School of Engineering, Newcastle University, Newcastle upon Tyne NE1 7RU, UK.
Australian Center for Field Robotics, The University of Sydney, New South Wales 2006, Australia.
Philos Trans A Math Phys Eng Sci. 2022 Jul 25;380(2228):20210268. doi: 10.1098/rsta.2021.0268. Epub 2022 Jun 6.
The recording and analysis of peripheral neural signal can provide insight for various prosthetic and bioelectronics medicine applications. However, there are few studies that investigate how informative features can be extracted from population activity electroneurographic (ENG) signals. In this study, five feature extraction frameworks were implemented on sensory ENG datasets and their classification performance was compared. The datasets were collected in acute rat experiments where multi-channel nerve cuffs recorded from the sciatic nerve in response to proprioceptive stimulation of the hindlimb. A novel feature extraction framework, which incorporates spatio-temporal focus and dynamic time warping, achieved classification accuracies above 90% while keeping a low computational cost. This framework outperformed the remaining frameworks tested in this study and has improved the discrimination accuracy of the sensory signals. Thus, this study has extended the tools available to extract features from sensory population activity ENG signals. This article is part of the theme issue 'Advanced neurotechnologies: translating innovation for health and well-being'.
周围神经信号的记录和分析可为各种假体和生物电子医学应用提供深入了解。然而,很少有研究调查如何从群体活动神经电图 (ENG) 信号中提取信息特征。在这项研究中,五种特征提取框架被应用于感觉 ENG 数据集,并比较了它们的分类性能。数据集是在急性大鼠实验中收集的,多通道神经袖带记录坐骨神经对后肢本体感觉刺激的反应。一种新的特征提取框架,结合了时空聚焦和动态时间弯曲,在保持低计算成本的同时,实现了超过 90%的分类准确率。该框架优于本研究中测试的其余框架,并提高了感觉信号的辨别精度。因此,本研究扩展了可用于从感觉群体活动 ENG 信号中提取特征的工具。本文是主题为“高级神经技术:为健康和福祉转化创新”的一部分。