ARTS Lab, Scuola Superiore Sant'Anna, Piazza Martiri della Liberta' 33, Pisa, Italy.
J Neuroeng Rehabil. 2010 Apr 27;7:17. doi: 10.1186/1743-0003-7-17.
Several groups have shown that the performance of motor neuroprostheses can be significantly improved by detecting specific sensory events related to the ongoing motor task (e.g., the slippage of an object during grasping). Algorithms have been developed to achieve this goal by processing electroneurographic (ENG) afferent signals recorded by using single-channel cuff electrodes. However, no efforts have been made so far to understand the number and type of detectable sensory events that can be differentiated from whole nerve recordings using this approach.
To this aim, ENG afferent signals, evoked by different sensory stimuli were recorded using single-channel cuff electrodes placed around the sciatic nerve of anesthetized rats. The ENG signals were digitally processed and several features were extracted and used as inputs for the classification. The work was performed on integral datasets, without eliminating any noisy parts, in order to be as close as possible to real application.
The results obtained showed that single-channel cuff electrodes are able to provide information on two to three different afferent (proprioceptive, mechanical and nociceptive) stimuli, with reasonably good discrimination ability. The classification performances are affected by the SNR of the signal, which in turn is related to the diameter of the fibers encoding a particular type of neurophysiological stimulus.
Our findings indicate that signals of acceptable SNR and corresponding to different physiological modalities (e.g. mediated by different types of nerve fibers) may be distinguished.
已有多个研究小组表明,通过检测与正在进行的运动任务相关的特定感觉事件(例如抓握过程中物体的滑动),可以显著提高运动神经假肢的性能。已经开发了算法来通过处理使用单通道袖带电极记录的神经电(ENG)传入信号来实现这一目标。然而,迄今为止,尚未有任何努力试图了解使用这种方法从整个神经记录中可以区分的可检测感觉事件的数量和类型。
为此,使用放置在麻醉大鼠坐骨神经周围的单通道袖带电极记录了由不同感觉刺激引起的 ENG 传入信号。ENG 信号被数字处理,提取了几个特征并用作分类的输入。该工作是在整体数据集上完成的,没有消除任何噪声部分,以尽可能接近实际应用。
所得结果表明,单通道袖带电极能够提供关于两个到三个不同传入(本体感觉、机械和伤害感受)刺激的信息,具有相当好的区分能力。分类性能受信号 SNR 的影响,而 SNR 又与编码特定类型神经生理刺激的纤维直径有关。
我们的发现表明,可以区分具有可接受 SNR 并对应于不同生理模态的信号(例如,由不同类型的神经纤维介导)。