Long-term upper-extremity prosthetic control using regenerative peripheral nerve interfaces and implanted EMG electrodes
Abstract
Objective. Extracting signals directly from the motor system poses challenges in obtaining both high amplitude and sustainable signals for upper-limb neuroprosthetic control. To translate neural interfaces into the clinical space, these interfaces must provide consistent signals and prosthetic performance. Approach. Previously, we have demonstrated that the Regenerative Peripheral Nerve Interface (RPNI) is a biologically stable, bioamplifier of efferent motor action potentials. Here, we assessed the signal reliability from electrodes surgically implanted in RPNIs and residual innervated muscles in humans for long-term prosthetic control. Main results. RPNI signal quality, measured as signal-to-noise ratio, remained greater than 15 for up to 276 and 1054 d in participant 1 (P1), and participant 2 (P2), respectively. Electromyography from both RPNIs and residual muscles was used to decode finger and grasp movements. Though signal amplitude varied between sessions, P2 maintained real-time prosthetic performance above 94% accuracy for 604 d without recalibration. Additionally, P2 completed a real-world multi-sequence coffee task with 99% accuracy for 611 d without recalibration. Significance. This study demonstrates the potential of RPNIs and implanted EMG electrodes as a long-term interface for enhanced prosthetic control.
Document Details
- Document Type
- Pub Defense Publication
- Publication Date
- Apr 01, 2023
- Source ID
- 10.1088/1741-2552/accb0c
Entities
People
- Alex Vaskov
- Alicia J Davis
- Christina Lee
- Cynthia A Chestek
- Deanna H. Gates
- Dylan M Wallace
- Paul S Cederna
- Philip P Vu
- Ritvik Jillala
- Stephen W P Kemp
- Theodore A Kung
Organizations
- Defense Advanced Research Projects Agency
- National Institute of Neurological Disorders and Stroke
- National Science Foundation