Efficient Peripheral Nerve Firing Characterisation through Massive Feature Extraction

Carl Henning Lubba1, Benjamin David Fulcher2, Simon R Schultz, Nick S. Jones1

  • 1Imperial College London
  • 2University of Sydney

Details

16:30 - 18:30 | Thu 21 Mar | Grand Ballroom B | ThPO.45

Session: Poster Session I

Abstract

Peripheral nerve decoding algorithms form an important component of closed-loop bioelectronic medicines devices. For any decoding method, meaningful properties need to be extracted from the peripheral nerve signal as the first step. Simple measures such as signal amplitude and features of the Fourier power spectrum are most typically used, leaving open whether important information is encoded in more subtle properties of the dynamics. We here propose a feature-based analysis method that identifies changes in firing characteristics across recording sections by unsupervised dimensionality reduction in a high-dimensional feature-space and selects single efficiently implementable estimators for each characteristic to be used as the basis for a better decoding in future bioelectronic medicines devices.