CC BYMarc GoodfellowJohn R. TerryFahmida A. ChowdhuryHelmut SchmidtMark P. RichardsonWessel WoldmanSharon L. JewellMichalis KoutroumanidisMark P. Richardson2025-06-192025-06-192016-08-080013-95801528-116710.1111/epi.13481https://ror.circle-u.eu/handle/123456789/1227860<jats:title>Summary</jats:title><jats:p>Epilepsy is one of the most common serious neurologic conditions. It is characterized by the tendency to have recurrent seizures, which arise against a backdrop of apparently normal brain activity. At present, clinical diagnosis relies on the following: (1) case history, which can be unreliable; (2) observation of transient abnormal activity during electroencephalography (<jats:styled-content style="fixed-case">EEG</jats:styled-content>), which may not be present during clinical evaluation; and (3) if diagnostic uncertainty occurs, undertaking prolonged monitoring in an attempt to observe <jats:styled-content style="fixed-case">EEG</jats:styled-content> abnormalities, which is costly. Herein, we describe the discovery and validation of an epilepsy biomarker based on computational analysis of a short segment of resting‐state (interictal) <jats:styled-content style="fixed-case">EEG</jats:styled-content>. Our method utilizes a computer model of dynamic networks, where the network is inferred from the extent of synchrony between <jats:styled-content style="fixed-case">EEG</jats:styled-content> channels (functional networks) and the normalized power spectrum of the clinical data. We optimize model parameters using a leave‐one‐out classification on a dataset comprising 30 people with idiopathic generalized epilepsy (<jats:styled-content style="fixed-case">IGE</jats:styled-content>) and 38 normal controls. Applying this scheme to all 68 subjects we find 100% specificity at 56.7% sensitivity, and 100% sensitivity at 65.8% specificity. We believe this biomarker could readily provide additional support to the diagnostic process.</jats:p>OPENAdultMaleAdolescentRest150610Brief CommunicationYoung Adult616DiagnosisResting-state EEGHumansIGEBrain MappingElectronic Data ProcessingComputational modelSpectrum AnalysisElectroencephalographyBiomarkerMiddle AgedBrain WavesEpilepsy, GeneralizedFemaleA computational biomarker of idiopathic generalized epilepsy from resting state EEGpublication03 medical and health sciences0302 clinical medicine3. Good healthdoi_dedup___:df8a41cbf3ad9dffde7bc4b13b468a12PMC50825172750108321.11116/0000-0003-4F45-821.11116/0000-0003-4F47-610871/22410