Resting state functional connectivity demonstrates increased segregation in bilateral temporal lobe epilepsy

Author:

Lucas Alfredo12ORCID,Cornblath Eli J.13ORCID,Sinha Nishant3ORCID,Hadar Peter13ORCID,Caciagli Lorenzo2,Keller Simon S.4ORCID,Bonilha Leonardo5,Shinohara Russell T.16,Stein Joel M.17,Das Sandhitsu13,Gleichgerrcht Ezequiel8ORCID,Davis Kathryn A.13

Affiliation:

1. Perelman School of Medicine University of Pennsylvania Philadelphia Pennsylvania USA

2. Department of Bioengineering University of Pennsylvania Philadelphia Pennsylvania USA

3. Department of Neurology University of Pennsylvania Philadelphia Pennsylvania USA

4. Department of Pharmacology and Therapeutics, Institute of Systems, Molecular and Integrative Biology University of Liverpool Liverpool UK

5. Department of Neurology Emory University Atlanta Georgia USA

6. Department of Biostatistics, Epidemiology, and Informatics University of Pennsylvania Philadelphia Pennsylvania USA

7. Department of Radiology University of Pennsylvania Philadelphia Pennsylvania USA

8. Department of Neurology Medical University of South Carolina Charleston South Carolina USA

Abstract

AbstractObjectiveTemporal lobe epilepsy (TLE) is the most common type of focal epilepsy. An increasingly identified subset of patients with TLE consists of those who show bilaterally independent temporal lobe seizures. The purpose of this study was to leverage network neuroscience to better understand the interictal whole brain network of bilateral TLE (BiTLE).MethodsIn this study, using a multicenter resting state functional magnetic resonance imaging (rs‐fMRI) data set, we constructed whole‐brain functional networks of 19 patients with BiTLE, and compared them to those of 75 patients with unilateral TLE (UTLE). We quantified resting‐state, whole‐brain topological properties using metrics derived from network theory, including clustering coefficient, global efficiency, participation coefficient, and modularity. For each metric, we computed an average across all brain regions, and iterated this process across network densities. Curves of network density vs each network metric were compared between groups. Finally, we derived a combined metric, which we term the “integration‐segregation axis,” by combining whole‐brain average clustering coefficient and global efficiency curves, and applying principal component analysis (PCA)–based dimensionality reduction.ResultsCompared to UTLE, BiTLE had decreased global efficiency (p = .031), and decreased whole brain average participation coefficient across a range of network densities (p = .019). Modularity maximization yielded a larger number of smaller communities in BiTLE than in UTLE (p = .020). Differences in network properties separate BiTLE and UTLE along the integration‐segregation axis, with regions within the axis having a specificity of up to 0.87 for BiTLE. Along the integration‐segregation axis, UTLE patients with poor surgical outcomes were distributed in the same regions as BiTLE, and network metrics confirmed similar patterns of increased segregation in both BiTLE and poor outcome UTLE.SignificanceIncreased interictal whole‐brain network segregation, as measured by rs‐fMRI, is specific to BiTLE, as well as poor surgical outcome UTLE, and may assist in non‐invasively identifying this patient population prior to intracranial electroencephalography or device implantation.

Funder

American Epilepsy Society

National Institute of Neurological Disorders and Stroke

Publisher

Wiley

Subject

Neurology (clinical),Neurology

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