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计算机化检测睡眠的周期性交替模式:一种新的范例、未来的范围和挑战。

Computerized detection of cyclic alternating patterns of sleep: A new paradigm, future scope and challenges.

机构信息

Department of Electrical and Computer Science Engineering, Institute of Infrastructure, Technology, Research and Management (IITRAM), Ahmedabad, India.

Sheffield Children's NHS Foundation Trust, United Kingdom.

出版信息

Comput Methods Programs Biomed. 2023 Jun;235:107471. doi: 10.1016/j.cmpb.2023.107471. Epub 2023 Mar 24.

Abstract

BACKGROUND AND OBJECTIVES

Sleep quality is associated with wellness, and its assessment can help diagnose several disorders and diseases. Sleep analysis is commonly performed based on self-rating indices, sleep duration, environmental factors, physiologically and polysomnographic-derived parameters, and the occurrence of disorders. However, the correlation that has been observed between the subjective assessment and objective measurements of sleep quality is small. Recently, a few automated systems have been suugested to measure sleep quality to address this challenge. Sleep quality can be assessed by evaluating macrostructure-based sleep analysis via the examination of sleep cycles, namely Rapid Eye Movement (REM) and Non Rapid Eye Movement (NREM) with N1, N2, and N3 stages. However, macrostructure sleep analysis does not consider transitory phenomena like K-complexes and transient fluctuations, which are indispensable in diagnosing various sleep disorders. The CAP, part of the microstructure of sleep, may offer a more precise and relevant examination of sleep and can be considered one of the candidates to measure sleep quality and identify sleep disorders such as insomnia and apnea. CAP is characterized by very subtle changes in the brain's electroencephalogram (EEG) signals that occur during the NREM stage of sleep. The variations among these patterns in healthy subjects and subjects with sleep disorders can be used to identify sleep disorders. Studying CAP is highly arduous for human experts; thus, developing automated systems for assessing CAP is gaining momentum. Developing new techniques for automated CAP detection installed in clinical setups is essential. This paper aims to analyze the algorithms and methods presented in the literature for the automatic assessment of CAP and the development of CAP-based sleep markers that may enhance sleep quality assessment, helping diagnose sleep disorders.

METHODS

This literature survey examined the automated assessment of CAP and related parameters. We have reviewed 34 research articles, including fourteen ML, nine DL, and ten based on some other techniques.

RESULTS

The review includes various algorithms, databases, features, classifiers, and classification performances and their comparisons, advantages, and limitations of automated systems for CAP assessment.

CONCLUSION

A detailed description of state-of-the-art research findings on automated CAP assessment and associated challenges has been presented. Also, the research gaps have been identified based on our review. Further, future research directions are suggested for sleep quality assessment using CAP.

摘要

背景与目的

睡眠质量与健康息息相关,对其进行评估有助于诊断多种疾病。睡眠分析通常基于自评分指数、睡眠时间、环境因素、生理和多导睡眠图衍生参数以及疾病的发生来进行。然而,睡眠质量的主观评估与客观测量之间的相关性很小。最近,一些自动化系统被提出用于测量睡眠质量,以解决这一挑战。通过评估睡眠周期的宏观结构睡眠分析,可以评估睡眠质量,即快速眼动 (REM) 和非快速眼动 (NREM) 与 N1、N2 和 N3 阶段。然而,宏观结构睡眠分析并未考虑到 K-复合物和瞬态波动等瞬态现象,这些现象对于诊断各种睡眠障碍是必不可少的。睡眠微观结构的一部分 CAP 可能提供更精确和相关的睡眠检查,并可被视为测量睡眠质量和识别失眠和呼吸暂停等睡眠障碍的候选者之一。CAP 的特征是在睡眠的 NREM 阶段,脑电图 (EEG) 信号发生非常细微的变化。在健康受试者和睡眠障碍受试者中,这些模式之间的变化可以用于识别睡眠障碍。人类专家研究 CAP 非常困难;因此,开发用于评估 CAP 的自动化系统正在兴起。在临床环境中开发用于自动 CAP 检测的新技术至关重要。本文旨在分析文献中用于 CAP 自动评估的算法和方法,以及基于 CAP 开发的睡眠标志物,以提高睡眠质量评估,帮助诊断睡眠障碍。

方法

本文献综述检查了 CAP 的自动评估和相关参数。我们回顾了 34 篇研究文章,包括 14 篇基于机器学习 (ML)、9 篇基于深度学习 (DL) 和 10 篇基于其他技术的文章。

结果

综述包括各种算法、数据库、特征、分类器和分类性能及其比较、自动 CAP 评估系统的优缺点和局限性。

结论

本文详细介绍了 CAP 自动评估及相关挑战的最新研究成果,并根据我们的综述确定了研究空白。此外,还为使用 CAP 进行睡眠质量评估提出了未来的研究方向。

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