4.6 Article

PatcherBot: a single-cell electrophysiology robot for adherent cells and brain slices

期刊

JOURNAL OF NEURAL ENGINEERING
卷 16, 期 4, 页码 -

出版社

IOP PUBLISHING LTD
DOI: 10.1088/1741-2552/ab1834

关键词

patch-clamp; robotics; machine vision

资金

  1. Georgia Tech Neural Engineering Center Seed Grant
  2. NSF [CCF-1409422]
  3. James S McDonnell Foundation [220020399]
  4. DSO National Laboratories of Singapore
  5. NIH BRAIN Initiative Grant (NEI)
  6. NIH [1-R01-NS102727-02, 1-R01-EY023173-01, 5-T90-DA032466-02]
  7. NIH BRAIN Initiative Grant [NIMH1-U01-MH106027-01]

向作者/读者索取更多资源

Objective. Intracellular patch-clamp electrophysiology, one of the most ubiquitous, high-fidelity techniques in biophysics, remains laborious and low-throughput. While previous efforts have succeeded at automating some steps of the technique, here we demonstrate a robotic 'PatcherBot' system that can perform many patch-clamp recordings sequentially, fully unattended. Approach. Comprehensive automation is accomplished by outfitting the robot with machine vision, and cleaning pipettes instead of manually exchanging them. Main results. the PatcherBot can obtain data at a rate of 16 cells per hour and work with no human intervention for up to 3 h. We demonstrate the broad applicability and scalability of this system by performing hundreds of recordings in tissue culture cells and mouse brain slices with no human supervision. Using the PatcherBot, we also discovered that pipette cleaning can be improved by a factor of three. Significance. The system is potentially transformative for applications that depend on many high-quality measurements of single cells, such as drug screening, protein functional characterization, and multimodal cell type investigations.

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