Cognitive Brain Dynamics Lab, National Brain Research Centre, NH8, Manesar, Haryana 122052, India.
Cognitive Brain Dynamics Lab, National Brain Research Centre, NH8, Manesar, Haryana 122052, India
eNeuro. 2019 Aug 6;6(4). doi: 10.1523/ENEURO.0170-19.2019. Print 2019 Jul/Aug.
Brain oscillations from EEG and MEG shed light on neurophysiological mechanisms of human behavior. However, to extract information on cortical processing, researchers have to rely on source localization methods that can be very broadly classified into current density estimates such as exact low-resolution brain electromagnetic tomography (eLORETA), minimum norm estimates (MNE), and beamformers such as dynamic imaging of coherent sources (DICS) and linearly constrained minimum variance (LCMV). These algorithms produce a distributed map of brain activity underlying sustained and transient responses during neuroimaging studies of behavior. On the other hand, there are very few comparative analyses that evaluates the "ground truth detection" capabilities of these methods. The current article evaluates the reliability in estimation of sources of spectral event generators in the cortex using a two-pronged approach. First, simulated EEG data with point dipoles and distributed dipoles are used to validate the accuracy and sensitivity of each one of these methods of source localization. The abilities of the techniques were tested by comparing the localization error, focal width, false positive (FP) ratios while detecting already known location of neural activity generators under varying signal-to-noise ratios (SNRs). Second, empirical EEG data during auditory steady state responses (ASSRs) in human participants were used to compare the distributed nature of source localization. All methods were successful in recovery of point sources in favorable signal to noise scenarios and could achieve high hit rates if FPs are ignored. Interestingly, focal activation map is generated by LCMV and DICS when compared to eLORETA while control of FPs is much superior in eLORETA. Subsequently drawbacks and strengths of each method are highlighted with a detailed discussion on how to choose a technique based on empirical requirements.
脑电和脑磁图的脑振荡为人类行为的神经生理机制提供了线索。然而,为了提取皮质处理的信息,研究人员必须依赖于源定位方法,这些方法可以非常广泛地分为电流密度估计,如精确低分辨率脑电磁层析成像 (eLORETA)、最小范数估计 (MNE) 和波束形成器,如相干源动态成像 (DICS) 和线性约束最小方差 (LCMV)。这些算法产生了在行为的神经影像学研究中持续和瞬态反应下的大脑活动的分布式图谱。另一方面,很少有比较分析评估这些方法的“真实检测”能力。本文采用双管齐下的方法评估了在皮层中估计光谱事件发生器源的可靠性。首先,使用点偶极子和分布式偶极子模拟 EEG 数据,以验证每种源定位方法的准确性和敏感性。通过比较定位误差、焦宽、假阳性 (FP) 比率,同时在不同信噪比 (SNR) 下检测已经知道的神经活动发生器的位置,测试了这些技术的能力。其次,在人类参与者的听觉稳态反应 (ASSR) 期间使用经验 EEG 数据来比较源定位的分布式性质。在有利的信号到噪声情况下,所有方法都成功地恢复了点源,如果忽略 FP,则可以达到高命中率。有趣的是,与 eLORETA 相比,LCMV 和 DICS 生成了焦点激活图,而 eLORETA 对 FP 的控制要好得多。随后,详细讨论了如何根据经验要求选择技术,突出了每种方法的优缺点。