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基于多模态信号的机器学习赋能睡眠分期分类。

Machine learning-empowered sleep staging classification using multi-modality signals.

机构信息

Department of Information and Communication Technology, Pandit Deendayal Energy University, Gandhinagar, Gujarat, 382007, India.

McKesson Corporation, 1 Post St, San Francisco, CA, 94104, USA.

出版信息

BMC Med Inform Decis Mak. 2024 May 6;24(1):119. doi: 10.1186/s12911-024-02522-2.

Abstract

The goal is to enhance an automated sleep staging system's performance by leveraging the diverse signals captured through multi-modal polysomnography recordings. Three modalities of PSG signals, namely electroencephalogram (EEG), electrooculogram (EOG), and electromyogram (EMG), were considered to obtain the optimal fusions of the PSG signals, where 63 features were extracted. These include frequency-based, time-based, statistical-based, entropy-based, and non-linear-based features. We adopted the ReliefF (ReF) feature selection algorithms to find the suitable parts for each signal and superposition of PSG signals. Twelve top features were selected while correlated with the extracted feature sets' sleep stages. The selected features were fed into the AdaBoost with Random Forest (ADB + RF) classifier to validate the chosen segments and classify the sleep stages. This study's experiments were investigated by obtaining two testing schemes: epoch-wise testing and subject-wise testing. The suggested research was conducted using three publicly available datasets: ISRUC-Sleep subgroup1 (ISRUC-SG1), sleep-EDF(S-EDF), Physio bank CAP sleep database (PB-CAPSDB), and S-EDF-78 respectively. This work demonstrated that the proposed fusion strategy overestimates the common individual usage of PSG signals.

摘要

目的是通过利用多模态多导睡眠记录捕获的多样化信号来提高自动化睡眠分期系统的性能。考虑了三种 PSG 信号模式,即脑电图 (EEG)、眼电图 (EOG) 和肌电图 (EMG),以获得 PSG 信号的最佳融合,其中提取了 63 个特征。这些特征包括基于频率、基于时间、基于统计、基于熵和基于非线性的特征。我们采用 ReliefF(ReF)特征选择算法来找到每个信号和 PSG 信号叠加的合适部分。选择了与提取的特征集睡眠阶段相关的 12 个最佳特征。选择的特征被输入到 AdaBoost with Random Forest (ADB + RF) 分类器中,以验证所选片段并对睡眠阶段进行分类。这项研究的实验通过获得两种测试方案进行了调查:逐时段测试和逐个受试者测试。建议的研究使用了三个公开可用的数据集进行:ISRUC-Sleep 子组 1 (ISRUC-SG1)、睡眠 EDF (S-EDF)、Physio bank CAP 睡眠数据库 (PB-CAPSDB) 和 S-EDF-78。这项工作表明,所提出的融合策略高估了 PSG 信号的常见单独使用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/61d0/11071240/a0fed04af4dc/12911_2024_2522_Fig1_HTML.jpg

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