Hundreds of thousands of people suffer from neurological injuries and disease, resulting in the permanent loss of motor function. Effective treatments do not currently exist for many of these conditions. Neural prosthetic systems have filled several of these treatment gaps, but many still remain. One promising class of neural prosthetic system aims to provide direct brain control of prosthetic arms. These motor prostheses translate neural activity from the brain into control signals to guide the prosthetic arm, working through a so-called """"""""decode algorithm"""""""". We believe that the time is right to investigate how a potentially high-performance and high-robustness brain control signal (human ECoG) can work through a new class of decode algorithm, and control a state-of-the-art high degree of freedom prosthetic arm (DARPA arm). To investigate this possibility, with the aim of demonstrating very high performance and high robustness control of a high dexterity arm within two years, our Specific Aims (SAs) are as follows. SA1: we will seek to demonstrate modulation of human ECoG signals during a systematic set of reaching, grasping, and finger movement tasks. SA2: we will use human ECoG signals for the closed-loop control of discrete, sequential joint movements. SA3: we will use human ECoG signals for closed-loop, smooth, high-speed control of the arm, hand, and ultimately even individuated finger movements.

Public Health Relevance

Hundreds of thousands of people in the US alone suffer from neurological injuries and disease, resulting in the permanent loss of motor function or even the ability to communicate. Conditions include upper spinal cord injury, ALS, and amputation. Our proposed research aims to dramatically increase the performance of neurally-controlled (ECoG controlled) prosthetic devices, specifically the recently designed DARPA Arm (from the Applied Physics Lab), with the goal of improving the quality of life for these patients.

Agency
National Institute of Health (NIH)
Institute
National Institute of Neurological Disorders and Stroke (NINDS)
Type
Research Project (R01)
Project #
3R01NS066311-02S1
Application #
8073326
Study Section
Special Emphasis Panel (ZRG1-ETTN-B (90))
Program Officer
Chen, Daofen
Project Start
2009-07-01
Project End
2012-08-31
Budget Start
2010-09-30
Budget End
2011-08-31
Support Year
2
Fiscal Year
2010
Total Cost
$876,946
Indirect Cost
Name
Stanford University
Department
Engineering (All Types)
Type
Schools of Engineering
DUNS #
009214214
City
Stanford
State
CA
Country
United States
Zip Code
94305
Stavisky, Sergey D; Kao, Jonathan C; Nuyujukian, Paul et al. (2018) Brain-machine interface cursor position only weakly affects monkey and human motor cortical activity in the absence of arm movements. Sci Rep 8:16357
Willett, Francis R; Pandarinath, Chethan; Jarosiewicz, Beata et al. (2017) Feedback control policies employed by people using intracortical brain-computer interfaces. J Neural Eng 14:016001
Kao, Jonathan C; Nuyujukian, Paul; Ryu, Stephen I et al. (2017) A High-Performance Neural Prosthesis Incorporating Discrete State Selection With Hidden Markov Models. IEEE Trans Biomed Eng 64:935-945
Willett, Francis R; Murphy, Brian A; Memberg, William D et al. (2017) Signal-independent noise in intracortical brain-computer interfaces causes movement time properties inconsistent with Fitts' law. J Neural Eng 14:026010
Pandarinath, Chethan; Nuyujukian, Paul; Blabe, Christine H et al. (2017) High performance communication by people with paralysis using an intracortical brain-computer interface. Elife 6:
Nuyujukian, Paul; Fan, Joline M; Kao, Jonathan C et al. (2015) A high-performance keyboard neural prosthesis enabled by task optimization. IEEE Trans Biomed Eng 62:21-29
Pandarinath, Chethan; Gilja, Vikash; Blabe, Christine H et al. (2015) Neural population dynamics in human motor cortex during movements in people with ALS. Elife 4:e07436
Gilja, Vikash; Pandarinath, Chethan; Blabe, Christine H et al. (2015) Clinical translation of a high-performance neural prosthesis. Nat Med 21:1142-5
Blabe, Christine H; Gilja, Vikash; Chestek, Cindy A et al. (2015) Assessment of brain-machine interfaces from the perspective of people with paralysis. J Neural Eng 12:043002
Jarosiewicz, Beata; Sarma, Anish A; Bacher, Daniel et al. (2015) Virtual typing by people with tetraplegia using a self-calibrating intracortical brain-computer interface. Sci Transl Med 7:313ra179

Showing the most recent 10 out of 18 publications