Online Prediction of Lead Seizures from iEEG Data

Hsiang Han Chen, Han Tai Shiao, Vladimir Cherkassky

Research output: Contribution to journalArticlepeer-review

11 Scopus citations

Abstract

We describe a novel system for online prediction of lead seizures from long-term intracranial electroencephalogram (iEEG) recordings for canines with naturally occurring epilepsy. This study adopts new specification of lead seizures, reflecting strong clustering of seizures in observed data. This clustering results in fewer lead seizures (~7 lead seizures per dog), and hence new challenges for online seizure prediction, that are addressed in the proposed system. In particular, the machine learning part of the system is implemented using the group learning method suitable for modeling sparse and noisy seizure data. In addition, several modifications for the proposed system are introduced to cope with the non-stationarity of a noisy iEEG signal. They include: (1) periodic retraining of the SVM classifier using most recent training data; (2) removing samples with noisy labels from training data; and (3) introducing a new adaptive post-processing technique for combining many predictions made for 20 s windows into a single prediction for a 4 h segment. Application of the proposed system requires only two lead seizures for training the initial model, and results in high prediction performance for all four dogs (with mean 0.84 sensitivity, 0.27 time-in-warning, and 0.78 false-positive rate per day). The proposed system achieves accurate prediction of lead seizures during long-term test periods, 3–16 lead seizures during a 169–364 day test period, whereas earlier studies did not differentiate between lead vs. non-lead seizures and used much shorter test periods (~few days long).

Original languageEnglish (US)
Article number1554
JournalBrain Sciences
Volume11
Issue number12
DOIs
StatePublished - Dec 2021

Bibliographical note

Funding Information:
Funding: This research was funded by the National Institutes of Health (NIH), grant number UH2NS095495 and R01NS092882.

Publisher Copyright:
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.

Keywords

  • Group learning
  • IEEG
  • Lead seizure
  • Non-stationarity
  • Seizure prediction
  • Support vector machines
  • Unbal-anced classification

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