Previous work investigated a range of spatio-temporal constraints for fMRI data analysis to provide robust detection of neural activation. We present a mixture-based method for the spatio-temporal modelling of fMRI data. This approach assumes that fMRI time series are generated by a probabilistic superposition of a small set of spatio-temporal prototypes (mixture components). Each prototype comprises a temporal model that explains fMRI signals on a single voxel and the model's "region of influence" through a spatial prior over the voxel space. As the key ingredient of our temporal model, the Hidden Process Model (HPM) framework proposed in Hutchinson et al. (2009) is adopted to infer the overlapping cognitive processes triggered by stimuli....
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
This paper presents a new data-driven method to identify the spatial and temporal characteristics of...
AbstractPrevious work investigated a range of spatio-temporal constraints for fMRI data analysis to ...
AbstractPrevious work investigated a range of spatio-temporal constraints for fMRI data analysis to ...
Previous works investigated a range of spatio-temporal models for fMRI data analysis to provide robu...
High-dimensional functional magnetic resonance imaging (fMRI) data is characterized by complex spati...
Functional magnetic resonance imaging (fMRI) uses fast MRI techniques to enable studies of dynamic p...
Within-subject analysis in event-related functional Magnetic Resonance Imaging (fMRI) first relies o...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in event-related functional Magnetic Resonance Imaging...
International audienceWithin-subject analysis in event-related functional Magnetic Resonance Imaging...
International audienceWithin-subject analysis in event-related functional Magnetic Resonance Imaging...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
This paper presents a new data-driven method to identify the spatial and temporal characteristics of...
AbstractPrevious work investigated a range of spatio-temporal constraints for fMRI data analysis to ...
AbstractPrevious work investigated a range of spatio-temporal constraints for fMRI data analysis to ...
Previous works investigated a range of spatio-temporal models for fMRI data analysis to provide robu...
High-dimensional functional magnetic resonance imaging (fMRI) data is characterized by complex spati...
Functional magnetic resonance imaging (fMRI) uses fast MRI techniques to enable studies of dynamic p...
Within-subject analysis in event-related functional Magnetic Resonance Imaging (fMRI) first relies o...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, the detect...
International audienceWithin-subject analysis in event-related functional Magnetic Resonance Imaging...
International audienceWithin-subject analysis in event-related functional Magnetic Resonance Imaging...
International audienceWithin-subject analysis in event-related functional Magnetic Resonance Imaging...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
International audienceWithin-subject analysis in fMRI essentially addresses two problems, i.e., the ...
This paper presents a new data-driven method to identify the spatial and temporal characteristics of...