Nonlinear multivariate analysis of neurophysiological signals

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914 Citations (Scopus)

Abstract

Multivariate time series analysis is extensively used in neurophysiology with the aim of studying the relationship between simultaneously recorded signals. Recently, advances on information theory and nonlinear dynamical systems theory have allowed the study of various types of synchronization from time series. In this work, we first describe the multivariate linear methods most commonly used in neurophysiology and show that they can be extended to assess the existence of nonlinear interdependences between signals. We then review the concepts of entropy and mutual information followed by a detailed description of nonlinear methods based on the concepts of phase synchronization, generalized synchronization and event synchronization. In all cases, we show how to apply these methods to study different kinds of neurophysiological data. Finally, we illustrate the use of multivariate surrogate data test for the assessment of the strength (strong or weak) and the type (linear or nonlinear) of interdependence between neurophysiological signals.

Original languageEnglish
Pages (from-to)1-37
Number of pages37
JournalProgress in Neurobiology
Volume77
Issue number1-2
DOIs
Publication statusPublished - Sept 2005

User-Defined Keywords

  • EEG
  • MEG
  • Multivariate time series
  • Nonlinear analysis
  • Spike trains
  • Surrogate data
  • Synchronization

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