Online decoding of rat self-paced locomotion speed from EEG using recurrent neural networks
Alejandro de Miguel, Nelson Totah, Uri Maoz

TL;DR
This study demonstrates that non-invasive cortex-wide EEG can accurately decode rats' self-paced locomotion speed using recurrent neural networks, revealing neural signatures that generalize across sessions and encode temporal dynamics.
Contribution
Introduces a non-invasive EEG-based decoding method for self-paced locomotion speed in rats, utilizing recurrent neural networks and demonstrating generalization across sessions.
Findings
Decoding achieved a correlation of 0.88 for speed.
Visual cortex and low-frequency oscillations are key features.
Cortical states encode current, past, and future speed dynamics.
Abstract
Accurate neural decoding of locomotion holds promise for advancing rehabilitation, prosthetic control, and understanding neural correlates of action. Recent studies have demonstrated decoding of locomotion kinematics across species on motorized treadmills. However, efforts to decode locomotion speed in more natural contextswhere pace is self-selected rather than externally imposedare scarce, generally achieve only modest accuracy, and require intracranial implants. Here, we aim to decode self-paced locomotion speed non-invasively and continuously using cortex-wide EEG recordings from rats. We introduce an asynchronous braincomputer interface (BCI) that processes a stream of 32-electrode skull-surface EEG (0.0145 Hz) to decode instantaneous speed from a non-motorized treadmill during self-paced locomotion in head-fixed rats. Using…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Neural dynamics and brain function · Zebrafish Biomedical Research Applications
