dc.contributor.author
Meisel, Christian
dc.contributor.author
El Atrache, Rima
dc.contributor.author
Jackson, Michele
dc.contributor.author
Schubach, Sarah
dc.contributor.author
Ufongene, Claire
dc.contributor.author
Loddenkemper, Tobias
dc.date.accessioned
2022-03-14T13:19:40Z
dc.date.available
2022-03-14T13:19:40Z
dc.identifier.uri
https://refubium.fu-berlin.de/handle/fub188/34382
dc.identifier.uri
http://dx.doi.org/10.17169/refubium-34100
dc.description.abstract
Objective:
Seizure forecasting may provide patients with timely warnings to adapt their daily activities and help clinicians deliver more objective, personalized treatments. Although recent work has convincingly demonstrated that seizure risk assessment is in principle possible, these early approaches relied largely on complex, often invasive setups including intracranial electrocorticography, implanted devices, and multichannel electroencephalography, and required patient-specific adaptation or learning to perform optimally, all of which limit translation to broad clinical application. To facilitate broader adaptation of seizure forecasting in clinical practice, noninvasive, easily applicable techniques that reliably assess seizure risk without much prior tuning are crucial. Wristbands that continuously record physiological parameters, including electrodermal activity, body temperature, blood volume pulse, and actigraphy, may afford monitoring of autonomous nervous system function and movement relevant for such a task, hence minimizing potential complications associated with invasive monitoring and avoiding stigma associated with bulky external monitoring devices on the head.
Methods:
Here, we applied deep learning on multimodal wristband sensor data from 69 patients with epilepsy (total duration > 2311 hours, 452 seizures) to assess its capability to forecast seizures in a statistically significant way.
Results:
Using a leave-one-subject-out cross-validation approach, we identified better-than-chance predictability in 43% of the patients. Time-matched seizure surrogate data analyses indicated forecasting not to be driven simply by time of day or vigilance state. Prediction performance peaked when all sensor modalities were used, and did not differ between generalized and focal seizure types, but generally increased with the size of the training dataset, indicating potential further improvement with larger datasets in the future.
Significance:
Collectively, these results show that statistically significant seizure risk assessments are feasible from easy-to-use, noninvasive wearable devices without the need of patient-specific training or parameter optimization.
en
dc.rights.uri
https://creativecommons.org/licenses/by-nc/4.0/
dc.subject
precision medicine
en
dc.subject
seizure forecasting
en
dc.subject
wearable devices
en
dc.subject.ddc
600 Technik, Medizin, angewandte Wissenschaften::610 Medizin und Gesundheit::610 Medizin und Gesundheit
dc.title
Machine learning from wristband sensor data for wearable, noninvasive seizure forecasting
dc.type
Wissenschaftlicher Artikel
dcterms.bibliographicCitation.doi
10.1111/epi.16719
dcterms.bibliographicCitation.journaltitle
Epilepsia
dcterms.bibliographicCitation.number
12
dcterms.bibliographicCitation.originalpublishername
Wiley
dcterms.bibliographicCitation.pagestart
2653
dcterms.bibliographicCitation.pageend
2666
dcterms.bibliographicCitation.volume
61
refubium.affiliation
Charité - Universitätsmedizin Berlin
refubium.funding
DEAL Wiley
refubium.resourceType.isindependentpub
no
dcterms.accessRights.openaire
open access
dcterms.bibliographicCitation.pmid
33040327
dcterms.isPartOf.issn
0013-9580
dcterms.isPartOf.eissn
1528-1167