Medical College of Wisconsin
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An evaluation of spatial thresholding techniques in fMRI analysis. Hum Brain Mapp 2008 Dec;29(12):1379-89

Date

12/08/2007

Pubmed ID

18064589

Pubmed Central ID

PMC6870886

DOI

10.1002/hbm.20471

Scopus ID

2-s2.0-57149096884 (requires institutional sign-in at Scopus site)   25 Citations

Abstract

Many fMRI experiments have a common objective of identifying active voxels in a neuroimaging dataset. This is done in single subject experiments, for example, by performing individual voxel-wise tests of the null hypothesis that the observed time course is not significantly related to an assigned reference function. A voxel activation map is then constructed by applying a thresholding rule to the resulting statistics (e.g., t-statistics). Typically the task-related activation is expected to occur in clusters of voxels rather than in isolated single voxels. A variety of spatial thresholding techniques have been proposed to reflect this belief, including smoothing the raw t-statistics, cluster size inference, and spatial mixture modeling. We study two aspects of these spatial thresholding procedures applied to single subject fMRI analysis through simulation. First, we examine the performance of these procedures in terms of sensitivity to detect voxel activation, using receiver operating characteristic curves. Second, we consider the accuracy of these spatial thresholding procedures in estimation of the size of the activation region, both in terms of bias and variance. The findings indicate that smoothing has the highest sensitivity to modest magnitude signals, but tend to overestimate the size of the activation region. Spatial mixture models estimate the size of a spatially distributed activation region well, but may be less sensitive to modest magnitude signals, indicating that additional research into more sensitive spatial mixture models is needed. Finally, the methods are illustrated with a real bilateral finger-tapping fMRI experiment.

Author List

Logan BR, Geliazkova MP, Rowe DB

Author

Brent R. Logan PhD Director, Professor in the Institute for Health and Equity department at Medical College of Wisconsin




MESH terms used to index this publication - Major topics in bold

Algorithms
Bias
Brain
Brain Mapping
Computer Simulation
Fingers
Humans
Image Processing, Computer-Assisted
Magnetic Resonance Imaging
Models, Statistical
Movement
Psychomotor Performance
Signal Processing, Computer-Assisted
Software