<th id="5nh9l"></th><strike id="5nh9l"></strike><th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th><strike id="5nh9l"></strike>
<progress id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"><noframes id="5nh9l">
<th id="5nh9l"></th> <strike id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span>
<progress id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span><strike id="5nh9l"><noframes id="5nh9l"><strike id="5nh9l"></strike>
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"></span><span id="5nh9l"><video id="5nh9l"></video></span>
<th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th>
<progress id="5nh9l"><noframes id="5nh9l">

基于壓電薄膜傳感器的無約束睡眠分期

Unconstrained sleep staging based on piezoelectric film sensors

  • 摘要: 睡眠分期對睡眠質量評估和睡眠疾病預防與診斷提供了重要依據. 本研究招募健康青年作為被試,對采用嵌有壓電薄膜傳感器的睡眠監測墊與多導睡眠儀同步采集得到的61晚睡眠數據進行研究. 從心臟、呼吸和體動等在壓電薄膜上響應的信號特性出發,提取得到12個時域、36個頻域以及5個高階統計量共計53個特征. 基于裝袋樹模型對睡眠中的清醒期(Wake)、非快速眼動期(N1期、N2期、N3期)、快速眼動期(REM)進行四分類(Wake, N1+N2, N3, REM)、三分類(Wake, N1+N2+N3, REM)和二分類(Wake, N1+N2+N3+REM)預測,并與多導睡眠圖睡眠分期標簽進行驗證. 最終得到四分類、三分類和二分類的測試準確率分別為80.5%、85.3%和96.3%,Kappa值分別達到0.74、0.78和0.93,在同類研究中表現優異. 證明了睡眠監測墊具有良好的睡眠評估與監測能力,為家用睡眠監測與評估提供了更多的可能性,該方法在呼吸率、心率獲取受到干擾時也可獲得可觀的睡眠評估效果.

     

    Abstract: A third of an individual’s life is spent sleeping, and the quality of sleep is related to the recovery of energy in daily life, the maintenance of memory and thinking skills, concentration, and other processes. Sleep assessment provides an important basis for evaluating sleep quality and preventing or diagnosing sleep disorders. Currently, polysomnography (PSG) is the gold standard for sleep staging. However, PSG monitoring requires the attachment of a large number of electrodes to obtain physiological signals, which then affects the individual’s sleep quality. In clinical practice, sleep monitoring must be performed in a hospital and requires a sleep technician to keep vigil and manually record the sleep stages, which is time-consuming, labor-intensive, complex, and costly. The monitoring pad based on piezoelectric film collects piezoelectric signals without requiring that electrodes be attached to the individual, which is an unconstrained, non-contact, and non-disturbance monitoring method. The monitoring pad can measure the force from the thoracic motion generated by human respiration, the force caused by the heartbeat and blood flow, and the force generated by involuntary body movement during sleep. These physiological activities pass through the pad and other media to the sensor, which is then converted into electrical signals. The pad can be placed in different positions on the bed and can monitor physiological activities, such as heartbeat, breathing, body turning, and leg movement, without direct contact with the human body. Considering that the pad can be placed in the sleep environment for a long time, it can achieve long-term and discreet sleep monitoring. To date, most studies have focused on extracting features related to the heart rate, respiration, and body movement from piezoelectric signals. However, in actual daily sleep situations, the change of sleep position, body movement, and even the change of blood pressure at night affect the strength of heartbeat information obtained by the sensor, which can considerably affect the continuous heart rate detection. Meanwhile, continuous heart rate detection throughout the night when in the natural sleep state still requires a breakthrough. This study recruited healthy young adults as subjects and used a sleep monitoring mat equipped with a piezoelectric film sensor synchronized with PSG to collect data from 61 nights of sleep. A total of 53 features were extracted from signals such as cardiac activity, respiration, and body movement detected by the piezoelectric film, including 12 time-domain features, 36 frequency-domain features, and 5 higher-order statistical features. Using a bagging tree model, the study performed a four-stage classification (wake, N1+N2, N3, REM (rapidly eye movement)), three-stage classification (wake, N1+N2+N3, REM), and two-stage classification (wake, N1+N2+N3+REM) to predict sleep stages, and these predictions were validated against the PSG sleep stage labels. The final testing accuracies for the four-, three-, and two-stage classifications were 80.5%, 85.3%, and 96.3%, with Kappa values of 0.74, 0.78, and 0.93, respectively, thus demonstrating excellent performance compared to similar studies. This demonstrates the sleep monitoring mat’s capability for accurate sleep assessment and monitoring, thereby offering additional possibilities for home sleep monitoring and assessment. This method also reveals the sleep monitoring mat’s considerable effectiveness for sleep assessment when respiratory and heart rate measurements are disrupted.

     

/

返回文章
返回
<th id="5nh9l"></th><strike id="5nh9l"></strike><th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th><strike id="5nh9l"></strike>
<progress id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"><noframes id="5nh9l">
<th id="5nh9l"></th> <strike id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span>
<progress id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span><strike id="5nh9l"><noframes id="5nh9l"><strike id="5nh9l"></strike>
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"></span><span id="5nh9l"><video id="5nh9l"></video></span>
<th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th>
<progress id="5nh9l"><noframes id="5nh9l">
259luxu-164