Key Laboratory for Biomedical Engineering of Ministry of Education of China, Department of Biomedical Engineering, Zhejiang University, Hangzhou, China.
Biomedical Engineering Laboratory, School of Electrical and Computer Engineering, National Technical University of Athens, Athens, Greece.
Neuroimage. 2023 Nov 15;282:120372. doi: 10.1016/j.neuroimage.2023.120372. Epub 2023 Sep 24.
Source imaging of Electroencephalography (EEG) and Magnetoencephalography (MEG) provides a noninvasive way of monitoring brain activities with high spatial and temporal resolution. In order to address this highly ill-posed problem, conventional source imaging models adopted spatio-temporal constraints that assume spatial stability of the source activities, neglecting the transient characteristics of M/EEG. In this work, a novel source imaging method μ-STAR that includes a microstate analysis and a spatio-temporal Bayesian model was introduced to address this problem. Specifically, the microstate analysis was applied to achieve automatic determination of time window length with quasi-stable source activity pattern for optimal reconstruction of source dynamics. Then a user-specific spatial prior and data-driven temporal basis functions were utilized to characterize the spatio-temporal information of sources within each state. The solution of the source reconstruction was obtained through a computationally efficient algorithm based upon variational Bayesian and convex analysis. The performance of the μ-STAR was first assessed through numerical simulations, where we found that the determination and inclusion of optimal temporal length in the spatio-temporal prior significantly improved the performance of source reconstruction. More importantly, the μ-STAR model achieved robust performance under various settings (i.e., source numbers/areas, SNR levels, and source depth) with fast convergence speed compared with five widely-used benchmark models (including wMNE, STV, SBL, BESTIES, & SI-STBF). Additional validations on real data were then performed on two publicly-available datasets (including block-design face-processing ERP and continuous resting-state EEG). The reconstructed source activities exhibited spatial and temporal neurophysiologically plausible results consistent with previously-revealed neural substrates, thereby further proving the feasibility of the μ-STAR model for source imaging in various applications.
脑电(EEG)和脑磁图(MEG)源成像提供了一种非侵入性的方法,以高时空分辨率监测大脑活动。为了解决这个高度不适定的问题,传统的源成像模型采用了时空约束,假设源活动的空间稳定性,忽略了 M/EEG 的瞬态特征。在这项工作中,引入了一种新的源成像方法 μ-STAR,它包括微状态分析和时空贝叶斯模型,以解决这个问题。具体来说,微状态分析被应用于实现具有准稳定源活动模式的时间窗口长度的自动确定,以实现源动力学的最佳重建。然后,利用用户特定的空间先验和数据驱动的时间基函数来描述每个状态内源的时空信息。通过基于变分贝叶斯和凸分析的计算高效算法来获得源重建的解。首先通过数值模拟评估 μ-STAR 的性能,我们发现,在时空先验中确定和包含最佳时间长度显著提高了源重建的性能。更重要的是,与五个广泛使用的基准模型(包括 wMNE、STV、SBL、BESTIES 和 SI-STBF)相比,μ-STAR 模型在各种设置(即源数量/区域、信噪比水平和源深度)下都具有稳健的性能和快速的收敛速度。然后在两个公开可用的数据集(包括块设计面部处理 ERP 和连续静息态 EEG)上对真实数据进行了额外的验证。重建的源活动表现出空间和时间上神经生理学上合理的结果,与先前揭示的神经基质一致,从而进一步证明了 μ-STAR 模型在各种应用中进行源成像的可行性。