<div><p>Multivariate neural data provide the basis for assessing interactions in brain networks. Among myriad connectivity measures, Granger causality (GC) has proven to be statistically intuitive, easy to implement, and generate meaningful results. Although its application to functional MRI (fMRI) data is increasing, several factors have been identified that appear to hinder its neural interpretability: (a) latency differences in hemodynamic response function (HRF) across different brain regions, (b) low-sampling rates, and (c) noise. Recognizing that in basic and clinical neuroscience, it is often the change of a dependent variable (e.g., GC) between experimental conditions and between normal and pathology that is of interest, we address ...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Causality analysis is an approach to time series analysis that is being used increasingly to investi...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality and Phase Slope Index (PSI) are recent approaches to measure how one signal depend...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Causality analysis is an approach to time series analysis that is being used increasingly to investi...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality analyses aim to reveal the direction of influence between brain areas by analyzing...
Granger causality and Phase Slope Index (PSI) are recent approaches to measure how one signal depend...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...
Classical multivariate approaches based on Granger causality (GC) which estimate functional connecti...