Extraction of Sensory part of Ulnar Nerve Signal Using Blind Source Separation Method
A recorded nerve signal via an electrode is composed of many evokes or action potentials, (originated from individual axons)which may be considered as different initial sources. Recovering these primitive sources in its turn may lead us to the anatomicoriginations of a nerve signal which will give us outstanding foresights in neural rehabilitations. Accordingly, clinical interestsmay be raised on extraction of sensory and motor components of the nerve signals in neural injuries. One example is to extractsensory fraction in sacral nerve to sense the bladder filling up in paraplegic or quadriplegic people [3]. Blind Source Separation(BSS) methods seem good solutions for extraction of the initial sources which are contributing in recorded mixed sources.Considering the nerve signal as a superposition of many axonal or fascicular signals, we have encouraged to try BSS methods tosee whether it can recover the sensory and motor sources of a recorded nerve signal. Accordingly, both PCA and ICA techniqueswere examined in a case study (human left arm), in which the response of the ADM muscle to the Ulnar nerve stimulation wererecorded in two points. The corresponded sensory signal was recorded on the pinkie at the same time (all recordings were donevia surface electrodes). It was shown that ICA (supremely better than PCA) was able to separate initial sources (ADM recordedsignals) into two signals so that one of them was most similar to the sensory (Pinkie) signal. The level of similarity was quantifiedvia correlation analysis. As the result, it is concluded that ICA is capable of extracting Sensory and Motor signals in PNS.
PNS1 , ENG2 , surface electrode , Ulnar nerve signals , sensory signal , motor signal , BSS3 , PCA4 , ICA5 , Correlation analysis
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