Journal article
Shared and subject-specific dictionary learning (ShSSDL) algorithm for multisubject fMRI data analysis
A Iqbal, AK Seghouane, T Adali
IEEE Transactions on Biomedical Engineering | IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC | Published : 2018
Abstract
Objective: Analysis of functional magnetic resonance imaging (fMRI) data from multiple subjects is at the heart of many medical imaging studies, and approaches based on dictionary learning (DL) are recently noted as promising solutions to the problem. However, the DL-based methods for fMRI analysis proposed to date do not naturally extend to multisubject analysis. In this paper, we propose a DL algorithm for multisubject fMRI data analysis. Methods: The proposed algorithm [named shared and subject-specific dictionary learning (ShSSDL)] is derived based on a temporal concatenation, which is particularly attractive for the analysis of multisubject task-related fMRI datasets. It differs from ex..
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Awarded by National Science Foundation
Funding Acknowledgements
The work of A. K. Seghouane and A. Iqbal was supported by the Australian Research Council under Grant FT 130101394, and the work of T. Adali was supported by the National Science Foundation under Grant NSF-NCS-FO 1631838 and Grant NSF-CCF 1618551.