Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:1944-1947. doi: 10.1109/EMBC48229.2022.9871831.
Sleep state classification is essential for managing and comprehending sleep patterns, and it is usually the first step in identifying sleep disorders. Polysomnography (PSG), the gold standard, is intrusive and inconvenient for regular/long-term sleep monitoring. Many sleep-monitoring techniques have recently seen a resurgence as a result of the rise of neural networks and advanced computing. Ballistocardiography (BCG) is an example of such a technique, in which vitals are monitored in a contactless and unobtrusive manner by measuring the body's reaction to cardiac ejection forces. A Multi-Headed Deep Neural Network is proposed in this study to accurately classify sleep-wake state and predict sleep-wake time using BCG sensors. This method achieves a 95.5% sleep-wake classification score. Two studies were conducted in a controlled and uncontrolled environment to assess the accuracy of sleep-awake time prediction. Sleep-awake time prediction achieved an accuracy score of 94.16% in a controlled environment on 115 subjects and 94.90% in an uncontrolled environment on 350 subjects. The high accuracy and contactless nature make this proposed system a convenient method for long-term monitoring of sleep states, and it may also aid in identifying sleep stages and other sleep-related disorders. Clinical Relevance- Current sleep-wake state classification methods, such as actigraphy and polysomnography, necessitate patient contact and a high level of patient compliance. The proposed BCG method was found to be comparable to the gold standard PSG and most wearable actigraphy techniques, and also represents an effective method of contactless sleep monitoring. As a result, clinicians can use it to easily screen for sleep disorders such as dyssomnia and sleep apnea, even from the comfort of one's own home.
睡眠状态分类对于管理和理解睡眠模式至关重要,通常也是识别睡眠障碍的第一步。多导睡眠图(PSG)是金标准,但它对常规/长期睡眠监测具有侵入性和不便性。由于神经网络和先进计算的兴起,许多睡眠监测技术最近重新兴起。心动冲击描记法(BCG)就是这样一种技术,它通过测量身体对心脏射血力的反应,以非接触式和非侵入式的方式监测生命体征。本研究提出了一种多头深度神经网络,使用 BCG 传感器准确分类睡眠-觉醒状态并预测睡眠-觉醒时间。该方法的睡眠-觉醒分类评分达到 95.5%。在受控和非受控环境中进行了两项研究,以评估睡眠-觉醒时间预测的准确性。在 115 名受试者的受控环境中,睡眠-觉醒时间预测的准确率达到 94.16%,在 350 名受试者的非受控环境中,准确率达到 94.90%。该系统具有高精度和非接触式的特点,使其成为长期监测睡眠状态的便捷方法,也有助于识别睡眠阶段和其他与睡眠相关的障碍。临床意义- 目前的睡眠-觉醒状态分类方法,如活动记录仪和多导睡眠图,需要患者接触并保持高度的患者依从性。研究发现,所提出的 BCG 方法与金标准 PSG 和大多数可穿戴活动记录仪技术相当,也是一种有效的非接触式睡眠监测方法。因此,临床医生可以使用它轻松筛查睡眠障碍,如失眠和睡眠呼吸暂停,甚至可以在患者舒适的家中进行。