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Continuous force decoding from deep brain local field potentials for Brain Computer Interfacing

机译:从深部大脑局部场电势进行连续力解码,用于脑计算机接口

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Current Brain Computer Interface (BCI) systems are limited by relying on neuronal spikes and decoding limited to kinematics only. For a BCI system to be practically useful, it should be able to decode brain information on a continuous basis with low latency. This study investigates if force can be decoded from local field potentials (LFP) recorded with deep brain electrodes located at the Subthalamic nucleus (STN) using data from 5 patients with Parkinson's disease, on a continuous basis with low latency. A Wiener-Cascade (WC) model based decoder was proposed using both time-domain and frequency-domain features. The results suggest that high gamma band (300–500Hz) activity, in addition to the beta (13–30Hz) and gamma band (55–90Hz) activity is the most informative for force prediction but combining all features led to better decoding performance. Furthermore, LFP signals preceding the force output by up to 1256 milliseconds were found to be predictive of the force output.
机译:当前的脑计算机接口(BCI)系统受神经元尖峰信号的限制,并且解码仅限于运动学。为了使BCI系统切实可行,它应该能够以低延迟连续地解码大脑信息。这项研究调查了使用5名帕金森氏病患者的数据,以低潜伏期连续地从位于丘脑下核(STN)的深脑电极记录的局部场电位(LFP)中解码出的力。提出了一种同时使用时域和频域特征的基于Wiener级联(WC)模型的解码器。结果表明,除了beta(13–30Hz)和gamma波段(55–90Hz)活动外,高伽马频段(300–500Hz)活动对于力预测而言是最有用的信息,但将所有功能组合在一起可带来更好的解码性能。此外,发现在力输出之前最多1256毫秒的LFP信号可预测力输出。

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