Published June 5, 2018 | Version v1
Dataset Open

Data from: Locking of correlated neural activity to ongoing oscillations

  • 1. Institute of Neuroscience

Description

Population-wide oscillations are ubiquitously observed in mesoscopic signals of cortical activity. In these network states a global oscillatory cycle modulates the propensity of neurons to fire. Synchronous activation of neurons has been hypothesized to be a separate channel of signal processing information in the brain. A salient question is therefore if and how oscillations interact with spike synchrony and in how far these channels can be considered separate. Experiments indeed showed that correlated spiking co-modulates with the static firing rate and is also tightly locked to the phase of beta-oscillations. While the dependence of correlations on the mean rate is well understood in feed-forward networks, it remains unclear why and by which mechanisms correlations tightly lock to an oscillatory cycle. We here demonstrate that such correlated activation of pairs of neurons is qualitatively explained by periodically-driven random networks. We identify the mechanisms by which covariances depend on a driving periodic stimulus. Mean-field theory combined with linear response theory yields closed-form expressions for the cyclostationary mean activities and pairwise zero-time-lag covariances of binary recurrent random networks. Two distinct mechanisms cause time-dependent covariances: the modulation of the susceptibility of single neurons (via the external input and network feedback) and the time-varying variances of single unit activities. For some parameters, the effectively inhibitory recurrent feedback leads to resonant covariances even if mean activities show non-resonant behavior. Our analytical results open the question of time-modulated synchronous activity to a quantitative analysis.

Notes

Files

README_for_py_manuscript_dryad_version.tar.txt

Files (71.6 MB)

Name Size Download all
md5:16fb709e855ba127336388dbe865c0e5
71.5 MB Download
md5:7c303652d93f617c8aea3c2038e3c5ca
128.3 kB Download
md5:a382772f4237bad89ee978bfa551ea32
1.1 kB Preview Download

Additional details

Related works