Center for Advanced Intelligence Project, RIKEN, 1-4-1 Nihonbashi, Chuo-ku, Tokyo 103-0027, Japan.
Graduate School of Advanced Science and Engineering, Waseda University, 3-4-1 Okubo Shinjuku-ku, Tokyo 169-8555, Japan.
Neural Netw. 2018 Dec;108:68-82. doi: 10.1016/j.neunet.2018.08.008. Epub 2018 Aug 14.
Electroencephalography (EEG) is a non-invasive brain imaging technique that describes neural electrical activation with good temporal resolution. Source localization is required for clinical and functional interpretations of EEG signals, and most commonly is achieved via the dipole model; however, the number of dipoles in the brain should be determined for a reasonably accurate interpretation. In this paper, we propose a dipole source localization (DSL) method that adaptively estimates the dipole number by using a novel information criterion. Since the particle filtering process is nonparametric, it is not clear whether conventional information criteria such as Akaike's information criterion (AIC) and Bayesian information criterion (BIC) can be applied. In the proposed method, multiple particle filters run in parallel, each of which respectively estimates the dipole locations and moments, with the assumption that the dipole number is known and fixed; at every time step, the most predictive particle filter is selected by using an information criterion tailored for particle filters. We tested the proposed information criterion first through experiments on artificial datasets; these experiments supported the hypothesis that the proposed information criterion would outperform both AIC and BIC. We then analyzed real human EEG datasets collected during an auditory short-term memory task using the proposed method. We found that the alpha-band dipoles were localized to the right and left auditory areas during the auditory short-term memory task, which is consistent with previous physiological findings. These analyses suggest the proposed information criterion can work well in both model and real-world situations.
脑电图 (EEG) 是一种非侵入性的脑成像技术,可提供良好的时间分辨率的神经电活动描述。源定位对于 EEG 信号的临床和功能解释是必需的,最常用的方法是通过偶极子模型;然而,为了进行合理准确的解释,应该确定大脑中的偶极子数量。在本文中,我们提出了一种通过使用新的信息准则自适应估计偶极子数量的偶极子源定位 (DSL) 方法。由于粒子滤波过程是非参数的,因此不清楚是否可以应用传统的信息准则,如赤池信息量准则 (AIC) 和贝叶斯信息量准则 (BIC)。在提出的方法中,多个粒子滤波器并行运行,每个滤波器分别估计偶极子的位置和矩,假设偶极子的数量是已知且固定的;在每个时间步,通过为粒子滤波器量身定制的信息准则选择最具预测性的粒子滤波器。我们首先通过人工数据集的实验测试了提出的信息准则;这些实验支持了这样一种假设,即提出的信息准则将优于 AIC 和 BIC。然后,我们使用提出的方法分析了在听觉短期记忆任务期间收集的真实人类 EEG 数据集。我们发现,在听觉短期记忆任务期间,alpha 波段偶极子定位于左右听觉区域,这与之前的生理发现一致。这些分析表明,提出的信息准则在模型和现实世界情况中都能很好地工作。