IEEE Trans Neural Syst Rehabil Eng. 2017 Oct;25(10):1705-1714. doi: 10.1109/TNSRE.2016.2612001. Epub 2016 Nov 14.
The stability and frequency content of local field potentials (LFPs) offer key advantages for long-term, low-power neural interfaces. However, interpreting LFPs may require new signal processing techniques which should be informed by a scientific understanding of how these recordings arise from the coordinated activity of underlying neuronal populations. We review current approaches to decoding LFPs for brain-machine interface (BMI) applications, and suggest several directions for future research. To facilitate an improved understanding of the relationship between LFPs and spike activity, we share a dataset of multielectrode recordings from monkey motor cortex, and describe two unsupervised analysis methods we have explored for extracting a low-dimensional feature space that is amenable to biomimetic decoding and biofeedback training.
局部场电位 (LFPs) 的稳定性和频率内容为长期、低功耗的神经接口提供了关键优势。然而,解释 LFPs 可能需要新的信号处理技术,而这些技术应该基于对这些记录如何源自潜在神经元群体的协调活动的科学理解。我们回顾了用于脑机接口 (BMI) 应用的 LFPs 解码的当前方法,并为未来的研究提出了几个方向。为了促进更好地理解 LFPs 与尖峰活动之间的关系,我们共享了来自猴子运动皮层的多电极记录数据集,并描述了我们探索过的两种无监督分析方法,用于提取适合仿生解码和生物反馈训练的低维特征空间。