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MEDiCINe: Motion Correction for Neural Electrophysiology Recordings

Author(s)
Watters, Nicholas; Buccino, Alessio; Jazayeri, Mehrdad
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Creative Commons Attribution https://creativecommons.org/licenses/by/4.0/
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Abstract
Electrophysiology recordings from the brain using laminar multielectrode arrays allow researchers to measure the activity of many neurons simultaneously. However, laminar microelectrode arrays move relative to their surrounding neural tissue for a variety of reasons, such as pulsation, changes in intracranial pressure, and decompression of neural tissue after insertion. Inferring and correcting for this motion stabilizes the recording and is critical to identify and track single neurons across time. Such motion correction is a preprocessing step of standard spike-sorting methods. However, estimating motion robustly and accurately in electrophysiology recordings is challenging due to the stochasticity of the neural data. To tackle this problem, we introduce MEDiCINe (Motion Estimation by Distributional Contrastive Inference for Neurophysiology), a novel motion estimation method. We show that MEDiCINe outperforms existing motion estimation methods on an extensive suite of simulated neurophysiology recordings and leads to more accurate spike sorting. We also show that MEDiCINe accurately estimates the motion in primate and rodent electrophysiology recordings with a variety of motion and stability statistics. We open-source MEDiCINe, usage instructions, examples integrating MEDiCINe with common tools for spike sorting, and data and code for reproducing our results. This open software will enable other researchers to use MEDiCINe to improve spike sorting results and get the most out of their electrophysiology datasets.
Date issued
2025-03
URI
https://hdl.handle.net/1721.1/165378
Department
Massachusetts Institute of Technology. Department of Brain and Cognitive Sciences; McGovern Institute for Brain Research at MIT
Journal
eNeuro
Publisher
Society for Neuroscience
Citation
Nicholas Watters, Alessio Buccino, Mehrdad Jazayeri eNeuro 11 February 2025, 12 (3) ENEURO.0529-24.2025
Version: Final published version

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