1. Multi-scale AM–FM analysis for the classification of surface electromyographic signals
- Author
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Christodoulou, Christodoulos I., Kaplanis, P. A., Murray, V., Pattichis, Marios S., Pattichis, Constantinos S., Kyriakides, Theodoros, Pattichis, Constantinos S. [0000-0003-1271-8151], and Pattichis, Marios S. [0000-0002-1574-1827]
- Subjects
electromyography ,Needle emg ,Scale (ratio) ,Maximum voluntary contraction ,Speech recognition ,disease classification ,Health Informatics ,SEMG ,Amplitude modulation ,Conformal mapping ,Electromyographic signal ,K-nearest neighbors ,muscle contraction ,Medicine ,controlled study ,support vector machine ,human ,Myopathy ,Multiscales ,AM/FM/GIS ,conference paper ,clinical article ,Support vector machines ,voluntary movement ,Classification (of information) ,Biceps brachii muscle ,business.industry ,Pattern recognition ,Classification ,frequency modulation ,Support vector machine ,priority journal ,validation process ,Signal Processing ,Leave-one-out ,Muscle ,neuropathy ,Electromyographic ,AM-FM ,Support vector machine (SVM) ,Artificial intelligence ,medicine.symptom ,business ,SVM model ,Neuromuscular disorders ,myopathy - Abstract
In this work, multi-scale amplitude modulation-frequency modulation (AM-FM) features are extracted from surface electromyographic (SEMG) signals and they are used for the classification of neuromuscular disorders. The method is validated on SEMG signals recorded from a total of 40 subjects: 20 normal and 20 abnormal cases (11 myopathy, and 9 neuropathy cases), at 10%, 30%, 50%, 70% and 100% of maximum voluntary contraction (MVC), from the biceps brachii muscle. For the classification, three classifiers are used: (i) the statistical K-nearest neighbor (KNN), (ii) the self-organizing map (SOM) and (iii) the support vector machine (SVM). For all classifiers, the leave-one-out methodology is used to validate the classification of the SEMG signals into normal or abnormal (myopathy or neuropathy). A classification success rate of 78% for the AM-FM features and SVM models was achieved. These results also show that SEMG can be used as a non-invasive alternative to needle EMG for differentiating between normal and abnormal (myopathy, or neuropathy) cases. © 2012 Elsevier Ltd. 7 3 265 269 Cited By :7
- Published
- 2012
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