Waxman Jonathan A, Graupe Daniel, Carley David W
Medical Scientist Training Program, University of Illinois at Chicago, Chicago, IL, 60612, USA,
Sleep Breath. 2015 Mar;19(1):205-12. doi: 10.1007/s11325-014-0993-x. Epub 2014 May 8.
Conventional therapies for obstructive sleep apnea (OSA) are effective but suffer from poor patient adherence and may not fully alleviate major OSA-associated cardiovascular risk factors or improve certain aspects of quality of life. Predicting the onset of disordered breathing events in OSA patients may lead to improved strategies for treating OSA and inform our understanding of underlying disease mechanisms. In this work, we describe a deployable system capable of performing real-time predictions of sleep disordered breathing events in patients diagnosed with OSA, providing a novel approach for gaining insight into OSA pathophysiology, discovering population subgroups, and improving therapies.
LArge Memory STorage and Retrieval artificial neural networks with 864 different configurations were applied to polysomnogram records from 64 patients. Wavelet transforms, measures of entropy, and other statistics were applied to six physiological signals to provide network inputs. Approximate statistical tests were used to determine the best performing network for each patient. The most important predictors of disordered breathing events in OSA patients were determined by analyzing internal network parameters.
The average optimized individual prediction sensitivity and specificity were 0.81 and 0.77, respectively. Predictions were better than random guessing for all OSA patients. Analysis of internal network parameters revealed a high degree of heterogeneity among disordered breathing event predictors and may reveal patient subgroups.
We report the first practical system to predict individual disordered breathing events in a heterogeneous group of patients diagnosed with OSA. The pattern of disordered breathing predictors suggests variable underlying pathophysiological mechanisms and highlights the need for an individualized approach to OSA diagnosis, therapy, and management.
阻塞性睡眠呼吸暂停(OSA)的传统疗法有效,但患者依从性差,且可能无法完全缓解主要的OSA相关心血管危险因素或改善生活质量的某些方面。预测OSA患者呼吸紊乱事件的发作可能会带来更好的OSA治疗策略,并增进我们对潜在疾病机制的理解。在这项工作中,我们描述了一种可部署的系统,该系统能够对被诊断为OSA的患者的睡眠呼吸紊乱事件进行实时预测,为深入了解OSA病理生理学、发现人群亚组和改进治疗方法提供了一种新方法。
将具有864种不同配置的大内存存储与检索人工神经网络应用于64名患者的多导睡眠图记录。对六种生理信号应用小波变换、熵测量和其他统计方法以提供网络输入。使用近似统计检验来确定每位患者表现最佳的网络。通过分析网络内部参数确定OSA患者呼吸紊乱事件的最重要预测因素。
平均优化后的个体预测敏感性和特异性分别为0.81和0.77。对所有OSA患者的预测都优于随机猜测。对网络内部参数的分析揭示了呼吸紊乱事件预测因素之间存在高度异质性,并且可能揭示患者亚组。
我们报告了首个能够在一组异质性的被诊断为OSA的患者中预测个体呼吸紊乱事件的实用系统。呼吸紊乱预测因素的模式表明潜在的病理生理机制存在差异,并突出了对OSA诊断、治疗和管理采取个体化方法的必要性。