多导睡眠图
睡眠(系统调用)
计算机科学
睡眠阶段
互操作性
任务(项目管理)
医学
物理医学与康复
人工智能
脑电图
操作系统
精神科
经济
管理
作者
Amiya Patanaik,Ju Lynn Ong,Joshua J. Gooley,Sonia Ancoli‐Israel,Michael W.L. Chee
出处
期刊:Sleep
[Oxford University Press]
日期:2018-03-26
卷期号:41 (5)
被引量:141
摘要
Sleep staging is a fundamental but time consuming process in any sleep laboratory. To greatly speed up sleep staging without compromising accuracy, we developed a novel framework for performing real-time automatic sleep stage classification. The client–server architecture adopted here provides an end-to-end solution for anonymizing and efficiently transporting polysomnography data from the client to the server and for receiving sleep stages in an interoperable fashion. The framework intelligently partitions the sleep staging task between the client and server in a way that multiple low-end clients can work with one server, and can be deployed both locally as well as over the cloud. The framework was tested on four datasets comprising ≈1700 polysomnography records (≈12000 hr of recordings) collected from adolescents, young, and old adults, involving healthy persons as well as those with medical conditions. We used two independent validation datasets: one comprising patients from a sleep disorders clinic and the other incorporating patients with Parkinson’s disease. Using this system, an entire night’s sleep was staged with an accuracy on par with expert human scorers but much faster (≈5 s compared with 30–60 min). To illustrate the utility of such real-time sleep staging, we used it to facilitate the automatic delivery of acoustic stimuli at targeted phase of slow-sleep oscillations to enhance slow-wave sleep.
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