多巴胺
神经科学
电极
电生理学
细胞
化学
生物
生物化学
物理化学
作者
Fan Mo,Fanli Kong,Gucheng Yang,Zhaojie Xu,Wei Liang,Juntao Liu,Shouxin Zhang,Yaoyao Liu,Shiya Lv,Meiqi Han,Yu Wang,Yilin Song,Mixia Wang,Yirong Wu,Xinxia Cai
出处
期刊:ACS Sensors
[American Chemical Society]
日期:2023-11-28
卷期号:8 (12): 4765-4773
被引量:2
标识
DOI:10.1021/acssensors.3c01864
摘要
The functioning of place cells requires the involvement of multiple neurotransmitters, with dopamine playing a critical role in hippocampal place cell activity. However, the exact mechanisms through which dopamine influences place cell activity remain largely unknown. Herein, we present the development of the integrated three-electrode dual-mode detection chip (ITDDC), which enables simultaneous recording of the place cell activity and dopamine concentration fluctuation. The working electrode, reference electrode, and counter electrode are all integrated within the ITDDC in electrochemical detection, enabling the real-time in situ monitoring of dopamine concentrations in animals in motion. The reference, working, and counter electrodes are surface-modified using PtNPs and polypyrrole, PtNPs and PEDOT:PSS, and PtNPs, respectively. This modification allows for the detection of dopamine concentrations as low as 20 nM. We conducted dual-mode testing on mice in a novel environment and an environment with food rewards. We found distinct dopamine concentration variations along different paths within a novel environment, implying that different dopamine levels may contribute to spatial memory. Moreover, environmental food rewards elevate dopamine significantly, followed by the intense firing of reward place cells, suggesting a crucial role of dopamine in facilitating the encoding of reward-associated locations in animals. The real-time and in situ recording capabilities of ITDDC offer new opportunities to investigate the interplay between electrophysiology and dopamine during animal exploration and reward-based memory and provide a novel glimpse into the correlation between dopamine levels and place cell activity.
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