Assistive sensory-motor perturbations influence learned neural representations

bioRxiv [Preprint]. 2024 Dec 4:2024.03.20.585972. doi: 10.1101/2024.03.20.585972.

Abstract

Task errors are used to learn and refine motor skills. We investigated how task assistance influences learned neural representations using Brain-Computer Interfaces (BCIs), which map neural activity into movement via a decoder. We analyzed motor cortex activity as monkeys practiced BCI with a decoder that adapted to improve or maintain performance over days. The dimensionality of the population of neurons controlling the BCI remained constant or increased with learning, counter to expected trends from motor learning. Yet, over time, task information was contained in a smaller subset of neurons or population modes. Moreover, task information was ultimately stored in neural modes that occupied a small fraction of the population variance. An artificial neural network model suggests the adaptive decoders contribute to forming these compact neural representations. Our findings show that assistive decoders manipulate error information used for long-term learning computations, like credit assignment, which informs our understanding of motor learning and has implications for designing real-world BCIs.

Publication types

  • Preprint