Identification of Interictal Epileptic Networks from Dense-EEG

被引:0
作者
Mahmoud Hassan
Isabelle Merlet
Ahmad Mheich
Aya Kabbara
Arnaud Biraben
Anca Nica
Fabrice Wendling
机构
[1] INSERM,LTSI
[2] U1099,Neurology Department
[3] Université de Rennes 1,AZM Center
[4] CHU,EDST
[5] Lebanese University,undefined
来源
Brain Topography | 2017年 / 30卷
关键词
Epilepsy; Dense-EEG source connectivity; Epileptic networks;
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中图分类号
学科分类号
摘要
Epilepsy is a network disease. The epileptic network usually involves spatially distributed brain regions. In this context, noninvasive M/EEG source connectivity is an emerging technique to identify functional brain networks at cortical level from noninvasive recordings. In this paper, we analyze the effect of the two key factors involved in EEG source connectivity processing: (i) the algorithm used in the solution of the EEG inverse problem and (ii) the method used in the estimation of the functional connectivity. We evaluate four inverse solutions algorithms (dSPM, wMNE, sLORETA and cMEM) and four connectivity measures (r2, h2, PLV, and MI) on data simulated from a combined biophysical/physiological model to generate realistic interictal epileptic spikes reflected in scalp EEG. We use a new network-based similarity index to compare between the network identified by each of the inverse/connectivity combination and the original network generated in the model. The method will be also applied on real data recorded from one epileptic patient who underwent a full presurgical evaluation for drug-resistant focal epilepsy. In simulated data, results revealed that the selection of the inverse/connectivity combination has a significant impact on the identified networks. Results suggested that nonlinear methods (nonlinear correlation coefficient, phase synchronization and mutual information) for measuring the connectivity are more efficient than the linear one (the cross correlation coefficient). The wMNE inverse solution showed higher performance than dSPM, cMEM and sLORETA. In real data, the combination (wMNE/PLV) led to a very good matching between the interictal epileptic network identified from noninvasive EEG recordings and the network obtained from connectivity analysis of intracerebral EEG recordings. These results suggest that source connectivity method, when appropriately configured, is able to extract highly relevant diagnostic information about networks involved in interictal epileptic spikes from non-invasive dense-EEG data.
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页码:60 / 76
页数:16
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共 275 条
[51]  
Chauvel P(2004)Determination of EEG activity propagation: pair-wise versus multichannel estimate IEEE Trans Biomed Eng 51 1501-385
[52]  
Wendling F(2012)Functional imaging of seizures and epilepsy: evolution from zones to networks Curr Opin Neurol 25 194-369
[53]  
Brookes MJ(2005)Preictal state identification by synchronization changes in long-term intracranial EEG recordings Clin Neurophysiol 116 559-12
[54]  
Caparos M(2015)Dynamic reconfiguration of the language network preceding onset of speech in picture naming Hum Brain Mapp 36 1202-37
[55]  
Louis-Dorr V(2012)Seizure source imaging by means of FINE spatio-temporal dipole localization and directed transfer function in partial epilepsy patients Clin Neurophysiol 123 1275-8
[56]  
Wendling F(2014)Reliability of dipole models of epileptic spikes Interictal networks in magnetoencephalography Human brain mapping 35 2789-1865
[57]  
Maillard L(1999)A new algorithm for spatiotemporal analysis of brain functional connectivity Clin Neurophysiol 110 1013-21
[58]  
Wolf D(2015)Towards the utilization of EEG as a brain imaging tool J Neurosci Methods 242 77-35
[59]  
Cho J-H(2012)Mean phase coherence as a measure for phase synchronization and its application to the EEG of epilepsy patients Neuroimage 61 371-1116
[60]  
Vorwerk J(2000)Measuring electrophysiological connectivity by power envelope correlation: a technical review on MEG methods Physica D 144 358-378