Sleep stage detection using chaotic feature analysis of Electroencephalography (EEG) signals
Keywords:
sleep stages, electroencephalography (EEG), chaotic featuresAbstract
The present study was conducted to detect the sleep stages by electroencephalography (EEG) using chaotic features. The method used in this study was the content analysis method. First, the sleep stages and EEG have been analyzed, and the EEG with chaotic features was used to detect the sleep stages. Detection of artifacts in sleep electroencephalography (EEG) is one of the vital tasks in the pre-processing stage. Despite many artifact exploration algorithms over the years, lots of them lose their advantages to use sleep EEG. Types of brain activities can be measured, and the involved brain areas can be detected using EEG. Electroencephalography (EEG) signal includes different rhythms, which are dependent on various sensory and movement conditions. Detection of each rhythm of this signal needs experience and skills. As a result, analysis of the signal recorded by EEG can be used widely for detection and academic purposes.
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Hassani Hassankala, Seyedeh Maliheh and Karami Mollaei, Mohammad Reza. (2017). EEG signal segmentation with nonlinear noise modeling. Ph.D. Thesis. Noshirvani University of Technology, Babol.
Zahedi Haghigh, Seyedeh Saeedeh, and Sakhaei, Seyed Mahmoud and Daliri, Mohammad Reza. (2018). EEG-based emotion recognition using the mode analysis method. Master Thesis. The Noshirvani University of Technology Babol.
Zeighami, Reza and Bagheri Nasami, Masoumeh, Hagh Doost Oskuei, Seyedeh Fatemeh, Yadavarnik Roush, Mansoureh. (2008). content analysis. Iranian Journal of Nursing. Volume 21, Number 53. pp. 41-52.
Qalami, Vida and Yousefi Rezaei, Tohid and Tinati, Mohammad Ali. (2020). Identify and authenticate the user based on EEG signals. Master Thesis. The University of Tabriz, Faculty of Electrical and Computer Engineering
Quchani, Elham, Ravari, Mohammad, Rahati Quchani, Saeed. (2008). Data mining of EEG signals to classify sleep stages using neural networks, the second data mining conference of Iran, Tehran. Pp. 1-17.
Aboalayon, K. A. I., Faezipour, M., Almuhammadi, W. S., & Moslehpour, S. (2016). Sleep stage classification using EEG signal analysis: a comprehensive survey and new investigation. Entropy, 18(9), 272
Aboalayon, K. A., Ocbagabir, H. T., & Faezipour, M. (2014, May). Efficient sleep stage classification based on EEG signals. In IEEE Long Island Systems, Applications and Technology (LISAT) Conference 2014 (pp. 1-6). IEEE.
Blinowska, K., & Durka, P. (2006). Electroencephalography (eeg). Wiley encyclopedia of biomedical engineering.
Acharya, U. R., Bhat, S., Faust, O., Adeli, H., Chua, E. C. P., Lim, W. J. E., & Koh, J. E. W. (2015). Nonlinear dynamics measures for automated EEG-based sleep stage detection. European neurology, 74(5-6), 268-287.
Haas LF. Hans berger (1873–1941), richard caton (1842–1926), and electroencephalography. J Neurol Neurosurg Psych. 2003;74(1):9 –
Johnson A, Proctor R. Neuroergonomics: A cognitive neuroscience approach to human factors and ergonomics: Springer; 2013.
Henry, J. C. (2006). Electroencephalography: basic principles, clinical applications, and related fields. Neurology, 67(11), 2092-2092.R. Parasuraman and M. Rizzo, Neuroergonomics: The Brain at Work, Oxford University Press, New York, 2008.
Koley, B., & Dey, D. (2012). An ensemble system for automatic sleep stage classification using single channel EEG signal. Computers in biology and medicine, 42(12), 1186-1195.
Niedermeyer E, da Silva FL. Electroencephalography: basic principles, clinical applications, and related fields: Lippincott Williams & Wilkins; 2005.
Picard RW. Affective Computing. MIT Media Laboratory Perceptual Computing Section Technical Report 1995; 321.
Rechtschaffen, A. (1968). A manual for standardized terminology, techniques and scoring system for sleep stages in human subjects. Brain information service.
Savran A, Ciftci K. Emotion Detection in the Loop from Brain Signals and Facial Images. eNTERFACE’06 Croatia - Final Project Report 2006.
Hosseini, S. A. (2016). A computationally inspired model of brain activity in selective attentional state and its application for estimating the depth of anesthesia. Electrical Department, Faculty of Engineering, Ferdowsi University of Mashhad.
Şen, B., Peker, M., Çavuşoğlu, A., & Çelebi, F. V. (2014). A comparative study on classification of sleep stage based on EEG signals using feature selection and classification algorithms. Journal of medical systems, 38(3), 1-21.
J. Shepard, Jr. M.D, “Atlas of Sleep Medicine”, Futura Publishing Company, 1991.
Tatum IV WO. Handbook of EEG interpretation: Demos Medical Publishing; 2014.
Teplan M. Fundamentals of EEG measurement. Measur Sci Rev. 2002;2(2):1-11.
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