Litcius/Paper detail

Sampling representational plasticity of simple imagined movements across days enables long-term neuroprosthetic control

Nikhilesh Natraj, Sarah Seko, Reza Abiri, Runfeng Miao, Hongyi Yan, Yasmin Graham, Adelyn Tu-Chan, Edward F. Chang, Karunesh Ganguly

2025Cell31 citationsDOIOpen Access PDF

Abstract

The nervous system needs to balance the stability of neural representations with plasticity. It is unclear what the representational stability of simple well-rehearsed actions is, particularly in humans, and their adaptability to new contexts. Using an electrocorticography brain-computer interface (BCI) in tetraplegic participants, we found that the low-dimensional manifold and relative representational distances for a repertoire of simple imagined movements were remarkably stable. The manifold's absolute location, however, demonstrated constrained day-to-day drift. Strikingly, neural statistics, especially variance, could be flexibly regulated to increase representational distances during BCI control without somatotopic changes. Discernability strengthened with practice and was BCI-specific, demonstrating contextual specificity. Sampling representational plasticity and drift across days subsequently uncovered a meta-representational structure with generalizable decision boundaries for the repertoire; this allowed long-term neuroprosthetic control of a robotic arm and hand for reaching and grasping. Our study offers insights into mesoscale representational statistics that also enable long-term complex neuroprosthetic control.

Topics & Concepts

BiologyTerm (time)Sampling (signal processing)Simple (philosophy)Control (management)NeuroscienceComputer visionArtificial intelligenceComputer scienceEpistemologyFilter (signal processing)PhysicsPhilosophyQuantum mechanicsEEG and Brain-Computer InterfacesNeuroscience and Neural EngineeringNeural dynamics and brain function