Two main approaches in exploring causal relationships in biological systems using time-series data are the application of Dynamic Causal model (DCM) and Granger Causal model (GCM). These have been extensively applied to brain imaging data and are also readily applicable to a wide range of temporal changes involving genes, proteins or metabolic pathways. However, these two approaches have always been considered to be radically different from each other and therefore used independently. Here we present a novel approach which is an extension of Granger Causal model and also shares the features of the bilinear approximation of Dynamic Causal model. We have first tested the efficacy of the extended GCM by applying it extensively in toy mod...
The recognition and processing of faces is a core competence of our human brain, in which many neuro...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
The communication among neuronal populations, reflected by transient synchronous activity, is the me...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
We propose Granger causality mapping (GCM) as an approach to explore directed influences between neu...
Oscillatory activity plays a critical role in regulating biological processes at levels ranging from...
AbstractThis is the final paper in a Comments and Controversies series dedicated to “The identificat...
Stimulus repetition normally causes reduced neural activity in brain regions that process that stimu...
Oscillatory activity plays a critical role in regulating biological processes at levels ranging from...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Abstract — In this paper we first point out a fatal drawback that the widely used Granger causality ...
The recognition and processing of faces is a core competence of our human brain, in which many neuro...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...
Multivariate neural data provide the basis for assessing interactions in brain networks. Among myria...
International audienceGranger causality analysis is becoming central for the analysis of interaction...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
The communication among neuronal populations, reflected by transient synchronous activity, is the me...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
We propose Granger causality mapping (GCM) as an approach to explore directed influences between neu...
Oscillatory activity plays a critical role in regulating biological processes at levels ranging from...
AbstractThis is the final paper in a Comments and Controversies series dedicated to “The identificat...
Stimulus repetition normally causes reduced neural activity in brain regions that process that stimu...
Oscillatory activity plays a critical role in regulating biological processes at levels ranging from...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Abstract — In this paper we first point out a fatal drawback that the widely used Granger causality ...
The recognition and processing of faces is a core competence of our human brain, in which many neuro...
Estimation of causal interactions between brain areas is necessary for elucidating large-scale funct...
Attempts to identify causal interactions in multivariable biological time series (e.g., gene data, p...