Center for Narcolepsy, Sleep, and Health Research, College of Nursing, University of Illinois at Chicago, 845 S. Damen Avenue, M/C 802, Chicago, IL 60612, USA.
Am J Respir Crit Care Med. 2010 Apr 1;181(7):727-33. doi: 10.1164/rccm.200907-1146OC. Epub 2009 Dec 17.
The prediction of individual episodes of apnea and hypopnea in people with obstructive sleep apnea syndrome has not been thoroughly investigated. Accurate prediction of these events could improve clinical management of this prevalent disease.
To evaluate the performance of a system developed to predict episodes of obstructive apnea and hypopnea in individuals with obstructive sleep apnea; to determine the most important signals for making accurate and reliable predictions.
We employed LArge Memory STorage And Retrieval (LAMSTAR) artificial neural networks to predict apnea and hypopnea. Wavelet transform-based preprocessing was applied to six physiological signals obtained from a set of polysomnography studies and used to train and test the networks.
We tested prediction performance during non-REM and REM sleep as a function of data segment duration and prediction lead time. Measurements included average sensitivities, specificities, positive predictive values, and negative predictive values. Prediction performed best during non-REM sleep, using 30-second segments to predict events up to 30 seconds into the future. Most events were correctly predicted up to 60 seconds in the future. Apnea prediction achieved a sensitivity and specificity up to 80.6 +/- 5.6 and 72.8 +/- 6.6%, respectively. Hypopnea prediction achieved a sensitivity and specificity up to 74.4 +/- 5.9 and 68.8 +/- 7.0%., respectively.
We report, to our knowledge, the first system to predict individual episodes of apnea and hypopnea. The most important signal for apnea prediction was submental electromyography. The most important signals for hypopnea prediction were submental electromyography and heart rate variability. This prediction system may facilitate improved therapies for obstructive sleep apnea.
对于阻塞性睡眠呼吸暂停综合征患者的呼吸暂停和低通气事件的个体发作的预测尚未得到彻底研究。这些事件的准确预测可以改善这种常见疾病的临床管理。
评估为预测阻塞性睡眠呼吸暂停患者的阻塞性呼吸暂停和低通气发作而开发的系统的性能;确定进行准确可靠预测的最重要信号。
我们采用基于大存储和检索(LAMSTAR)的人工神经网络来预测呼吸暂停和低通气。对从一组多导睡眠图研究中获得的六个生理信号进行基于小波变换的预处理,并用于训练和测试网络。
我们根据数据段持续时间和预测提前时间测试了非 REM 和 REM 睡眠期间的预测性能。测量包括平均敏感性,特异性,阳性预测值和阴性预测值。使用 30 秒段来预测未来 30 秒内的事件时,在非 REM 睡眠中表现最佳。在未来 60 秒内,大多数事件都得到了正确预测。呼吸暂停预测的敏感性和特异性最高可达 80.6 +/- 5.6%和 72.8 +/- 6.6%。呼吸暂停预测的敏感性和特异性最高可达 74.4 +/- 5.9%和 68.8 +/- 7.0%。
据我们所知,我们报告了第一个可以预测个体呼吸暂停和低通气发作的系统。呼吸暂停预测最重要的信号是颏下肌电图。呼吸暂停预测最重要的信号是颏下肌电图和心率变异性。这种预测系统可能有助于改善阻塞性睡眠呼吸暂停的治疗方法。