Improving Sensitivity and Reliability of fMRI Group Studies through High Level Combination of Individual Subjects Results

CVPRW '06 Proceedings of the 2006 Conference on Computer Vision and Pattern Recognition Workshop(2006)

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摘要
fMRI group studies are usually based on the computation of a mean signal for each voxel across subjects (Random Effects Analyzes), assuming that all subjects are in the same anatomical space (Talairach space). Although this is the standard approach, it lacks efficiency because its underlying hypotheses are often violated. We present here a new framework that detects structures of interest from each subject’s data, then searches for correspondences across subjects and outlines the most reproducible activation in the group studied. This framework enables a strict control on the number of false positives. It is shown here that this analysis demonstrates increased validity and improves both the sensitivity and reliability of group analyzes compared to standard methods. Moreover, it directly provides information on the activated regions spatial position correspondence or variability across subjects, which is difficult to obtain in standard voxel-based analyzes.
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关键词
standard approach,anatomical space,individual subjects results,high level combination,standard method,detects structure,standard voxel-based analyzes,talairach space,activated region,improving sensitivity,random effects analyzes,new framework,fmri group study,fmri group studies,false positive,random effects,robustness,information analysis,neuroimaging,signal analysis,testing,magnetic resonance imaging
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