eLife (May 2020)

Automated task training and longitudinal monitoring of mouse mesoscale cortical circuits using home cages

  • Timothy H Murphy,
  • Nicholas J Michelson,
  • Jamie D Boyd,
  • Tony Fong,
  • Luis A Bolanos,
  • David Bierbrauer,
  • Teri Siu,
  • Matilde Balbi,
  • Federico Bolanos,
  • Matthieu Vanni,
  • Jeff M LeDue

DOI
https://doi.org/10.7554/eLife.55964
Journal volume & issue
Vol. 9

Abstract

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We report improved automated open-source methodology for head-fixed mesoscale cortical imaging and/or behavioral training of home cage mice using Raspberry Pi-based hardware. Staged partial and probabilistic restraint allows mice to adjust to self-initiated headfixation over 3 weeks’ time with ~50% participation rate. We support a cue-based behavioral licking task monitored by a capacitive touch-sensor water spout. While automatically head-fixed, we acquire spontaneous, movement-triggered, or licking task-evoked GCaMP6 cortical signals. An analysis pipeline marked both behavioral events, as well as analyzed brain fluorescence signals as they relate to spontaneous and/or task-evoked behavioral activity. Mice were trained to suppress licking and wait for cues that marked the delivery of water. Correct rewarded go-trials were associated with widespread activation of midline and lateral barrel cortex areas following a vibration cue and delayed frontal and lateral motor cortex activation. Cortical GCaMP signals predicted trial success and correlated strongly with trial-outcome dependent body movements.

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