MRC Cognition and Brain Sciences Unit, 15 Chaucer Road, Cambridge CB2 7EF, UK; Department of Biomedical Engineering and Computational Science, Aalto University, P.O. Box 12200, FI-00076 Aalto, Finland.
MRC Cognition and Brain Sciences Unit, 15 Chaucer Road, Cambridge CB2 7EF, UK.
Neuroimage. 2013 Nov 1;81:265-272. doi: 10.1016/j.neuroimage.2013.04.086. Epub 2013 Apr 29.
The conductivity profile of the head has a major effect on EEG signals, but unfortunately the conductivity for the most important compartment, skull, is only poorly known. In dipole modeling studies, errors in modeled skull conductivity have been considered to have a detrimental effect on EEG source estimation. However, as dipole models are very restrictive, those results cannot be generalized to other source estimation methods. In this work, we studied the sensitivity of EEG and combined MEG+EEG source estimation to errors in skull conductivity using a distributed source model and minimum-norm (MN) estimation. We used a MEG/EEG modeling set-up that reflected state-of-the-art practices of experimental research. Cortical surfaces were segmented and realistically-shaped three-layer anatomical head models were constructed, and forward models were built with Galerkin boundary element method while varying the skull conductivity. Lead-field topographies and MN spatial filter vectors were compared across conductivities, and the localization and spatial spread of the MN estimators were assessed using intuitive resolution metrics. The results showed that the MN estimator is robust against errors in skull conductivity: the conductivity had a moderate effect on amplitudes of lead fields and spatial filter vectors, but the effect on corresponding morphologies was small. The localization performance of the EEG or combined MEG+EEG MN estimator was only minimally affected by the conductivity error, while the spread of the estimate varied slightly. Thus, the uncertainty with respect to skull conductivity should not prevent researchers from applying minimum norm estimation to EEG or combined MEG+EEG data. Comparing our results to those obtained earlier with dipole models shows that general judgment on the performance of an imaging modality should not be based on analysis with one source estimation method only.
头部的电导率分布对 EEG 信号有重大影响,但不幸的是,最重要的部分颅骨的电导率却知之甚少。在偶极子建模研究中,已经认为颅骨电导率模型中的误差会对 EEG 源估计产生不利影响。然而,由于偶极子模型非常严格,这些结果不能推广到其他源估计方法。在这项工作中,我们使用分布式源模型和最小范数 (MN) 估计研究了颅骨电导率误差对 EEG 和组合 MEG+EEG 源估计的敏感性。我们使用了一个反映实验研究最新实践的 MEG/EEG 建模设置。皮质表面被分割,构建了具有真实形状的三层解剖头部模型,并使用伽辽金边界元方法构建了随颅骨电导率变化的正向模型。在不同的电导率下比较了导联图和 MN 空间滤波器向量,并使用直观的分辨率指标评估了 MN 估计器的定位和空间扩展。结果表明,MN 估计器对颅骨电导率误差具有很强的鲁棒性:电导率对导联图和空间滤波器向量的幅度有中等影响,但对相应形态的影响很小。EEG 或组合 MEG+EEG MN 估计器的定位性能仅受到电导率误差的轻微影响,而估计的扩展略有变化。因此,颅骨电导率的不确定性不应阻止研究人员将最小范数估计应用于 EEG 或组合 MEG+EEG 数据。将我们的结果与以前使用偶极子模型获得的结果进行比较表明,对一种成像模式性能的一般判断不应仅基于一种源估计方法的分析。