# Deep learning-based real-time seizure detection and multi-seizure classification on pediatric EEG

**Authors:** Hyewon Jeong, Kwanhyung Lee, Seyun Kim, Hoon-Chul Kang, Donghwa Yang

PMC · DOI: 10.3389/fneur.2026.1726258 · Frontiers in Neurology · 2026-02-23

## TL;DR

This paper presents a deep learning method for real-time seizure detection and classification in pediatric EEG data.

## Contribution

A novel deep learning model combining ResNet and LSTM for real-time seizure detection and multi-class classification in pediatric patients.

## Key findings

- ResNet with LSTM achieved an AUROC of 0.98 and APROC of 0.73 for real-time seizure detection.
- ResNet50 without frequency bands feature extraction achieved 0.99 AUROC and 0.99 APPRC for multi-class seizure classification.

## Abstract

To develop a reliable and accurate seizure detection method using deep learning models capable of detecting and classifying multiple seizure types in real time.

We retrospectively collected electroencephalography (EEG) recordings, which were acquired as part of routine diagnostic tests for patients aged 3 months to ≤18 years of age with childhood absence epilepsy, infantile epileptic spasms syndrome, other generalized epilepsy, and focal epilepsy, between January 2018 and December 2022 at Severance Children’s Hospital. We used EEG recordings from both seizure and non-seizure patients, which were downsampled to 200 Hz for real-time seizure detection and multi-classification.

Of the 199 patients (620 seizures), 49 (297 seizures) belonged to the childhood absence epilepsy group, 16 (200 seizures) to the infantile epileptic spasms syndrome group, 14 (76 seizures) to other generalized epilepsy group, 19 (47 seizures) to focal epilepsy group, and 101 to the normal group. The results showed the best overall performance of AUROC 0.98 and APROC of 0.73 with ResNet with Long-Short Term Network and a 12 s sliding window on real-time seizure detection task. Furthermore, ResNet50 without the frequency bands feature extractor showed the best overall weighted performance for multi-class seizure detection with 0.99 AUROC and 0.99 APPRC.

Our approach proposes robust methods which include EEG preprocessing strategy with real-time detection/classification of multiple seizures, which helps monitor pediatric seizure. The result shows that real-time seizure detection can be effectively applied to real-world clinical datasets from a pediatric epilepsy unit with realistic performance and speed.

## Linked entities

- **Diseases:** childhood absence epilepsy (MONDO:0010826), infantile epileptic spasms syndrome (MONDO:0018097), generalized epilepsy (MONDO:0005579), focal epilepsy (MONDO:0005384)

## Full-text entities

- **Genes:** HCK (HCK proto-oncogene, Src family tyrosine kinase) [NCBI Gene 3055] {aka AIPCV, JTK9, p59Hck, p61Hck}
- **Diseases:** Seizure (MESH:D012640), Absence Epilepsy (MESH:D004832), head drop (MESH:D000094222), GN (MESH:D004829), FC (MESH:D004828), IESS (MESH:D013036), epileptic spasms (MESH:D013035), headache (MESH:D006261), Epilepsy (MESH:D004827)
- **Chemicals:** antiseizure (-)
- **Species:** Musa acuminata (banana, species) [taxon 4641], Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

2 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12968684/full.md

## References

30 references — full list in the complete paper: https://tomesphere.com/paper/PMC12968684/full.md

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Source: https://tomesphere.com/paper/PMC12968684