Non-invasive BCI-controlled Assistive Devices

NARecruitingINTERVENTIONAL
Enrollment

100

Participants

Timeline

Start Date

June 16, 2021

Primary Completion Date

December 30, 2025

Study Completion Date

December 30, 2025

Conditions
Motor DisordersHealthySpinal Cord InjuriesMuscular DiseasesMotor Neuron DiseaseStrokeTraumatic Brain InjuryMovement DisordersMultiple Sclerosis
Interventions
DEVICE

NMES Feedback

Electroencephalography (EEG) signals will be recorded from subjects as they perform cued tasks for flexing/extending their non-dominant hand. The signals will be processed and classified in real-time using machine learning algorithms to trigger electrical stimulation on the flexors/extensors of the targeted arm contingent to the detection of a subject-specific flexion/extension EEG patterns.

DEVICE

Visual Feedback

Electroencephalography (EEG) - recorded from subjects as they perform cued motor imagery (MI) tasks - are classified in real-time using a subject-specific BCI decoder,. The output classification probability of the decoder is accumulated using exponential smoothing and translated into continuous visual feedback by means of a bar - on a computer screen - that moves to the right or left in response to classification of one or the other MI task.

DEVICE

TESS

Transcutaneous Electrical Spinal Stimulation (TESS) is applied over the C5-C6 spinal segment for 20 minutes at 30Hz with 5kHz carrier frequency.

Trial Locations (1)

78712

RECRUITING

The University of Texas at Austin, Austin

All Listed Sponsors
lead

University of Texas at Austin

OTHER