Long Zhiying, Xu Yuanhang, Zou Wenyan, Duan Yongjie, Yao Li
School of Artificial Intelligence, Beijing Normal University, Beijing, 100875 China.
The State Key Laboratory of Cognitive Neuroscience and Learning and IDG/McGovern Institute for Brain Research, Beijing Normal University, Beijing, 100875 China.
Cogn Neurodyn. 2024 Aug;18(4):1651-1669. doi: 10.1007/s11571-023-10039-z. Epub 2023 Dec 1.
Dynamic functional connectivity (DFC) analysis using functional magnetic resonance imaging (fMRI) technology has attracted increasing attention in revealing brain dynamics in recent years. Although the nonnegative matrix factorization (NMF) method was applied to dynamic subgraph analysis to reveal brain dynamics, its application in DFC analysis was largely limited due to its nonnegative constraint on the input data. This study proposed the extended NMF (eNMF) method that allowed the input matrix and decomposed basis matrix to have negative values without altering the NMF algorithm. The eNMF method was applied to DFC analysis of both simulated and real resting fMRI data. The simulated data demonstrated that eNMF successfully decomposed the mixed-sign matrix into one positive matrix and one mixed-sign matrix. In contrast to K-means, eNMF extracted more accurate brain state patterns in all cases and estimated better DFC temporal properties for uneven brain state distribution. The real resting-fMRI data demonstrated that eNMF can provide more temporal measures of DFC and was more sensitive to detect intergroup differences of DFC than K-means. Results of eNMF revealed that the female group possibly showed worse relaxation and produced stronger spontaneous cognitive processes although they tended to spend more time in relaxation state and less time in states relevant to cognitive processes in contrast to the male group.
近年来,使用功能磁共振成像(fMRI)技术进行动态功能连接(DFC)分析在揭示脑动力学方面受到越来越多的关注。尽管非负矩阵分解(NMF)方法被应用于动态子图分析以揭示脑动力学,但其在DFC分析中的应用在很大程度上受到输入数据非负约束的限制。本研究提出了扩展NMF(eNMF)方法,该方法允许输入矩阵和分解后的基矩阵具有负值,而不改变NMF算法。eNMF方法被应用于模拟和真实静息态fMRI数据的DFC分析。模拟数据表明,eNMF成功地将混合符号矩阵分解为一个正矩阵和一个混合符号矩阵。与K均值相比,eNMF在所有情况下都能提取更准确的脑状态模式,并且对于不均匀的脑状态分布能更好地估计DFC时间特性。真实静息态fMRI数据表明,eNMF可以提供更多DFC的时间测量指标,并且在检测DFC的组间差异方面比K均值更敏感。eNMF的结果显示,尽管与男性组相比,女性组倾向于在放松状态花费更多时间,而在与认知过程相关的状态花费更少时间,但女性组可能表现出更差的放松状态并产生更强的自发认知过程。