Westner Britta U, Kujala Jan, Gross Joachim, Schoffelen Jan-Mathijs
Donders Institute for Brain, Cognition and Behaviour, Radboud University, Nijmegen, The Netherlands.
Department of Cognitive Neuroscience, Donders Institute for Brain, Cognition and Behaviour, Radboud University Medical Center, Nijmegen, The Netherlands.
Imaging Neurosci (Camb). 2024 Mar 28;2. doi: 10.1162/imag_a_00119. eCollection 2024.
Non-invasive evaluation of functional connectivity, based on source-reconstructedestimates of phase-difference-based metrics, is notoriously non-robust. This isdue to a combination of factors, ranging from a misspecification of seed regionsto suboptimal baseline assumptions, and residual signal leakage. In this work,we propose a new analysis scheme of source-level phase-difference-basedconnectivity, which is aimed at optimizing the detection of interacting brainregions. Our approach is based on the combined use of sensor subsampling anddual-source beamformer estimation of all-to-all connectivity on a prespecifieddipolar grid. First, a pairwise two-dipole model, to account for reciprocalleakage in the estimation of the localized signals, allows for a usableapproximation of the pairwise bias in connectivity due to residual leakage of"third party" noise. Secondly, using sensor array subsampling, therecreation of multiple connectivity maps using different subsets of sensorsallows for the identification of consistent spatially localized peaks in the6-dimensional connectivity maps, indicative of true brain region interactions.These steps are combined with the subtraction of null coherence estimates toobtain the final coherence maps. With extensive simulations, we compareddifferent analysis schemes for their detection rate of connected dipoles, as afunction of signal-to-noise ratio, phase difference, and connection strength. Wedemonstrate superiority of the proposed analysis scheme in comparison tosingle-dipole models, or an approach that discards the zero phase differencecomponent of the connectivity. We conclude that the proposed pipeline allows fora more robust identification of functional connectivity in experimental data,opening up new possibilities to study brain networks with mechanisticallyinspired connectivity measures in cognition and in the clinic.
基于基于相位差指标的源重建估计对功能连接进行无创评估,其可靠性一直很低。这是由多种因素共同导致的,从种子区域的错误指定到次优的基线假设,再到残余信号泄漏。在这项工作中,我们提出了一种基于源水平相位差连接的新分析方案,旨在优化对相互作用脑区的检测。我们的方法基于传感器子采样和在预先指定的偶极子网格上对全对全连接进行双源波束形成估计的联合使用。首先,一个成对双偶极子模型用于考虑局部信号估计中的相互泄漏,从而可以对由于“第三方”噪声的残余泄漏导致的连接中的成对偏差进行可用的近似。其次,使用传感器阵列子采样,利用传感器的不同子集重新创建多个连接图,从而可以在六维连接图中识别出一致的空间局部峰值,这表明了真正的脑区相互作用。这些步骤与零相干估计的减法相结合,以获得最终的相干图。通过广泛的模拟,我们比较了不同分析方案在检测连接偶极子方面的速率,该速率是信噪比、相位差和连接强度的函数。我们证明了与单偶极子模型或丢弃连接性零相位差分量的方法相比,所提出的分析方案具有优越性。我们得出结论,所提出的流程能够更可靠地识别实验数据中的功能连接,为在认知和临床中使用受机制启发的连接性测量方法研究脑网络开辟了新的可能性。