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Featured researches published by Tyson Aflalo.


Science | 2015

Decoding Motor Imagery from the Posterior Parietal Cortex of a Tetraplegic Human

Tyson Aflalo; Spencer Kellis; Christian Klaes; Brian Lee; Ying Shi; Kelsie Pejsa; Kathleen Shanfield; Stephanie Hayes-Jackson; Mindy Aisen; Christi N. Heck; Charles Y. Liu; Richard A. Andersen

Brain imagination to control external devices Studies in monkeys have implicated the brains posterior parietal cortex in high-level coding of planned and imagined actions. Aflalo et al. implanted two microelectrode arrays in the posterior parietal cortex of a tetraplegic patient (see the Perspective by Pruszynski and Diedrichsen). They asked the patient to imagine various types of limb or eye movements. As predicted, motor imagery involved the same types of neural population activity involved in actual movements, which could potentially be exploited in prosthetic limb control. Science, this issue p. 906; see also p. 860 Neurons in the human posterior parietal cortex encode high-level aspects of imagined movements. [Also see Perspective by Pruszynski and Diedrichsen] 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.


Current Biology | 2014

Toward More Versatile and Intuitive Cortical Brain–Machine Interfaces

Richard A. Andersen; Spencer Kellis; Christian Klaes; Tyson Aflalo

Brain-machine interfaces have great potential for the development of neuroprosthetic applications to assist patients suffering from brain injury or neurodegenerative disease. One type of brain-machine interface is a cortical motor prosthetic, which is used to assist paralyzed subjects. Motor prosthetics to date have typically used the motor cortex as a source of neural signals for controlling external devices. The review will focus on several new topics in the arena of cortical prosthetics. These include using: recordings from cortical areas outside motor cortex; local field potentials as a source of recorded signals; somatosensory feedback for more dexterous control of robotics; and new decoding methods that work in concert to form an ecology of decode algorithms. These new advances promise to greatly accelerate the applicability and ease of operation of motor prosthetics.


The Journal of Neuroscience | 2015

Hand Shape Representations in the Human Posterior Parietal Cortex

Christian Klaes; Spencer Kellis; Tyson Aflalo; Brian Lee; Kelsie Pejsa; Kathleen Shanfield; Stephanie Hayes-Jackson; Mindy Aisen; Christi N. Heck; Charles Y. Liu; Richard A. Andersen

Humans shape their hands to grasp, manipulate objects, and to communicate. From nonhuman primate studies, we know that visual and motor properties for grasps can be derived from cells in the posterior parietal cortex (PPC). Are non-grasp-related hand shapes in humans represented similarly? Here we show for the first time how single neurons in the PPC of humans are selective for particular imagined hand shapes independent of graspable objects. We find that motor imagery to shape the hand can be successfully decoded from the PPC by implementing a version of the popular Rock-Paper-Scissors game and its extension Rock-Paper-Scissors-Lizard-Spock. By simultaneous presentation of visual and auditory cues, we can discriminate motor imagery from visual information and show differences in auditory and visual information processing in the PPC. These results also demonstrate that neural signals from human PPC can be used to drive a dexterous cortical neuroprosthesis. SIGNIFICANCE STATEMENT This study shows for the first time hand-shape decoding from human PPC. Unlike nonhuman primate studies in which the visual stimuli are the objects to be grasped, the visually cued hand shapes that we use are independent of the stimuli. Furthermore, we can show that distinct neuronal populations are activated for the visual cue and the imagined hand shape. Additionally we found that auditory and visual stimuli that cue the same hand shape are processed differently in PPC. Early on in a trial, only the visual stimuli and not the auditory stimuli can be decoded. During the later stages of a trial, the motor imagery for a particular hand shape can be decoded for both modalities.


systems, man and cybernetics | 2014

A collaborative BCI approach to autonomous control of a prosthetic limb system

Kapil D. Katyal; Matthew S. Johannes; Spencer Kellis; Tyson Aflalo; Christian Klaes; Timothy G. McGee; Matthew P. Para; Ying Shi; Brian Lee; Kelsie Pejsa; Charles Y. Liu; Brock A. Wester; Francesco Tenore; James D. Beaty; Alan D. Ravitz; Richard A. Andersen; Michael P. McLoughlin

Existing brain-computer interface (BCI) control of highly dexterous robotic manipulators and prosthetic devices typically rely solely on neural decode algorithms to determine the users intended motion. Although these approaches have made significant progress in the ability to control high degree of freedom (DOF) manipulators, the ability to perform activities of daily living (ADL) is still an ongoing research endeavor. In this paper, we describe a hybrid system that combines elements of autonomous robotic manipulation with neural decode algorithms to maneuver a highly dexterous robotic manipulator for a reach and grasp task. This system was demonstrated using a human patient with cortical micro-electrode arrays allowing the user to manipulate an object on a table and place it at a desired location. The preliminary results for this system are promising in that it demonstrates the potential to blend robotic control to perform lower level manipulation tasks with neural control that allows the user to focus on higher level tasks thereby reducing the cognitive load and increasing the success rate of performing ADL type activities.


Neuron | 2018

Single-Neuron Representation of Memory Strength and Recognition Confidence in Left Human Posterior Parietal Cortex

Ueli Rutishauser; Tyson Aflalo; Emily R. Rosario; Nader Pouratian; Richard A. Andersen


Neuron | 2017

Partially Mixed Selectivity in Human Posterior Parietal Association Cortex

Carey Y. Zhang; Tyson Aflalo; Boris Revechkis; Emily R. Rosario; Debra S. Ouellette; Nader Pouratian; Richard A. Andersen


Archive | 2018

MIXED VARIABLE DECODING FOR NEURAL PROSTHETICS

Carey Y. Zhang; Tyson Aflalo; Richard A. Andersen


Neurosurgery | 2018

136 Posterior Parietal Cortex Encodes Peripersonal Space Within the Framework of Object Identity and Action Perception

Srinivas Chivukula; Tyson Aflalo; Nader Pouratian


Archive | 2015

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

Tyson Aflalo; Spencer Kellis; Christian Klaes; Brian Lee; Ying Shi; Kelsie Pejsa; Stephanie Hayes-Jackson; Mindy Aisen; Christi N. Heck; Charles Y. Liu


Journal of Neural Engineering | 2015

Erratum: Parietal neural prosthetic control of a computer cursor in a graphical-user-interface task (2014 J. Neural. Eng. 11 066014)

Boris Revechkis; Tyson Aflalo; Spencer Kellis; Nader Pouratian; Richard A. Andersen

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Richard A. Andersen

California Institute of Technology

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Spencer Kellis

California Institute of Technology

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Christian Klaes

California Institute of Technology

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Brian Lee

University of Southern California

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Kelsie Pejsa

California Institute of Technology

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Boris Revechkis

California Institute of Technology

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Christi N. Heck

University of Southern California

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Mindy Aisen

Rancho Los Amigos National Rehabilitation Center

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