2019
DOI: 10.1101/862797
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Neural Fragility as an EEG Marker of the Seizure Onset Zone

Abstract: Epilepsy is a global epidemic and 30% of the 60 million patients do not respond to medication treatment. The only treatment options for patients with medically refractory epilepsy are surgical removal or electrical stimulation of the epileptogenic zone (EZ) i.e. the source of their seizures. Despite extensive evaluations with neuroimaging, visual EEG analysis and clinical testing, surgical success rates vary between 30-70%. Currently, no computational methods have been translated into the clinic to assist in l… Show more

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Cited by 11 publications
(27 citation statements)
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“…Moreover, intraoperative data may refine and modify the resection plan in real-time, by capturing primarily interictal data to study electrophysiological changes within the irritative zone following resection. 36,37,38 To extend our work in 31 and, 32 we first provide some theoretical analysis of neural fragility to demonstrate that it is a well-defined metric assuming we have a good estimator for the linear system from data. Now that we have a well-defined metric, we hypothesize that neural fragility of iEEG data will modulate with respect to the successful surgical resection of the EZ.…”
Section: Resultsmentioning
confidence: 99%
See 2 more Smart Citations
“…Moreover, intraoperative data may refine and modify the resection plan in real-time, by capturing primarily interictal data to study electrophysiological changes within the irritative zone following resection. 36,37,38 To extend our work in 31 and, 32 we first provide some theoretical analysis of neural fragility to demonstrate that it is a well-defined metric assuming we have a good estimator for the linear system from data. Now that we have a well-defined metric, we hypothesize that neural fragility of iEEG data will modulate with respect to the successful surgical resection of the EZ.…”
Section: Resultsmentioning
confidence: 99%
“…Typically, approaches have tried to either i) build a prediction model for the clinically annotated epileptic channels, 24,64 ii) build a prediction model for the clinical annotations on only successful patients 65 and iii) building a prediction model conditioned on the clinical annotations that predicts surgical outcome. 32 Building a prediction model for the clinical annotations would not obtain a model of the EZ, since current outcomes vary between 30-70%. 21 Building the prediction model for only patients with successful surgical outcomes limits the amount of data one can use, but also is limited since not all the clinically annotated electrodes are necessarily epileptogenic.…”
Section: Comparing Neural Fragility and Time-frequency Spectral Features Of Ieegmentioning
confidence: 99%
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“…matter contacts when creating iEEG montages to interpret, diagnose, and localize the seizure onset zone (SOZ). Research 303 studies [21][22][23][24][25] utilizing SEEG will typically exclude white matter 304 contacts. The exclusion of white matter contacts is perhaps 305 not unexpected given the fact that no validated studies exist 306 that demonstrate a rigorous approach to incorporating white 307 matter contacts.…”
Section: Ablated Regions In Good Outcome Patients Have Lower Connectivity To White Matter Signals Than Poor Outcome Patientsmentioning
confidence: 99%
“…Examples include methods for analyzing functional connectivity via computation of linear or nonlinear measures of time-series correlations between brain regions or measures of causality for capturing directionality of interactions (Bartolomei et al, 2017). Graph theoretic approaches were also employed in attempts of identifying subnetworks comprising the EZ, often not without the challenge of finding clear interpretation of such measures in relevant neurophysiological terms (Bartolomei et al, 2017; Li et al, 2021). Network based statistics were also shown to provide promising features for training statistical learning algorithms that assign likelihood of individual regions belonging to the EZ (Li et al, 2018).…”
Section: Introductionmentioning
confidence: 99%