Using network analysis to localize the epileptogenic zone from invasive EEG recordings in intractable focal epilepsy

Author:

Li Adam1,Chennuri Bhaskar1,Subramanian Sandya1,Yaffe Robert1,Gliske Steve2,Stacey William2,Norton Robert3,Jordan Austin1,Zaghloul Kareem A.4,Inati Sara K.5,Agrawal Shubhi5,Haagensen Jennifer J.6,Hopp Jennifer6,Atallah Chalita6,Johnson Emily7,Crone Nathan8,Anderson William S.8,Fitzgerald Zach9,Bulacio Juan9,Gale John T.9,Sarma Sridevi V.1,Gonzalez-Martinez Jorge9

Affiliation:

1. Institute for Computational Medicine, Biomedical Engineering, Johns Hopkins University, Baltimore, MD, USA

2. University of Michigan, Ann Arbor, USA

3. Uptake Technologies Inc., Chicago, IL, USA

4. Surgical Neurology Branch, National Institute of Neurological Disorders and Stroke, NIH, Bethesda, MD, USA

5. Office of the Clinical Director, National Institute of Neurological Disorders and Stroke, NIH, Bethesda, MD, USA

6. Neurology, University of Maryland Medical Center, Baltimore, MD, USA

7. Neurology, Johns Hopkins Hospital, Baltimore, MD, USA

8. Neurosurgery, Johns Hopkins Hospital, Baltimore, MD, USA

9. Neurosurgery, Cleveland Clinic, Cleveland, OH, USA

Abstract

Treatment of medically intractable focal epilepsy (MIFE) by surgical resection of the epileptogenic zone (EZ) is often effective provided the EZ can be reliably identified. Even with the use of invasive recordings, the clinical differentiation between the EZ and normal brain areas can be quite challenging, mainly in patients without MRI detectable lesions. Consequently, despite relatively large brain regions being removed, surgical success rates barely reach 60–65%. Such variable and unfavorable outcomes associated with high morbidity rates are often caused by imprecise and/or inaccurate EZ localization. We developed a localization algorithm that uses network-based data analytics to process invasive EEG recordings. This network algorithm analyzes the centrality signatures of every contact electrode within the recording network and characterizes contacts into susceptible EZ based on the centrality trends over time. The algorithm was tested in a retrospective study that included 42 patients from four epilepsy centers. Our algorithm had higher agreement with EZ regions identified by clinicians for patients with successful surgical outcomes and less agreement for patients with failed outcomes. These findings suggest that network analytics and a network systems perspective of epilepsy may be useful in assisting clinicians in more accurately localizing the EZ.

Funder

National Institutes of Health

Beckman Coulter Foundation

Maryland Innovation Initiative

Epilepsy Foundation

Maryland Technology Corporation

National Science Foundation

Burroughs Wellcome Fund

Publisher

MIT Press - Journals

Subject

Applied Mathematics,Artificial Intelligence,Computer Science Applications,General Neuroscience

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