Detalle Publicación

Sliding window averaging for the extraction of representative waveforms from motor unit action potential trains

Autores: Malanda-Trigueros, A. (Autor de correspondencia); Rodríguez Carreño, Ignacio; Navallas-Irujo, J.; Rodríguez-Falces, J.; Porta, S.; Gila-Useros, L.
Título de la revista: BIOMEDICAL SIGNAL PROCESSING AND CONTROL
ISSN: 1746-8094
Volumen: 27
Páginas: 32 - 43
Fecha de publicación: 2016
Resumen:
In quantitative electromyography (EMG), the set of potentials that constitute a motor unit action potential (MUAP) train are represented by a single waveform from which various parameters are determined in order to characterize the MUAP for diagnostic analysis. Several methods that extract such a waveform are currently available, and they are, in essence, based on two operations: averaging and selection, which are performed either sample-by-sample or on the whole-potential. We present a new approach that carries out selection and averaging on a local interval basis. We tested our algorithm with a dataset of MUAP records extracted from the tibialis anterioris muscle of healthy subjects and compared it with some of the most relevant state-of-the-art methods considered in a previous work (Malanda et al., J. Electromyogr. Kinesiol., 2015). The comparison covered general purpose signal processing figures of merit and clinically used MUAP waveform parameters. Significantly better results in both sets of figures of merit were obtained with the new approach. In addition, relative to the other algorithms tested, the new approach required fewer potentials from the MUAP set to obtain an accurate representative waveform.
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