Improved neonatal seizure detection using adaptive learning Conference Poster

abstract

  • In neonatal intensive care units performing continuous EEG monitoring, there is an unmet need for around-the-clock interpretation of EEG, especially for recognizing seizures. In recent years, a few automated seizure detection algorithms have been proposed. However, these are suboptimal in detecting brief-duration seizures (< 30s), which frequently occur in neonates with severe neurological problems. Recently, a multi-stage neonatal seizure detector, composed of a heuristic and a data-driven classifier was proposed by our group and showed improved detection of brief seizures. In the present work, we propose to add a third stage to the detector in order to use feedback of the Clinical Neurophysiologist and adaptively retune a threshold of the second stage to improve the performance of detection of brief seizures. As a result, the false alarm rate (FAR) of the brief seizure detections decreased by 50% and the positive predictive value (PPV) increased by 18%. At the same time, for all detections, the FAR decreased by 35% and PPV increased by 5% while the good detection rate remained unchanged.

publication date

  • 2017-9-13

keywords

  • Classifiers
  • Clocks
  • Detectors
  • Electroencephalography
  • Feedback
  • Heuristics
  • Intensive care units
  • Learning
  • Monitoring
  • Neonatal Intensive Care Units
  • Seizures

ISBN

  • 9781509028092

number of pages

  • 4

start page

  • 2810

end page

  • 2813