2018
DOI: 10.1101/242982
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Identifying associations in dense connectomes using structured kernel principal component regression

Abstract: A powerful and computationally efficient multivariate approach is proposed here, called structured kernel principal component regression (sKPCR), for the identification of associations in the voxel-level dense connectome. The method can identify voxel -phenotype associations based on the voxels' whole-brain connectivity pattern, which is applicable to detect linear and non-linear signals for both volume-based and surface-based functional magnetic resonance imaging (fMRI) data. For each voxel, our approach firs… Show more

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