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使用外周神经束内接口记录的神经信号中抓取信息的解码。

Decoding of grasping information from neural signals recorded using peripheral intrafascicular interfaces.

机构信息

BioRobotics Institute, Scuola Superiore Sant'Anna, Pisa, Italy.

出版信息

J Neuroeng Rehabil. 2011 Sep 5;8:53. doi: 10.1186/1743-0003-8-53.

Abstract

BACKGROUND

The restoration of complex hand functions by creating a novel bidirectional link between the nervous system and a dexterous hand prosthesis is currently pursued by several research groups. This connection must be fast, intuitive, with a high success rate and quite natural to allow an effective bidirectional flow of information between the user's nervous system and the smart artificial device. This goal can be achieved with several approaches and among them, the use of implantable interfaces connected with the peripheral nervous system, namely intrafascicular electrodes, is considered particularly interesting.

METHODS

Thin-film longitudinal intra-fascicular electrodes were implanted in the median and ulnar nerves of an amputee's stump during a four-week trial. The possibility of decoding motor commands suitable to control a dexterous hand prosthesis was investigated for the first time in this research field by implementing a spike sorting and classification algorithm.

RESULTS

The results showed that motor information (e.g., grip types and single finger movements) could be extracted with classification accuracy around 85% (for three classes plus rest) and that the user could improve his ability to govern motor commands over time as shown by the improved discrimination ability of our classification algorithm.

CONCLUSIONS

These results open up new and promising possibilities for the development of a neuro-controlled hand prosthesis.

摘要

背景

目前,多个研究小组正在通过在神经系统和灵巧的手部假肢之间创建新颖的双向连接来恢复复杂的手部功能。这种连接必须快速、直观、成功率高且非常自然,以便在用户的神经系统和智能人工设备之间实现有效的信息双向流动。可以通过几种方法来实现这一目标,其中,使用与周围神经系统相连的可植入接口,即神经内电极,被认为特别有趣。

方法

在为期四周的试验中,将薄膜纵向神经内电极植入截肢者残端的正中神经和尺神经中。通过实施尖峰分类和分类算法,首次在该研究领域探索了解码适合控制灵巧手假肢的运动指令的可能性。

结果

结果表明,运动信息(例如握持类型和单个手指运动)可以通过分类准确率约为 85%(三个类别加休息)来提取,并且随着时间的推移,用户可以提高他控制运动指令的能力,这表明我们的分类算法的辨别能力有所提高。

结论

这些结果为神经控制手假肢的开发开辟了新的、有前途的可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9656/3177892/537d0be627d4/1743-0003-8-53-1.jpg

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