IEICE Communications Express
Online ISSN : 2187-0136
ISSN-L : 2187-0136

This article has now been updated. Please use the final version.

Comparison of Machine Learning and Non-machine Learning Methods for the Sleep Apnea Detection Using Millimeter-wave Radar
Takato KodaTakuya SakamotoShuqiong WuShigeaki OkumuraHirofumi TakiSatoshi HamadaSusumu SatoKazuo Chin
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JOURNAL FREE ACCESS Advance online publication

Article ID: 2022XBL0050

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Abstract

This study investigated the performance of radar-based detection methods for sleep apnea, by comparing a machine learning approach and a non-machine learning approach. We applied a 79-GHz millimeter-wave multiple-input and multiple-output array radar with 12 virtual array elements and performed radar and polysomnography measurements simultaneously to monitor a sleep apnea patient during overnight inspection in a hospital setting. Both radar-based methods successfully estimated the number of apnea events per hour of sleep, with root-mean-square error values of 4.1 and 4.0, indicating that the two methods had comparable accuracy in the radar-based noncontact monitoring of a sleep apnea patient.

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