Automated video-based detection of nocturnal convulsive seizures in a residential care setting
Geertsema, Evelien E.; Thijs, Roland D.; Gutter, Therese; Vledder, Ben; Arends, Johan B.; Leijten, Frans S.; Visser, Gerhard H.; Kalitzin, Stiliyan N.
(2018) Epilepsia, volume 59 Suppl 1, pp. 53 - 60
(Article)
Abstract
People with epilepsy need assistance and are at risk of sudden death when having convulsive seizures (CS). Automated real-time seizure detection systems can help alert caregivers, but wearable sensors are not always tolerated. We determined algorithm settings and investigated detection performance of a video algorithm to detect CS in a
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residential care setting. The algorithm calculates power in the 2-6 Hz range relative to 0.5-12.5 Hz range in group velocity signals derived from video-sequence optical flow. A detection threshold was found using a training set consisting of video-electroencephalogaphy (EEG) recordings of 72 CS. A test set consisting of 24 full nights of 12 new subjects in residential care and additional recordings of 50 CS selected randomly was used to estimate performance. All data were analyzed retrospectively. The start and end of CS (generalized clonic and tonic-clonic seizures) and other seizures considered desirable to detect (long generalized tonic, hyperkinetic, and other major seizures) were annotated. The detection threshold was set to the value that obtained 97% sensitivity in the training set. Sensitivity, latency, and false detection rate (FDR) per night were calculated in the test set. A seizure was detected when the algorithm output exceeded the threshold continuously for 2 seconds. With the detection threshold determined in the training set, all CS were detected in the test set (100% sensitivity). Latency was ≤10 seconds in 78% of detections. Three/five hyperkinetic and 6/9 other major seizures were detected. Median FDR was 0.78 per night and no false detections occurred in 9/24 nights. Our algorithm could improve safety unobtrusively by automated real-time detection of CS in video registrations, with an acceptable latency and FDR. The algorithm can also detect some other motor seizures requiring assistance.
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Keywords: Remote detection, Seizure detection, SUDEP, Video recordings, seizure detection, video recordings, remote detection, Seizures/diagnosis, Humans, Male, Electroencephalography, Caregivers/psychology, Algorithms, Death, Sudden/prevention & control, Video Recording, Computer Systems, Female, Retrospective Studies, Clinical Neurology, Neurology, Research Support, Non-U.S. Gov't, Observational Study, Journal Article
ISSN: 0013-9580
Publisher: Wiley-Blackwell
Note: Funding Information: This work was supported by the Margaret Knip Fund, ZonMW (grant nr. 300040003 and 40-41200-98-9335), Christelijke Vereniging voor de Verpleging van Lijders aan Epilepsie, the Dutch National Epilepsy Fund, and NUTS Ohra Fund. The authors would like to thank P. Jansen, P. Agterberg, and M. Bakermans for their assistance in the screening of video registrations. We are grateful to Prof. Funding Information: This work was supported by the Margaret Knip Fund, ZonMW (grant nr. 300040003 and 40-41200-98-9335), Christelijke Vereniging voor de Verpleging van Lijders aan Epilepsie, the Dutch National Epilepsy Fund, and NUTS Ohra Fund. The authors would like to thank P. Jansen, P. Agterberg, and M. Bakermans for their assistance in the screening of video registrations. We are grateful to Prof. J.W. Sander and Dr.?G.S. Bell for critically reviewing the manuscript. Publisher Copyright: © 2018 The Authors. Epilepsia published by Wiley Periodicals, Inc. on behalf of International League Against Epilepsy
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