Abstract
Automated epileptic seizure detection in a home environment has been a topic of great interest during the last decade. Normally patient-independent heart rate based seizure detection algorithms are used in practice to avoid the necessity of patient-specific data. They, however, lead to mediocre performance due to the large inter-patient heart rate variability. Therefore these algorithms should be adapted to each patient in an efficient way. In this study, a patient-specific algorithm is constructed with only 1 night of not-annotated patient-specific data by using a transfer learning approach. The algorithm was evaluated on 8 pediatric patients with 25 strong nocturnal convulsive seizures. By using only 1 night of patient-specific data, the false alarm rate dropped by a factor of 4 compared to the patient-independent algorithm, leading to on average 0.76 false alarms per night and 88% sensitivity. The results show that the proposed method can quickly adapt to patient characteristics without the requirement of seizure annotations.
Cite
CITATION STYLE
De Cooman, T., Varon, C., Van De Vel, A., Ceulemans, B., Lagae, L., & Van Huffel, S. (2017). Semi-supervised one-class transfer learning for heart rate based epileptic seizure detection. In Computing in Cardiology (Vol. 44, pp. 1–4). IEEE Computer Society. https://doi.org/10.22489/CinC.2017.257-052
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