解码方法
概化理论
计算机科学
神经生理学
周围神经
一般化
人工智能
神经科学
信号(编程语言)
人工神经网络
脑-机接口
外围设备
医学
心理学
算法
脑电图
程序设计语言
操作系统
数学分析
发展心理学
数学
解剖
作者
Liangpeng Chen,Yang Liu,Yewei Huang,Ziyang Li,Chao Zhang,Jun Tang,Xuxinyi Ling,Bowen Cao,Baowang Li,Yuan Zhang,Wenjianlong Zhou,Qin Xu,Shunchang Ma,Xiudong Guan,Dan Xiao,Jingyao Geng,Yutong Zhao,Guolin Li,Yixuan Wang,Jia Wang
标识
DOI:10.1002/advs.202414732
摘要
Abstract Accurate decoding of peripheral nerve signals is essential for advancing neuroscience research, developing therapeutics for neurological disorders, and creating reliable human–machine interfaces. However, the poor mechanical compliance of conventional metal electrodes and limited generalization of existing decoding models have significantly hindered progress in understanding peripheral nerve function. This study introduces low‐impedance, soft‐conducting polymer electrodes capable of forming stable, intimate contacts with peripheral nerve tissues, allowing for continuous and reliable recording of neural activity in awake animals. Using this unique dataset of neurophysiological signals, a neural network model that integrates both handcrafted and deep learning‐derived features, while incorporating parameter‐sharing and adaptation training strategies, is developed. This approach significantly improves the generalizability of the decoding model across subjects, reducing the reliance on extensive training data. The findings not only deepen the understanding of peripheral nerve function but also open avenues for developing advanced interventions to augment and restore neurological functions.
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