The brain is organized as a network of highly specialized networks of spiking neurons. To exploit such a modular architecture for computation, the brain has to be able to regulate the flow of spiking activity between these specialized networks. In this Opinion article, we review various prominent mechanisms that may underlie communication between neuronal networks. We show that communication between neuronal networks can be understood as trajectories in a two-dimensional state space, spanned by the properties of the input. Thus, we propose a common framework to understand neuronal communication mediated by seemingly different mechanisms. We also suggest that the nesting of slow (for example, alpha-band and theta-band) oscillations and fast (gamma-band) oscillations can serve as an important control mechanism that allows or prevents spiking signals to be routed between specific networks. We argue that slow oscillations can modulate the time required to establish network resonance or entrainment and, thereby, regulate communication between neuronal networks.
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The authors thank S. Dehaene, M. Gilson, J. Goldman, R. Kaplan, T. van Kerkoerle, M. Kringelbach, T. Pfeffer, J. Mejias, P. Uhlhaas, E. Hugues and M. Filipovic for useful discussions and comments on earlier versions of the manuscript.
Nature Reviews Neuroscience thanks S. Hanslmayr, A. Luczak, T. Womelsdorf and the other, anonymous reviewer for their contribution to the peer review of this work.
The authors declare no competing interests.
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
- Asynchronous-irregular (AI) state
An activity state in which individual neurons spike in an irregular manner, independent (asynchronous) of other neurons in the network. In this state, the irregularity of the inter-spike-interval is close to unity, and correlations between a pair of neurons are close to zero.
- Convergent and divergent projections
Projections in a connectivity scheme in which neurons in a group receive input from many neurons in a previous group (convergent) and, at the same time, project to many neurons in the subsequent groups (divergent).
- Communication through resonance
A mode of communication in which the non-oscillatory receiver network is periodically activated by the sender and generates an amplified oscillatory response through resonance. Once the oscillations in the receiver are strong enough, only the pulse packets aligned to the peak (or trough if the oscillation is effectively inhibitory) are transmitted to the receiver network.
- Communication through coherence
A mode of communication in which both the sender and receiver oscillate with the same frequency and phase (coherent). In this model of communication, only the pulse packets aligned to the peak (or trough when the oscillations are effectively inhibitory) are transmitted to the receiver network.
- Effective spike threshold
The difference between the average membrane potential and the spike threshold of a neuron.
- Excitatory separatrix
A separatrix of a feedforward network consisting of only excitatory neurons.
- Inhibitory separatrix
A separatrix of a feedforward network consisting of both excitatory and inhibitory neurons. As inhibition is introduced in the network, the excitatory separatrix moves upwards, indicating that in the presence of inhibition, stronger and more synchronous pulse packets are allowed to transmit.
- Oscillation-based communication
When communication between the sender and receiver is mediated by communication through either resonance or coherence.
A line that separates the two-dimensional space spanned by the two descriptors (α and σ) of a pulse packet. An input pulse packet starting above the separatrix eventually converges to a fixed point corresponding to a high α and a low σ. By contrast, an input pulse packet starting below the separatrix eventually converges to a fixed point corresponding to a small α and a high σ.
- Synchronous-irregular state
An activity state in which individual neurons spike in an irregular manner but different neurons are correlated with each other. In this state, the irregularity of the inter-spike-interval is close to unity, and correlations between a pair of neurons are non-zero.
- Synfire mode of communication
This mode of communication is observed when the input pulse packet is strong and synchronous enough to be above the separatrix. Alternatively, such communication occurs when the connectivity is sufficiently dense to lower the separatrix such that even weak or asynchronous pulse packets can propagate without the need for oscillations.
- Stochastic oscillation
(SO). A type of oscillation in neuronal networks in which the average activity of the neuron population shows a regular oscillation but individual neurons do not spike in each cycle and instead spike in an irregular manner.
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Hahn, G., Ponce-Alvarez, A., Deco, G. et al. Portraits of communication in neuronal networks. Nat Rev Neurosci 20, 117–127 (2019). https://doi.org/10.1038/s41583-018-0094-0
Auditory cortex modelled as a dynamical network of oscillators: understanding event-related fields and their adaptation
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