Hauk Olaf, Stenroos Matti
MRC Cognition and Brain Sciences Unit, Cambridge, United Kingdom.
Hum Brain Mapp. 2014 Apr;35(4):1642-53. doi: 10.1002/hbm.22279. Epub 2013 Apr 24.
Brain activation estimated from EEG and MEG data is the basis for a number of time-series analyses. In these applications, it is essential to minimize "leakage" or "cross-talk" of the estimates among brain areas. Here, we present a novel framework that allows the design of flexible cross-talk functions (DeFleCT), combining three types of constraints: (1) full separation of multiple discrete brain sources, (2) minimization of contributions from other (distributed) brain sources, and (3) minimization of the contribution from measurement noise. Our framework allows the design of novel estimators by combining knowledge about discrete sources with constraints on distributed source activity and knowledge about noise covariance. These estimators will be useful in situations where assumptions about sources of interest need to be combined with uncertain information about additional sources that may contaminate the signal (e.g. distributed sources), and for which existing methods may not yield optimal solutions. We also show how existing estimators, such as maximum-likelihood dipole estimation, L2 minimum-norm estimation, and linearly-constrained minimum variance as well as null-beamformers, can be derived as special cases from this general formalism. The performance of the resulting estimators is demonstrated for the estimation of discrete sources and regions-of-interest in simulations of combined EEG/MEG data. Our framework will be useful for EEG/MEG studies applying time-series analysis in source space as well as for the evaluation and comparison of linear estimators.
根据脑电图(EEG)和脑磁图(MEG)数据估计的大脑激活是许多时间序列分析的基础。在这些应用中,将大脑区域之间估计值的“泄漏”或“串扰”降至最低至关重要。在此,我们提出了一个新颖的框架,该框架允许设计灵活的串扰函数(DeFleCT),它结合了三种类型的约束:(1)多个离散脑源的完全分离;(2)其他(分布式)脑源贡献的最小化;(3)测量噪声贡献的最小化。我们的框架通过将关于离散源的知识与对分布式源活动的约束以及关于噪声协方差的知识相结合,允许设计新颖的估计器。这些估计器在需要将关于感兴趣源的假设与可能污染信号的其他源(例如分布式源)的不确定信息相结合的情况下将很有用,并且对于现有方法可能无法产生最优解的情况也是如此。我们还展示了如何从这种一般形式主义中导出诸如最大似然偶极子估计、L2最小范数估计、线性约束最小方差以及零波束形成器等现有估计器作为特殊情况。在EEG/MEG组合数据模拟中,对所得估计器在离散源和感兴趣区域估计方面的性能进行了演示。我们的框架对于在源空间中应用时间序列分析的EEG/MEG研究以及线性估计器的评估和比较将是有用的。