4.6 Article

Classification with a Deferral Option and Low-Trust Filtering for Automated Seizure Detection

期刊

SENSORS
卷 21, 期 4, 页码 -

出版社

MDPI
DOI: 10.3390/s21041046

关键词

epilepsy; seizure detection; electroencephalography; classification with a deferral option; home monitoring; long-term monitoring; wearables

资金

  1. Flemish Government
  2. EIT 19263-SeizeIT2: Discreet Personalized Epileptic Seizure Detection Device

向作者/读者索取更多资源

Research on wearable technology for EEG monitoring aims to improve seizure detection accuracy in epilepsy patients by using automated algorithms to assist neurologists in analyzing EEG data. The study shows that deferring some data for expert analysis can lead to nearly perfect detection sensitivity. Additionally, filtering out unreliable EEG segments based on trust scores can decrease false detection rates while maintaining stable detection sensitivity.
Wearable technology will become available and allow prolonged electroencephalography (EEG) monitoring in the home environment of patients with epilepsy. Neurologists analyse the EEG visually and annotate all seizures, which patients often under-report. Visual analysis of a 24-h EEG recording typically takes one to two hours. Reliable automated seizure detection algorithms will be crucial to reduce this analysis. We investigated such algorithms on a dataset of behind-the-ear EEG measurements. Our first aim was to develop a methodology where part of the data is deferred to a human expert, who performs perfectly, with the goal of obtaining an (almost) perfect detection sensitivity (DS). Prediction confidences are determined by temperature scaling of the classification model outputs and trust scores. A DS of approximately 90% (99%) can be achieved when deferring around 10% (40%) of the data. Perfect DS can be achieved when deferring 50% of the data. Our second contribution demonstrates that a common modelling strategy, where predictions from several short EEG segments are combined to obtain a final prediction, can be improved by filtering out untrustworthy segments with low trust scores. The false detection rate shows a relative decrease between 21% and 43%, and the DS shows a small increase or decrease.

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