Inter-Animal Variability in Activity Phase Is Constrained by Synaptic Dynamics in an Oscillatory Network

Haroon Anwar, Diana Martinez, Dirk Bucher, Farzan Nadim

Research output: Contribution to journalArticlepeer-review

4 Scopus citations


The levels of voltage-gated and synaptic currents in the same neuron type can vary substantially across indi-viduals. Yet, the phase relationships between neurons in oscillatory circuits are often maintained, even in the face of varying oscillation frequencies. We examined whether synaptic and intrinsic currents are matched to maintain constant activity phases across preparations, using the lateral pyloric (LP) neuron of the stomatogas-tric ganglion (STG) of the crab, Cancer borealis. LP produces stable oscillatory bursts on release from inhibi-tion, with an onset phase that is independent of oscillation frequency. We quantified the parameters that define the shape of the synaptic current inputs across preparations and found no linear correlations with volt-age-gated currents. However, several synaptic parameters were correlated with oscillation period and burst onset phase, suggesting they may play a role in phase maintenance. We used dynamic clamp to apply artifi-cial synaptic inputs and found that those synaptic parameters correlated with phase and period were ineffec-tive in influencing burst onset. Instead, parameters that showed the least variability across preparations had the greatest influence. Thus, parameters that influence circuit phasing are constrained across individuals, while those that have little effect simply co-vary with phase and frequency.

Original languageEnglish (US)
Article numberENEURO.0027-22.2022
Issue number4
StatePublished - Jul 1 2022

All Science Journal Classification (ASJC) codes

  • General Neuroscience


  • correlations
  • dynamic clamp
  • oscillation
  • phase maintenance
  • stomatogastric
  • synaptic dynamics


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