Population coding strategies in human tactile afferents

  • Giulia Corniani (Geteilte/r Erstautor/in)
  • Miguel A Casal (Geteilte/r Erstautor/in)
  • Stefano Panzeri
  • Active Laboratory, Department of Psychology, University of Sheffield, Sheffield, United Kingdom

Abstract

Sensory information is conveyed by populations of neurons, and coding strategies cannot always be deduced when considering individual neurons. Moreover, information coding depends on the number of neurons available and on the composition of the population when multiple classes with different response properties are available. Here, we study population coding in human tactile afferents by employing a recently developed simulator of mechanoreceptor firing activity. First, we highlight the interplay of afferents within each class. We demonstrate that the optimal afferent density to convey maximal information depends on both the tactile feature under consideration and the afferent class. Second, we find that information is spread across different classes for all tactile features and that each class encodes both redundant and complementary information with respect to the other afferent classes. Specifically, combining information from multiple afferent classes improves information transmission and is often more efficient than increasing the density of afferents from the same class. Finally, we examine the importance of temporal and spatial contributions, respectively, to the joint spatiotemporal code. On average, destroying temporal information is more destructive than removing spatial information, but the importance of either depends on the stimulus feature analysed. Overall, our results suggest that both optimal afferent innervation densities and the composition of the population depend in complex ways on the tactile features in question, potentially accounting for the variety in which tactile peripheral populations are assembled in different regions across the body.

Bibliografische Daten

OriginalspracheEnglisch
Aufsatznummere1010763
ISSN1553-734X
DOIs
StatusVeröffentlicht - 12.2022

Anmerkungen des Dekanats

Copyright: © 2022 Corniani et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

PubMed 36477028