AbstractInter-subject variability in evoked brain responses is attracting attention because it may reflect important variability in structure–function relationships over subjects. This variability could be a signature of degenerate (many-to-one) structure–function mappings in normal subjects or reflect changes that are disclosed by brain damage. In this paper, we describe a non-iterative fuzzy clustering algorithm (FCP: fuzzy clustering with fixed prototypes) for characterizing inter-subject variability in between-subject or second-level analyses of fMRI data. The approach identifies the contribution of each subject to response profiles in voxels surviving a classical F-statistic criterion. The output identifies subjects who drive activatio...
Functional Magnetic Resonance Imaging (fMRI) is a popular noninvasive modality to investigate activa...
AbstractConventional model-based or statistical analysis methods for functional MRI (fMRI) are easy ...
We present a method for discovering patterns of selectivity in fMRI data for experiments with multip...
AbstractInter-subject variability in evoked brain responses is attracting attention because it may r...
Functional neuroimaging studies are revealing the neural systems sustaining many sensory, motor and ...
Recent developments in the analysis of functional MRI data reveal a shift from hypothesis-driven sta...
AbstractIn this study we illustrate how the functional networks involved in a single task (e.g. the ...
International audienceGroup studies of functional magnetic resonance imaging datasets are usually ba...
For functional magnetic resonance imaging (fMRI) group activation maps, so-called second-level rando...
Random Effects analysis has been introduced into fMRI research in order to generalize findings from ...
Functional magnetic resonance imaging studies answer questions about activation effects in populatio...
International audienceActivation detection in functional Magnetic Resonance Imaging (fMRI) datasets ...
International audienceThe aim of group fMRI studies is to relate contrasts of tasks or stimuli to re...
Analyzing fMR images using data-dr iven, bias- an d mod el- f ree ex ploratory data analysis method ...
AbstractHere we report an exploratory within-subject variance decomposition analysis conducted on a ...
Functional Magnetic Resonance Imaging (fMRI) is a popular noninvasive modality to investigate activa...
AbstractConventional model-based or statistical analysis methods for functional MRI (fMRI) are easy ...
We present a method for discovering patterns of selectivity in fMRI data for experiments with multip...
AbstractInter-subject variability in evoked brain responses is attracting attention because it may r...
Functional neuroimaging studies are revealing the neural systems sustaining many sensory, motor and ...
Recent developments in the analysis of functional MRI data reveal a shift from hypothesis-driven sta...
AbstractIn this study we illustrate how the functional networks involved in a single task (e.g. the ...
International audienceGroup studies of functional magnetic resonance imaging datasets are usually ba...
For functional magnetic resonance imaging (fMRI) group activation maps, so-called second-level rando...
Random Effects analysis has been introduced into fMRI research in order to generalize findings from ...
Functional magnetic resonance imaging studies answer questions about activation effects in populatio...
International audienceActivation detection in functional Magnetic Resonance Imaging (fMRI) datasets ...
International audienceThe aim of group fMRI studies is to relate contrasts of tasks or stimuli to re...
Analyzing fMR images using data-dr iven, bias- an d mod el- f ree ex ploratory data analysis method ...
AbstractHere we report an exploratory within-subject variance decomposition analysis conducted on a ...
Functional Magnetic Resonance Imaging (fMRI) is a popular noninvasive modality to investigate activa...
AbstractConventional model-based or statistical analysis methods for functional MRI (fMRI) are easy ...
We present a method for discovering patterns of selectivity in fMRI data for experiments with multip...