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A Robust Beamforming Approach for Early Detection of Readiness Potential with Application to Brain-Computer Interface Systems

机译:一种强大的波束形成方法,用于早期检测脑界面系统的准备潜力

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Early detection of intention to move, at self-paced voluntary movements from the activities of neural current sources on the motor cortex, can be an effective approach to brain-computer interface (BCI) systems. Achieving high sensitivity and pre-movement negative latency are important issues for increasing the speed of BCI and other rehabilitation and neurofeedback systems used by disabled and stroke patients and helps enhance their movement abilities. Therefore, developing high-performance extractors or beamformers is a necessary task in this regard. In this paper, for the sake of improving the beamforming performance in well reconstruction of sources of readiness potential, related to hand movement, one kind of surface spatial filter (spherical spline derivative on electrode space) and the linearly constrained minimum variance (LCMV) beamformer are utilized jointly. Moreover, in order to achieve better results, the real head model of each subject was created, using individual head MRI, and was used in beamformer algorithm. Also, few optimizations were done on reconstructed source signal powers to help our template matching classifier with detection of movement onset for five healthy subjects. Our classification results show an average true positive rate (TPR) of 77.1% and 73.1%, false positive rate (FPR) of 28.96% and 28.74% and latency of -512.426±396.7ms and - 360.29±252.16 ms from signals of current sources of motor cortex and sensor space respectively. It can be seen that the proposed method has reliable sensitivity and is faster in prediction of movement onset and more reliable to be used for online BCI in future.
机译:早期发现有意移动,在自我节奏的自愿运动中,从马达皮质上的神经电流源的活动中,可以是脑 - 计算机接口(BCI)系统的有效方法。实现高灵敏度和前置前负延迟是增加BCI和残疾人患者使用的其他康复和神经融合系统的重要问题,并有助于提高其运动能力。因此,开发高性能提取器或波束形成器是这方面的必要任务。在本文中,为了提高井重建的波束成形性能,与手动运动有关,一种表面空间滤波器(电极空间上的球形花键衍生物)和线性约束的最小方差(LCMV)波束形成器共同使用。此外,为了实现更好的结果,使用单独的头部MRI创建每个受试者的真实头模型,并用于波束形成器算法。此外,在重建的源信号功率上进行了很少的优化,以帮助我们的模板匹配分类器,其中有五个健康受试者的运动开始。我们的分类结果表明,平均真正的阳性率(TPR)为77.1%和73.1%,假阳性率(FPR)为28.96%和28.74%,延迟为-512.426±396.7ms和-360.29±252.16毫秒,来自电流源的信号电机皮层和传感器空间分别。可以看出,所提出的方法具有可靠的灵敏度,并且预测运动开始的预测速度更快,并且将来更可靠地用于在线BCI。

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