Paper
26 February 2008 Volumetric fMRI data analysis using an iterative classification method
Author Affiliations +
Proceedings Volume 6814, Computational Imaging VI; 68140E (2008) https://doi.org/10.1117/12.775035
Event: Electronic Imaging, 2008, San Jose, California, United States
Abstract
We have previously developed a novel framework for the analysis of single-slice functional magnetic resonance imaging (fMRI) data that identifies multi-pixel regions of activation through iterative segmentation-based optimization over hemodynamic response (HDR) estimates, generated at the level of both individual pixels and regional groupings. Through the addition of a correction for the disparate sampling times associated with multi-slice acquisitions in fMRI, the algorithm has been extended to permit analysis of full volumetric data. Additional improvement in performance is achieved through inclusion of an estimate of the covariance matrix of the fMRI data, previously assumed to be proportional to the identity matrix across all regions. Simulations using synthetic activation embedded in autoregressive noise reveal the proposed procedure to be more sensitive and selective than conventional fMRI analysis methods (reference set: general linear model test, GLM; independent component analysis, ICA; principal component analysis, PCA) in identification of active regions over the range of average contrast-to-noise ratios of 0.7 to 2.
© (2008) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Liang Liu, Kihwan Han, and Thomas M. Talavage "Volumetric fMRI data analysis using an iterative classification method", Proc. SPIE 6814, Computational Imaging VI, 68140E (26 February 2008); https://doi.org/10.1117/12.775035
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KEYWORDS
Functional magnetic resonance imaging

Independent component analysis

Principal component analysis

Data modeling

High dynamic range imaging

Statistical analysis

Autoregressive models

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