Artificial intelligence‐enhanced epileptic seizure detection by wearables

Author:

Yu Shuang1ORCID,El Atrache Rima2ORCID,Tang Jianbin1ORCID,Jackson Michele2ORCID,Makarucha Adam1,Cantley Sarah2,Sheehan Theodore2ORCID,Vieluf Solveig2ORCID,Zhang Bo2,Rogers Jeffrey L.3,Mareels Iven1,Harrer Stefan14ORCID,Loddenkemper Tobias2ORCID

Affiliation:

1. IBM Australia Melbourne Victoria Australia

2. Boston Children's Hospital and Harvard Medical School Boston Massachusetts USA

3. Digital Health, IBM T. J. Watson Research Center Yorktown Heights New York USA

4. Digital Health Cooperative Research Centre Melbourne Victoria Australia

Abstract

AbstractObjectiveWrist‐ or ankle‐worn devices are less intrusive than the widely used electroencephalographic (EEG) systems for monitoring epileptic seizures. Using custom‐developed deep‐learning seizure detection models, we demonstrate the detection of a broad range of seizure types by wearable signals.MethodsPatients admitted to the epilepsy monitoring unit were enrolled and asked to wear wearable sensors on either wrists or ankles. We collected patients' electrodermal activity, accelerometry (ACC), and photoplethysmography, from which blood volume pulse (BVP) is derived. Board‐certified epileptologists determined seizure onset, offset, and types using video and EEG recordings per the International League Against Epilepsy 2017 classification. We applied three neural network models—a convolutional neural network (CNN) and a CNN–long short‐term memory (LSTM)‐based generalized detection model and an autoencoder‐based personalized detection model—to the raw time‐series sensor data to detect seizures and utilized performance measures, including sensitivity, false positive rate (the number of false alarms divided by the total number of nonseizure segments), number of false alarms per day, and detection delay. We applied a 10‐fold patientwise cross‐validation scheme to the multisignal biosensor data and evaluated model performance on 28 seizure types.ResultsWe analyzed 166 patients (47.6% female, median age = 10.0 years) and 900 seizures (13 254 h of sensor data) for 28 seizure types. With a CNN‐LSTM‐based seizure detection model, ACC, BVP, and their fusion performed better than chance; ACC and BVP data fusion reached the best detection performance of 83.9% sensitivity and 35.3% false positive rate. Nineteen of 28 seizure types could be detected by at least one data modality with area under receiver operating characteristic curve > .8 performance.SignificanceResults from this in‐hospital study contribute to a paradigm shift in epilepsy care that entails noninvasive seizure detection, provides time‐sensitive and accurate data on additional clinical seizure types, and proposes a novel combination of an out‐of‐the‐box monitoring algorithm with an individualized person‐oriented seizure detection approach.

Funder

Deutsche Forschungsgemeinschaft

Publisher

Wiley

Subject

Neurology (clinical),Neurology

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