4.5 Article

The power of ECG in multimodal patient-specific seizure monitoring: Added value to an EEG-based detector using limited channels

Journal

EPILEPSIA
Volume 62, Issue 10, Pages 2333-2343

Publisher

WILEY
DOI: 10.1111/epi.16990

Keywords

behind-the-ear EEG; ECG; epilepsy; multimodal algorithms; reduced electrode montage; seizure detection; wearable sensors

Funding

  1. European Union [211713]
  2. Bijzonder Onderzoeksfonds KU Leuven (BOF: Prevalentie van epilepsie en slaapstoornissen in de ziekte van Alzheimer) [C24/18/097]
  3. Fonds voor Wetenschappelijk Onderzoek-Vlaanderen (PhD/postdoctoral grants), EIT [19263-SeizeIT2]
  4. Flemish Government (AI Research Program)

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An automated seizure detection algorithm integrating behind-the-ear EEG and ECG data outperformed the EEG-based algorithm in two out of three databases, with sensitivity increases of 11% and 8% at the same false alarm rate. The study demonstrated the added value of ECG in improving seizure detection for patients with focal epilepsy.
Objective Wearable seizure detection devices could provide more reliable seizure documentation outside the hospital compared to seizure self-reporting by patients, which is the current standard. Previously, during the SeizeIT1 project, we studied seizure detection based on behind-the-ear electroencephalography (EEG). However, the obtained sensitivities were too low for practical use, because not all seizures are associated with typical ictal EEG patterns. Therefore, in this paper, we aim to develop a multimodal automated seizure detection algorithm integrating behind-the-ear EEG and electrocardiography (ECG) for detecting focal seizures. In this framework, we quantified the added value of ECG to behind-the-ear EEG. Methods This study analyzed three multicenter databases consisting of 135 patients having focal epilepsy and a total of 896 seizures. A patient-specific multimodal automated seizure detection algorithm was developed using behind-the-ear/temporal EEG and single-lead ECG. The EEG and ECG data were processed separately using machine learning methods. A late integration approach was applied for fusing those predictions. Results The multimodal algorithm outperformed the EEG-based algorithm in two of three databases, with an increase of 11% and 8% in sensitivity for the same false alarm rate. Significance ECG can be of added value to an EEG-based seizure detection algorithm using only behind-the-ear/temporal lobe electrodes for patients with focal epilepsy.

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