μ-STAR: A novel framework for spatio-temporal M/EEG source imaging optimized by microstates

•A novel M/EEG source imaging method – μ-STAR is proposed to estimate source activities.•Microstate analysis is employed to determine optimal time window length for source imaging.•Spatial constraint and temporal basis functions are used to model source dynamics.•μ-STAR shows superior performance wi...

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Veröffentlicht in:NeuroImage (Orlando, Fla.) Fla.), 2023-11, Vol.282, p.120372-120372, Article 120372
Hauptverfasser: Feng, Zhao, Wang, Sujie, Qian, Linze, Xu, Mengru, Wu, Kuijun, Kakkos, Ioannis, Guan, Cuntai, Sun, Yu
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Sprache:eng
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Zusammenfassung:•A novel M/EEG source imaging method – μ-STAR is proposed to estimate source activities.•Microstate analysis is employed to determine optimal time window length for source imaging.•Spatial constraint and temporal basis functions are used to model source dynamics.•μ-STAR shows superior performance with high spatio-temporal accuracy and fast convergence. 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.
ISSN:1053-8119
1095-9572
DOI:10.1016/j.neuroimage.2023.120372