Granger causality analysis of fMRI BOLD signals is invariant to hemodynamic convolution but not downsampling - PubMed (original) (raw)

Granger causality analysis of fMRI BOLD signals is invariant to hemodynamic convolution but not downsampling

Anil K Seth et al. Neuroimage. 2013.

Abstract

Granger causality is a method for identifying directed functional connectivity based on time series analysis of precedence and predictability. The method has been applied widely in neuroscience, however its application to functional MRI data has been particularly controversial, largely because of the suspicion that Granger causal inferences might be easily confounded by inter-regional differences in the hemodynamic response function. Here, we show both theoretically and in a range of simulations, that Granger causal inferences are in fact robust to a wide variety of changes in hemodynamic response properties, including notably their time-to-peak. However, when these changes are accompanied by severe downsampling, and/or excessive measurement noise, as is typical for current fMRI data, incorrect inferences can still be drawn. Our results have important implications for the ongoing debate about lag-based analyses of functional connectivity. Our methods, which include detailed spiking neuronal models coupled to biophysically realistic hemodynamic observation models, provide an important 'analysis-agnostic' platform for evaluating functional and effective connectivity methods.

Copyright © 2012 Elsevier Inc. All rights reserved.

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