Sequential and efficient neural-population coding of complex task information

ORAL  · Invited

Abstract

Recent work has highlighted that many types of variables are represented in each neocortical area. How can these many neural representations be organized together without interference, and coherently maintained/updated through time? We recorded from excitatory neural populations in posterior cortices as mice performed a complex, dynamic task involving multiple interrelated variables. The neural encoding implied that highly-correlated task variables were represented by less-correlated neural-population modes, while pairs of neurons exhibited a spectrum of signal correlations. This finding relates to principles of efficient coding, but notably utilizes neural-population modes as the encoding unit, and suggests partial whitening of task-specific information where different variables are represented with different signal-to-noise levels. Remarkably, this encoding function was multiplexed with sequential neural dynamics yet reliably followed changes in task-variable correlations throughout the trial. We suggest that neural circuits can implement time-dependent encodings in a simple way using random sequential dynamics as a temporal scaffold.

*This work was supported by the NIH grants 5U01NS090541 and 1U19NS104648, and the Simons Collaboration on the Global Brain (SCGB).

Publication: Sequential and efficient neural-population coding of complex task information
Sue Ann Koay, Adam S. Charles, Stephan Y. Thiberge, Carlos D. Brody, David W. Tank
Neuron 2021 (in press)

Presenters

  • Sue Ann Koay

    • Janelia Research Campus

Authors

  • Sue Ann Koay

    • Janelia Research Campus
  • Adam S Charles

    • Johns Hopkins School of Medicine
  • Stephan S Thiberge

    • Princeton University
  • Carlos D Brody

    • Princeton University
  • David W Tank

    • Princeton University