Scientific Reports (Feb 2024)

Machine learning enables non-Gaussian investigation of changes to peripheral nerves related to electrical stimulation

  • Andres W. Morales,
  • Jinze Du,
  • David J. Warren,
  • Eduardo Fernández-Jover,
  • Gema Martinez-Navarrete,
  • Jean-Marie C. Bouteiller,
  • Douglas C. McCreery,
  • Gianluca Lazzi

DOI
https://doi.org/10.1038/s41598-024-53284-w
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 9

Abstract

Read online

Abstract Electrical stimulation of the peripheral nervous system (PNS) is becoming increasingly important for the therapeutic treatment of numerous disorders. Thus, as peripheral nerves are increasingly the target of electrical stimulation, it is critical to determine how, and when, electrical stimulation results in anatomical changes in neural tissue. We introduce here a convolutional neural network and support vector machines for cell segmentation and analysis of histological samples of the sciatic nerve of rats stimulated with varying current intensities. We describe the methodologies and present results that highlight the validity of the approach: machine learning enabled highly efficient nerve measurement collection, while multivariate analysis revealed notable changes to nerves’ anatomy, even when subjected to levels of stimulation thought to be safe according to the Shannon current limits.