Abstract

BackgroundDue to the current global situation of the pandemic, computer use has increased and has become essential for working and studying. Hence, detection of muscle fatigue associated with computer mouse use is essential to prevent musculoskeletal disorders, since it is considered a precursor of some musculoskeletal injuries. ObjectiveThis study aims to detect muscle fatigue in the shoulder and forearm caused by repetitive and continuous strain associated with the computer mouse, using the discrete wavelet transform (DWT) to prevent musculoskeletal disorders. MethodsTen participants performed a one-direction tapping task on a computer with four difficulty levels while the shoulder and forearm signals were recorded. We used twelve wavelet functions for DWT analysis. Then, power, MNF, and MDF features were extracted from the wavelet coefficients to detect muscle fatigue. ResultsSpectral changes using MNF and MDF of wavelet coefficients of Coif5 and Db6 functions showed significant shiftings towards low frequencies with magnitudes of 20.2 Hz and 26.5 Hz for the shoulder, and 18.9 Hz and 25.6 Hz for the forearm in the fourth decomposition level when the task difficulty increased, indicating muscle fatigue. ConclusionThis study demonstrated that high-precision computer mouse tasks may cause muscle fatigue, and it can be effectively detected by extracting spectral features of the EMG signal to help clinicians and physiotherapists to prevent severe musculoskeletal disorders. In future work, we will optimize the feature extraction method.

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