Ayappa Indu, Norman Robert G, Whiting David, Tsai Albert H W, Anderson Fiona, Donnely Emma, Silberstein David J, Rapoport David M
Division of Pulmonary and Critical Care Medicine, NYU School of Medicine, New York, NY 10016, USA.
Sleep. 2009 Jan;32(1):99-104.
Regularity of respiration is characteristic of stable sleep without sleep disordered breathing. Appearance of respiratory irregularity may indicate onset of wakefulness. The present study examines whether one can detect transitions from sleep to wakefulness using only the CPAP flow signal and automate this recognition.
Prospective study with blinded analysis
Sleep disorder center, academic institution.
74 subjects with obstructive sleep apnealhypopnea syndrome (OSAHS) INTERVENTIONS: n/a.
74 CPAP titration polysomnograms in patients with OSAHS were examined. First we visually identified characteristic patterns of ventilatory irregularity on the airflow signal and tested their relation to conventional detection of EEG defined wake or arousal. To automate recognition of sleep-wake transitions we then developed an artificial neural network (ANN) whose inputs were parameters derived exclusively from the airflow signal. This ANN was trained to identify the visually detected ventilatory irregularities. Finally, we prospectively determined the accuracy of the ANN detection of wake or arousal against EEG sleep/wake transitions. A visually identified irregular respiratory pattern (IrREG) was highly predictive of appearance of EEG wakefulness (Positive Predictive Value [PPV] = 0.89 to 0.98 across subjects). Furthermore, we were able to automate identification of this irregularity with an ANN which was highly predictive for wakefulness by EEG (PPV 0.66 to 0.86).
Despite not detecting all wakefulness, the high positive predictive value suggests that analysis of the respiration signal alone may be a useful indicator of CNS state with potential utility in the control of CPAP in OSAHS. The present study demonstrates the feasibility of automating the detection of IrREG.
呼吸规律是无睡眠呼吸紊乱的稳定睡眠的特征。呼吸不规律的出现可能表明觉醒开始。本研究探讨是否仅使用持续气道正压通气(CPAP)流量信号就能检测从睡眠到觉醒的转变,并实现这种识别的自动化。
采用盲法分析的前瞻性研究
学术机构的睡眠障碍中心。
74名阻塞性睡眠呼吸暂停低通气综合征(OSAHS)患者 干预措施:无。
检查了74例OSAHS患者的CPAP滴定多导睡眠图。首先,我们在气流信号上直观地识别通气不规律的特征模式,并测试它们与脑电图定义的觉醒或唤醒的传统检测之间的关系。为了实现睡眠-觉醒转变识别的自动化,我们随后开发了一种人工神经网络(ANN),其输入仅来自气流信号的参数。该ANN经过训练以识别直观检测到的通气不规律。最后,我们前瞻性地确定了ANN检测觉醒或唤醒相对于脑电图睡眠/觉醒转变的准确性。一种直观识别的不规则呼吸模式(IrREG)对脑电图觉醒的出现具有高度预测性(受试者的阳性预测值[PPV]=0.89至0.98)。此外,我们能够通过ANN自动识别这种不规律,该ANN对脑电图觉醒具有高度预测性(PPV为0.66至0.86)。
尽管未检测到所有的觉醒情况,但高阳性预测值表明仅分析呼吸信号可能是中枢神经系统状态的一个有用指标,在OSAHS的CPAP控制中具有潜在用途。本研究证明了自动检测IrREG的可行性。