个人信息Personal Information
教授
博士生导师
硕士生导师
性别:女
毕业院校:大连理工大学
学位:博士
所在单位:信息与通信工程学院
学科:信号与信息处理
联系方式:84706002-3326; 84706697
电子邮箱:qhlin@dlut.edu.cn
Adaptive independent vector analysis for multi-subject complex-valued fMRI data
点击次数:
论文类型:期刊论文
发表时间:2017-04-01
发表刊物:JOURNAL OF NEUROSCIENCE METHODS
收录刊物:SCIE、PubMed、Scopus
卷号:281
页面范围:49-63
ISSN号:0165-0270
关键字:Independent vector analysis (IVA); Complex-valued fMRI data; MGGD; Shape parameter; Subspace de-noising; Post-IVA phase de-noising; Noncircularity
摘要:Background: Complex-valued fMRI data can provide additional insights beyond magnitude-only data. However, independent vector analysis (IVA), which has exhibited great potential for group analysis of magnitude-only fMRI data, has rarely been applied to complex-valued fMRI data. The main challenges in this application include the extremely noisy nature and large variability of the source component vector (SCV) distribution.
New method: To address these challenges, we propose an adaptive fixed-point IVA algorithm for analyzing multiple-subject complex-valued fMRI data. We exploited a multivariate generalized Gaussian distribution (MGGD)-based nonlinear function to match varying SCV distributions in which the MGGD shape parameter was estimated using maximum likelihood estimation. To achieve our de-noising goal, we updated the MGGD-based nonlinearity in the dominant SCV subspace, and employed a post-IVA de-noising strategy based on phase information in the IVA estimates. We also incorporated the pseudo covariance matrix of fMRI data into the algorithm to emphasize the noncircularity of complex-valued fMRI sources.
Results: Results from simulated and experimental fMRI data demonstrated the efficacy of our method. Comparison with existing method(s): Our approach exhibited significant improvements over typical complex-valued IVA algorithms, especially during higher noise levels and larger spatial and temporal changes. As expected, the proposed complex-valued IVA algorithm detected more contiguous and reasonable activations than the magnitude-only method for task-related (393%) and default mode (301%) spatial maps.
Conclusions: The proposed approach is suitable for decomposing multi-subject complex-valued fMRI data, and has great potential for capturing additional subject variability. (C) 2017 Elsevier B.V. All rights reserved.