Connectivity studies of the brain are usually based on functional Magnetic Resonance Imaging (fMRI) experiments involving many subjects. These studies need to take into account not only the interaction between areas of a single brain but also the differences amongst those subjects. In this paper we develop a methodology called the group-structure (GS) approach that models possible heterogeneity between subjects and searches for distinct homogeneous sub-groups according to some measure that reflects the connectivity maps. We suggest a GS method that uses a novel distance based on a model selection measure, the Bayes factor. We then develop a new class of Multiregression Dynamic Models to estimate individual networks whilst acknowledging a GS...
This work introduces a novel framework for dynamic factor model-based data integration of multiple s...
The conventional way to estimate functional networks is primarily based on Pearson correlation along...
La compréhension du fonctionnement cérébral est en constante évolution depuis l’essor des neuroscien...
Abstract. Identifying functional networks from resting-state functional MRI is a challenging task, e...
Contains fulltext : 226126.pdf (publisher's version ) (Open Access)The brain can b...
The brain can be modelled as a network with nodes and edges derived from a range of imaging modaliti...
Dynamic Causal Modelling (DCM) is the predominant method for inferring effective connectivity from n...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
Abstract—Noise confounds present serious complications to functional magnetic resonance imaging (fMR...
Since its inception, functional neuroimaging has focused on identifying sources of neural activity. ...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
The goal of many neuroimaging studies is to better understand how the functional connectivity struct...
This work introduces a novel framework for dynamic factor model-based data integration of multiple s...
This work introduces a novel framework for dynamic factor model-based data integration of multiple s...
The conventional way to estimate functional networks is primarily based on Pearson correlation along...
La compréhension du fonctionnement cérébral est en constante évolution depuis l’essor des neuroscien...
Abstract. Identifying functional networks from resting-state functional MRI is a challenging task, e...
Contains fulltext : 226126.pdf (publisher's version ) (Open Access)The brain can b...
The brain can be modelled as a network with nodes and edges derived from a range of imaging modaliti...
Dynamic Causal Modelling (DCM) is the predominant method for inferring effective connectivity from n...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
Abstract—Noise confounds present serious complications to functional magnetic resonance imaging (fMR...
Since its inception, functional neuroimaging has focused on identifying sources of neural activity. ...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
International audienceStandard group analyses of fMRI data rely on spatial and temporal averaging of...
The goal of many neuroimaging studies is to better understand how the functional connectivity struct...
This work introduces a novel framework for dynamic factor model-based data integration of multiple s...
This work introduces a novel framework for dynamic factor model-based data integration of multiple s...
The conventional way to estimate functional networks is primarily based on Pearson correlation along...
La compréhension du fonctionnement cérébral est en constante évolution depuis l’essor des neuroscien...