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Resurgent Na+ currents promote ultrafast spiking in projection neurons that drive fine motor control

Author

Listed:
  • Benjamin M. Zemel

    (Oregon Health and Science University)

  • Alexander A. Nevue

    (Oregon Health and Science University)

  • Andre Dagostin

    (Oregon Health and Science University)

  • Peter V. Lovell

    (Oregon Health and Science University)

  • Claudio V. Mello

    (Oregon Health and Science University)

  • Henrique Gersdorff

    (Oregon Health and Science University
    Oregon Health and Science University)

Abstract

The underlying mechanisms that promote precise spiking in upper motor neurons controlling fine motor skills are not well understood. Here we report that projection neurons in the adult zebra finch song nucleus RA display robust high-frequency firing, ultra-narrow spike waveforms, superfast Na+ current inactivation kinetics, and large resurgent Na+ currents (INaR). These properties of songbird pallial motor neurons closely resemble those of specialized large pyramidal neurons in mammalian primary motor cortex. They emerge during the early phases of song development in males, but not females, coinciding with a complete switch of Na+ channel subunit expression from Navβ3 to Navβ4. Dynamic clamping and dialysis of Navβ4’s C-terminal peptide into juvenile RA neurons provide evidence that Navβ4, and its associated INaR, promote neuronal excitability. We thus propose that INaR modulates the excitability of upper motor neurons that are required for the execution of fine motor skills.

Suggested Citation

  • Benjamin M. Zemel & Alexander A. Nevue & Andre Dagostin & Peter V. Lovell & Claudio V. Mello & Henrique Gersdorff, 2021. "Resurgent Na+ currents promote ultrafast spiking in projection neurons that drive fine motor control," Nature Communications, Nature, vol. 12(1), pages 1-23, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-26521-3
    DOI: 10.1038/s41467-021-26521-3
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    References listed on IDEAS

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