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13 November 2003Wavelet-based approaches for multiple hypothesis testing in activation mapping of functional magnetic resonance images of the human brain
Wavelet-based methods for multiple hypothesis testing are
described and their potential for activation mapping of human
functional magnetic resonance imaging (fMRI) data is investigated.
In this approach, we emphasize convergence between methods of
wavelet thresholding or shrinkage and the problem of multiple
hypothesis testing in both classical and Bayesian contexts.
Specifically, our interest will be focused on ensuring a trade off
between type I probability error control and power dissipation. We
describe a technique for controlling the false discovery rate at
an arbitrary level of type 1 error in testing multiple wavelet
coefficients generated by a 2D discrete wavelet transform (DWT) of
spatial maps of {fMRI} time series statistics. We also describe
and apply recursive testing methods that can be used to define a
threshold unique to each level and orientation of the 2D-DWT.
Bayesian methods, incorporating a formal model for the anticipated
sparseness of wavelet coefficients representing the signal or true
image, are also tractable. These methods are comparatively
evaluated by analysis of "null" images (acquired with the subject
at rest), in which case the number of positive tests should be
exactly as predicted under the hull hypothesis, and an
experimental dataset acquired from 5 normal volunteers during an
event-related finger movement task. We show that all three
wavelet-based methods of multiple hypothesis testing have good
type 1 error control (the FDR method being most conservative) and
generate plausible brain activation maps.
Jalal M. Fadili andEdward T. Bullmore
"Wavelet-based approaches for multiple hypothesis testing in activation mapping of functional magnetic resonance images of the human brain", Proc. SPIE 5207, Wavelets: Applications in Signal and Image Processing X, (13 November 2003); https://doi.org/10.1117/12.503377
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Jalal M. Fadili, Edward T. Bullmore, "Wavelet-based approaches for multiple hypothesis testing in activation mapping of functional magnetic resonance images of the human brain," Proc. SPIE 5207, Wavelets: Applications in Signal and Image Processing X, (13 November 2003); https://doi.org/10.1117/12.503377