
Closed-Loop Real-Time Imaging Enables Fully Automated Cell-Targeted Patch-Clamp Neural Recording In Vivo
Description
Brain Lunch: Neurotechnology Edition
Targeted patch-clamp recording is a powerful method for characterizing visually identified cells in intact neural circuits, but it requires skill to perform. We previously developed an algorithm that automates “blind” patching in vivo, but full automation of visually guided, targeted in vivo patching has not been demonstrated, with currently available approaches requiring human intervention to compensate for cell movement as a patch pipette approaches a targeted neuron. I will present a closed-loop real-time imaging strategy that automatically compensates for cell movement by tracking cell position and adjusting pipette motion while approaching a target. I will demonstrate our system’s ability to adaptively patch, under continuous two-photon imaging and real-time analysis, fluorophore-expressing neurons of multiple types in the living mouse cortex, without human intervention, with yields comparable to skilled human experimenters. Our “imagepatching” robot is easy to implement and will help enable scalable characterization of identified cell types in intact neural circuits
Speaker Bio
Ho-Jun Suk is currently a Medical Engineering/Medical Physics Ph. D. student in the Harvard/MIT Division of Health Sciences and Technology. He received the B.S. and M.S. degrees in Electrical and Computer Engineering from Cornell and University of Illinois at Urbana-Champaign respectively.
Additional Info
Upcoming Brain Lunches
- November 12, 2018 - Jingzhi An
- December 3, 2018 - Robert Datta