Potential of Machine Learning for Predicting Sleep Disorders: A Comprehensive Analysis of Regression and Classification Models
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Published:2023-12-22
Issue:1
Volume:14
Page:27
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ISSN:2075-4418
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Container-title:Diagnostics
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language:en
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Short-container-title:Diagnostics
Author:
Alazaidah Raed1, Samara Ghassan2, Aljaidi Mohammad2ORCID, Haj Qasem Mais1, Alsarhan Ayoub3ORCID, Alshammari Mohammed4ORCID
Affiliation:
1. Department of Data Science and AI, Faculty of Information Technology, Zarqa University, Zarqa 13110, Jordan 2. Department of Computer Science, Faculty of Information Technology, Zarqa University, Zarqa 13110, Jordan 3. Department of Information Technology, Faculty of Prince Al-Hussein Bin Abdullah II for Information Technology, The Hashemite University, Zarqa 13133, Jordan 4. Faculty of Computing and Information Technology, Northern Border University, Rafha 91431, Saudi Arabia
Abstract
Sleep disorder is a disease that can be categorized as both an emotional and physical problem. It imposes several difficulties and problems, such as distress during the day, sleep-wake disorders, anxiety, and several other problems. Hence, the main objective of this research was to utilize the strong capabilities of machine learning in the prediction of sleep disorders. In specific, this research aimed to meet three main objectives. These objectives were to identify the best regression model, the best classification model, and the best learning strategy that highly suited sleep disorder datasets. Considering two related datasets and several evaluation metrics that were related to the tasks of regression and classification, the results revealed the superiority of the MultilayerPerceptron, SMOreg, and KStar regression models compared with the other twenty three regression models. Furthermore, IBK, RandomForest, and RandomizableFilteredClassifier showed superior performance compared with other classification models that belonged to several learning strategies. Finally, the Function learning strategy showed the best predictive performance among the six considered strategies in both datasets and with respect to the most evaluation metrics.
Funder
Deanship of Scientific Research at Northern Border University
Subject
Clinical Biochemistry
Reference32 articles.
1. Zhang, M.-M., Ma, Y., Du, L.-T., Wang, K., Li, Z., Zhu, W., Sun, Y.-H., Lu, L., Bao, Y.-P., and Li, S.-X. (2022). Sleep disorders and non-sleep circadian disorders predict depression: A systematic review and meta-analysis of longitudinal studies. Neurosci. Biobehav. Rev., 134. 2. Sympathetic neural responses to sleep disorders and insufficiencies;Greenlund;Am. J. Physiol.-Heart Circ. Physiol.,2022 3. Hu, X., Li, J., Wang, X., Liu, H., Wang, T., Lin, Z., and Xiong, N. (2023). Neuroprotective Effect of Melatonin on Sleep Disorders Associated with Parkinson’s Disease. Antioxidants, 12. 4. Sheta, A., Thaher, T., Surani, S.R., Turabieh, H., Braik, M., Too, J., Abu-El-Rub, N., Mafarjah, M., Chantar, H., and Subramanian, S. (2023). Diagnosis of Obstructive Sleep Apnea Using Feature Selection, Classification Methods, and Data Grouping Based Age, Sex, and Race. Diagnostics, 13. 5. Controne, I., Scoditti, E., Buja, A., Pacifico, A., Kridin, K., Del Fabbro, M., Garbarino, S., and Damiani, G. (2022). Do Sleep Disorders and Western Diet Influence Psoriasis? A Scoping Review. Nutrients, 14.
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