Title :
Adaptive Multiscale Entropy Analysis of Multivariate Neural Data
Author :
Hu, Meng ; Liang, Hualou
Author_Institution :
Sch. of Biomed. Eng., Sci. & Health Syst., Drexel Univ., Philadelphia, PA, USA
Abstract :
Multiscale entropy (MSE) has been widely used to quantify a system´s complexity by taking into account the multiple time scales inherent in physiologic time series. The method, however, is biased toward the coarse scale, i.e., low-frequency components due to the progressive smoothing operations. In addition, the algorithm for extracting the different scales is not well adapted to nonlinear/nonstationary signals. In this letter, we introduce adaptive multiscale entropy (AME) measures in which the scales are adaptively derived directly from the data by virtue of recently developed multivariate empirical mode decomposition. Depending on the consecutive removal of low-frequency or high-frequency components, our AME can be estimated at either coarse-to-fine or fine-to-coarse scales over which the sample entropy is performed. Computer simulations are performed to verify the effectiveness of AME for analysis of the highly nonstationary data. Local field potentials collected from the visual cortex of macaque monkey while performing a generalized flash suppression task are used as an example to demonstrate the usefulness of our AME approach to reveal the underlying dynamics in complex neural data.
Keywords :
brain; entropy; medical signal processing; neurophysiology; adaptive multiscale entropy analysis; complex neural data; computer simulations; generalized flash suppression task; highly nonstationary data; macaque monkey; multivariate empirical mode decomposition; multivariate neural data; visual cortex; Biomedical measurements; Diamond-like carbon; Entropy; Smoothing methods; Time series analysis; USA Councils; Visualization; Entropy; local field potential (LFP); multiple scale analysis; multivariate empirical mode decomposition (MEMD); Action Potentials; Animals; Brain; Data Interpretation, Statistical; Electroencephalography; Entropy; Macaca; Models, Neurological; Multivariate Analysis; Nerve Net; Neurons; Signal Processing, Computer-Assisted; Visual Perception;
Journal_Title :
Biomedical Engineering, IEEE Transactions on
DOI :
10.1109/TBME.2011.2162511