• IEEE Trans Med Imaging · Jan 2008

    Classification of fMRI time series in a low-dimensional subspace with a spatial prior.

    • F G Meyer and X Shen.
    • Department of Electrical Engineering, University of Colorado, Boulder, CO 80309, USA. francois.meyer@colorado.edu
    • IEEE Trans Med Imaging. 2008 Jan 1; 27 (1): 87-98.

    AbstractWe propose a new method for detecting activation in functional magnetic resonance imaging (fMRI) data. We project the fMRI time series on a low-dimensional subspace spanned by wavelet packets in order to create projections that are as non-Gaussian as possible. Our approach achieves two goals: it reduces the dimensionality of the problem by explicitly constructing a sparse approximation to the dataset and it also creates meaningful clusters allowing the separation of the activated regions from the clutter formed by the background time series. We use a mixture of Gaussian densities to model the distribution of the wavelet packet coefficients. We expect activated areas that are connected, and impose a spatial prior in the form of a Markov random field. Our approach was validated with in vivo data and realistic synthetic data, where it outperformed a linear model equipped with the knowledge of the true hemodynamic response.

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