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Using low-frequency oscillations to detect temporal lobe epilepsy with machine learning

  • Gyujoon Hwang
  • , Veena A. Nair
  • , Jed Mathis
  • , Cole J. Cook
  • , Rosaleena Mohanty
  • , Gengyan Zhao
  • , Neelima Tellapragada
  • , Candida Ustine
  • , Onyekachi O. Nwoke
  • , Charlene Rivera-Bonet
  • , Megan Rozman
  • , Linda Allen
  • , Courtney Forseth
  • , Dace N. Almane
  • , Peter Kraegel
  • , Andrew Nencka
  • , Elizabeth Felton
  • , Aaron F. Struck
  • , Rasmus Birn
  • , Rama Maganti
  • Lisa L. Conant, Colin J. Humphries, Bruce Hermann, Manoj Raghavan, Edgar A. Deyoe, Jeffrey R. Binder, Elizabeth Meyerand, Vivek Prabhakaran

Research output: Contribution to journalArticlepeer-review

Abstract

The National Institutes of Health-sponsored Epilepsy Connectome Project aims to characterize connectivity changes in temporal lobe epilepsy (TLE) patients. The magnetic resonance imaging protocol follows that used in the Human Connectome Project, and includes 20 min of resting-state functional magnetic resonance imaging acquired at 3T using 8-band multiband imaging. Glasser parcellation atlas was combined with the FreeSurfer subcortical regions to generate resting-state functional connectivity (RSFC), amplitude of low-frequency fluctuations (ALFFs), and fractional ALFF measures. Seven different frequency ranges such as Slow-5 (0.01-0.027 Hz) and Slow-4 (0.027-0.073 Hz) were selected to compute these measures. The goal was to train machine learning classification models to discriminate TLE patients from healthy controls, and to determine which combination of the resting state measure and frequency range produced the best classification model. The samples included age- A nd gender-matched groups of 60 TLE patients and 59 healthy controls. Three traditional machine learning models were trained: Support vector machine, linear discriminant analysis, and naive Bayes classifier. The highest classification accuracy was obtained using RSFC measures in the Slow-4 + 5 band (0.01-0.073 Hz) as features. Leave-one-out cross-validation accuracies were ∼83%, with receiver operating characteristic area-under-the-curve reaching close to 90%. Increased connectivity from right area posterior 9-46v in TLE patients contributed to the high accuracies. With increased sample sizes in the near future, better machine learning models will be trained not only to aid the diagnosis of TLE, but also as a tool to understand this brain disorder.

Original languageEnglish
Pages (from-to)184-193
Number of pages10
JournalBrain connectivity
Volume9
Issue number2
DOIs
StatePublished - Mar 2019

Keywords

  • ALFF
  • connectome
  • functional connectivity
  • machine learning
  • resting-state fMRI
  • temporal lobe epilepsy

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