1 research outputs found
Selection of a Model of Cerebral Activity for fMRI Group Data Analysis
This thesis is dedicated to the statistical analysis of multi-sub ject fMRI
data, with the purpose of identifying bain structures involved in certain
cognitive or sensori-motor tasks, in a reproducible way across sub jects. To
overcome certain limitations of standard voxel-based testing methods, as
implemented in the Statistical Parametric Mapping (SPM) software, we introduce
a Bayesian model selection approach to this problem, meaning that the most
probable model of cerebral activity given the data is selected from a
pre-defined collection of possible models. Based on a parcellation of the brain
volume into functionally homogeneous regions, each model corresponds to a
partition of the regions into those involved in the task under study and those
inactive. This allows to incorporate prior information, and avoids the
dependence of the SPM-like approach on an arbitrary threshold, called the
cluster- forming threshold, to define active regions. By controlling a Bayesian
risk, our approach balances false positive and false negative risk control.
Furthermore, it is based on a generative model that accounts for the spatial
uncertainty on the localization of individual effects, due to spatial
normalization errors. On both simulated and real fMRI datasets, we show that
this new paradigm corrects several biases of the SPM-like approach, which
either swells or misses the different active regions, depending on the choice
of a cluster-forming threshold.Comment: PhD Thesis, 208 pages, Applied Statistics and Neuroimaging,
University of Orsay, Franc