Center for Bioelectric Interfaces, Higher School of Economics, Moscow 101000, Russia.
Neuroimage. 2021 Mar;228:117677. doi: 10.1016/j.neuroimage.2020.117677. Epub 2020 Dec 29.
Magnetoencephalography (MEG) is a neuroimaging method ideally suited for non-invasive studies of brain dynamics. MEG's spatial resolution critically depends on the approach used to solve the ill-posed inverse problem in order to transform sensor signals into cortical activation maps. Over recent years non-globally optimized solutions based on the use of adaptive beamformers (BF) gained popularity. When operating in the environment with a small number of uncorrelated sources the BFs perform optimally and yield high spatial resolution. However, the BFs are known to fail when dealing with correlated sources acting like poorly tuned spatial filters with low signal-to-noise ratio (SNR) of the output timeseries and often meaningless cortical maps of power distribution. This fact poses a serious limitation on the broader use of this promising technique especially since fundamental mechanisms of brain functioning, its inherent symmetry and task-based experimental paradigms result into a great deal of correlation in the activity of cortical sources. To cope with this problem, we developed a novel data covariance modification approach that allows for building beamformers that maintain high spatial resolution when operating in the environments with correlated sources. At the core of our method is a projection operation applied to the vectorized sensor-space covariance matrix. This projection does not remove the activity of the correlated sources from the sensor-space covariance matrix but rather selectively handles their contributions to the covariance matrix and creates a sufficiently accurate approximation of an ideal data covariance that could hypothetically be observed should these sources be uncorrelated. Since the projection operation is reciprocal to the PSIICOS method developed by us earlier (Ossadtchi et al., 2018) we refer to the family of algorithms presented here as ReciPSIICOS. We assess the performance of the novel approach using realistically simulated MEG data and show its superior performance in comparison to the classical BF approaches and well established MNE as a method immune to source synchrony by design. We have also applied our approach to the MEG datasets from the two experiments involving two different auditory tasks. The analysis of experimental MEG datasets showed that beamformers from ReciPSIICOS family, but not the classical BF, discovered the expected bilateral focal sources in the primary auditory cortex and detected motor cortex activity associated with the audio-motor task. In most cases MNE managed well but as expected produced more spatially diffuse source distributions. Notably, ReciPSIICOS beamformers yielded cortical activity estimates with SNR several times higher than that obtained with the classical BF, which may indirectly indicate the severeness of the signal cancellation problem when applying classical beamformers to MEG signals generated by synchronous sources.
脑磁图(MEG)是一种非常适合于脑动力学无创研究的神经影像学方法。MEG 的空间分辨率关键取决于用于解决病态逆问题的方法,以便将传感器信号转换为皮质激活图。近年来,基于使用自适应波束形成器(BF)的非全局优化解决方案变得流行起来。在具有少量不相关源的环境中操作时,BF 表现最佳,并产生高空间分辨率。然而,当处理表现为空间滤波器调谐不良、输出时间序列信噪比(SNR)低且通常无意义的皮质功率分布的相关源时,BF 是已知会失败的。这一事实对该有前途的技术的更广泛应用构成了严重限制,尤其是因为大脑功能的基本机制、其固有的对称性和基于任务的实验范式导致皮质源的活动中存在大量相关性。为了应对这个问题,我们开发了一种新的数据协方差修正方法,允许在具有相关源的环境中构建保持高空间分辨率的波束形成器。我们方法的核心是一种应用于矢量化传感器空间协方差矩阵的投影操作。该投影不会从传感器空间协方差矩阵中消除相关源的活动,而是有选择地处理它们对协方差矩阵的贡献,并创建一个足够准确的理想数据协方差的近似值,如果这些源是不相关的,那么可以假设观察到该协方差。由于投影操作与我们之前开发的 PSIICOS 方法(Ossadtchi 等人,2018)相反,因此我们将这里呈现的算法系列称为 ReciPSIICOS。我们使用真实模拟的 MEG 数据评估新方法的性能,并显示其与经典 BF 方法和作为设计上不受源同步影响的方法的成熟 MNE 相比的优越性能。我们还将我们的方法应用于涉及两个不同听觉任务的两个实验的 MEG 数据集。实验 MEG 数据集的分析表明,ReciPSIICOS 家族的波束形成器,但不是经典 BF,在初级听觉皮层中发现了预期的双侧焦点源,并检测到与音频运动任务相关的运动皮层活动。在大多数情况下,MNE 表现良好,但正如预期的那样,产生了更空间弥散的源分布。值得注意的是,ReciPSIICOS 波束形成器产生的皮质活动估计的 SNR 比经典 BF 高几倍,这可能间接表明在应用经典 BF 处理由同步源产生的 MEG 信号时信号消除问题的严重性。