Sustained deep-tissue voltage recording using a fast indicator evolved for two-photon microscopy

利用为双光子显微镜开发的快速指示器进行持续深层组织电压记录

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作者:Zhuohe Liu ,Xiaoyu Lu ,Vincent Villette ,Yueyang Gou ,Kevin L Colbert ,Shujuan Lai ,Sihui Guan ,Michelle A Land ,Jihwan Lee ,Tensae Assefa ,Daniel R Zollinger ,Maria M Korympidou ,Anna L Vlasits ,Michelle M Pang ,Sharon Su ,Changjia Cai ,Emmanouil Froudarakis ,Na Zhou ,Saumil S Patel ,Cameron L Smith ,Annick Ayon ,Pierre Bizouard ,Jonathan Bradley ,Katrin Franke ,Thomas R Clandinin ,Andrea Giovannucci ,Andreas S Tolias ,Jacob Reimer ,Stéphane Dieudonné ,François St-Pierre

Abstract

Genetically encoded voltage indicators are emerging tools for monitoring voltage dynamics with cell-type specificity. However, current indicators enable a narrow range of applications due to poor performance under two-photon microscopy, a method of choice for deep-tissue recording. To improve indicators, we developed a multiparameter high-throughput platform to optimize voltage indicators for two-photon microscopy. Using this system, we identified JEDI-2P, an indicator that is faster, brighter, and more sensitive and photostable than its predecessors. We demonstrate that JEDI-2P can report light-evoked responses in axonal termini of Drosophila interneurons and the dendrites and somata of amacrine cells of isolated mouse retina. JEDI-2P can also optically record the voltage dynamics of individual cortical neurons in awake behaving mice for more than 30 min using both resonant-scanning and ULoVE random-access microscopy. Finally, ULoVE recording of JEDI-2P can robustly detect spikes at depths exceeding 400 μm and report voltage correlations in pairs of neurons. Keywords: GEVI; JEDI-2P; fly vision; genetically encoded voltage indicator; high-throughput screening; pairwise voltage correlations; random-access microscopy; starburst amacrine cells; two-photon fluorescence microscopy; voltage imaging.

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