Abstract
Mammalian brains exhibit population oscillations, the structures of which vary in time and space according to behavioural state. A proposed function of these oscillations is to control the flow of signals among anatomically connected networks. However, the nature of neural coding that may support selective communication that depends on oscillations has received relatively little attention. Here, we consider the role of multiplexing, whereby multiple information streams share a common neural substrate. We suggest that multiplexing implemented through periodic modulation of firing-rate population codes enables flexible reconfiguration of effective connectivity among brain areas.
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Acknowledgements
We are grateful to B. Atallah, N. Burgess, M. van der Meer, I. Oren and K. E. Volynski for comments on an earlier version of the manuscript.
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Glossary
- Aliasing
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When a signal is sampled at a rate that is too slow to capture its variation, the contribution of high-frequency components to the sampled values is ambiguous, leading to noise when the signal is reconstructed from the samples.
- Amplitude
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A measure of how much a periodic signal varies over the course of its cycle. Amplitude can be quantified in various ways, including peak-to-peak amplitude — that is, the difference between the highest and lowest value reached by the signal during the cycle.
- Communication through coherence
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(CTC). The CTC hypothesis holds that coherence between oscillations in two brain regions enables selective communication between them. Coherence is a statistic used to evaluate the similarity of two signals as a function of frequency.
- Effective connectivity
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The influence that one neural system exerts over another.
- Integrate-and-fire neurons
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Simplified neuron models used widely in network simulations in which the biophysical processes generating the action potential are not explicitly represented. Instead, the neuron is said to have spiked whenever the membrane potential crosses a threshold value.
- Local field potential
-
(LFP). The voltage signal recorded from extracellular space in neural tissue. The lower frequency components (<250 Hz) are thought primarily to reflect synaptic activity within a few hundred micrometres of the electrode.
- Poisson neurons
-
A stochastic neuron model in which the spike train is generated by a Poisson process, with spike probability specified entirely by the firing rate, which is in general a function of time.
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Akam, T., Kullmann, D. Oscillatory multiplexing of population codes for selective communication in the mammalian brain. Nat Rev Neurosci 15, 111–122 (2014). https://doi.org/10.1038/nrn3668
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DOI: https://doi.org/10.1038/nrn3668
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