Sleep Stage Classification Using Bidirectional LSTM in Wearable Multi-sensor Systems

Understanding the sleep quality and architecture is essential to human being's health, which is usually represented using multiple sleep stages. A standard sleep stage determination requires Electroencephalography (EEG) signals during the expensive and labor-intensive Polysomnography (PSG) test...

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Published inIEEE INFOCOM 2019 - IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS) pp. 443 - 448
Main Authors Zhang, Yuezhou, Yang, Zhicheng, Lan, Ke, Liu, Xiaoli, Zhang, Zhengbo, Li, Peiyao, Cao, Desen, Zheng, Jiewen, Pan, Jianli
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.04.2019
Subjects
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DOI10.1109/INFCOMW.2019.8845115

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Abstract Understanding the sleep quality and architecture is essential to human being's health, which is usually represented using multiple sleep stages. A standard sleep stage determination requires Electroencephalography (EEG) signals during the expensive and labor-intensive Polysomnography (PSG) test. To overcome this inconvenience, cardiorespiratory signals are proposed for the same purpose because of the easy and comfortable acquisition by simplified devices. In this paper, we leverage our low-cost wearable multi-sensor system to acquire the cardiorespiratory signals from subjects. Three novel features are designed during the feature extraction. We then apply a Bidirectional Recurrent Neural Network architecture with Long Short-term Memory (BLSTM) to predict the four-class sleep stages. Our prediction accuracy is 80.25% on a large public dataset (417 subjects), and 80.75% on our 32 enrolled subjects, respectively. Our results outperform the previous works which either used small data sets and had the potential over-fitting issues, or used the conventional machine learning methods on large data sets.
AbstractList Understanding the sleep quality and architecture is essential to human being's health, which is usually represented using multiple sleep stages. A standard sleep stage determination requires Electroencephalography (EEG) signals during the expensive and labor-intensive Polysomnography (PSG) test. To overcome this inconvenience, cardiorespiratory signals are proposed for the same purpose because of the easy and comfortable acquisition by simplified devices. In this paper, we leverage our low-cost wearable multi-sensor system to acquire the cardiorespiratory signals from subjects. Three novel features are designed during the feature extraction. We then apply a Bidirectional Recurrent Neural Network architecture with Long Short-term Memory (BLSTM) to predict the four-class sleep stages. Our prediction accuracy is 80.25% on a large public dataset (417 subjects), and 80.75% on our 32 enrolled subjects, respectively. Our results outperform the previous works which either used small data sets and had the potential over-fitting issues, or used the conventional machine learning methods on large data sets.
Author Pan, Jianli
Cao, Desen
Lan, Ke
Zhang, Zhengbo
Zheng, Jiewen
Zhang, Yuezhou
Yang, Zhicheng
Li, Peiyao
Liu, Xiaoli
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Snippet Understanding the sleep quality and architecture is essential to human being's health, which is usually represented using multiple sleep stages. A standard...
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StartPage 443
SubjectTerms Deep learning
Electrocardiography
Electroencephalography
Electrooculography
Feature extraction
Frequency-domain analysis
Healthcare
Indexes
Sleep
Sleep stage
Wearable sensors
Title Sleep Stage Classification Using Bidirectional LSTM in Wearable Multi-sensor Systems
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