P. Anderer, M. Ross, A. Cerny, R. Vasko, E. Shaw, P. Fonseca
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引用次数: 2
摘要
根据美国睡眠医学学会(American Academy of sleep Medicine, AASM)的规则,人类专家必须在每30秒的时间里,从五个阶段中选择一个阶段,即使神经信号的特征是模糊的,这在临床研究中是很常见的。此外,专家无法在没有记录这些信号的研究中对睡眠进行评分,比如在家庭睡眠呼吸暂停测试(HSAT)中。在本主题综述中,我们描述了人工智能如何基于多导睡眠图(PSG)记录的神经信号和HSAT记录的心肺信号提供一致和可靠的睡眠阶段评分。我们还展示了睡眠阶段概率的估计,通常显示为催眠密度图,可以用来量化睡眠阶段的模糊性和稳定性。作为在睡眠呼吸障碍(SDB)表征中应用催眠密度的一个例子,我们将49名睡眠呼吸暂停患者与健康对照者进行了比较,发现在非快速眼动(NREM)睡眠期间,模糊性增加和稳定性下降的程度取决于其严重程度。此外,通过心肺信号自动评分,我们展示了hsat衍生的呼吸暂停低通气指数和缺氧负担如何与80例患者的PSG指数良好相关,表明使用该技术如何真正使hsat成为PSG诊断SDB的替代方案。
Overview of the hypnodensity approach to scoring sleep for polysomnography and home sleep testing
Human experts scoring sleep according to the American Academy of Sleep Medicine (AASM) rules are forced to select, for every 30-second epoch, one out of five stages, even if the characteristics of the neurological signals are ambiguous, a very common occurrence in clinical studies. Moreover, experts cannot score sleep in studies where these signals have not been recorded, such as in home sleep apnea testing (HSAT). In this topic review we describe how artificial intelligence can provide consistent and reliable scoring of sleep stages based on neurological signals recorded in polysomnography (PSG) and on cardiorespiratory signals recorded in HSAT. We also show how estimates of sleep stage probabilities, usually displayed as hypnodensity graph, can be used to quantify sleep stage ambiguity and stability. As an example of the application of hypnodensity in the characterization of sleep disordered breathing (SDB), we compared 49 patients with sleep apnea to healthy controls and revealed a severity-depending increase in ambiguity and decrease in stability during non-rapid eye movement (NREM) sleep. Moreover, using autoscoring of cardiorespiratory signals, we show how HSAT-derived apnea-hypopnea index and hypoxic burden are well correlated with the PSG indices in 80 patients, showing how using this technology can truly enable HSATs as alternatives to PSG to diagnose SDB.