Koutlis Christos, Kimiskidis Vasilios K, Kugiumtzis Dimitris
Information Technologies Institute, Centre of Research and Technology Hellas, Thessaloniki, Greece.
1st Department of Neurology, Medical School, Aristotle University of Thessaloniki, Thessaloniki, Greece.
Front Netw Physiol. 2021 Sep 29;1:706487. doi: 10.3389/fnetp.2021.706487. eCollection 2021.
The usage of methods for the estimation of the true underlying connectivity among the observed variables of a system is increasing, especially in the domain of neuroscience. Granger causality and similar concepts are employed for the estimation of the brain network from electroencephalogram (EEG) data. Also source localization techniques, such as the standardized low resolution electromagnetic tomography (sLORETA), are widely used for obtaining more reliable data in the source space. In this work, connectivity structures are estimated in the sensor and in the source space making use of the sLORETA transformation for simulated and for EEG data with episodes of spontaneous epileptiform discharges (ED). From the comparative simulation study on high-dimensional coupled stochastic and deterministic systems originating in the sensor space, we conclude that the structure of the estimated causality networks differs in the sensor space and in the source space. Moreover, different network types, such as random, small-world and scale-free, can be better discriminated on the basis of the data in the original sensor space than on the transformed data in the source space. Similarly, in EEG epochs containing epileptiform discharges, the discriminative ability of network topological indices was significantly better in the sensor compared to the source level. In conclusion, causality networks constructed at the sensor and source level, for both simulated and empirical data, exhibit significant structural differences. These observations indicate that further studies are warranted in order to clarify the exact relationship between data registered in the sensor and source space.
用于估计系统观测变量之间真实潜在连通性的方法的使用正在增加,尤其是在神经科学领域。格兰杰因果关系及类似概念被用于从脑电图(EEG)数据估计脑网络。此外,诸如标准化低分辨率电磁断层扫描(sLORETA)等源定位技术也被广泛用于在源空间中获取更可靠的数据。在这项工作中,利用sLORETA变换在传感器空间和源空间中估计连通性结构,该变换适用于具有自发性癫痫样放电(ED)发作的模拟数据和EEG数据。通过对源自传感器空间的高维耦合随机和确定性系统的比较模拟研究,我们得出结论,估计的因果关系网络结构在传感器空间和源空间中有所不同。此外,基于原始传感器空间中的数据比基于源空间中的变换数据能够更好地区分不同类型的网络,如随机网络、小世界网络和无标度网络。同样,在包含癫痫样放电的EEG时段中,与源水平相比,网络拓扑指数在传感器水平的判别能力明显更好。总之,对于模拟数据和实证数据,在传感器和源水平构建的因果关系网络表现出显著的结构差异。这些观察结果表明,有必要进行进一步研究以阐明传感器空间和源空间中记录的数据之间的确切关系。