NCHCFeb 21, 2017

Electrocorticographic Dynamics Predict Visually Guided Motor Imagery of Grasp Shaping

arXiv:1702.06251v13 citations
Originality Incremental advance
AI Analysis

This work addresses improving neuroprosthetic control for individuals not trained with brain-computer interfaces, though it is incremental.

The study tackled decoding visually-guided imagined grasp shaping from electrocorticographic signals, achieving 72% accuracy in distinguishing trajectories and predicting grasp stage with R2=0.4.

Identification of intended movement type and movement phase of hand grasp shaping are critical features for the control of volitional neuroprosthetics. We demonstrate that neural dynamics during visually-guided imagined grasp shaping can encode intended movement. We apply Procrustes analysis and LASSO regression to achieve 72% accuracy (chance = 25%) in distinguishing between visually-guided imagined grasp trajectories. Further, we can predict the stage of grasp shaping in the form of elapsed time from start of trial (R2=0.4). Our approach contributes to more accurate single-trial decoding of higher-level movement goals and the phase of grasping movements in individuals not trained with brain-computer interfaces. We also find that the overall time-varying trajectory structure of imagined movements tend to be consistent within individuals, and that transient trajectory deviations within trials return to the task-dependent trajectory mean. These overall findings may contribute to the further understanding of the cortical dynamics of human motor imagery.

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