Signal quality and patient experience with wearable devices for epilepsy management

光容积图 癫痫 脑电图 可穿戴计算机 可用性 信号(编程语言) 可穿戴技术 医学 数据记录器 人工智能 信号处理 物理医学与康复 数据质量 噪音(视频) 绘图(图形) 信噪比(成像) 计算机科学 远程病人监护 模式识别(心理学) 听力学 语音识别 计算机视觉 生物医学工程 人机交互 计算机硬件 切断 实时计算
作者
Mona Nasseri,Ewan S. Nurse,Martin Glasstetter,Sebastian Böttcher,Nicholas M. Gregg,Aiswarya Laks Nandakumar,Boney Joseph,Tal Pal Attia,Pedro F. Viana,Elisa Bruno,Andrea Biondi,Mark Cook,Gregory A. Worrell,Andreas Schulze‐Bonhage,Matthias Dümpelmann,Dean R. Freestone,Mark P. Richardson,Benjamin H. Brinkmann
出处
期刊:Epilepsia [Wiley]
卷期号:61 (S1): S25-S35 被引量:89
标识
DOI:10.1111/epi.16527
摘要

Abstract Noninvasive wearable devices have great potential to aid the management of epilepsy, but these devices must have robust signal quality, and patients must be willing to wear them for long periods of time. Automated machine learning classification of wearable biosensor signals requires quantitative measures of signal quality to automatically reject poor‐quality or corrupt data segments. In this study, commercially available wearable sensors were placed on patients with epilepsy undergoing in‐hospital or in‐home electroencephalographic (EEG) monitoring, and healthy volunteers. Empatica E4 and Biovotion Everion were used to record accelerometry (ACC), photoplethysmography (PPG), and electrodermal activity (EDA). Byteflies Sensor Dots were used to record ACC and PPG, the Activinsights GENEActiv watch to record ACC, and Epitel Epilog to record EEG data. PPG and EDA signals were recorded for multiple days, then epochs of high‐quality, marginal‐quality, or poor‐quality data were visually identified by reviewers, and reviewer annotations were compared to automated signal quality measures. For ACC, the ratio of spectral power from 0.8 to 5 Hz to broadband power was used to separate good‐quality signals from noise. For EDA, the rate of amplitude change and prevalence of sharp peaks significantly differentiated between good‐quality data and noise. Spectral entropy was used to assess PPG and showed significant differences between good‐, marginal‐, and poor‐quality signals. EEG data were evaluated using methods to identify a spectral noise cutoff frequency. Patients were asked to rate the usability and comfort of each device in several categories. Patients showed a significant preference for the wrist‐worn devices, and the Empatica E4 device was preferred most often. Current wearable devices can provide high‐quality data and are acceptable for routine use, but continued development is needed to improve data quality, consistency, and management, as well as acceptability to patients.
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