N-WRETS

Near-Lossless Wireless Real-time Efficient Electroencephalogram Transmission Solution to Support Sleep Disorder Monitoring Platforms

Seo Joon Lee, Gyoun Yon Cho, Tae Ro Lee

Research output: Contribution to journalArticle

Abstract

Background: Sleep disorders lead to many adverse complications and chronic diseases. Sleep disorder-related healthcare costs are tens of billions of dollars worldwide. Sleep monitoring solutions have thus been the focus of research and industrial interest. However, the problem of limited bandwidth and battery consumption hinders the accuracy and practical use of sleep monitoring AIDS. Introduction: The aim of this study is to propose Near-Lossless Wireless Real-time Efficient electroencephalogram Transmission Solution (N-WRETS) solution that solves the issue of limited bandwidth and battery consumption, thereby supporting platforms dedicated to sleep disorder monitoring. Materials and Methods: Electroencephalography (EEG) data materials were obtained from the Physionet PhysioBank database. The CAP Sleep Database was used. C programming was used for development. Results: To evaluate transmission efficiency, the compression ratio (CR) was compared to prior studies. The N-WRETS CR of 11.34 exceeded other reported values. Discussion: Compared to prior related research, N-WRETS showed the highest compression performance for EEG, but showed the lowest stability, which was a trade-off for its high efficiency. This article opens a possibility for future research to improve the performance of EEG compression algorithms according to sleep disease type. N-WRETS is also near-lossless, which is fit for priceless EEG data that contain important information on the patient's health. The proposed solution also supported wireless real-time transmission, which was another distinctive characteristic compared to related studies. Conclusions: N-WRETS may provide a platform in which sleep disorder patients may be properly monitored in real time. The system could overcome the problems of limited bandwidth and battery consumption.

Original languageEnglish
Pages (from-to)116-125
Number of pages10
JournalTelemedicine and e-Health
Volume25
Issue number2
DOIs
Publication statusPublished - 2019 Feb 1

Fingerprint

Polysomnography
Electroencephalography
Sleep
Databases
Sleep Wake Disorders
Research
Health Care Costs
Acquired Immunodeficiency Syndrome
Chronic Disease
Health

Keywords

  • sleep disorder, EEG, compression, wireless, realtime, lossless, telemedicine

ASJC Scopus subject areas

  • Health Informatics
  • Health Information Management

Cite this

N-WRETS : Near-Lossless Wireless Real-time Efficient Electroencephalogram Transmission Solution to Support Sleep Disorder Monitoring Platforms. / Lee, Seo Joon; Cho, Gyoun Yon; Lee, Tae Ro.

In: Telemedicine and e-Health, Vol. 25, No. 2, 01.02.2019, p. 116-125.

Research output: Contribution to journalArticle

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