Nonlinear response characteristics of neural networks and single neurons undergoing optogenetic excitation
- PMID: 33615093
- PMCID: PMC7888483
- DOI: 10.1162/netn_a_00154
Nonlinear response characteristics of neural networks and single neurons undergoing optogenetic excitation
Abstract
Optogenetic stimulation has become the method of choice for investigating neural computation in populations of neurons. Optogenetic experiments often aim to elicit a network response by stimulating specific groups of neurons. However, this is complicated by the fact that optogenetic stimulation is nonlinear, more light does not always equal to more spikes, and neurons that are not directly but indirectly stimulated could have a major impact on how networks respond to optogenetic stimulation. To clarify how optogenetic excitation of some neurons alters the network dynamics, we studied the temporal and spatial response of individual neurons and recurrent neural networks. In individual neurons, we find that neurons show a monotonic, saturating rate response to increasing light intensity and a nonmonotonic rate response to increasing pulse frequency. At the network level, we find that Gaussian light beams elicit spatial firing rate responses that are substantially broader than the stimulus profile. In summary, our analysis and our network simulation code allow us to predict the outcome of an optogenetic experiment and to assess whether the observed effects can be attributed to direct or indirect stimulation of neurons.
Keywords: Channelrhodopsin; Neural networks; Nonlinear response characteristics; Optogenetics.
© 2020 Massachusetts Institute of Technology.
Conflict of interest statement
Competing Interests: The authors have declared that no competing interests exist.
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