Author/Authors :
Karimpour, M School of Management & Medical Information Sciences - Health Human Resources Research Center - Shiraz University of Medical Sciences, Shiraz, Iran , Parsaei, H Department of Medical Physics and Engineering - School of Medicine - Shiraz University of Medical Sciences, Shiraz, Iran , Rojhani-Shirazi, Z Department of Physiotherapy - School of Rehabilitation Sciences - Shiraz University of Medical Sciences, Shiraz, Iran , Sharifian, R School of Management & Medical Information Sciences - Health Human Resources Research Center - Shiraz University of Medical Sciences, Shiraz, Iran , Yazdani, F Department of Physiotherapy - School of Rehabilitation Sciences - Shiraz University of Medical Sciences, Shiraz, Iran
Abstract :
Background: Electromyography (EMG) signal processing and Muscle Onset
Latency (MOL) are widely used in rehabilitation sciences and nerve conduction
studies. The majority of existing software packages provided for estimating MOL via
analyzing EMG signal are computerized, desktop based and not portable; therefore,
experiments and signal analyzes using them should be completed locally. Moreover,
a desktop or laptop is required to complete experiments using these packages, which
costs.
Objective: Develop a non-expensive and portable Android application (app) for
estimating MOL via analyzing surface EMG.
Material and Methods: A multi-layer architecture model was designed for
implementing the MOL estimation app. Several Android-based algorithms for analyzing
a recorded EMG signal and estimating MOL was implemented. A graphical
user interface (GUI) that simplifies analyzing a given EMG signal using the presented
app was developed too.
Results: Evaluation results of the developed app using 10 EMG signals showed
promising performance; the MOL values estimated using the presented app are statistically
equal to those estimated using a commercial Windows-based surface EMG
analysis software (MegaWin 3.0). For the majority of cases relative error <10%.
MOL values estimated by these two systems are linearly related, the correlation coefficient
value ~ 0.93. These evaluations revealed that the presented app performed as
well as MegaWin 3.0 software in estimating MOL.
Conclusion: Recent advances in smart portable devices such as mobile phones
have shown the great capability of facilitating and decreasing the cost of analyzing
biomedical signals, particularly in academic environments. Here, we developed an
Android app for estimating MOL via analyzing the surface EMG signal. Performance
is promising to use the app for teaching or research purposes.
Keywords :
Android application , Muscle Onset Latency Estimation , Muscle Onset Latency , Surface EMG signal analysis , Electromyography