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. 2021 Dec 7;56(12):1256-1262.
doi: 10.3760/cma.j.cn115330-20210513-00267.

[The accuracy and influencing factors of sleep staging based on single-channel EEG via a deep neural network]

[Article in Chinese]
Affiliations

[The accuracy and influencing factors of sleep staging based on single-channel EEG via a deep neural network]

[Article in Chinese]
X Gao et al. Zhonghua Er Bi Yan Hou Tou Jing Wai Ke Za Zhi. .

Abstract

Objective: To investigate theaccuracy of artificial intelligence sleep staging model in patients with habitual snoring and obstructive sleep apnea hypopnea syndrome (OSAHS) based on single-channel EEG collected from different locations of the head. Methods: The clinical data of 114 adults with habitual snoring and OSAHS who visited to the Sleep Medicine Center of Beijing Tongren Hospital from September 2020 to March of 2021 were analyzed retrospectively, including 93 males and 21 females, aging from 20 to 64 years old. Eighty-five adults with OSAHS and 29 subjects with habitual snoring were included. Sleep staging analysis was performed on the single lead EEG signals of different locations (FP2-M1, C4-M1, F3-M2, ROG-M1, O1-M2) using the deep learning segmentation model trained by previous data. Manual scoring results were used as the gold standard to analyze the consistency rate of results and the influence of different categories of disease. Results: EEG data in 124 747 30-second epochs were taken as the testing dataset. The model accuracy of distinguishing wake/sleep was 92.3%,92.6%,93.5%,89.2% and 83.0% respectively,based on EEG channel Fp2-M1, C4-M1, F3-M2, REOG-M1 or O1-M2. The mode accuracy of distinguishing wake/REM/NREM and wake/REM/N1-2/SWS , was 84.7% and 80.1% respectively based on channel Fp2-M1, which located in forehead skin. The AHI calculated based on total sleep time derived from the model and gold standard were 13.6[4.30,42.5] and 14.2[4.8,42.7], respectively (Z=-2.477, P=0.013), and the kappa coefficient was 0.977. Conclusions: The autonomic sleep staging via a deep neural network model based on forehead single-channel EEG (Fp2-M1) has a good consistency in the identification sleep stage in a population with habitual snoring and OSAHS with different categories. The AHI calculated based on this model has high consistency with manual scoring.

目的: 探讨在头部不同位置采集的单导联脑电信号,通过人工智能分图模型判别单纯打鼾及阻塞性睡眠呼吸暂停低通气综合征(OSAHS)患者睡眠分期的准确性。 方法: 回顾性分析2020年9月至2021年3月因打鼾、呼吸暂停、白天嗜睡等症状就诊于北京同仁医院睡眠医学中心进行多导睡眠监测的114例研究对象,其中男93例,女21例,年龄20~64岁,中位数为38.0[31.8,48.3]岁。研究对象中OSAHS患者85例,单纯打鼾组29例。对不同采集位置的头部单导联脑电信号(Fp2-M1,C4-M1,F3-M2,REOG-M1,O1-M2)应用以往数据训练的机器学习分图模型进行睡眠分期判读分析,以多导睡眠监测结果为金标准,分析判读结果的一致率及不同病情严重程度的影响。应用SPSS 22.0统计软件进行资料库建立及统计学分析。 结果: 共判读睡眠分期124 747帧。Fp2-M1、C4-M1、F3-M2、REOG-M1、O1-M2导联区分睡眠或清醒期的一致性分别为92.3%、92.6%、93.5%、89.2%和83.0%。位于额部皮肤的Fp2-M1单导联模型判断清醒、快动眼睡眠或非快动眼睡眠分类的一致性为84.7%;判断清醒、快动眼睡眠、非快动眼睡眠1~2期、慢波睡眠的分类一致性80.1%。基于该模型睡眠分期和金标准睡眠分期计算的AHI中位数分别为13.6[4.3,42.5]和14.2[4.8,42.7],Z=-2.477,P=0.013,诊断OSAHS一致性Kappa系数为0.977。 结论: Fp2-M1单导联脑电信号结合人工智能分析模型对打鼾及不同严重度的OSAHS患者的睡眠分期判断一致性良好。基于该模型计算的AHI在诊断OSAHS与金标准具有较高的一致性。.

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