Functional connectivity discriminates epileptogenic states and predicts surgical outcome in children with drug resistant epilepsy

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作者
Sakar Rijal
Ludovica Corona
M. Scott Perry
Eleonora Tamilia
Joseph R. Madsen
Scellig S. D. Stone
Jeffrey Bolton
Phillip L. Pearl
Christos Papadelis
机构
[1] Cook Children’s Health Care System,Jane and John Justin Institute for Mind Health Neurosciences Center
[2] The University of Texas at Arlington,Department of Bioengineering
[3] Boston Children’s Hospital,Fetal
[4] Harvard Medical School,Neonatal Neuroimaging and Developmental Science Center
[5] Boston Children’s Hospital,Division of Epilepsy Surgery, Department of Neurosurgery
[6] Harvard Medical School,Division of Epilepsy and Clinical Neurophysiology, Department of Neurology
[7] Boston Children’s Hospital,School of Medicine
[8] Harvard Medical School,undefined
[9] Texas Christian University,undefined
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摘要
Normal brain functioning emerges from a complex interplay among regions forming networks. In epilepsy, these networks are disrupted causing seizures. Highly connected nodes in these networks are epilepsy surgery targets. Here, we assess whether functional connectivity (FC) using intracranial electroencephalography can quantify brain regions epileptogenicity and predict surgical outcome in children with drug resistant epilepsy (DRE). We computed FC between electrodes on different states (i.e. interictal without spikes, interictal with spikes, pre-ictal, ictal, and post-ictal) and frequency bands. We then estimated the electrodes’ nodal strength. We compared nodal strength between states, inside and outside resection for good- (n = 22, Engel I) and poor-outcome (n = 9, Engel II–IV) patients, respectively, and tested their utility to predict the epileptogenic zone and outcome. We observed a hierarchical epileptogenic organization among states for nodal strength: lower FC during interictal and pre-ictal states followed by higher FC during ictal and post-ictal states (p < 0.05). We further observed higher FC inside resection (p < 0.05) for good-outcome patients on different states and bands, and no differences for poor-outcome patients. Resection of nodes with high FC was predictive of outcome (positive and negative predictive values: 47–100%). Our findings suggest that FC can discriminate epileptogenic states and predict outcome in patients with DRE.
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