Neural Engineering and Translation Labs, Department of Psychiatry, and Department of Electrical and Computer Engineering, University of California San Diego, La Jolla, CA 92093 U.S.A. alejo.ojeda83@gmail dot com.
Department of Electrical and Computer Engineering, University of California San Diego, La Jolla, CA 92093 U.S.A.
Neural Comput. 2021 Aug 19;33(9):2408-2438. doi: 10.1162/neco_a_01415.
Electromagnetic source imaging (ESI) and independent component analysis (ICA) are two popular and apparently dissimilar frameworks for M/EEG analysis. This letter shows that the two frameworks can be linked by choosing biologically inspired source sparsity priors. We demonstrate that ESI carried out by the sparse Bayesian learning (SBL) algorithm yields source configurations composed of a few active regions that are also maximally independent from one another. In addition, we extend the standard SBL approach to source imaging in two important directions. First, we augment the generative model of M/EEG to include artifactual sources. Second, we modify SBL to allow for efficient model inversion with sequential data. We refer to this new algorithm as recursive SBL (RSBL), a source estimation filter with potential for online and offline imaging applications. We use simulated data to verify that RSBL can accurately estimate and demix cortical and artifactual sources under different noise conditions. Finally, we show that on real error-related EEG data, RSBL can yield single-trial source estimates in agreement with the experimental literature. Overall, by demonstrating that ESI can produce maximally independent sources while simultaneously localizing them in cortical space, we bridge the gap between the ESI and ICA frameworks for M/EEG analysis.
电磁源成像 (ESI) 和独立成分分析 (ICA) 是两种常用于脑电/脑磁数据分析的流行方法,且这两种方法显然不同。本研究表明,通过选择基于生物学的源稀疏先验,可以将这两种方法联系起来。研究表明,稀疏贝叶斯学习 (SBL) 算法进行 ESI 可以产生由少数几个活跃区域组成的源配置,这些区域彼此之间也最大限度地独立。此外,研究还将标准 SBL 方法扩展到两个重要方向。首先,将 M/EEG 的生成模型扩展到包括伪迹源。其次,修改 SBL 以允许使用顺序数据进行高效的模型反演。我们将这种新算法称为递归 SBL (RSBL),这是一种具有在线和离线成像应用潜力的源估计滤波器。使用模拟数据验证了 RSBL 可以在不同噪声条件下准确估计和分解皮质和伪迹源。最后,在真实的错误相关 EEG 数据上,RSBL 可以产生与实验文献一致的单次试验源估计。总之,通过证明 ESI 可以产生最大限度独立的源,同时将其在皮质空间中定位,弥合了 M/EEG 分析中 ESI 和 ICA 框架之间的差距。