force, and MMG responses from top down respectively. A pattern of relation is visibly evident (redrawn from Orizio et al., [85]).