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ISBI
2004
IEEE

Nonlinear Dimension Reduction of fMRI Data: The Laplacian Embedding Approach

14 years 5 months ago
Nonlinear Dimension Reduction of fMRI Data: The Laplacian Embedding Approach
In this paper, we introduce the use of nonlinear dimension reduction for the analysis of functional neuroimaging datasets. Using a Laplacian Embedding approach, we show the power of this method to detect significant structures within the noisy and complex dynamics of fMRI datasets; it outperforms classical linear techniques in the discrimination of structures of interest. Moreover, it can also be used in a more constrained framework, allowing for an exploration of the manifold of the hemodynamic responses of interest. A solution is proposed for the issue of dimension selection, which is not yet completely satisfactory. However, our studies show the power of the method for data exploration, visualization and understanding.
Olivier D. Faugeras, Bertrand Thirion
Added 20 Nov 2009
Updated 20 Nov 2009
Type Conference
Year 2004
Where ISBI
Authors Olivier D. Faugeras, Bertrand Thirion
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