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T-DOpE probes reveal sensitivity of hippocampal oscillations to cannabinoids in behaving mice

Author

Listed:
  • Jongwoon Kim

    (Virginia Tech)

  • Hengji Huang

    (Virginia Tech)

  • Earl T. Gilbert

    (Virginia Tech)

  • Kaiser C. Arndt

    (Virginia Tech)

  • Daniel Fine English

    (Virginia Tech)

  • Xiaoting Jia

    (Virginia Tech
    Virginia Tech
    Virginia Tech)

Abstract

Understanding the neural basis of behavior requires monitoring and manipulating combinations of physiological elements and their interactions in behaving animals. We developed a thermal tapering process enabling fabrication of low-cost, flexible probes combining ultrafine features: dense electrodes, optical waveguides, and microfluidic channels. Furthermore, we developed a semi-automated backend connection allowing scalable assembly. We demonstrate T-DOpE (Tapered Drug delivery, Optical stimulation, and Electrophysiology) probes achieve in single neuron-scale devices (1) high-fidelity electrophysiological recording (2) focal drug delivery and (3) optical stimulation. The device tip can be miniaturized (as small as 50 µm) to minimize tissue damage while the ~20 times larger backend allows for industrial-scale connectorization. T-DOpE probes implanted in mouse hippocampus revealed canonical neuronal activity at the level of local field potentials (LFP) and neural spiking. Taking advantage of the triple-functionality of these probes, we monitored LFP while manipulating cannabinoid receptors (CB1R; microfluidic agonist delivery) and CA1 neuronal activity (optogenetics). Focal infusion of CB1R agonist downregulated theta and sharp wave-ripple oscillations (SPW-Rs). Furthermore, we found that CB1R activation reduces sharp wave-ripples by impairing the innate SPW-R-generating ability of the CA1 circuit.

Suggested Citation

  • Jongwoon Kim & Hengji Huang & Earl T. Gilbert & Kaiser C. Arndt & Daniel Fine English & Xiaoting Jia, 2024. "T-DOpE probes reveal sensitivity of hippocampal oscillations to cannabinoids in behaving mice," Nature Communications, Nature, vol. 15(1), pages 1-15, December.
  • Handle: RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-46021-4
    DOI: 10.1038/s41467-024-46021-4
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    References listed on IDEAS

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