Dynamic causal modeling (DCM) is a generic Bayesian framework for inferring hidden neuronal states from measurements of brain activity. It provides posterior estimates of neurobiologically interpretable quantities such as the effective strength of synaptic connections among neuronal populations and their context-dependent modulation. DCM is increasingly used in the analysis of a wide range of neuroimaging and electrophysiological data. Given the relative complexity of DCM, compared to conventional analysis techniques, a good knowledge of its theoretical foundations is needed to avoid pitfalls in its application and interpretation of results. By providing good practice recommendations for DCM, in the form of ten simple rules, we hope that th...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
Dynamic Causal Modeling (DCM) uses dynamical systems to represent the high-level neural processing s...
Dynamic causal modelling (DCM) (Friston et al., 2003) is a technique designed to investigate the inf...
Dynamic causal modeling (DCM) is a generic Bayesian framework for inferring hidden neuronal states f...
AbstractDynamic causal modeling (DCM) is a generic Bayesian framework for inferring hidden neuronal ...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
Dynamic Causal Modelling (DCM) is an approach first introduced for the analysis of functional magnet...
AbstractDespite almost a decade since the introduction of Dynamic Causal Modelling (DCM), there rema...
International audienceComplex processes resulting from interaction of multiple elements can rarely b...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
Dynamic Causal Modeling (DCM) is a Bayesian framework for inferring on hidden (latent) neuronal stat...
This chapter reviews some recent advances in dynamic causal modelling (DCM) of electrophysiology, in...
<p><em>This is an author copy of the paper published in Neuroimage (http://goo.gl/v5SOGF).</em><em><...
This article describes the use of Bayes factors for comparing dynamic causal models (DCMs). DCMs are...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
Dynamic Causal Modeling (DCM) uses dynamical systems to represent the high-level neural processing s...
Dynamic causal modelling (DCM) (Friston et al., 2003) is a technique designed to investigate the inf...
Dynamic causal modeling (DCM) is a generic Bayesian framework for inferring hidden neuronal states f...
AbstractDynamic causal modeling (DCM) is a generic Bayesian framework for inferring hidden neuronal ...
Complex processes resulting from interaction of multiple elements can rarely be understood by analyt...
Dynamic Causal Modelling (DCM) is an approach first introduced for the analysis of functional magnet...
AbstractDespite almost a decade since the introduction of Dynamic Causal Modelling (DCM), there rema...
International audienceComplex processes resulting from interaction of multiple elements can rarely b...
International audienceThe goal of dynamic causal modelling (DCM) of neuroimaging data is to study ex...
Dynamic Causal Modeling (DCM) is a Bayesian framework for inferring on hidden (latent) neuronal stat...
This chapter reviews some recent advances in dynamic causal modelling (DCM) of electrophysiology, in...
<p><em>This is an author copy of the paper published in Neuroimage (http://goo.gl/v5SOGF).</em><em><...
This article describes the use of Bayes factors for comparing dynamic causal models (DCMs). DCMs are...
This article describes the use of Bayes factors for comparing Dynamic Causal Models (DCMs). DCMs are...
Dynamic Causal Modeling (DCM) uses dynamical systems to represent the high-level neural processing s...
Dynamic causal modelling (DCM) (Friston et al., 2003) is a technique designed to investigate the inf...