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Imagined 3D hand movement trajectory decoding from sensorimotor EEG rhythms

机译:从SensorImotor EEG Rhythms的想象的3D手运动轨迹解码

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Reconstruction of the three-dimensional (3D) trajectory of an imagined limb movement using electro-encephalography (EEG) poses many challenges. However, if achieved, more advanced non-invasive brain-computer interfaces (BCIs) for the physically impaired could be realized. The most common motion trajectory prediction (MTP) BCI employs a time-series of band-pass filtered EEG potentials for reconstructing the 3D trajectory of limb movement using multiple linear regression (mLR). Most MTP BCI studies report the best accuracy using low delta (0.5-2Hz) band-pass filtered EEG potentials. In a recent study, we showed spatiotemporal power distribution of theta (4-8Hz), mu (8-12Hz), and beta (12-28Hz) EEG frequency bands contain richer information associated with movement trajectory. This finding is in line with the results in the extensive literature on traditional sensorimotor rhythm (SMR) based multiclass (MC) BCI studies, which report the best accuracy of limb movement classification using power values of mu and beta frequency bands. Here, we show the reconstruction of actual and imagined 3D limb movement trajectory with an MTP BCI using a time-series of bandpower values (BTS model). Furthermore, we show the proposed BTS model outperforms the standard potential time-series model (PTS model). The BTS model yielded best results in the mu and beta bands (R~0.5 for actual and R~0.2 for imagined movement reconstruction) and not in the low delta band, as previously reported for MTP studies using the PTS model. Our results show for the first time how mu and beta activity can be used for decoding imagined 3D hand movement from EEG.
机译:使用电脑图(EEG)的想象的肢体运动的三维(3D)轨迹的重建构成了许多挑战。但是,如果实现的,可以实现用于物理受损的更先进的非侵入性大脑 - 计算机接口(BCI)。最常见的运动轨迹预测(MTP)BCI采用时间序列的带通滤波器EEG电位,用于使用多个线性回归(MLR)重建肢体运动的3D轨迹。大多数MTP BCI研究报告使用低增量(0.5-2Hz)带通滤波电位的最佳精度。在最近的研究中,我们发现theta的时空配电(4-8Hz),亩(8-12Hz)和β(12-28Hz)EEG频段包含与运动轨迹关联更丰富的信息。这一发现符合传统传感器节奏(SMR)的多标准(MC)BCI研究的广泛文献的结果,其使用MU和BETA频带的功率值报告了肢体运动分类的最佳精度。在这里,我们使用时间序列(BTS模型)显示使用MTP BCI的实际和想象的3D肢体运动轨迹的重建。此外,我们显示所提出的BTS模型优于标准潜在的时间序列模型(PTS模型)。 BTS模型在MU和BETA条带中产生最佳结果(用于实际的R〜0.5,用于想象的运动重建的实际和R〜0.2),而不是在使用PTS模型的MTP研究报告的低ΔBAR中。我们的结果首次显示MU和BETA活动的首次可以用于从脑电图中解码图像的3D手移动。

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