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  5. Ultrastretchable Organogel/Silicone Fiber-Helical Sensors for Self-Powered Implantable Ligament Strain Monitoring

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Article
en
2022

Ultrastretchable Organogel/Silicone Fiber-Helical Sensors for Self-Powered Implantable Ligament Strain Monitoring

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0 Files

en
2022
Vol 16 (7)
Vol. 16
DOI: 10.1021/acsnano.2c03365

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Zhong Lin Wang
Zhong Lin Wang

Beijing Institute of Technology

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Feifan Sheng
Bo Zhang
Yihan Zhang
+6 more

Abstract

Implantable sensors with the abilities of real-time healthcare monitoring and auxiliary training are important for exercise-induced or disease-induced muscle and ligament injuries. However, some of these implantable sensors have some shortcomings, such as requiring an external power supply or poor flexibility and stability. Herein, an organogel/silicone fiber-helical sensor based on a triboelectric nanogenerator (OFS-TENG) is developed for power-free and sutureable implantation ligament strain monitoring. The OFS-TENG with high stability and ultrastretchability is composed of an organogel fiber and a silicone fiber intertwined with a double helix structure. The organogel fiber possesses the merits of rapid preparation (15 s), good transparency (>95%), high stretchability (600%), and favorable stability (over 6 months). The OFS-TENG is successfully implanted on the patellar ligament of the rabbit knee for the real-time monitoring of knee ligament stretch and muscle stress, which is expected to provide a solution for real-time diagnosis of muscle and ligament injuries. The prepared self-powered OFS-TENG can monitor data on human muscles and ligaments in real-time.

How to cite this publication

Feifan Sheng, Bo Zhang, Yihan Zhang, Yanyan Li, Renwei Cheng, Chuanhui Wei, Chuan Ning, Kai Dong, Zhong Lin Wang (2022). Ultrastretchable Organogel/Silicone Fiber-Helical Sensors for Self-Powered Implantable Ligament Strain Monitoring. , 16(7), DOI: https://doi.org/10.1021/acsnano.2c03365.

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Publication Details

Type

Article

Year

2022

Authors

9

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1021/acsnano.2c03365

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