This application addresses broad Challenge Area (01) Behavior, Behavioral Change, and Prevention and specific Challenge Topics: Enabling Technologies 06-HD-101* Improved interfaces for prostheses to improve rehabilitation outcomes;06-NS-107 Sensors to monitor neurologic function and 06-NS-104 Developing and validating assistive neurotechnologies. The overall goal of this RC1 is to demonstrate the ability for humans with tetraplegia to drink a cup of water using a neurally controlled robot arm.
The aims directly related to three challenge areas related to rehabilitation, sensor development, and enabling those with disabilities: 06-HD101, NS 104 and 107. This project capitalizes on an exceptional opportunity for persons with tetraplegia involved in pilot clinical trial of a neural interface system, 'BrainGate', to participate in research to develop new means to restore independence and control. Specifically, the research will establish the ability for BrainGate trial participants to use neural signals from their motor cortex to perform useful reach and grasp actions with a robotic arm. This enabling neurotechnology research is made possible by state of the art robots, designed and tested for safe human interactions, capable of human-like reach and grasp movements. The robots will be provided by the robotics group of the German Aerospace Agency DLR, who have developed and tested this robot. This unique opportunity is also made possible by an experienced clinical, research and engineering academic team who are running a new IDE BrainGate2 clinical trial. The work will extend already demonstrated abilities for persons with longstanding severe paralysis to perform 'point and click'computer mouse actions and control simple robots using BrainGate as part of an earlier FDA and IRB approved IDE pilot trial.
The first aim i s to determine the number of dimensions that can be independently controlled by neural signals and the means to learn to control these dimensions, using simulations of robot arm function and with the physical robot at a distance. The research will establish optimal decoding and training methods for humans to achieve the highest degree of freedom control.
The second aim will advance algorithms to improve reliability and stability of performance over time.
The third aim i s to create the communication link to the LWRIII robot arm. For the fourth aim, physical system use will be evaluated using optimal training and decoding approaches. The ability for a person with tetraplegia to reach out and grasp a cup of water and drink, using the robot under neural control will be demonstrated. This research will advance assistive technologies that would permit substantially greater independence and control for persons with severe movement disabilities. This Challenge Grant aims to develop assistive technology that will allow persons with severe paralysis to be able to reach and grasp objects using their own brain signals. The experiments will test the ability for persons unable to move their arms or legs, resulting from spinal cord injury, stroke, or Lou Gehrig's disease, to control a robotic arm and hand that can safely interact with people. We will demonstrate the ability for a person with paralysis who is part of an ongoing pilot human clinical trial on neural interfaces to pick up and drink a cup of water using only their own brain signals. This technology could lead to a set of new devices that markedly enhance quality of life and independence of people with severe disabilities.

Public Health Relevance

This Challenge Grant aims to develop assistive technology that will allow persons with severe paralysis to be able to reach and grasp objects using their own brain signals. The experiments will test the ability for persons unable to move their arms or legs, resulting from spinal cord injury, stroke, or Lou Gehrig's disease, to control a robotic arm and hand that can safely interact with people. We will demonstrate the ability for a person with paralysis who is part of an ongoing pilot human clinical trial on neural interfaces to pick up and drink a cup of water using only their own brain signals. This technology could lead to a set of new devices that markedly enhance quality of life and independence of people with severe disabilities.

Agency
National Institute of Health (NIH)
Institute
Eunice Kennedy Shriver National Institute of Child Health & Human Development (NICHD)
Type
NIH Challenge Grants and Partnerships Program (RC1)
Project #
5RC1HD063931-02
Application #
7942066
Study Section
Special Emphasis Panel (ZRG1-MOSS-C (58))
Program Officer
Quatrano, Louis A
Project Start
2009-09-30
Project End
2012-08-31
Budget Start
2010-09-01
Budget End
2012-08-31
Support Year
2
Fiscal Year
2010
Total Cost
$451,769
Indirect Cost
Name
Brown University
Department
Neurosciences
Type
Schools of Medicine
DUNS #
001785542
City
Providence
State
RI
Country
United States
Zip Code
02912
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Jarosiewicz, Beata; Masse, Nicolas Y; Bacher, Daniel et al. (2013) Advantages of closed-loop calibration in intracortical brain-computer interfaces for people with tetraplegia. J Neural Eng 10:046012
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Hochberg, Leigh R; Bacher, Daniel; Jarosiewicz, Beata et al. (2012) Reach and grasp by people with tetraplegia using a neurally controlled robotic arm. Nature 485:372-5
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