論文

査読有り 筆頭著者 責任著者
2020年7月17日

Wearable Epileptic Seizure Prediction System with Machine-Learning-Based Anomaly Detection of Heart Rate Variability

Sensors
  • Toshitaka Yamakawa
  • ,
  • Miho Miyajima
  • ,
  • Koichi Fujiwara
  • ,
  • Manabu Kano
  • ,
  • Yoko Suzuki
  • ,
  • Yutaka Watanabe
  • ,
  • Satsuki Watanabe
  • ,
  • Tohru Hoshida
  • ,
  • Motoki Inaji
  • ,
  • Taketoshi Maehara

20
14
開始ページ
3987
終了ページ
3987
記述言語
英語
掲載種別
研究論文(学術雑誌)
DOI
10.3390/s20143987
出版者・発行元
MDPI AG

A warning prior to seizure onset can help improve the quality of life for epilepsy patients. The feasibility of a wearable system for predicting epileptic seizures using anomaly detection based on machine learning is evaluated. An original telemeter is developed for continuous measurement of R-R intervals derived from an electrocardiogram. A bespoke smartphone app calculates the indices of heart rate variability in real time from the R-R intervals, and the indices are monitored using multivariate statistical process control by the smartphone app. The proposed system was evaluated on seven epilepsy patients. The accuracy and reliability of the R-R interval measurement, which was examined in comparison with the reference electrocardiogram, showed sufficient performance for heart rate variability analysis. The results obtained using the proposed system were compared with those obtained using the existing video and electroencephalogram assessments; it was noted that the proposed method has a sensitivity of 85.7% in detecting heart rate variability change prior to seizures. The false positive rate of 0.62 times/h was not significantly different from the healthy controls. The prediction performance and practical advantages of portability and real-time operation are demonstrated in this study.

リンク情報
DOI
https://doi.org/10.3390/s20143987
URL
https://www.mdpi.com/1424-8220/20/14/3987/pdf
ID情報
  • DOI : 10.3390/s20143987
  • eISSN : 1424-8220

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