脑机接口深部脑局部场电位模式分类

K. Mamun, M. N. Huda, M. Mace, M. Lutman, J. Stein, X. Liu, T. Aziz, R. Vaidyanathan, S. Wang
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引用次数: 2

摘要

当前脑机接口(BCI)的趋势是寻求与大脑建立双向通信,例如通过外部控制设备和直接刺激大脑来恢复运动功能。这将极大地帮助瘫痪的人绕过受损的大脑区域。该通信接口的关键过程是对神经信号的运动进行解码,并将信息编码为神经活动。大多数解码或模式分类研究都集中在脑机接口的皮质区域,但大脑深部结构也参与了运动控制。基底神经节中的丘脑下核(STN)参与运动的准备、执行和想象,可能是驱动脑机接口的另一个来源。因此,本研究旨在对与视觉提示运动执行相关的深部脑局部场电位(LFPs)模式进行分类。通过植入帕金森病患者的深部脑刺激电极,从STN记录双侧lfp。利用小波包变换提取lfp的频率相关分量。在每个频率分量中,通过分析STN之间的格兰杰因果关系,使用一种称为神经同步的替代方法提取信号特征。在此基础上,提出了一种新的特征选择策略,即加权序列特征选择(WSFS),以有效地选择最优特征子集。支持向量机(SVM)分类器与这种新的特征提取和选择策略一起实现,并使用交叉验证过程进行评估。使用该优化的特征子集,运动(左或右)的平均正确模式分类准确率达到76.0±3.1%。本研究结果令人鼓舞,提示深部神经回路(基底神经节)的神经活动可用于脑机接口的控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pattern classification of deep brain local field potentials for brain computer interfaces
The trend of current brain computer interfaces (BCI) seek to establish bi-directional communication with the brain, for instance, recovering motor functions by externally controlling devices and directly stimulating the brain. This will greatly assist paralyzed individuals through bypassing the damaged brain region. The key process of this communication interface is to decode movements from neural signals and encode information into neural activity. The majority of decoding or pattern classification studies have focused on cortical areas for BCIs, but deep brain structures have also been involved in motor control. The subthalamic nucleus (STN) in the basal ganglia is involved in the preparation, execution and imagining of movements, and may be an alternative source for driving BCIs. This study therefore aimed to classify patterns of deep brain local field potentials (LFPs) related to execution of visually cued movements. LFPs were recorded bilaterally from the STN through deep brain stimulation electrodes implanted in patients with Parkinson's disease. The frequency dependent components of the LFPs were extracted using the wavelet packet transform. In each frequency component, signal features were extracted using an alternative approach called neural synchronization by analyzing Granger causality between the STN. Based on these extracted features, a new feature selection strategy, namely weighted sequential feature selection (WSFS) was developed to efficiently select the optimal feature subset. A support vector machine (SVM) classifier was implemented alongside this novel feature extraction and selection strategy, and evaluated using a cross-validation procedure. Using this optimised feature subset, average correct pattern classification accuracy of movement (left or right) reached 76.0±3.1%. The results obtained in this study are encouraging and suggest that the neural activity in the deep neural circuit (basal ganglia) can be used for controlling BCIs.
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