Neuroimaging studies of learning focus on brain areas where the activity changes as a function of time. To circumvent the difficult problem of model selection, we used a data-driven analytic tool, cluster analysis, which extracts representative temporal and spatial patterns from the voxel-time series. The optimal number of clusters was chosen using a cross-validated likelihood method, which highlights the clustering pattern that generalizes best over the subjects. Data were acquired with PET at different time points during practice of a visuomotor task. The results from cluster analysis show practice-related activity in a fronto-parieto-cerebellar network, in agreement with previous studies of motor learning. These voxels were separated fro...
Neuroimaging experiments have identified several brain regions that appear to play roles in motor le...
Neuroimaging experiments have identified several brain regions that appear to play roles in motor le...
In the present work we use pattern vectors derived from Statistical Parametric Map, generated from a...
There is growing interest in the description of short-lived patterns in the spatiotemporal cortical ...
There is growing interest in the description of short-lived patterns in the spatiotemporal cortical ...
Localized changes in cortical blood oxygenation during voluntary movements were examined with functi...
There is growing interest in the description of short-lived patterns in the spatiotemporal cortical ...
MRI time series experiments produce a wealth of information contained in two or three spatial dimens...
Neuroimaging studies have improved our understanding of which brain structures are involved in motor...
As a person learns a new skill, distinct synapses, brain regions, and circuits are engaged and chang...
Abstract. We explore a new paradigm for the analysis of event-related functional magnetic resonance ...
While the cellular structure and behaviour of single neurons is well understood, how groups of ne...
While the cellular structure and behaviour of single neurons is well understood, how groups of ne...
We study functional activity in the human brain using functional Magnetic Resonance Imaging and rece...
The cerebellum is considered a “learning machine” essential for time interval estimation underlying ...
Neuroimaging experiments have identified several brain regions that appear to play roles in motor le...
Neuroimaging experiments have identified several brain regions that appear to play roles in motor le...
In the present work we use pattern vectors derived from Statistical Parametric Map, generated from a...
There is growing interest in the description of short-lived patterns in the spatiotemporal cortical ...
There is growing interest in the description of short-lived patterns in the spatiotemporal cortical ...
Localized changes in cortical blood oxygenation during voluntary movements were examined with functi...
There is growing interest in the description of short-lived patterns in the spatiotemporal cortical ...
MRI time series experiments produce a wealth of information contained in two or three spatial dimens...
Neuroimaging studies have improved our understanding of which brain structures are involved in motor...
As a person learns a new skill, distinct synapses, brain regions, and circuits are engaged and chang...
Abstract. We explore a new paradigm for the analysis of event-related functional magnetic resonance ...
While the cellular structure and behaviour of single neurons is well understood, how groups of ne...
While the cellular structure and behaviour of single neurons is well understood, how groups of ne...
We study functional activity in the human brain using functional Magnetic Resonance Imaging and rece...
The cerebellum is considered a “learning machine” essential for time interval estimation underlying ...
Neuroimaging experiments have identified several brain regions that appear to play roles in motor le...
Neuroimaging experiments have identified several brain regions that appear to play roles in motor le...
In the present work we use pattern vectors derived from Statistical Parametric Map, generated from a...