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在源域中应用相关分析进行电极优化。

Applying correlation analysis to electrode optimization in source domain.

机构信息

Faculty of Information Technology, Beijing University of Technology, Beijing, 100124, China.

Beijing Key Laboratory of Computational Intelligence and Intelligent System, Beijing, 100124, China.

出版信息

Med Biol Eng Comput. 2023 May;61(5):1225-1238. doi: 10.1007/s11517-023-02770-w. Epub 2023 Jan 31.

Abstract

In brain computer interface-based neurorehabilitation system, a large number of electrodes may increase the difficulty of signal acquisition and the time consumption of decoding algorithm for motor imagery EEG (MI-EEG). The traditional electrode optimization methods were limited by the low spatial resolution of scalp EEG. EEG source imaging (ESI) was further applied to reduce the number of electrodes, in which either the electrodes covering activated cortical areas were selected, or the reconstructed electrodes of EEGs with higher Fisher scores were retained. However, the activated dipoles do not all contribute equally to decoding, and the Fisher score cannot represent the correlations between electrodes and dipoles. In this paper, based on ESI and correlation analysis, a novel electrode optimization method, denoted ECCEO, was developed. The scalp MI-EEG was mapped to cortical regions by ESI, and the dipoles with larger amplitudes were chosen to designate a region of interest (ROI). Then, Pearson correlation coefficients between each dipole of the ROI and the corresponding electrode were calculated, averaged, and ranked to obtain two average correlation coefficient sequences. A small but important group of electrodes for each class were alternately added to the predetermined basic electrode set to form a candidate electrode set. Their features were extracted and evaluated to determine the optimal electrode set. Experiments were conducted on two public datasets, the average decoding accuracies achieved 95.99% and 88.30%, and the reduction of computational cost were 65% and 56%, respectively; statistical significance was examined as well.

摘要

在基于脑机接口的神经康复系统中,大量的电极可能会增加信号采集的难度和运动想象脑电图 (MI-EEG) 解码算法的时间消耗。传统的电极优化方法受到头皮 EEG 空间分辨率低的限制。进一步应用脑电图源成像 (ESI) 来减少电极数量,其中选择覆盖激活皮质区域的电极,或保留 Fisher 得分较高的 EEG 的重建电极。然而,激活的偶极子并不都对等解码有贡献,Fisher 得分不能代表电极和偶极子之间的相关性。在本文中,基于 ESI 和相关分析,提出了一种新的电极优化方法,记为 ECCEO。通过 ESI 将头皮 MI-EEG 映射到皮质区域,并选择幅度较大的偶极子来指定感兴趣区域 (ROI)。然后,计算 ROI 中每个偶极子与相应电极之间的 Pearson 相关系数,求平均值并排序,得到两个平均相关系数序列。对于每一类,交替地从预定的基本电极集中添加一小部分但很重要的电极,以形成候选电极集。提取和评估它们的特征以确定最佳电极集。在两个公共数据集上进行了实验,平均解码精度分别达到 95.99%和 88.30%,计算成本分别降低了 65%和 56%;还进行了统计显著性检验。

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