| Literature DB >> 29542141 |
Sezen Cekic1, Didier Grandjean2, Olivier Renaud1.
Abstract
This article proposes a systematic methodological review and an objective criticism of existing methods enabling the derivation of time, frequency, and time-varying Granger-causality statistics in neuroscience. The capacity to describe the causal links between signals recorded at different brain locations during a neuroscience experiment is indeed of primary interest for neuroscientists, who often have very precise prior hypotheses about the relationships between recorded brain signals. The increasing interest and the huge number of publications related to this topic calls for this systematic review, which describes the very complex methodological aspects underlying the derivation of these statistics. In this article, we first present a general framework that allows us to review and compare Granger-causality statistics in the time domain, and the link with transfer entropy. Then, the spectral and the time-varying extensions are exposed and discussed together with their estimation and distributional properties. Although not the focus of this article, partial and conditional Granger causality, dynamical causal modelling, directed transfer function, directed coherence, partial directed coherence, and their variant are also mentioned.Keywords: Granger causality; nonparametric estimation; nonstationarity; review; spectral domain; time domain; transfer entropy; vector autoregressive
Mesh:
Year: 2018 PMID: 29542141 DOI: 10.1002/sim.7621
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.373