基于计算机的睡眠分期:未来的挑战

Sana Tmar-Ben Hamida, B. Ahmed
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引用次数: 22

摘要

研究表明,睡眠不足的患者患高血压、糖尿病和抑郁症的风险高于睡眠正常的人。所有这些问题的治疗都需要对睡眠阶段和模式进行准确的分析,这些睡眠阶段和模式是在几个月的夜间记录中收集到的多导睡眠图信号。然而,手动睡眠分期是一个重复且耗时的过程,因为标记一个典型的8小时夜间多导睡眠图记录可能需要长达两个小时才能完成。由于处理能力的提高,现在可以自动化这个过程并协助睡眠专家。在过去的几十年里,已经提出了大量的算法。这篇综述文章介绍了现有的自动睡眠分期方法的概述,讨论了不同的挑战,并提出了新的研究机会的未来前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer based sleep staging: Challenges for the future
Studies have shown that patients suffering from sleep deprivation have a risk for hypertension, diabetes and depression that is higher than normal sleepers. Treatment for all these problems requires accurate analysis of the sleep stages and patterns in the polysomnographic signals collected in overnight recording over several months. However, manual sleep staging is a repetitive and time-consuming process as marking one typical eight hours overnight polysomnographic recording can take up to two hours to complete. Due to increased processing capabilities, it is now possible to automate this process and assist the sleep expert. A large number of algorithms have been proposed during the last few decades. This review article presents an overview of the existing automatic sleep staging methods, discusses the different challenges and proposes future prospects for new research opportunities.
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