Performance-Recoverable Closed-Loop Neuroprosthetic System
- Authors
- Kim, Yewon; Kang, Kyumin; Koo, Ja Hoon; Jeong, Yoonyi; Lee, Sungjun; Jung, Dongjun; Seong, Duhwan; Kim, Hyeok; Han, Hyung-Seop; Suh, Minah; Kim, Dae-Hyeong; Son, Donghee
- Issue Date
- 2025-06
- Publisher
- WILEY-V C H VERLAG GMBH
- Citation
- ADVANCED MATERIALS
- Abstract
- Soft bioelectronics mechanically comparable to living tissues have driven advances in closed-loop neuroprosthetic systems for the recovery of sensory-motor functions. Despite notable progress in this field, critical challenges persist in achieving long-term stable closed-loop neuroprostheses, particularly in preventing uncontrolled drift in the electrical sensitivity and/or charge injection performance owing to material fatigue or mechanical damage. Additionally, the absence of an intelligent feedback loop has limited the ability to fully compensate for sensory-motor function loss in nervous systems. Here, a novel class of soft, closed-loop neuroprosthetic systems is presented for long-term operation, enabled by spontaneous performance recovery and machine-learning-driven correction to address the material fatigue inherent in chronic wear or implantation environments. Central to this innovation is the development of a tough, self-healing, and stretchable bilayer material with high conductivity and exceptional cyclic durability employed for robot-interface touch sensors and peripheral-nerve-adaptive electrodes. Furthermore, two central processing units, integrated in a prosthetic robot and an artificial brain, support closed-loop artificial sensory-motor operations, ensuring accurate sensing, decision-making, and feedback stimulation processes. Through these characteristics and seamless integration, our performance-recoverable closed-loop neuroprosthesis addresses challenges associated with chronic-material-fatigue-induced malfunctions, as demonstrated by successful in vivo under 4 weeks of implantation and/or mechanical damage.
- Keywords
- CONDUCTORS; INTERFACE; closed-loop; machine learning; neuroprosthetic; performance-recovery; self-healing; sensory-motor function; stretchable
- ISSN
- 0935-9648
- URI
- https://pubs.kist.re.kr/handle/201004/152811
- DOI
- 10.1002/adma.202503413
- Appears in Collections:
- KIST Article > Others
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