Deep-Learning-Based Automated REM Sleep Detection in Patients With REM Sleep Behavior Disorder: Is It Reliable?

IF 3.1 3区 医学 Q2 CLINICAL NEUROLOGY
Yu Jin Jung, Sunil Kim, Yun Ho Choi, Dong-Woo Ryu, Woojun Kim, Seonghoon Kim, Jaeseung Jeong
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引用次数: 0

Abstract

Background and purpose: Rapid eye movement (REM) sleep without atonia makes it difficult to detect REM sleep stages using electromyography in patients with REM sleep behavior disorder (RBD). The objectives of this study were to propose an automated REM sleep detector that requires only electroencephalography (EEG) and electrooculography (EOG) data, and to evaluate its performance using real-world polysomnography (PSG) data in RBD patients.

Methods: This multicenter study used 310 PSG datasets obtained from 5 tertiary hospitals. The data were divided into RBD (n=200) and non-RBD (n=110), as well as, into Parkinson's disease (PD) with RBD (n=76), PD without RBD (n=46), idiopathic RBD (iRBD) (n=124), and healthy controls (n=64). An automated computerized REM detection algorithm was implemented using U-Sleep's publicly available pretrained network.

Results: The U-Sleep-based REM sleep-detection algorithm correctly identified REM sleep with an area under the receiver operating characteristic curve (AUC) of 0.90±0.14. The classification performance of the REM sleep detector differed significantly between RBD and non-RBD patients (AUC=0.88±0.13 vs. 0.93±0.14, p=0.007). The REM sleep detector accurately classified REM sleep in the order of healthy controls, PD without RBD, iRBD, and PD with RBD, with AUC values of 0.94±0.02, 0.92±0.03, 0.90±0.02, and 0.86±0.02, respectively.

Conclusions: Our U-Sleep-based REM sleep detector based on only EEG and EOG data showed good performance in detecting REM sleep. However, it performed considerably worse in RBD, especially in PD with RBD. Using transfer learning with fine-tuning by expert review, a high-performance REM sleep-detecting system will be realized.

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Abstract Image

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基于深度学习的快速眼动睡眠行为障碍患者快速眼动睡眠自动检测:可靠吗?
背景与目的:快速眼动(REM)无张力睡眠使快速眼动睡眠行为障碍(RBD)患者的肌电图难以检测快速眼动睡眠阶段。本研究的目的是提出一种仅需要脑电图(EEG)和眼电图(EOG)数据的自动快速眼动睡眠检测器,并使用RBD患者的真实多导睡眠图(PSG)数据评估其性能。方法:本研究采用来自5家三级医院的310份PSG数据。数据分为RBD (n=200)和非RBD (n=110),以及帕金森病(PD)伴RBD (n=76)、PD无RBD (n=46)、特发性RBD (n=124)和健康对照(n=64)。使用U-Sleep公开的预训练网络,实现了自动计算机化REM检测算法。结果:基于u - sleep的快速眼动睡眠检测算法正确识别快速眼动睡眠,受试者工作特征曲线下面积(AUC)为0.90±0.14。RBD与非RBD患者快速眼动睡眠检测器的分类性能差异有统计学意义(AUC=0.88±0.13 vs. 0.93±0.14,p=0.007)。快速眼动睡眠检测器准确地将快速眼动睡眠分为健康对照组、无RBD组、iRBD组和有RBD组,AUC值分别为0.94±0.02、0.92±0.03、0.90±0.02和0.86±0.02。结论:基于u - sleep的快速眼动睡眠检测器仅基于脑电图和脑电图数据,在检测快速眼动睡眠方面表现良好。然而,它在RBD中的表现要差得多,尤其是在患有RBD的PD中。采用专家评审微调的迁移学习方法,实现高性能的快速眼动睡眠检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Clinical Neurology
Journal of Clinical Neurology 医学-临床神经学
CiteScore
4.50
自引率
6.50%
发文量
0
审稿时长
>12 weeks
期刊介绍: The JCN aims to publish the cutting-edge research from around the world. The JCN covers clinical and translational research for physicians and researchers in the field of neurology. Encompassing the entire neurological diseases, our main focus is on the common disorders including stroke, epilepsy, Parkinson''s disease, dementia, multiple sclerosis, headache, and peripheral neuropathy. Any authors affiliated with an accredited biomedical institution may submit manuscripts of original articles, review articles, and letters to the editor. The JCN will allow clinical neurologists to enrich their knowledge of patient management, education, and clinical or experimental research, and hence their professionalism.
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