Sanchez Bornot Jose M, Wong-Lin KongFatt, Ahmad Alwani Liyana, Prasad Girijesh
Northern Ireland Functional Brain Mapping Facility, Intelligent Systems Research Centre, School of Computing and Intelligent Systems, Ulster University, Magee Campus, Derry~Londonderry, UK.
Department of Neurosciences, School of Medical Sciences/Hospital Universiti Sains Malaysia, Universiti Sains Malaysia, Kubang Kerian, 16150, Kota Bharu, Kelantan, Malaysia.
Brain Topogr. 2018 Nov;31(6):895-916. doi: 10.1007/s10548-018-0640-0. Epub 2018 Mar 15.
The brain's functional connectivity (FC) estimated at sensor level from electromagnetic (EEG/MEG) signals can provide quick and useful information towards understanding cognition and brain disorders. Volume conduction (VC) is a fundamental issue in FC analysis due to the effects of instantaneous correlations. FC methods based on the imaginary part of the coherence (iCOH) of any two signals are readily robust to VC effects, but neglecting the real part of the coherence leads to negligible FC when the processes are truly connected but with zero or π-phase (modulus 2π) interaction. We ameliorate this issue by proposing a novel method that implements an envelope of the imaginary coherence (EIC) to approximate the coherence estimate of supposedly active underlying sources. We compare EIC with state-of-the-art FC measures that included lagged coherence, iCOH, phase lag index (PLI) and weighted PLI (wPLI), using bivariate autoregressive and stochastic neural mass models. Additionally, we create realistic simulations where three and five regions were mapped on a template cortical surface and synthetic MEG signals were obtained after computing the electromagnetic leadfield. With this simulation and comparison study, we also demonstrate the feasibility of sensor FC analysis using receiver operating curve analysis whilst varying the signal's noise level. However, these results should be interpreted with caution given the known limitations of the sensor-based FC approach. Overall, we found that EIC and iCOH demonstrate superior results with most accurate FC maps. As they complement each other in different scenarios, that will be important to study normal and diseased brain activity.
从电磁(脑电图/脑磁图)信号在传感器层面估计的大脑功能连接性(FC),可为理解认知和脑部疾病提供快速且有用的信息。由于瞬时相关性的影响,体积传导(VC)是FC分析中的一个基本问题。基于任意两个信号相干性虚部(iCOH)的FC方法对VC效应具有很强的鲁棒性,但当过程真正相关但相互作用为零或π相位(模2π)时,忽略相干性实部会导致FC可忽略不计。我们提出了一种新方法来改善这个问题,该方法通过实现虚部相干性包络(EIC)来近似假定活跃的潜在源的相干性估计。我们使用双变量自回归和随机神经质量模型,将EIC与包括滞后相干性、iCOH、相位滞后指数(PLI)和加权PLI(wPLI)在内的最先进的FC测量方法进行比较。此外,我们创建了逼真的模拟,在模板皮质表面映射三个和五个区域,并在计算电磁导联场后获得合成脑磁图信号。通过这个模拟和比较研究,我们还展示了在改变信号噪声水平的同时,使用接收器操作曲线分析进行传感器FC分析的可行性。然而,鉴于基于传感器的FC方法的已知局限性,这些结果应谨慎解释。总体而言,我们发现EIC和iCOH在生成最准确的FC图谱方面表现出卓越的结果。由于它们在不同场景中相互补充,这对于研究正常和患病大脑活动将非常重要。