| Literature DB >> 25476415 |
Jinglei Lv1, Xi Jiang2, Xiang Li2, Dajiang Zhu2, Hanbo Chen2, Tuo Zhang1, Shu Zhang2, Xintao Hu3, Junwei Han3, Heng Huang4, Jing Zhang5, Lei Guo3, Tianming Liu2.
Abstract
There have been several recent studies that used sparse representation for fMRI signal analysis and activation detection based on the assumption that each voxel's fMRI signal is linearly composed of sparse components. Previous studies have employed sparse coding to model functional networks in various modalities and scales. These prior contributions inspired the exploration of whether/how sparse representation can be used to identify functional networks in a voxel-wise way and on the whole brain scale. This paper presents a novel, alternative methodology of identifying multiple functional networks via sparse representation of whole-brain task-based fMRI signals. Our basic idea is that all fMRI signals within the whole brain of one subject are aggregated into a big data matrix, which is then factorized into an over-complete dictionary basis matrix and a reference weight matrix via an effective online dictionary learning algorithm. Our extensive experimental results have shown that this novel methodology can uncover multiple functional networks that can be well characterized and interpreted in spatial, temporal and frequency domains based on current brain science knowledge. Importantly, these well-characterized functional network components are quite reproducible in different brains. In general, our methods offer a novel, effective and unified solution to multiple fMRI data analysis tasks including activation detection, de-activation detection, and functional network identification.Entities:
Keywords: Activation; Connectivity; Intrinsic networks; Task-based fMRI
Mesh:
Year: 2014 PMID: 25476415 DOI: 10.1016/j.media.2014.10.011
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545