Loutit Alastair J, Potas Jason R
School of Medical Sciences, University of New South Wales Sydney, Kensington, NSW, Australia.
The Eccles Institute of Neuroscience, John Curtin School of Medical Research, Australian National University, Canberra, ACT, Australia.
Front Syst Neurosci. 2020 Jul 28;14:46. doi: 10.3389/fnsys.2020.00046. eCollection 2020.
Neural prostheses enable users to effect movement through a variety of actuators by translating brain signals into movement control signals. However, to achieve more natural limb movements from these devices, the restoration of somatosensory feedback is required. We used feature-learnability, a machine-learning approach, to assess signal features for their capacity to enhance decoding performance of neural signals evoked by natural tactile and proprioceptive somatosensory stimuli, recorded from the surface of the dorsal column nuclei (DCN) in urethane-anesthetized rats. The highest performing individual feature, spike amplitude, classified somatosensory DCN signals with 70% accuracy. The highest accuracy achieved was 87% using 13 features that were extracted from both high and low-frequency (LF) bands of DCN signals. In general, high-frequency (HF) features contained the most information about peripheral somatosensory events, but when features were acquired from short time-windows, classification accuracy was significantly improved by adding LF features to the feature set. We found that proprioception-dominated stimuli generalize across animals better than tactile-dominated stimuli, and we demonstrate how information that signal features contribute to neural decoding changes over the time-course of dynamic somatosensory events. These findings may inform the biomimetic design of artificial stimuli that can activate the DCN to substitute somatosensory feedback. Although, we investigated somatosensory structures, the feature set we investigated may also prove useful for decoding other (e.g., motor) neural signals.
神经假体通过将脑信号转化为运动控制信号,使使用者能够通过各种致动器实现运动。然而,为了从这些设备中实现更自然的肢体运动,需要恢复体感反馈。我们使用特征可学习性(一种机器学习方法)来评估信号特征,以确定其增强由自然触觉和本体感觉体感刺激诱发的神经信号解码性能的能力,这些信号是从经乌拉坦麻醉的大鼠背柱核(DCN)表面记录的。表现最佳的单个特征——尖峰幅度,对体感DCN信号的分类准确率为70%。使用从DCN信号的高频和低频(LF)频段提取的13个特征,实现的最高准确率为87%。一般来说,高频(HF)特征包含了关于外周体感事件的最多信息,但当从短时间窗口获取特征时,通过在特征集中添加LF特征,分类准确率显著提高。我们发现,本体感觉主导的刺激比触觉主导的刺激在不同动物之间具有更好的通用性,并且我们展示了信号特征对神经解码的贡献信息在动态体感事件的时间过程中是如何变化的。这些发现可能为人工刺激的仿生设计提供信息,这些人工刺激可以激活DCN以替代体感反馈。虽然我们研究的是体感结构,但我们研究的特征集可能也被证明对解码其他(例如运动)神经信号有用。