Clinical Neurophysiology Practice (Jan 2023)

On-demand EEG education through competition – A novel, app-based approach to learning to identify interictal epileptiform discharges

  • Jaden D. Barfuss,
  • Fábio A. Nascimento,
  • Erik Duhaime,
  • Srishti Kapur,
  • Ioannis Karakis,
  • Marcus Ng,
  • Aline Herlopian,
  • Alice Lam,
  • Douglas Maus,
  • Jonathan J. Halford,
  • Sydney Cash,
  • M. Brandon Westover,
  • Jin Jing

Journal volume & issue
Vol. 8
pp. 177 – 186

Abstract

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Objective: Misinterpretation of EEGs harms patients, yet few resources exist to help trainees practice interpreting EEGs. We therefore sought to evaluate a novel educational tool to teach trainees how to identify interictal epileptiform discharges (IEDs) on EEG. Methods: We created a public EEG test within the iOS app DiagnosUs using a pool of 13,262 candidate IEDs. Users were shown a candidate IED on EEG and asked to rate it as epileptiform (IED) or not (non-IED). They were given immediate feedback based on a gold standard. Learning was analyzed using a parametric model. We additionally analyzed IED features that best correlated with expert ratings. Results: Our analysis included 901 participants. Users achieved a mean improvement of 13% over 1,000 questions and an ending accuracy of 81%. Users and experts appeared to rely on a similar set of IED morphologic features when analyzing candidate IEDs. We additionally identified particular types of candidate EEGs that remained challenging for most users even after substantial practice. Conclusions: Users improved in their ability to properly classify candidate IEDs through repeated exposure and immediate feedback. Significance: This app-based learning activity has great potential to be an effective supplemental tool to teach neurology trainees how to accurately identify IEDs on EEG.

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