2022
DOI: 10.1101/2022.08.16.504130
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Internal states as a source of subject-dependent movement variability and their representation by large-scale networks

Abstract: A human's ability to adapt and learn relies on reflecting on past performance. Such reflections form latent factors called internal states that induce variability of movement and behavior to improve performance. Internal states are critical for survival, yet their temporal dynamics and neural substrates are less understood. Here, we link internal states with motor performance and neural activity using state-space models and local field potentials captured from depth electrodes in over 100 brain regions. Ten hu… Show more

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