Publication | Closed Access
Identification of motor neuron disease using wavelet domain features extracted from EMG signal
33
Citations
8
References
2013
Year
Unknown Venue
Emg SignalEngineeringMotor Neuron DiseaseNeurological DisorderWavelet Domain FeaturesBiometricsFeature ExtractionNeurophysiological BiomarkersEmg DatabaseClassification MethodKinesiologyImage AnalysisPattern RecognitionNeurologyNeuropathologyMotor Neuron DiseasesNeuroimagingRehabilitationMedical Image ComputingWavelet TheoryData ClassificationAmyotrophic Lateral SclerosisNeurophysiologyEeg Signal ProcessingElectromyographyEmg DataNeuroscienceElectrophysiologyCentral Nervous SystemMedicineWaveform Analysis
Amyotrophic lateral sclerosis (ALS) is a common fatal motor neuron disease that assails the nerve cells in the brain. As the nervous system controls the muscle activity, the electromyography (EMG) signals can be viewed and examined in order to detect the vital features of the ALS disease in individuals. In this paper, the discrete wavelet transform (DWT) based features, which are extracted from a frame of EMG data, are introduced to classify the normal person and the ALS patients. From each frame of EMG data, instead of using a large number of DWT coefficients, the DWT coefficients with higher values as well as their mean and maxima are proposed to be used, which drastically reduces the feature dimension. It is shown that the proposed feature vector offers a high within class compactness and between class separations. For the purpose of classification, the K-nearest neighborhood classifier is employed. In order to demonstrate the classification performance, an EMG database consisted of 5 normal subjects and 5 ALS patients is considered and it is found that the proposed method is capable of distinctly separating the ALS patients from the normal persons.
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