SPINDILOMETER:一种用于多导睡眠图的描述脑电信号睡眠棘波的模型。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-09-01 Epub Date: 2024-05-31 DOI:10.1007/s13246-024-01428-7
Murat Kayabekir, Mete Yağanoğlu
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引用次数: 0

摘要

本文旨在通过研究近年来的睡眠脑电图(EEG)信号分析方法,介绍一种名为 SPINDILOMETER 的模型,我们建议将其集成到多导睡眠图(PSG)设备中,供专注于 PSG 电生理信号的研究人员、医生和在诊所从事睡眠工作的技术人员使用。为此,我们开发了 PSG 辅助诊断模型,通过分析 PSG 中的脑电信号来测量睡眠棘波的数量和密度。通过机器学习方法分析了 72 名通过 PSG 诊断为睡眠呼吸障碍的志愿者的脑电信号,其中男性 51 人,女性 21 人(年龄:51.7 ± 3.42 岁,体重指数:37.6 ± 4.21)。比较了传统方法(在 PSG 中用肉眼监测脑电图)("肉眼方法")和模型(SPINDILOMETER)的睡眠棘波数量和密度。肉眼法 "和 SPINDILOMETER 的结果之间存在很强的正相关性(相关系数:0.987),并且这种相关性在统计学上有显著意义(p = 0.000)。混淆矩阵(准确度(94.61%)、灵敏度(94.61%)、特异度(96.60%))和 ROC 分析(AUC:0.95)证明了 SPINDILOMETER 的适当性(p = 0.000)。总之,SPINDILOMETER 可用于睡眠实验室进行的 PSG 分析。同时,该模型为医生了解与睡眠棘波相关的神经事件提供了诊断便利,并为神经生理学和电生理学领域丘脑皮质区域的研究提供了启示。
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SPINDILOMETER: a model describing sleep spindles on EEG signals for polysomnography.

This paper aims to present a model called SPINDILOMETER, which we propose to be integrated into polysomnography (PSG) devices for researchers focused on electrophysiological signals in PSG, physicians, and technicians practicing sleep in clinics, by examining the methods of the sleep electroencephalogram (EEG) signal analysis in recent years. For this purpose, an assist diagnostic model for PSG has been developed that measures the number and density of sleep spindles by analyzing EEG signals in PSG. EEG signals of 72 volunteers, 51 males and 21 females (age; 51.7 ± 3.42 years and body mass index; 37.6 ± 4.21) diagnosed with sleep-disordered breathing by PSG were analyzed by machine learning methods. The number and density of sleep spindles were compared between the classical method (EEG monitoring with the naked eye in PSG) ('method with naked eye') and the model (SPINDILOMETER). A strong positive correlation was found between 'method with naked eye' and SPINDILOMETER results (correlation coefficient: 0.987), and this correlation was statistically significant (p = 0.000). Confusion matrix (accuracy (94.61%), sensitivity (94.61%), specificity (96.60%)), and ROC analysis (AUC: 0.95) were performed to prove the adequacy of SPINDILOMETER (p = 0.000). In conclusion SPINDILOMETER can be included in PSG analysis performed in sleep laboratories. At the same time, this model provides diagnostic convenience to the physician in understanding the neurological events associated with sleep spindles and sheds light on research for thalamocortical regions in the fields of neurophysiology and electrophysiology.

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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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