Ryan G L Koh1, Adrian I Nachman, José Zariffa. 1. Institute of Biomaterials and Biomedical Engineering, University of Toronto, Toronto, ON M5S 3G4, Canada. Toronto Rehabilitation Institute, University Health Network, Toronto, ON M5G 2A2, Canada.
Abstract
OBJECTIVE: Extraction of information from the peripheral nervous system can provide control signals in neuroprosthetic applications. However, the ability to selectively record from different pathways within peripheral nerves is limited. We investigated the integration of spatial and temporal information for pathway discrimination in peripheral nerves using measurements from a multi-contact nerve cuff electrode. APPROACH: Spatiotemporal templates were established for different neural pathways of interest, and used to obtain tailored matched filters for each of these pathways. Simulated measurements of compound action potentials propagating through the nerve in different test cases were used to evaluate classification accuracy, percentage of missed spikes, and ability to reconstruct the original firing rates of the neural pathways. MAIN RESULTS: The mean Pearson correlation coefficients between the original firing rates and estimated firing rates over all tests cases was found to be 0.832 ± 0.161, 0.421 ± 0.145, 0.481 ± 0.340 for our algorithm, Bayesian spatial filters, and velocity selective recordings respectively. SIGNIFICANCE: The proposed method shows that the spatiotemporal templates were able to provide more robust spike detection and reliable pathway discrimination than these existing algorithms.
OBJECTIVE: Extraction of information from the peripheral nervous system can provide control signals in neuroprosthetic applications. However, the ability to selectively record from different pathways within peripheral nerves is limited. We investigated the integration of spatial and temporal information for pathway discrimination in peripheral nerves using measurements from a multi-contact nerve cuff electrode. APPROACH: Spatiotemporal templates were established for different neural pathways of interest, and used to obtain tailored matched filters for each of these pathways. Simulated measurements of compound action potentials propagating through the nerve in different test cases were used to evaluate classification accuracy, percentage of missed spikes, and ability to reconstruct the original firing rates of the neural pathways. MAIN RESULTS: The mean Pearson correlation coefficients between the original firing rates and estimated firing rates over all tests cases was found to be 0.832 ± 0.161, 0.421 ± 0.145, 0.481 ± 0.340 for our algorithm, Bayesian spatial filters, and velocity selective recordings respectively. SIGNIFICANCE: The proposed method shows that the spatiotemporal templates were able to provide more robust spike detection and reliable pathway discrimination than these existing algorithms.
Authors: Theodoros P Zanos; Harold A Silverman; Todd Levy; Tea Tsaava; Emily Battinelli; Peter W Lorraine; Jeffrey M Ashe; Sangeeta S Chavan; Kevin J Tracey; Chad E Bouton Journal: Proc Natl Acad Sci U S A Date: 2018-05-07 Impact factor: 11.205
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Authors: Valerie Evans; Ryan G L Koh; Felipe C K Duarte; Lukas Linde; Mohammadreza Amiri; Dinesh Kumbhare Journal: Sci Rep Date: 2021-07-02 Impact factor: 4.379