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      Graph Theory Analysis of Functional Connectivity Combined with Machine Learning Approaches Demonstrates Widespread Network Differences and Predicts Clinical Variables in Temporal Lobe Epilepsy

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          Abstract

          Understanding how global brain networks are affected in epilepsy may elucidate the pathogenesis of seizures and its accompanying neurobehavioral comorbidities. We investigated functional changes within neural networks in temporal lobe epilepsy (TLE) using graph theory analysis of resting-state connectivity. Twenty-seven TLE presurgical patients (age 41.0 ± 12.3 years) and 85 age, gender, and handedness equivalent healthy controls (HCs; age 39.7 ± 16.9 years) were enrolled. Eyes-closed resting-state functional magnetic resonance image scans were analyzed to compare network properties and functional connectivity (FC) changes. TLE subjects showed significantly higher global efficiency, lower clustering coefficient ratio, and lower shortest path lengths ratio than HCs, as an indication of a more synchronized, yet less segregated network. A trend of functional reorganization with a shift of network hubs to the contralateral hemisphere was noted in TLE subjects. Support vector machine (SVM) with linear kernel was trained to separate between neural networks in TLE and HC subjects based on graph measurements. SVM analysis allowed separation between TLE and HC networks with 80.66% accuracy using eight features of graph measurements. Support vector regression (SVR) was used to predict neurocognitive performance from graph metrics. An SVR linear predictor showed discriminative prediction accuracy for four key neurocognitive variables in TLE (absolute R value range: 0.61–0.75). Despite TLE, our results showed both local and global network topology differences that reflect widespread alterations in FC in TLE. Network differences are discriminative between TLE and HCs using data-driven analysis and predicted severity of neurocognitive sequelae in our cohort.

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          Author and article information

          Journal
          Brain Connectivity
          Brain Connectivity
          Mary Ann Liebert Inc
          2158-0014
          2158-0022
          February 01 2020
          February 01 2020
          : 10
          : 1
          : 39-50
          Affiliations
          [1 ]Department of Electrical and Computer Engineering, University of Wisconsin-Madison, Madison, Wisconsin.
          [2 ]Department of Radiology, University of Wisconsin-Madison, Madison, Wisconsin.
          [3 ]Department of Medical Physics, University of Wisconsin-Madison, Madison, Wisconsin.
          [4 ]Department of Biomedical Engineering, University of Wisconsin-Madison, Madison, Wisconsin.
          [5 ]Department of Neurology, University of Wisconsin-Madison, Madison, Wisconsin.
          [6 ]Department of Neuroscience Training Program, and University of Wisconsin-Madison, Madison, Wisconsin.
          [7 ]Department of Neurological Surgery, University of Wisconsin-Madison, Madison, Wisconsin.
          Article
          10.1089/brain.2019.0702
          7044761
          31984759
          59bf288b-a3e9-405b-8f98-f2a56a7a0deb
          © 2020

          https://www.liebertpub.com/nv/resources-tools/text-and-data-mining-policy/121/

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