Excitation creates a distributed pattern of cortical suppression due to varied recurrent input

Neuron. 2023 Dec 20;111(24):4086-4101.e5. doi: 10.1016/j.neuron.2023.09.010. Epub 2023 Oct 20.

Abstract

Dense local, recurrent connections are a major feature of cortical circuits, yet how they affect neurons' responses has been unclear, with some studies reporting weak recurrent effects, some reporting amplification, and others indicating local suppression. Here, we show that optogenetic input to mouse V1 excitatory neurons generates salt-and-pepper patterns of both excitation and suppression. Responses in individual neurons are not strongly predicted by that neuron's direct input. A balanced-state network model reconciles a set of diverse observations: the observed dynamics, suppressed responses, decoupling of input and output, and long tail of excited responses. The model shows recurrent excitatory-excitatory connections are strong and also variable across neurons. Together, these results demonstrate that excitatory recurrent connections can have major effects on cortical computations by shaping and changing neurons' responses to input.

Keywords: balanced-state model; excitatory recurrent connectivity; excitatory-inhibitory balance; neural computation; optogenetics; recurrent network; visual cortex.

MeSH terms

  • Animals
  • Mice
  • Neurons* / physiology
  • Optogenetics*