Multimodal wearable EEG, EMG and accelerometry measurements improve the accuracy of tonic-clonic seizure detection.

Physiological measurement(2024)

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摘要
OBJECTIVE:This paper aims to investigate the possibility of detecting tonic-clonic seizures (TCSs) with behind-the-ear, two-channel wearable electroencephalography (EEG), and to evaluate its added value to non-EEG modalities in TCS detection. METHODS:We included 27 participants with a total of 44 TCSs from the European multicenter study SeizeIT2. The wearable Sensor Dot (SD; Byteflies) was used to measure behind-the-ear EEG, electromyography (EMG), electrocardiography (ECG), accelerometry (ACC) and gyroscope (GYR). We evaluated automatic unimodal detection of TCSs, using sensitivity, precision, false positive rate (FPR) and F1-score. Subsequently, we fused the different modalities and again assessed performance. Algorithm-labeled segments were then provided to two experts, who annotated true positive TCSs, and discarded false positives (FPs). RESULTS:Wearable EEG outperformed the other single modalities with a sensitivity of 100% and a FPR of 10.3/24h. The combination of wearable EEG and EMG proved most clinically useful, delivering a sensitivity of 97.7%, an FPR of 0.4/24h, a precision of 43%, and an F1-score of 59.7%. The highest overall performance was achieved through the fusion of wearable EEG, EMG, and ACC, yielding a sensitivity of 90.9%, an FPR of 0.1/24h, a precision of 75.5%, and an F1-score of 82.5%. CONCLUSIONS:In TCS detection with a wearable device, combining EEG with EMG, ACC or both resulted in a remarkable reduction of FPR, while retaining a high sensitivity. SIGNIFICANCE:Adding wearable EEG could further improve TCS detection, relative to extracerebral-based systems.
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