Ultra-high density electrodes improve detection, yield, and cell type specificity of brain recordings

Author:

Ye ZhiwenORCID,Shelton Andrew M.ORCID,Shaker Jordan R.ORCID,Boussard JulienORCID,Colonell Jennifer,Manavi Sahar,Chen SusuORCID,Windolf CharlieORCID,Hurwitz ColeORCID,Namima TomoyukiORCID,Pedraja Federico,Weiss ShahafORCID,Raducanu BogdanORCID,Ness Torbjørn V.ORCID,Einevoll Gaute T.ORCID,Laurent GillesORCID,Sawtell Nathaniel B.ORCID,Bair Wyeth,Pasupathy AnithaORCID,Mora Lopez Carolina,Dutta Barun,Paninski LiamORCID,Siegle Joshua H.ORCID,Koch ChristofORCID,Olsen Shawn R.ORCID,Harris Timothy D.ORCID,Steinmetz Nicholas A.ORCID

Abstract

AbstractTo study the neural basis of behavior, we require methods to sensitively and accurately measure neural activity at single neuron and single spike resolution. Extracellular electrophysiology is a principal method for achieving this, but it has biases in the neurons it detects and it imperfectly resolves their action potentials. To overcome these limitations, we developed a silicon probe with significantly smaller and denser recording sites than previous designs, called Neuropixels Ultra (NP Ultra). This device measures neuronal activity at ultra-high densities (>1300 sites per mm, 10 times higher than previous probes), with 6 µm center-to-center spacing and low noise. This device effectively comprises an implantable voltage-sensing camera that captures a planar image of a neuron’s electrical field. We introduce a new spike sorting algorithm optimized for these probes and use it to find that the yield of visually-responsive neurons in recordings from mouse visual cortex improves ∼3-fold. Recordings across multiple brain regions and four species revealed a subset of unexpectedly small extracellular action potentials not previously reported. Further experiments determined that, in visual cortex, these do not correspond to major subclasses of interneurons and instead likely reflect recordings from axons. Finally, using ground-truth identification of cortical inhibitory cell types with optotagging, we found that cell type was discriminable with approximately 75% success among three types, a significant improvement over lower-resolution recordings. NP Ultra improves spike sorting performance, sampling bias, and cell type classification.

Publisher

Cold Spring Harbor Laboratory

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