4.7 Article

Electromagnetic Source Imaging via Bayesian Modeling With Smoothness in Spatial and Temporal Domains

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNSRE.2022.3190474

关键词

Imaging; Bayes methods; Smoothing methods; Probabilistic logic; Kernel; Brain modeling; Inverse problems; E; MEG source imaging; spatial-temporal smoothness; variational inference; empirical Bayesian

资金

  1. National Natural Science Foundation of China [61836003]
  2. Technology Innovation [2022ZD0211700]

向作者/读者索取更多资源

This paper proposes a novel algorithm, SI-SST, for reconstructing cortical activation from EEG and MEG data. SI-SST addresses the ill-posed inverse problem by incorporating smoothness in both spatial and temporal domains. Experimental results demonstrate that SI-SST outperforms other methods in terms of reconstruction performance.
Accurate reconstruction of cortical activation from electroencephalography and magnetoencephalography (E/MEG) is a long-standing challenge because of the inherently ill-posed inverse problem. In this paper, a novel algorithm under the empirical Bayesian framework, source imaging with smoothness in spatial and temporal domains (SI-SST), is proposed to address this issue. In SI-SST, current sources are decomposed into the product of spatial smoothing kernel, sparseness encoding coefficients, and temporal basis functions (TBFs). Further smoothness is integrated in the temporal domain with the employment of an underlying autoregressive model. Because sparseness encoding coefficients are constructed depending on overlapped clusters over cortex in this model, we derived a novel update rule based on fixed-point criterion instead of the convexity based approach which becomes invalid in this scenario. Entire variables and hyper parameters are updated alternatively in the variational inference procedure. SI-SST was assessed by multiple metrics with both simulated and experimental datasets. In practice, SI-SST had the superior reconstruction performance in both spatial extents and temporal profiles compared to the benchmarks.

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