Background ‘Non-parametric directionality’ (NPD) is a novel method for estimation of directed functional connectivity (dFC) in neural data. The method has previously been verified in its ability to recover causal interactions in simulated spiking networks in Halliday et al. (2015). Methods This work presents a validation of NPD in continuous neural recordings (e.g. local field potentials). Specifically, we use autoregressive models to simulate time delayed correlations between neural signals. We then test for the accurate recovery of networks in the face of several confounds typically encountered in empirical data. We examine the effects of NPD under varying: a) signal-to-noise ratios, b) asymmetries in signal strength, c) instantaneous mi...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
Granger causality analysis is becoming central for the analysis of interactions between neural popul...
BACKGROUND: 'Non-parametric directionality' (NPD) is a novel method for estimation of directed funct...
In the past decade several multivariate causality measures based on Granger causality have been sugg...
BACKGROUND: The ability to infer network structure from multivariate neuronal signals is central to ...
BACKGROUND: The ability to infer network structure from multivariate neuronal signals is central to ...
BACKGROUND: The ability to infer network structure from multivariate neuronal signals is central to ...
Neurons in the brain form complicated networks through synaptic connections. Traditionally, function...
Recovering directed pathways of information transfer between brain areas is an important issue in ne...
Recovering directed pathways of information transfer between brain areas is an important issue in ne...
Recovering directed pathways of information transfer between brain areas is an important issue in ne...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
Granger causality analysis is becoming central for the analysis of interactions between neural popul...
BACKGROUND: 'Non-parametric directionality' (NPD) is a novel method for estimation of directed funct...
In the past decade several multivariate causality measures based on Granger causality have been sugg...
BACKGROUND: The ability to infer network structure from multivariate neuronal signals is central to ...
BACKGROUND: The ability to infer network structure from multivariate neuronal signals is central to ...
BACKGROUND: The ability to infer network structure from multivariate neuronal signals is central to ...
Neurons in the brain form complicated networks through synaptic connections. Traditionally, function...
Recovering directed pathways of information transfer between brain areas is an important issue in ne...
Recovering directed pathways of information transfer between brain areas is an important issue in ne...
Recovering directed pathways of information transfer between brain areas is an important issue in ne...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
Granger-causality metrics have become increasingly popular tools to identify directed interactions b...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
Granger causality analysis is becoming central for the analysis of interactions between neural popul...