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Sleep and Asthma

Deep learning approaches for sleep disorder prediction in an asthma cohort

ORCID Icon, ORCID Icon, & ORCID Icon
Pages 903-911 | Received 06 Sep 2019, Accepted 09 Mar 2020, Published online: 18 Mar 2020
 

Abstract

Objective

Sleep is a natural activity of humans that affects physical and mental health; therefore, sleep disturbance may lead to fatigue and lower productivity. This study examined 1 million samples included in the Taiwan National Health Insurance Research Database (NHIRD) in order to predict sleep disorder in an asthma cohort from 2002–2010.

Methods

The disease histories of the asthma patients were transferred to sequences and matrices for the prediction of sleep disorder by applying machine learning (ML) algorithms, including K-Nearest Neighbors (KNN), Support Vector Machine (SVM), and Random Forest (RF), and deep learning (DL) models, including Recurrent Neural Network (RNN), Long Short-Term Memory (LSTM), Gated Recurrent Units (GRU), and Convolution Neural Network (CNN).

Results

Among 14,818 new asthma subjects in 2002, there were 4469 sleep disorder subjects from 2002 to 2010. The KNN, SVM, and RF algorithms were demonstrated to be successful sleep disorder prediction models, with accuracies of 0.798, 0.793, and 0.813, respectively (AUC: 0.737, 0.690, and 0.719, respectively). The results of the DL models showed the accuracies of the RNN, LSTM, GRU, and CNN to be 0.744, 0.815, 0.782, and 0.951, respectively (AUC: 0.658, 0.750, 0.732, and 0.934, respectively).

Conclusions

The results showed that the CNN model had the best performance for sleep disorder prediction in the asthma cohort.

Acknowledgement

The authors acknowledge support from the Taiwan Typhoon and Flood Research Institute.

Disclosure statement

The authors report no conflicts of interest. The authors alone are responsible for the content and writing of the paper.

Additional information

Funding

This study was supported by the Ministry of Science and Technology (http://www.most.gov.tw/), MOST 105–2221-E-155–041-MY3, CLC received the funding.

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