| Literature DB >> 26646924 |
Bao Ge1,2, Milad Makkie2, Jin Wang3, Shijie Zhao4,2, Xi Jiang2, Xiang Li2, Jinglei Lv4,2, Shu Zhang2, Wei Zhang2, Junwei Han4, Lei Guo4, Tianming Liu5.
Abstract
As the size of brain imaging data such as fMRI grows explosively, it provides us with unprecedented and abundant information about the brain. How to reduce the size of fMRI data but not lose much information becomes a more and more pressing issue. Recent literature studies tried to deal with it by dictionary learning and sparse representation methods, however, their computation complexities are still high, which hampers the wider application of sparse representation method to large scale fMRI datasets. To effectively address this problem, this work proposes to represent resting state fMRI (rs-fMRI) signals of a whole brain via a statistical sampling based sparse representation. First we sampled the whole brain's signals via different sampling methods, then the sampled signals were aggregate into an input data matrix to learn a dictionary, finally this dictionary was used to sparsely represent the whole brain's signals and identify the resting state networks. Comparative experiments demonstrate that the proposed signal sampling framework can speed-up by ten times in reconstructing concurrent brain networks without losing much information. The experiments on the 1000 Functional Connectomes Project further demonstrate its effectiveness and superiority.Entities:
Keywords: DICCCOL; DTI; Resting state fMRI; Resting state networks; Sampling
Mesh:
Year: 2016 PMID: 26646924 PMCID: PMC4899318 DOI: 10.1007/s11682-015-9487-0
Source DB: PubMed Journal: Brain Imaging Behav ISSN: 1931-7557 Impact factor: 3.978