Multi-Frequency Entropy for Quantifying Complex Dynamics and Its Application on EEG Data
Author:
Niu Yan1ORCID, Xiang Jie1ORCID, Gao Kai1, Wu Jinglong2, Sun Jie1ORCID, Wang Bin1ORCID, Ding Runan1ORCID, Dou Mingliang1, Wen Xin3, Cui Xiaohong1, Zhou Mengni2
Affiliation:
1. College of Computer Science and Technology (College of Data Science), Taiyuan University of Technology, Taiyuan 030024, China 2. Research Center for Medical Artificial Intelligence, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, China 3. School of Software, Taiyuan University of Technology, Taiyuan 030024, China
Abstract
Multivariate entropy algorithms have proven effective in the complexity dynamic analysis of electroencephalography (EEG) signals, with researchers commonly configuring the variables as multi-channel time series. However, the complex quantification of brain dynamics from a multi-frequency perspective has not been extensively explored, despite existing evidence suggesting interactions among brain rhythms at different frequencies. In this study, we proposed a novel algorithm, termed multi-frequency entropy (mFreEn), enhancing the capabilities of existing multivariate entropy algorithms and facilitating the complexity study of interactions among brain rhythms of different frequency bands. Firstly, utilizing simulated data, we evaluated the mFreEn’s sensitivity to various noise signals, frequencies, and amplitudes, investigated the effects of parameters such as the embedding dimension and data length, and analyzed its anti-noise performance. The results indicated that mFreEn demonstrated enhanced sensitivity and reduced parameter dependence compared to traditional multivariate entropy algorithms. Subsequently, the mFreEn algorithm was applied to the analysis of real EEG data. We found that mFreEn exhibited a good diagnostic performance in analyzing resting-state EEG data from various brain disorders. Furthermore, mFreEn showed a good classification performance for EEG activity induced by diverse task stimuli. Consequently, mFreEn provides another important perspective to quantify complex dynamics.
Funder
National Natural Science Functional of China Shanxi Province Free Exploration Basic Research Project China Postdoctoral Science Foundation Shenzhen Science and Technology Program Fundamental Research Program of Shanxi Province Scientific and Technological Achievement Transformation Program of Shanxi Province
Reference65 articles.
1. Ahamed, S.I., Rabbani, M., and Povinelli, R.J. (2023, January 2–8). A Comprehensive Survey on Detection of Non-linear Analysis Techniques for EEG Signal. Proceedings of the IEEE International Conference on Digital Health (IEEE ICDH) at the IEEE World Congress on Services (SERVICES), Chicago, IL, USA. 2. Analysis of EEG signals using nonlinear dynamics and chaos: A review;Appl. Math. Infom. Sci.,2015 3. Entropy bounds and nonlinear electrodynamics;Falciano;Phys. Rev. D,2019 4. Wątorek, M., Tomczyk, W., Gawłowska, M., Golonka-Afek, N., Żyrkowska, A., Marona, M., Wnuk, M., Słowik, A., Ochab, J.K., and Fafrowicz, M. (2024). Multifractal organization of EEG signals in multiple sclerosis. Biomed. Signal Process., 91. 5. Ji, G. (2023). Feature extraction method of ship-radiated noise based on dispersion entropy: A review. Front. Phys., 11.
|
|