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Idle state classification using spiking activity and local field potentials in a brain computer interface

机译:在脑计算机接口中使用尖峰活动和局部场电势进行空闲状态分类

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Previous studies of intracortical brain-computer interfaces (BCIs) have often focused on or compared the use of spiking activity and local field potentials (LFPs) for decoding kinematic movement parameters. Conversely, using these signals to detect the initial intention to use a neuroprosthetic device or not has remained a relatively understudied problem. In this study, we examined the relative performance of spiking activity and LFP signals in detecting discrete state changes in attention regarding a user's desire to actively control a BCI device. Preliminary offline results suggest that the beta and high gamma frequency bands of LFP activity demonstrated a capacity for discriminating idle/active BCI control states equal to or greater than firing rate activity on the same channel. Population classifier models using either signal modality demonstrated an indistinguishably high degree of accuracy in decoding rest periods from active BCI reach periods as well as other portions of active BCI task trials. These results suggest that either signal modality may be used to reliably detect discrete state changes on a fine time scale for the purpose of gating neural prosthetic movements.
机译:皮质内脑计算机接口(BCI)的先前研究通常集中于或比较了尖峰活动和局部场电势(LFP)在运动学运动参数解码中的使用。相反地​​,使用这些信号来检测是否使用神经修复装置的最初意图仍然是一个相对未被充分研究的问题。在这项研究中,我们检查了尖峰活动和LFP信号在检测离散状态变化方面的相对性能,这些变化涉及用户对主动控制BCI设备的需求的关注。初步的离线结果表明,LFP活动的beta和高伽马频带显示出有能力区分等于或大于同一通道上的发射速率活动的空闲/活动BCI控制状态。使用这两种信号形式的总体分类器模型在从活动BCI到达期以及活动BCI任务试验的其他部分解码休息期时,都显示出无与伦比的高精度。这些结果表明,为了控制神经修复运动,可以使用任一信号模态在精细的时间尺度上可靠地检测离散状态的变化。

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