From electricity to vitality: the emerging use of piezoelectric materials in tissue regeneration

再生(生物学) 背景(考古学) 压电 医学 过程(计算) 生物医学工程 计算机科学 工程类 细胞生物学 生物 电气工程 古生物学 操作系统
作者
Yifan Wu,Junwu Zou,Kai Tang,Ying Xia,Xixi Wang,Lili Song,Jinhai Wang,Kai Wang,Zhihong Wang
出处
期刊:Burns & Trauma [Oxford University Press]
卷期号:12 被引量:7
标识
DOI:10.1093/burnst/tkae013
摘要

Abstract The unique ability of piezoelectric materials to generate electricity spontaneously has attracted widespread interest in the medical field. In addition to the ability to convert mechanical stress into electrical energy, piezoelectric materials offer the advantages of high sensitivity, stability, accuracy and low power consumption. Because of these characteristics, they are widely applied in devices such as sensors, controllers and actuators. However, piezoelectric materials also show great potential for the medical manufacturing of artificial organs and for tissue regeneration and repair applications. For example, the use of piezoelectric materials in cochlear implants, cardiac pacemakers and other equipment may help to restore body function. Moreover, recent studies have shown that electrical signals play key roles in promoting tissue regeneration. In this context, the application of electrical signals generated by piezoelectric materials in processes such as bone healing, nerve regeneration and skin repair has become a prospective strategy. By mimicking the natural bioelectrical environment, piezoelectric materials can stimulate cell proliferation, differentiation and connection, thereby accelerating the process of self-repair in the body. However, many challenges remain to be overcome before these concepts can be applied in clinical practice, including material selection, biocompatibility and equipment design. On the basis of the principle of electrical signal regulation, this article reviews the definition, mechanism of action, classification, preparation and current biomedical applications of piezoelectric materials and discusses opportunities and challenges for their future clinical translation.
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