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Forecasting Seizure Likelihood With Wearable Technology

Authors :
Stirling, RE
Grayden, DB
D'Souza, W
Cook, MJ
Nurse, E
Freestone, DR
Payne, DE
Brinkmann, BH
Pal Attia, T
Viana, PF
Richardson, MP
Karoly, PJ
Stirling, RE
Grayden, DB
D'Souza, W
Cook, MJ
Nurse, E
Freestone, DR
Payne, DE
Brinkmann, BH
Pal Attia, T
Viana, PF
Richardson, MP
Karoly, PJ
Publication Year :
2021

Abstract

The unpredictability of epileptic seizures exposes people with epilepsy to potential physical harm, restricts day-to-day activities, and impacts mental well-being. Accurate seizure forecasters would reduce the uncertainty associated with seizures but need to be feasible and accessible in the long-term. Wearable devices are perfect candidates to develop non-invasive, accessible forecasts but are yet to be investigated in long-term studies. We hypothesized that machine learning models could utilize heart rate as a biomarker for well-established cycles of seizures and epileptic activity, in addition to other wearable signals, to forecast high and low risk seizure periods. This feasibility study tracked participants' (n = 11) heart rates, sleep, and step counts using wearable smartwatches and seizure occurrence using smartphone seizure diaries for at least 6 months (mean = 14.6 months, SD = 3.8 months). Eligible participants had a diagnosis of refractory epilepsy and reported at least 20 seizures (mean = 135, SD = 123) during the recording period. An ensembled machine learning and neural network model estimated seizure risk either daily or hourly, with retraining occurring on a weekly basis as additional data was collected. Performance was evaluated retrospectively against a rate-matched random forecast using the area under the receiver operating curve. A pseudo-prospective evaluation was also conducted on a held-out dataset. Of the 11 participants, seizures were predicted above chance in all (100%) participants using an hourly forecast and in ten (91%) participants using a daily forecast. The average time spent in high risk (prediction time) before a seizure occurred was 37 min in the hourly forecast and 3 days in the daily forecast. Cyclic features added the most predictive value to the forecasts, particularly circadian and multiday heart rate cycles. Wearable devices can be used to produce patient-specific seizure forecasts, particularly when biomarkers of seizure an

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1315670455
Document Type :
Electronic Resource