Department of Neuroscience and Biomedical Engineering (NBE), Aalto University School of Science, Espoo, Finland; BioMag Laboratory, HUS Medical Imaging Center, Helsinki University Hospital (HUH), Helsinki, Finland.
Department of Neuroscience and Biomedical Engineering (NBE), Aalto University School of Science, Espoo, Finland.
Neuroimage. 2018 Feb 15;167:73-83. doi: 10.1016/j.neuroimage.2017.11.013. Epub 2017 Nov 8.
Electrically active brain regions can be located applying MUltiple SIgnal Classification (MUSIC) on magneto- or electroencephalographic (MEG; EEG) data. We introduce a new MUSIC method, called truncated recursively-applied-and-projected MUSIC (TRAP-MUSIC). It corrects a hidden deficiency of the conventional RAP-MUSIC algorithm, which prevents estimation of the true number of brain-signal sources accurately. The correction is done by applying a sequential dimension reduction to the signal-subspace projection. We show that TRAP-MUSIC significantly improves the performance of MUSIC-type localization; in particular, it successfully and robustly locates active brain regions and estimates their number. We compare TRAP-MUSIC and RAP-MUSIC in simulations with varying key parameters, e.g., signal-to-noise ratio, correlation between source time-courses, and initial estimate for the dimension of the signal space. In addition, we validate TRAP-MUSIC with measured MEG data. We suggest that with the proposed TRAP-MUSIC method, MUSIC-type localization could become more reliable and suitable for various online and offline MEG and EEG applications.
可以应用多信号分类 (MUSIC) 对脑磁图或脑电图 (MEG; EEG) 数据定位活跃的脑区。我们引入了一种新的 MUSIC 方法,称为截断递归应用和投影 MUSIC (TRAP-MUSIC)。它纠正了传统 RAP-MUSIC 算法的一个隐藏缺陷,该缺陷阻止了对真实脑信号源数量的准确估计。通过对信号子空间投影进行顺序降维来进行校正。我们表明,TRAP-MUSIC 显著提高了 MUSIC 型定位的性能;特别是,它成功且稳健地定位了活跃的脑区并估计了它们的数量。我们在不同关键参数(例如信噪比、源时程之间的相关性和信号空间维度的初始估计)的模拟中比较了 TRAP-MUSIC 和 RAP-MUSIC。此外,我们使用测量的 MEG 数据验证了 TRAP-MUSIC。我们建议,通过使用所提出的 TRAP-MUSIC 方法,MUSIC 型定位可以变得更加可靠,并适合各种在线和离线 MEG 和 EEG 应用。