Αρχειοθήκη ιστολογίου

Αλέξανδρος Γ. Σφακιανάκης
ΩτοΡινοΛαρυγγολόγος
Αναπαύσεως 5
Άγιος Νικόλαος Κρήτη 72100
2841026182
6032607174

Πέμπτη 15 Σεπτεμβρίου 2016

The Multiscale Entropy: guidelines for use and interpretation in brain signal analysis

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Publication date: Available online 14 September 2016
Source:Journal of Neuroscience Methods
Author(s): Julie Courtiol, Dionysios Perdikis, Spase Petkoski, Viktor Müller, Raoul Huys, Rita Sleimen-Malkoun, Viktor K. Jirsa
BackgroundMultiscale Entropy (MSE) estimates the predictability of a signal over multiple temporal scales. It has been recently applied to study brain signal variability, notably during aging. The grounds of its application and interpretation remain unclear and subject to debate.MethodWe used both simulated and experimental data to provide an intuitive explanation of MSE and to explore how it relates to the frequency content of the signal, depending on the amount of (non)linearity and stochasticity in the underlying dynamics.ResultsThe scaling and peak-structure of MSE curves relate to the scaling and peaks of the Power Spectrum in the presence of linear autocorrelations. MSE also captures nonlinear autocorrelations and their interactions with stochastic dynamical components. The previously reported crossing of young and old adults' MSE curves for EEG data, appears to be mainly due to linear stochastic processes, and relates to young adults' EEG dynamics exhibiting a slower time constant.Comparison with existing methodsWe make the relationship between MSE curve and Power Spectrum as well as with a linear autocorrelation measure, namely Multiscale Root-Mean-Square-Successive-Difference, more explicit. MSE allows gaining insight into the time-structure of brain activity fluctuations. Its combined use with other metrics could prevent any misleading interpretations with regard to underlying stochastic processes.ConclusionsAlthough not straightforward, when applied to brain signals, the features of MSE curves can be linked to their power content and provide information about both linear and nonlinear autocorrelations that are present therein.



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