Title :
Classification of simple stimuli based on detected nerve activity
Author :
Coates, Thomas D., Jr. ; Larson-Prior, Linda J. ; Wolpert, Seth ; Prior, Fred
Author_Institution :
Neuropunk.org, Lexington, KY, USA
Abstract :
Describes an interface and a signal processing methodology that use measured neural signals to image overall axonal activity in intact peripheral nerve. Since one of the goals of this research is to create an interface that can eventually be used in both healthy and injured persons, an interfacing methodology that does not rely on nerve transection had to be developed. A cuff electrode containing multiple pairs of differential detectors was used to explore the feasibility of using measured neural signals to image overall axonal activity in intact peripheral nerve. The minimally invasive neural interfacing system (MINIS) consists of four parts: an in vivo multielectrode nerve cuff placed around an intact ensheathed whole nerve, wavelet based signal processing, information-theoretic data summarization, and a cascade correlation neural network. The system was validated using the visual system of Limulus polyphemus (common horseshoe crab). In our application the implantation of the cuff electrode requires surgery to expose the nerve but does not require removal of the sheath and surrounding connective tissue, hence the term "minimally invasive." The trained network for a given specimen was very specific to the specimen-interface-nerve configuration on which the data used to build the training/testing sets originated. When the network becomes overfitted it performs increasingly well at identifying the activity that corresponds to the data on which it was trained while becoming worse with novel data. Though it\´s doubtful a given source could ever be at the exact centers of all four pairs in a hand-mode cuff, being near the centers impacts the SNR and thus the accuracy for that pattern. Thus far the results are encouraging; however, more work is needed before this system could be used to reliably drive a prosthesis or interact with a virtual environment.
Keywords :
bioelectric potentials; biomedical electrodes; handicapped aids; man-machine systems; medical signal processing; neurophysiology; pattern classification; prosthetics; user interfaces; visual evoked potentials; wavelet transforms; Limulus polyphemus; MINIS; SNR; axonal activity; cascade correlation neural network; common horseshoe crab; cuff electrode; detected nerve activity; differential detectors; evoked bulk electrical activity; hand-mode cuff; healthy persons; in vivo multielectrode nerve cuff; information-theoretic data summarization; injured persons; intact ensheathed whole nerve; intact peripheral nerve; interface; minimally invasive neural interfacing system; multiple pairs; neural signals; pattern accuracy; prosthesis; signal processing methodology; simple stimuli classification; specimen-interface-nerve configuration; training/testing sets; virtual environment; visual system; wavelet based signal processing; Connective tissue; Detectors; Electrodes; In vivo; Minimally invasive surgery; Neural networks; Prosthetics; Signal processing; Testing; Visual system; Action Potentials; Algorithms; Animals; Axons; Electrodes, Implanted; Evoked Potentials, Visual; Horseshoe Crabs; Microelectrodes; Neural Networks (Computer); Ocular Physiology; Optic Nerve; Pattern Recognition, Automated; Peripheral Nerves; Photic Stimulation; Signal Processing, Computer-Assisted; Stochastic Processes;
Journal_Title :
Engineering in Medicine and Biology Magazine, IEEE
DOI :
10.1109/MEMB.2003.1191452