Kuang Li-Dan, Lin Qiu-Hua, Gong Xiao-Feng, Cong Fengyu, Calhoun Vince D
School of Information and Communication Engineering, Faculty of Electronic Information and Electrical Engineering, Dalian University of Technology, Dalian 116024, China.
School of Information and Communication Engineering, Faculty of Electronic Information and Electrical Engineering, Dalian University of Technology, Dalian 116024, China.
J Neurosci Methods. 2017 Apr 1;281:49-63. doi: 10.1016/j.jneumeth.2017.01.017. Epub 2017 Feb 16.
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.
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 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.
The proposed approach is suitable for decomposing multi-subject complex-valued fMRI data, and has great potential for capturing additional subject variability.
复值功能磁共振成像(fMRI)数据能够提供仅基于幅值数据之外的更多见解。然而,独立向量分析(IVA)在仅幅值fMRI数据的组分析中展现出巨大潜力,但很少应用于复值fMRI数据。此应用中的主要挑战包括源成分向量(SCV)分布的极高噪声特性和较大变异性。
为应对这些挑战,我们提出一种自适应定点IVA算法,用于分析多受试者复值fMRI数据。我们利用基于多元广义高斯分布(MGGD)的非线性函数来匹配变化的SCV分布,其中MGGD形状参数使用最大似然估计进行估计。为实现去噪目标,我们在主导SCV子空间中更新基于MGGD的非线性,并采用基于IVA估计中相位信息的IVA后去噪策略。我们还将fMRI数据的伪协方差矩阵纳入算法,以强调复值fMRI源的非循环性。
模拟和实验fMRI数据的结果证明了我们方法的有效性。
我们的方法相较于典型的复值IVA算法有显著改进,尤其是在更高噪声水平以及更大空间和时间变化情况下。正如预期的那样,对于任务相关(393%)和默认模式(301%)空间图,所提出的复值IVA算法比仅基于幅值的方法检测到更多连续且合理的激活。
所提出的方法适用于分解多受试者复值fMRI数据,并且在捕捉额外的受试者变异性方面具有巨大潜力。