Evaluation of an Activity Tracker to Detect Seizures Using Machine Learning

被引:4
|
作者
Mittlesteadt, Jackson [1 ]
Bambach, Sven [2 ]
Dawes, Alex [3 ]
Wentzel, Evelynne [2 ]
Debs, Andrea [2 ]
Sezgin, Emre [2 ]
Digby, Dan [2 ]
Huang, Yungui [2 ]
Ganger, Andrea [4 ]
Bhatnagar, Shivani [4 ]
Ehrenberg, Lori [4 ]
Nunley, Sunjay [5 ,6 ]
Glynn, Peter [4 ]
Lin, Simon [2 ]
Rust, Steve [2 ]
Patel, Anup D. [4 ]
机构
[1] Univ Notre Dame, South Bend, IN USA
[2] Nationwide Childrens Hosp, Abigail Wexner Res Inst, Columbus, OH 43205 USA
[3] Ohio State Univ, Columbus, OH 43210 USA
[4] Nationwide Childrens Hosp, Div Neurol, Columbus, OH 43205 USA
[5] Prisma Hlth Childrens Hosp, Greenville, SC USA
[6] Univ South Carolina, Sch Med, Greenville, SC USA
关键词
seizure; detection; algorithm; epilepsy; activity; OPERATIONAL CLASSIFICATION; ILAE COMMISSION; POSITION PAPER; EPILEPSY; VALIDATION; DEVICES;
D O I
10.1177/0883073820937515
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Currently, the tracking of seizures is highly subjective, dependent on qualitative information provided by the patient and family instead of quantifiable seizure data. Usage of a seizure detection device to potentially detect seizure events in a population of epilepsy patients has been previously done. Therefore, we chose the Fitbit Charge 2 smart watch to determine if it could detect seizure events in patients when compared to continuous electroencephalographic (EEG) monitoring for those admitted to an epilepsy monitoring unit. A total of 40 patients were enrolled in the study that met the criteria between 2015 and 2016. All seizure types were recorded. Twelve patients had a total of 53 epileptic seizures. The patient-aggregated receiver operating characteristic curve had an area under the curve of 0.58 [0.56, 0.60], indicating that the neural network models were generally able to detect seizure events at an above-chance level. However, the overall low specificity implied a false alarm rate that would likely make the model unsuitable in practice. Overall, the use of the Fitbit Charge 2 activity tracker does not appear well suited in its current form to detect epileptic seizures in patients with seizure activity when compared to data recorded from the continuous EEG.
引用
收藏
页码:873 / 878
页数:6
相关论文
共 50 条
  • [1] Using machine learning to detect misstatements
    Bertomeu, Jeremy
    Cheynel, Edwige
    Floyd, Eric
    Pan, Wenqiang
    REVIEW OF ACCOUNTING STUDIES, 2021, 26 (02) : 468 - 519
  • [2] Using machine learning to detect misstatements
    Jeremy Bertomeu
    Edwige Cheynel
    Eric Floyd
    Wenqiang Pan
    Review of Accounting Studies, 2021, 26 : 468 - 519
  • [3] A Novel Fitness Tracker Using Edge Machine Learning
    Merenda, Massimo
    Astrologo, Miriam
    Laurendi, Damiano
    Romeo, Vincenzo
    Della Corte, Francesco Giuseppe
    20TH IEEE MEDITERRANEAN ELETROTECHNICAL CONFERENCE (IEEE MELECON 2020), 2020, : 212 - 215
  • [4] Tracker Detector: A system to detect third-party trackers through machine learning
    Wu, Qianru
    Liu, Qixu
    Zhang, Yuqing
    Wen, Guanxing
    COMPUTER NETWORKS, 2015, 91 : 164 - 173
  • [5] Using Machine Learning to Detect Cancer Early
    Schellenberger, Jan
    KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 3604 - 3604
  • [6] Epileptic Seizures Prediction Using Machine Learning Methods
    Usman, Syed Muhammad
    Usman, Muhammad
    Fong, Simon
    COMPUTATIONAL AND MATHEMATICAL METHODS IN MEDICINE, 2017, 2017
  • [7] Prediction of epileptic seizures using fNIRS and machine learning
    Guevara, Edgar
    Flores-Castro, Jorge-Arturo
    Peng, Ke
    Dang Khoa Nguyen
    Lesage, Frederic
    Pouliot, Philippe
    Rosas-Romero, Roberto
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2020, 38 (02) : 2055 - 2068
  • [8] Using Machine Learning Approaches to Detect Opponent Formation
    Asali, Ehsan
    Valipour, Mojtaba
    Zare, Nader
    Afshar, Ardavan
    Katebzadeh, MohammadReza
    Dastghaibyfard, G. H.
    2016 ARTIFICIAL INTELLIGENCE AND ROBOTICS (IRANOPEN), 2016, : 140 - 144
  • [9] An Evaluation of Machine Learning Methods to Detect Malicious SCADA Communications
    Beaver, Justin M.
    Borges-Hink, Raymond C.
    Buckner, Mark. A.
    2013 12TH INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND APPLICATIONS (ICMLA 2013), VOL 2, 2013, : 54 - 59
  • [10] AN EVALUATION OF MACHINE LEARNING ALGORITHMS TO DETECT ATTACKS IN SCADA NETWORK
    Tamy, Sara
    Belhadaoui, Hicham
    Almostafa Rabbah, Mahmoud
    Rabbah, Nabila
    Rifi, Mounir
    2019 7TH MEDITERRANEAN CONGRESS OF TELECOMMUNICATIONS (CMT 2019), 2019,