4.7 Article

Deep Learning for EEG Seizure Detection in Preterm Infants

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出版社

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0129065721500088

关键词

Neonatal EEC; preterm EEC; seizure detection; support vector machine; deep learning; transfer learning

资金

  1. Science Foundation Ireland [INFANT-12/RC/2272]

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EEG interpretation in preterm infants poses challenges due to limited experts and differences in EEG morphology compared to term infants. Developing specific seizure detection algorithms for preterm infants is difficult due to limited annotated data. Novel DL architectures show promising results for accurately predicting seizures in preterm infants with minimal annotated data.
EEG is the gold standard for seizure detection in the newborn infant, but EEG interpretation in the preterm group is particularly challenging; trained experts are scarce and the task of interpreting EEG in real-time is arduous. Preterm infants are reported to have a higher incidence of seizures compared to term infants. Preterm EEG morphology differs from that of term infants, which implies that seizure detection algorithms trained on term EEG may not be appropriate. The task of developing preterm specific algorithms becomes extra-challenging given the limited amount of annotated preterm EEG data available. This paper explores novel deep learning (DL) architectures for the task of neonatal seizure detection in preterm infants. The study tests and compares several approaches to address the problem: training on data from full-term infants; training on data from preterm infants; training on age-specific preterm data and transfer learning. The system performance is assessed on a large database of continuous EEG recordings of 575 h in duration. It is shown that the accuracy of a validated term-trained EEG seizure detection algorithm, based on a support vector machine classifier, when tested on preterm infants falls well short of the performance achieved for full-term infants. An AUC of 88.3% was obtained when tested on preterm EEG as compared to 96.6% obtained when tested on term EEG. When re-trained on preterm EEG, the performance marginally increases to 89.7%. An alternative DL approach shows a more stable trend when tested on the preterm cohort, starting with an AUC of 93.3% for the term-trained algorithm and reaching 95.0% by transfer learning from the term model using available preterit data. The proposed DI, approach avoids time-consuming explicit feature engineering and leverages the existence of the term seizure detection model, resulting in accurate predictions with a minimum amount of annotated preterm data.

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