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Combining a wireless radar sleep monitoring device with deep machine learning techniques to assess obstructive sleep apnea severity
by
Wu, Cheng-Jung
, Feng, Po-Hao
, Lin, Shang-Yang
, Ho, Yu-Hsuan
, Kang, Jiunn-Horng
, Yeh, Shang-Min
, Chen, Kuan-Yuan
, Hsu, Wen-Hua
, Tsai, Cheng-Yu
, Kuan, Yi-Chun
, Majumdar, Arnab
, Liu, Wen-Te
, Huang, Yu-Wen
, Lee, Kang-Yun
, Kao, Chun-Kai
, Tseng, Chien-Hua
, Lee, Hsin-Chien
in
Accuracy
/ Adult
/ Aged
/ Data collection
/ Deep Learning
/ Female
/ Heart rate
/ Humans
/ Male
/ Middle Aged
/ Physiology
/ Polysomnography - instrumentation
/ Polysomnography - methods
/ Prospective Studies
/ Radar - instrumentation
/ Respiration
/ Scientific Investigations
/ Sensors
/ Severity of Illness Index
/ Sleep apnea
/ Sleep Apnea, Obstructive - diagnosis
/ Sleep Apnea, Obstructive - physiopathology
/ Sleep disorders
/ Taiwan
/ Vital signs
/ Wireless Technology - instrumentation
2024
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Combining a wireless radar sleep monitoring device with deep machine learning techniques to assess obstructive sleep apnea severity
by
Wu, Cheng-Jung
, Feng, Po-Hao
, Lin, Shang-Yang
, Ho, Yu-Hsuan
, Kang, Jiunn-Horng
, Yeh, Shang-Min
, Chen, Kuan-Yuan
, Hsu, Wen-Hua
, Tsai, Cheng-Yu
, Kuan, Yi-Chun
, Majumdar, Arnab
, Liu, Wen-Te
, Huang, Yu-Wen
, Lee, Kang-Yun
, Kao, Chun-Kai
, Tseng, Chien-Hua
, Lee, Hsin-Chien
in
Accuracy
/ Adult
/ Aged
/ Data collection
/ Deep Learning
/ Female
/ Heart rate
/ Humans
/ Male
/ Middle Aged
/ Physiology
/ Polysomnography - instrumentation
/ Polysomnography - methods
/ Prospective Studies
/ Radar - instrumentation
/ Respiration
/ Scientific Investigations
/ Sensors
/ Severity of Illness Index
/ Sleep apnea
/ Sleep Apnea, Obstructive - diagnosis
/ Sleep Apnea, Obstructive - physiopathology
/ Sleep disorders
/ Taiwan
/ Vital signs
/ Wireless Technology - instrumentation
2024
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Do you wish to request the book?
Combining a wireless radar sleep monitoring device with deep machine learning techniques to assess obstructive sleep apnea severity
by
Wu, Cheng-Jung
, Feng, Po-Hao
, Lin, Shang-Yang
, Ho, Yu-Hsuan
, Kang, Jiunn-Horng
, Yeh, Shang-Min
, Chen, Kuan-Yuan
, Hsu, Wen-Hua
, Tsai, Cheng-Yu
, Kuan, Yi-Chun
, Majumdar, Arnab
, Liu, Wen-Te
, Huang, Yu-Wen
, Lee, Kang-Yun
, Kao, Chun-Kai
, Tseng, Chien-Hua
, Lee, Hsin-Chien
in
Accuracy
/ Adult
/ Aged
/ Data collection
/ Deep Learning
/ Female
/ Heart rate
/ Humans
/ Male
/ Middle Aged
/ Physiology
/ Polysomnography - instrumentation
/ Polysomnography - methods
/ Prospective Studies
/ Radar - instrumentation
/ Respiration
/ Scientific Investigations
/ Sensors
/ Severity of Illness Index
/ Sleep apnea
/ Sleep Apnea, Obstructive - diagnosis
/ Sleep Apnea, Obstructive - physiopathology
/ Sleep disorders
/ Taiwan
/ Vital signs
/ Wireless Technology - instrumentation
2024
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Combining a wireless radar sleep monitoring device with deep machine learning techniques to assess obstructive sleep apnea severity
Journal Article
Combining a wireless radar sleep monitoring device with deep machine learning techniques to assess obstructive sleep apnea severity
2024
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Overview
Study Objectives:
The gold standard for diagnosing obstructive sleep apnea (OSA) is polysomnography (PSG). However, PSG is a time-consuming method with clinical limitations. This study aimed to create a wireless radar framework to screen the likelihood of 2 levels of OSA severity (ie, moderate-to-severe and severe OSA) in accordance with clinical practice standards.
Methods:
We conducted a prospective, simultaneous study using a wireless radar system and PSG in a Northern Taiwan sleep center, involving 196 patients. The wireless radar sleep monitor, incorporating hybrid models such as deep neural decision trees, estimated the respiratory disturbance index relative to the total sleep time established by PSG (RDI
PSG_TST
), by analyzing continuous-wave signals indicative of breathing patterns. Analyses were performed to examine the correlation and agreement between the RDI
PSG_TST
and apnea-hypopnea index, results obtained through PSG. Cut-off thresholds for RDI
PSG_TST
were determined using Youden’s index, and multiclass classification was performed, after which the results were compared.
Results:
A strong correlation (ρ = 0.91) and agreement (average difference of 0.59 events/h) between apnea-hypopnea index and RDI
PSG_TST
were identified. In terms of the agreement between the 2 devices, the average difference between PSG-based apnea-hypopnea index and radar-based RDI
PSG_TST
was 0.59 events/h, and 187 out of 196 cases (95.41%) fell within the 95% confidence interval of differences. A moderate-to-severe OSA model achieved an accuracy of 90.3% (cut-off threshold for RDI
PSG_TST
: 19.2 events/h). A severe OSA model achieved an accuracy of 92.4% (cut-off threshold for RDI
PSG_TST
: 28.86 events/h). The mean accuracy of multiclass classification performance using these cut-off thresholds was 83.7%.
Conclusions:
The wireless-radar-based sleep monitoring device, with cut-off thresholds, can provide rapid OSA screening with acceptable accuracy and also alleviate the burden on PSG capacity. However, to independently apply this framework, the function of determining the radar-based total sleep time requires further optimizations and verification in future work.
Citation:
Lin S-Y, Tsai C-Y, Majumdar A, et al. Combining a wireless radar sleep monitoring device with deep machine learning techniques to assess obstructive sleep apnea severity.
J Clin Sleep Med
. 2024;20(8):1267–1277.
Publisher
Springer International Publishing,Springer Nature B.V,American Academy of Sleep Medicine
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