Li Ming-Ai, Ruan Zi-Wei
Faculty of Information Technology, Beijing University of Technology, Beijing, 100124 China.
Beijing Key Laboratory of Computational Intelligence and Intelligent System, Beijing, 100124 China.
Cogn Neurodyn. 2023 Apr;17(2):445-457. doi: 10.1007/s11571-022-09826-x. Epub 2022 Jun 22.
Motor imagery (MI) based brain computer interface significantly oriented the development of neuro-rehabilitation, and the crucial issue is how to accurately detect the changes of cerebral cortex for MI decoding. The brain activity can be calculated based on the head model and observed scalp EEG, providing insights regarding cortical dynamics by using equivalent current dipoles with high spatial and temporal resolution. Now, all the dipoles within entire cortex or partial regions of interest are directly applied to data representation, this may make the key information weakened or lost, and it is worth studying how to choose the most important from numerous dipoles. In this paper, we devote to building a simplified distributed dipoles model (SDDM), which is combined with convolutional neural network (CNN), generating a MI decoding method at source level (called SDDM-CNN). First, all channels of raw MI-EEG signals are subdivided by a series of bandpass filters with width of 1 Hz, the average energies associated with any sub-band signals are calculated and ranked in a descending order to screen the top sub-bands; then, the MI-EEG signals over each selected sub-band are mapped into source space by using EEG source imaging technology, and for each scout of neuroanatomical Desikan-Killiany partition, a centered dipole is selected as the most relevant dipole and put together to build a SDDM to reflect the neuroelectric activity of entire cerebral cortex; finally, the 4 dimensional (4D) magnitude matrix is constructed for each SDDM and fused into a novel data representation, which is further input to a well-designed 3DCNN with parallel branches (B3DCNN) to extract and classify the comprehensive features from time-frequency-space dimensions. Experiments are carried out on three public datasets, and the average ten-fold CV decoding accuracies achieve 95.09%, 97.98% and 94.53% respectively, and the statistical analysis is fulfilled by standard deviation, kappa value and confusion matrix. Experiment results suggest that it is beneficial to pick out the most sensitive sub-bands in sensor domain, and SDDM can sufficiently describe the dynamic changing of entire cortex, improving decoding performance while greatly reducing number of source signals. Also, B3DCNN is capable of exploring spatial-temporal features from multi sub-bands.
基于运动想象(MI)的脑机接口显著推动了神经康复的发展,关键问题在于如何准确检测大脑皮层的变化以进行MI解码。脑活动可以基于头部模型和观测到的头皮脑电图来计算,通过使用具有高时空分辨率的等效电流偶极子来提供有关皮层动力学的见解。目前,整个皮层或部分感兴趣区域内的所有偶极子都直接用于数据表示,这可能会使关键信息被削弱或丢失,因此研究如何从众多偶极子中选择最重要的偶极子是值得的。在本文中,我们致力于构建一个简化的分布式偶极子模型(SDDM),它与卷积神经网络(CNN)相结合,生成一种源水平的MI解码方法(称为SDDM-CNN)。首先,原始MI-EEG信号的所有通道由一系列带宽为1Hz的带通滤波器进行细分,计算与任何子带信号相关的平均能量并按降序排列,以筛选出前 个子带;然后,通过使用脑电图源成像技术将每个选定子带上的MI-EEG信号映射到源空间,对于神经解剖学Desikan-Killiany分区的每个探测点,选择一个中心偶极子作为最相关的偶极子并组合在一起构建一个SDDM,以反映整个大脑皮层的神经电活动;最后,为每个SDDM构建4维(4D)幅度矩阵并融合成一种新颖的数据表示,进一步输入到具有并行分支的精心设计的3DCNN(B3DCNN)中,从时频空间维度提取和分类综合特征。在三个公共数据集上进行了实验,平均十折交叉验证解码准确率分别达到95.09%、97.98%和94.53%,并通过标准差、kappa值和混淆矩阵进行了统计分析。实验结果表明,在传感器域中挑选出最敏感的子带是有益的,SDDM能够充分描述整个皮层的动态变化,在大大减少源信号数量的同时提高解码性能。此外,B3DCNN能够从多个子带中探索时空特征。