Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential Signals

In some applications, it is important to compare the stochastic properties of two multivariate time series that have unequal dimensions. A new method is proposed to compare the spread of spectral information in two multivariate stationary processes with different dimensions. To measure discrepancies...

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Main Authors: Raanju R. Sundararajan, Ron Frostig, Hernando Ombao
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/12/1375
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spelling doaj-adbd4c3706144eae8fe7b1a0f955be8b2020-12-06T00:02:20ZengMDPI AGEntropy1099-43002020-12-01221375137510.3390/e22121375Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential SignalsRaanju R. Sundararajan0Ron Frostig1Hernando Ombao2Department of Statistical Science, Southern Methodist University, Dallas, TX 75275, USA.School of Biological Sciences, University of California Irvine, Irvine, CA 92697, USAStatistics Program, King Abdullah University of Science and Technology, Thuwal 23955, Saudi ArabiaIn some applications, it is important to compare the stochastic properties of two multivariate time series that have unequal dimensions. A new method is proposed to compare the spread of spectral information in two multivariate stationary processes with different dimensions. To measure discrepancies, a frequency specific spectral ratio (FS-ratio) statistic is proposed and its asymptotic properties are derived. The FS-ratio is blind to the dimension of the stationary process and captures the proportion of spectral power in various frequency bands. Here we develop a technique to automatically identify frequency bands that carry significant spectral power. We apply our method to track changes in the complexity of a 32-channel local field potential (LFP) signal from a rat following an experimentally induced stroke. At every epoch (a distinct time segment from the duration of the experiment), the nonstationary LFP signal is decomposed into stationary and nonstationary latent sources and the complexity is analyzed through these latent stationary sources and their dimensions that can change across epochs. The analysis indicates that spectral information in the Beta frequency band (12–30 Hertz) demonstrated the greatest change in structure and complexity due to the stroke.https://www.mdpi.com/1099-4300/22/12/1375multivariate time seriesnonstationaryspectral matrixlocal field potential
collection DOAJ
language English
format Article
sources DOAJ
author Raanju R. Sundararajan
Ron Frostig
Hernando Ombao
spellingShingle Raanju R. Sundararajan
Ron Frostig
Hernando Ombao
Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential Signals
Entropy
multivariate time series
nonstationary
spectral matrix
local field potential
author_facet Raanju R. Sundararajan
Ron Frostig
Hernando Ombao
author_sort Raanju R. Sundararajan
title Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential Signals
title_short Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential Signals
title_full Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential Signals
title_fullStr Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential Signals
title_full_unstemmed Modeling Spectral Properties in Stationary Processes of Varying Dimensions with Applications to Brain Local Field Potential Signals
title_sort modeling spectral properties in stationary processes of varying dimensions with applications to brain local field potential signals
publisher MDPI AG
series Entropy
issn 1099-4300
publishDate 2020-12-01
description In some applications, it is important to compare the stochastic properties of two multivariate time series that have unequal dimensions. A new method is proposed to compare the spread of spectral information in two multivariate stationary processes with different dimensions. To measure discrepancies, a frequency specific spectral ratio (FS-ratio) statistic is proposed and its asymptotic properties are derived. The FS-ratio is blind to the dimension of the stationary process and captures the proportion of spectral power in various frequency bands. Here we develop a technique to automatically identify frequency bands that carry significant spectral power. We apply our method to track changes in the complexity of a 32-channel local field potential (LFP) signal from a rat following an experimentally induced stroke. At every epoch (a distinct time segment from the duration of the experiment), the nonstationary LFP signal is decomposed into stationary and nonstationary latent sources and the complexity is analyzed through these latent stationary sources and their dimensions that can change across epochs. The analysis indicates that spectral information in the Beta frequency band (12–30 Hertz) demonstrated the greatest change in structure and complexity due to the stroke.
topic multivariate time series
nonstationary
spectral matrix
local field potential
url https://www.mdpi.com/1099-4300/22/12/1375
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AT hernandoombao modelingspectralpropertiesinstationaryprocessesofvaryingdimensionswithapplicationstobrainlocalfieldpotentialsignals
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