Multiscale Fluctuation-Based Dispersion Entropy and Its Applications to Neurological Diseases

Fluctuation-based dispersion entropy (FDispEn) is a new approach to estimate the dynamical variability of the fluctuations of signals. It is based on Shannon entropy and fluctuation-based dispersion patterns. To quantify the physiological dynamics over multiple time scales, multiscale FDispEn (MFDE) is developed in this paper. MFDE is robust to the presence of baseline wanders or trends in the data. We evaluate MFDE, compared with popular multiscale sample entropy (MSE), multiscale fuzzy entropy (MFE), and the recently introduced multiscale dispersion entropy (MDE), on selected synthetic data and five neurological diseases’ datasets: 1) focal and non-focal electroencephalograms (EEGs); 2) walking stride interval signals for young, elderly, and Parkinson’s subjects; 3) stride interval fluctuations for Huntington’s disease and amyotrophic lateral sclerosis; 4) EEGs for controls and Alzheimer’s disease patients; and 5) eye movement data for Parkinson’s disease and ataxia. The MFDE avoids the problem of the undefined MSE values and, compared with the MFE and MSE, leads to more stable entropy values over the scale factors for white and pink noises. Overall, the MFDE is the fastest and most consistent method for the discrimination of different states of neurological data, especially where the mean value of a time series considerably changes along with the signal (e.g., eye movement data). This paper shows that MFDE is a relevant new metric to gain further insights into the dynamics of neurological diseases’ recordings. The MATLAB codes for the MFDE and its refined composite form are available in Xplore.

[1]  Danilo P Mandic,et al.  Multivariate multiscale entropy: a tool for complexity analysis of multichannel data. , 2011, Physical review. E, Statistical, nonlinear, and soft matter physics.

[2]  Luiz Otavio Murta Junior,et al.  Multiscale entropy-based methods for heart rate variability complexity analysis , 2015 .

[3]  Hamed Azami,et al.  Multiscale dispersion entropy for the regional analysis of resting-state magnetoencephalogram complexity in Alzheimer's disease , 2017, 2017 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[4]  J. Richman,et al.  Physiological time-series analysis using approximate entropy and sample entropy. , 2000, American journal of physiology. Heart and circulatory physiology.

[5]  Anne Humeau-Heurtier,et al.  The Multiscale Entropy Algorithm and Its Variants: A Review , 2015, Entropy.

[7]  C. Peng,et al.  Cognitive and neuropsychiatric correlates of EEG dynamic complexity in patients with Alzheimer's disease , 2013, Progress in Neuro-Psychopharmacology and Biological Psychiatry.

[8]  Wangxin Yu,et al.  Characterization of Surface EMG Signal Based on Fuzzy Entropy , 2007, IEEE Transactions on Neural Systems and Rehabilitation Engineering.

[9]  S M Pincus,et al.  Approximate entropy as a measure of system complexity. , 1991, Proceedings of the National Academy of Sciences of the United States of America.

[10]  D. Abásolo,et al.  Entropy analysis of the EEG background activity in Alzheimer's disease patients , 2006, Physiological measurement.

[11]  Y. Agid,et al.  Eye movements in parkinsonian syndromes , 1994, Annals of neurology.

[12]  Vladimir Miskovic,et al.  Changes in EEG multiscale entropy and power‐law frequency scaling during the human sleep cycle , 2018, Human brain mapping.

[13]  B. Pompe,et al.  Permutation entropy: a natural complexity measure for time series. , 2002, Physical review letters.

[14]  Yaneer Bar-Yam,et al.  Dynamics Of Complex Systems , 2019 .

[15]  S R Simon,et al.  Gait patterns in patients with amyotrophic lateral sclerosis. , 1984, Archives of physical medicine and rehabilitation.

[16]  Jeffrey M. Hausdorff,et al.  Dynamic markers of altered gait rhythm in amyotrophic lateral sclerosis. , 2000, Journal of applied physiology.

[17]  Roman Vershynin,et al.  High-Dimensional Probability , 2018 .

[18]  A. Cichocki,et al.  Diagnosis of Alzheimer's disease from EEG signals: where are we standing? , 2010, Current Alzheimer research.

[19]  Jeffrey M. Hausdorff,et al.  Fractal dynamics of human gait: stability of long-range correlations in stride interval fluctuations. , 1996, Journal of applied physiology.

[20]  Zhaohua Wu,et al.  On the trend, detrending, and variability of nonlinear and nonstationary time series , 2007, Proceedings of the National Academy of Sciences.

[21]  Chaur-Jong Hu,et al.  Multiscale Entropy Analysis of Electroencephalography During Sleep in Patients With Parkinson Disease , 2013, Clinical EEG and neuroscience.

[22]  T. Tombaugh,et al.  The Mini‐Mental State Examination: A Comprehensive Review , 1992, Journal of the American Geriatrics Society.

[23]  H. Stanley,et al.  Effect of trends on detrended fluctuation analysis. , 2001, Physical review. E, Statistical, nonlinear, and soft matter physics.

[24]  Anne Humeau-Heurtier,et al.  Multivariate Generalized Multiscale Entropy Analysis , 2016, Entropy.

[25]  Roberto Hornero,et al.  Approximate entropy and auto mutual information analysis of the electroencephalogram in Alzheimer’s disease patients , 2008, Medical & Biological Engineering & Computing.

[26]  Samantha Simons,et al.  Univariate and Multivariate Generalized Multiscale Entropy to Characterise EEG Signals in Alzheimer's Disease , 2017, Entropy.

[27]  U. Rajendra Acharya,et al.  Application of Entropy Measures on Intrinsic Mode Functions for the Automated Identification of Focal Electroencephalogram Signals , 2015, Entropy.

[28]  Sang Joon Kim,et al.  A Mathematical Theory of Communication , 2006 .

[29]  R. Leigh,et al.  Dynamic properties of horizontal and vertical eye movements in parkinsonian syndromes , 1996, Annals of neurology.

[30]  Francesco Carlo Morabito,et al.  Entropic Measures of EEG Complexity in Alzheimer's Disease Through a Multivariate Multiscale Approach , 2013, IEEE Sensors Journal.

[31]  Junsheng Cheng,et al.  A rolling bearing fault diagnosis method based on multi-scale fuzzy entropy and variable predictive model-based class discrimination , 2014 .

[32]  Hamed Azami,et al.  Refined Composite Multiscale Dispersion Entropy and its Application to Biomedical Signals , 2016, IEEE Transactions on Biomedical Engineering.

[33]  Haiyang Pan,et al.  Composite Interpolation-Based Multiscale Fuzzy Entropy and Its Application to Fault Diagnosis of Rolling Bearing , 2019, Entropy.

[34]  Francesco Carlo Morabito,et al.  Multivariate Multi-Scale Permutation Entropy for Complexity Analysis of Alzheimer's Disease EEG , 2012, Entropy.

[35]  Roberto Hornero,et al.  Analysis of electroencephalograms in Alzheimer's disease patients with multiscale entropy. , 2006 .

[36]  Jeffrey Lam Preserving Useful Info While Reducing Noise of Physiological Signals by Using Wavelet Analysis , 2011 .

[37]  D. Bennett,et al.  The natural history of cognitive decline in Alzheimer's disease. , 2012, Psychology and aging.

[38]  Peng Wang,et al.  Energy weighting method and its application to fault diagnosis of rolling bearing , 2017 .

[39]  Mohammed Imamul Hassan Bhuiyan,et al.  Sleep stage classification using single-channel EOG , 2018, Comput. Biol. Medicine.

[40]  R W Baloh,et al.  Oculomotor phenotypes in autosomal dominant ataxias. , 1998, Archives of neurology.

[41]  C. Peng,et al.  Analysis of complex time series using refined composite multiscale entropy , 2014 .

[42]  Madalena Costa,et al.  Multiscale entropy analysis of biological signals. , 2005, Physical review. E, Statistical, nonlinear, and soft matter physics.

[43]  Hamed Azami,et al.  Dispersion Entropy: A Measure for Time-Series Analysis , 2016, IEEE Signal Processing Letters.

[44]  Claude E. Shannon,et al.  The mathematical theory of communication , 1950 .

[45]  H. Stanley,et al.  Quantification of scaling exponents and crossover phenomena in nonstationary heartbeat time series. , 1995, Chaos.

[46]  Christopher G. Wilson,et al.  The effect of time delay on Approximate & Sample Entropy calculations , 2008 .

[47]  H. Fogedby On the phase space approach to complexity , 1992 .

[48]  Shamim Nemati,et al.  Respiration and heart rate complexity: Effects of age and gender assessed by band-limited transfer entropy , 2013, Respiratory Physiology & Neurobiology.

[49]  Hamed Azami,et al.  Coarse-Graining Approaches in Univariate Multiscale Sample and Dispersion Entropy , 2018, Entropy.

[50]  U. Rajendra Acharya,et al.  Characterization of focal EEG signals: A review , 2019, Future Gener. Comput. Syst..

[51]  Hamed Azami,et al.  Improved multiscale permutation entropy for biomedical signal analysis: Interpretation and application to electroencephalogram recordings , 2015, Biomed. Signal Process. Control..

[52]  Hamed Azami,et al.  Refined multiscale fuzzy entropy based on standard deviation for biomedical signal analysis , 2016, Medical & Biological Engineering & Computing.

[53]  Shuen-De Wu,et al.  Refined scale-dependent permutation entropy to analyze systems complexity , 2016 .

[54]  Hamed Azami,et al.  Amplitude- and Fluctuation-Based Dispersion Entropy , 2018, Entropy.

[55]  Raquel Cervigón Abad,et al.  Refined Multiscale Fuzzy Entropy to Analyse Post-Exercise Cardiovascular Response in Older Adults With Orthostatic Intolerance , 2018, Entropy.

[56]  Alzheimer’s Association 2017 Alzheimer's disease facts and figures , 2017, Alzheimer's & Dementia.

[57]  Madalena Costa,et al.  Multiscale entropy analysis of complex physiologic time series. , 2002, Physical review letters.

[58]  Rasmus Bro,et al.  Multiscale entropy analysis of resting-state magnetoencephalogram with tensor factorisations in Alzheimer's disease , 2015, Brain Research Bulletin.

[59]  Shuen-De Wu,et al.  Refined Multiscale Hilbert–Huang Spectral Entropy and Its Application to Central and Peripheral Cardiovascular Data , 2016, IEEE Transactions on Biomedical Engineering.

[60]  Yi-Cheng Zhang Complexity and 1/f noise. A phase space approach , 1991 .

[61]  Ralph G Andrzejak,et al.  Nonrandomness, nonlinear dependence, and nonstationarity of electroencephalographic recordings from epilepsy patients. , 2012, Physical review. E, Statistical, nonlinear, and soft matter physics.

[62]  Saeid Sanei,et al.  EEG signal processing , 2000, Clinical Neurophysiology.

[63]  Hojjat Adeli,et al.  Clinical Neurophysiological and Automated EEG-Based Diagnosis of the Alzheimer's Disease , 2015, European Neurology.