Decoding motor imagery from the posterior parietal cortex of a tetraplegic human

Tyson Aflalo(California Institute of Technology), Spencer Kellis(California Institute of Technology), Christian Klaes(California Institute of Technology), Brian Lee(University of Southern California), Ying Shi(California Institute of Technology), Kelsie Pejsa(California Institute of Technology), Kathleen Shanfield(Rancho Los Amigos National Rehabilitation Center), Stephanie Hayes-Jackson(Rancho Los Amigos National Rehabilitation Center), Mindy Aisen(Rancho Los Amigos National Rehabilitation Center), Christi Heck(University of Southern California), Charles Y. Liu(University of Southern California), Richard A. Andersen(California Institute of Technology)
Science
May 22, 2015
Cited by 666

Abstract

Nonhuman primate and human studies have suggested that populations of neurons in the posterior parietal cortex (PPC) may represent high-level aspects of action planning that can be used to control external devices as part of a brain-machine interface. However, there is no direct neuron-recording evidence that human PPC is involved in action planning, and the suitability of these signals for neuroprosthetic control has not been tested. We recorded neural population activity with arrays of microelectrodes implanted in the PPC of a tetraplegic subject. Motor imagery could be decoded from these neural populations, including imagined goals, trajectories, and types of movement. These findings indicate that the PPC of humans represents high-level, cognitive aspects of action and that the PPC can be a rich source for cognitive control signals for neural prosthetics that assist paralyzed patients.


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