丛丰裕

个人信息Personal Information

教授

博士生导师

硕士生导师

主要任职:人力资源处处长(党委教师工作部部长、党委人才办公室主任)【兼党委组织部副部长】

性别:男

毕业院校:上海交通大学

学位:博士

所在单位:生物医学工程学院

学科:生物医学工程. 信号与信息处理. 模式识别与智能系统

电子邮箱:cong@dlut.edu.cn

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Multi-modality of polysomnography signals' fusion for automatic sleep scoring

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论文类型:期刊论文

发表时间:2021-02-01

发表刊物:BIOMEDICAL SIGNAL PROCESSING AND CONTROL

卷号:49

页面范围:14-23

ISSN号:1746-8094

关键字:Polysomnography; Multi-modality analysis; Rules of R&K; Automatic sleep scoring

摘要:Objective: The study aims to develop an automatic sleep scoring method by fusing different polysomnography (PSG) signals and further to investigate PSG signals' contribution to the scoring result.
   Methods: Eight combinations of four modalities of PSG signals, namely electroencephalogram (EEG), electrooculogram (EOG), electromyogram (EMG), and electrocardiogram (ECG) were considered to find the optimal fusion of PSG signals. A total of 232 features, covering statistical characters, frequency characters, time-frequency characters, fractal characters, entropy characters and nonlinear characters, were derived from these PSG signals. To select the optimal features for each signal fusion, four widely used feature selection methods were compared. At the classification stage, five different classifiers were employed to evaluate the validity of the features and to classify sleep stages.
   Results: For the database in the present study, the best classifier, random forest, realized the optimal consistency of 86.24% with the sleep macrostructures scored by the technologists trained at the Sleep Center. The optimal accuracy was achieved by fusing four modalities of PSG signals. Specifically, the top twelve features in the optimal feature set were respectively EEG features named zero-crossings, spectral edge, relative power spectral of theta, Petrosian fractal dimension, approximate entropy, permutation entropy and spectral entropy, and EOG features named spectral edge, approximate entropy, permutation entropy and spectral entropy, and the mutual information between EEG and submental EMG. In addition, ECG features (e.g. Petrosian fractal dimension, zero-crossings, mean value of R amplitude and permutation entropy) were useful for the discrimination among W, S1 and R.
   Conclusions: Through exploring the different fusions of multi-modality signals, the present study concluded that the multi-modality of PSG signals' fusion contributed to higher accuracy, and the optimal feature set was a fusion of multiple types of features. Besides, compared with manual scoring, the proposed automatic scoring methods were cost-effective, which would alleviate the burden of the physicians, speed up sleep scoring, and expedite sleep research. (C) 2018 The Author(s). Published by Elsevier Ltd.