Sleep apnea is a serious and severely under-diagnosed sleep-related respiration disorder characterized by repeated disrupted breathing events during sleep. It is diagnosed via polysomnography which is an expensive test conducted in a sleep lab requiring sleep experts to manually score the recorded data. Since the symptoms of sleep apnea are often ambiguous, it is difficult for a physician to decide whether to prescribe polysomnography. In this study, we investigate whether helpful information can be obtained by collecting and automatically analysing sleep data using a smartphone and an inexpensive strain gauge respiration belt. We evaluate how accurately we can detect sleep apnea with wide variety of machine learning techniques with data from a clinical study with 49 overnight sleep recordings. With less than one hour of training, we can distinguish between normal and apneic minutes with an accuracy, sensitivity, and specificity of 0.7609, 0.7833, and 0.7217, respectively. These results can be achieved even if we train only on high-quality data from an entirely separate, clinically certified sensor, which has the potential to substantially reduce the cost of data collection. Data from a complete night can be analyzed in about one second on a smartphone.
翻译:睡眠性脑膜炎是一种严重和严重诊断不足的与睡眠有关的呼吸障碍,其特点是睡眠中呼吸事件一再中断,其特征是睡眠中呼吸能力反复中断。通过多声扫描诊断,这是在睡眠实验室进行的一项昂贵的测试,需要睡眠专家手动测分记录的数据。由于睡眠性脑膜炎的症状往往模糊不清,医生很难决定是否开出聚苯XXXX射线。在这项研究中,我们调查是否可以通过使用智能手机和廉价的呼吸仪来收集和自动分析睡眠数据来获得有用的信息。我们评估我们如何精确地用范围广泛的机器学习技术来检测睡眠性脑膜炎,并使用49个夜间睡眠记录临床研究提供的数据。经过不到一小时的培训,我们可以区分正常和睡眠性分钟,其精确性、敏感性和特性分别为0.7609、0.7833和0.7217。即使我们仅从一个完全独立的、临床认证的传感器中进行高质量数据培训,从而有可能大幅度降低数据收集的成本,这些结果也可以实现。从一个完整的晚上的数据可以在智能手机上进行大约第二层分析。