Toward a Personalized Real-Time Diagnosis in Neonatal Seizure Detection

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Abstract

The problem of creating a personalized seizure detection algorithm for newborns is tackled in this paper. A probabilistic framework for semi-supervised adaptation of a generic patient-independent neonatal seizure detector is proposed. A system that is based on a combination of patient-adaptive (generative) and patient-independent (discriminative) classifiers is designed and evaluated on a large database of unedited continuous multichannel neonatal EEG recordings of over 800 h in duration. It is shown that an improvement in the detection of neonatal seizures over the course of long EEG recordings is achievable with on-the-fly incorporation of patient-specific EEG characteristics. In the clinical setting, the employment of the developed system will maintain a seizure detection rate at 70% while halving the number of false detections per hour, from 0.4 to 0.2 FD/h. This is the first study to propose the use of online adaptation without clinical labels, to build a personalized diagnostic system for the detection of neonatal seizures.

Original languageEnglish
Article number8031337
JournalIEEE Journal of Translational Engineering in Health and Medicine
Volume5
DOIs
Publication statusPublished - 9 Sep 2017

Keywords

  • detection
  • Neonatal
  • online adaptation
  • seizure

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