Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4946884 | Neurocomputing | 2017 | 6 Pages |
Abstract
A novel approach for multi-subject blind source separation (BSS) of brain functional magnetic resonance imaging (fMRI) data is proposed. Group-level comparison analysis is common in the human brain fMRI analysis. Canonical correlation analysis (CCA) for BSS (BSS-CCA) relies on the basis that all meaningful real signals are auto-correlated compared with white noise, which should generally not be considered. By merely requiring that the second-order statistic be zero, BSS-CCA is more relaxed than independent component analysis (ICA), which demands mutual statistics of all orders to be zero. Based on spatial BSS-CCA, we propose an approach termed group BSS-CCA for the analysis of multi-subject fMRI data. In terms of the simulated situation, in which “sources” were partially overlapping in space, we determined that identification using group BSS-CCA was more efficient than that using group ICA. The results from a real data experiment revealed that the proposed group BSS-CCA approach was effective for extracting functional brain networks that were functionally distinct and spatially overlapping from the fMRI data of the human brain.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Wu Xingjie, Zeng Ling-Li, Shen Hui, Li Ming, Hu Yun-an, Hu Dewen,