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Durable and Fatigue-Resistant Soft Peripheral Neuroprosthetics for In Vivo Bidirectional Signaling

Cited 40 time in Web of Science Cited 42 time in Scopus
Authors

Seo, Hyunseon; Han, Sang Ihn; Song, Kang-Il; Seong, Duhwan; Lee, Kyungwoo; Kim, Sun Hong; Park, Taesung; Koo, Ja Hoon; Shin, Mikyung; Baac, Hyoung Won; Park, Ok Kyu; Oh, Soong Ju; Han, Hyung-Seop; Jeon, Hojeong; Kim, Yu-Chan; Kim, Dae-HyeongHyeon, Taeghwan; Son, Donghee

Issue Date
2021-05
Publisher
WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim
Citation
Advanced Materials, Vol.33 No.20, p. 2007346
Abstract
Soft neuroprosthetics that monitor signals from sensory neurons and deliver motor information can potentially replace damaged nerves. However, achieving long-term stability of devices interfacing peripheral nerves is challenging, since dynamic mechanical deformations in peripheral nerves cause material degradation in devices. Here, a durable and fatigue-resistant soft neuroprosthetic device is reported for bidirectional signaling on peripheral nerves. The neuroprosthetic device is made of a nanocomposite of gold nanoshell (AuNS)-coated silver (Ag) flakes dispersed in a tough, stretchable, and self-healing polymer (SHP). The dynamic self-healing property of the nanocomposite allows the percolation network of AuNS-coated flakes to rebuild after degradation. Therefore, its degraded electrical and mechanical performance by repetitive, irregular, and intense deformations at the device-nerve interface can be spontaneously self-recovered. When the device is implanted on a rat sciatic nerve, stable bidirectional signaling is obtained for over 5 weeks. Neural signals collected from a live walking rat using these neuroprosthetics are analyzed by a deep neural network to predict the joint position precisely. This result demonstrates that durable soft neuroprosthetics can facilitate collection and analysis of large-sized in vivo data for solving challenges in neurological disorders.
ISSN
0935-9648
URI
https://hdl.handle.net/10371/179082
DOI
https://doi.org/10.1002/adma.202007346
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  • College of Engineering
  • School of Chemical and Biological Engineering
Research Area Materials Science

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