Huysmans Dorien, Borzée Pascal, Buyse Bertien, Testelmans Dries, Van Huffel Sabine, Varon Carolina
STADIUS Center for Dynamical Systems, Signal Processing and Data Analytics, Department of Electrical Engineering (ESAT), KU Leuven, Leuven, Belgium.
Department of Pneumology, UZ Leuven, Leuven, Belgium.
Front Digit Health. 2021 Jun 15;3:685766. doi: 10.3389/fdgth.2021.685766. eCollection 2021.
Sleep time information is essential for monitoring of obstructive sleep apnea (OSA), as the severity assessment depends on the number of breathing disturbances per hour of sleep. However, clinical procedures for sleep monitoring rely on numerous uncomfortable sensors, which could affect sleeping patterns. Therefore, an automated method to identify sleep intervals from unobtrusive data is required. However, most unobtrusive sensors suffer from data loss and sensitivity to movement artifacts. Thus, current sleep detection methods are inadequate, as these require long intervals of good quality. Moreover, sleep monitoring of OSA patients is often less reliable due to heart rate disturbances, movement and sleep fragmentation. The primary aim was to develop a sleep-wake classifier for sleep time estimation of suspected OSA patients, based on single short-term segments of their cardiac and respiratory signals. The secondary aim was to define metrics to detect OSA patients directly from their predicted sleep-wake pattern and prioritize them for clinical diagnosis. This study used a dataset of 183 suspected OSA patients, of which 36 test subjects. First, a convolutional neural network was designed for sleep-wake classification based on healthier patients (AHI < 10). It employed single 30 s epochs of electrocardiograms and respiratory inductance plethysmograms. Sleep information and Total Sleep Time (TST) was derived for all patients using the short-term segments. Next, OSA patients were detected based on the average confidence of sleep predictions and the percentage of sleep-wake transitions in the predicted sleep architecture. Sleep-wake classification on healthy, mild and moderate patients resulted in moderate κ scores of 0.51, 0.49, and 0.48, respectively. However, TST estimates decreased in accuracy with increasing AHI. Nevertheless, severe patients were detected with a sensitivity of 78% and specificity of 89%, and prioritized for clinical diagnosis. As such, their inaccurate TST estimate becomes irrelevant. Excluding detected OSA patients resulted in an overall estimated TST with a mean bias error of 21.9 (± 55.7) min and Pearson correlation of 0.74 to the reference. The presented framework offered a realistic tool for unobtrusive sleep monitoring of suspected OSA patients. Moreover, it enabled fast prioritization of severe patients for clinical diagnosis.
睡眠时间信息对于阻塞性睡眠呼吸暂停(OSA)的监测至关重要,因为严重程度评估取决于每小时睡眠中的呼吸紊乱次数。然而,睡眠监测的临床程序依赖于众多令人不适的传感器,这可能会影响睡眠模式。因此,需要一种从非侵入性数据中识别睡眠间隔的自动化方法。然而,大多数非侵入性传感器存在数据丢失以及对运动伪影敏感的问题。因此,当前的睡眠检测方法并不充分,因为这些方法需要长时间的高质量数据。此外,由于心率紊乱、运动和睡眠碎片化,OSA患者的睡眠监测往往不太可靠。主要目的是基于疑似OSA患者心脏和呼吸信号的单个短期片段,开发一种用于估计睡眠时间的睡眠-觉醒分类器。次要目的是定义指标,以便直接从预测的睡眠-觉醒模式中检测OSA患者,并将他们列为临床诊断的优先对象。本研究使用了一个包含183名疑似OSA患者的数据集,其中有36名测试对象。首先,基于健康患者(呼吸暂停低通气指数<10)设计了一个用于睡眠-觉醒分类的卷积神经网络。它采用了单段30秒的心电图和呼吸感应体积描记图。使用这些短期片段为所有患者得出睡眠信息和总睡眠时间(TST)。接下来,根据睡眠预测的平均置信度以及预测睡眠结构中睡眠-觉醒转换的百分比来检测OSA患者。对健康、轻度和中度患者进行睡眠-觉醒分类的κ分数分别为中等的0.51、0.49和0.48。然而,随着呼吸暂停低通气指数的增加,总睡眠时间估计的准确性下降。尽管如此,重度患者的检测灵敏度为78%,特异性为89%,并被列为临床诊断的优先对象。因此,他们不准确的总睡眠时间估计变得无关紧要。排除已检测出的OSA患者后,总体估计的总睡眠时间平均偏差误差为21.9(±55.7)分钟,与参考值的皮尔逊相关系数为0.74。所提出的框架为疑似OSA患者的非侵入性睡眠监测提供了一个切实可行的工具。此外,它能够快速将重度患者列为临床诊断的优先对象。