Zhang Shu, Li Xiang, Lv Jinglei, Jiang Xi, Zhu Dajiang, Chen Hanbo, Zhang Tuo, Guo Lei, Liu Tianming
Department of Computer Science and Bioimaging Research Center, The University of Georgia, Athens, GA, USA.
School of Automation, Northwestern Polytechnical University, Xi'an, China.
Med Image Comput Comput Assist Interv. 2013;16(Pt 3):626-34. doi: 10.1007/978-3-642-40760-4_78.
Traditional task-based fMRI activation detection methods, e.g., the widely used general linear model (GLM), assume that the brain's hemodynamic responses follow the block-based or event-related stimulus paradigm. Typically, these activation detections are performed voxel-wise independently, and then are usually followed by statistical corrections. Despite remarkable successes and wide adoption of these methods, it remains largely unknown how functional brain regions interact with each other within specific networks during task performance blocks and in the baseline. In this paper, we present a novel algorithmic pipeline to statistically infer and sparsely represent higher-order functional interaction patterns within the working memory network during task performance and in the baseline. Specifically, a collection of higher-order interactions are inferred via the greedy equivalence search (GES) algorithm for both task and baseline blocks. In the next stage, an effective online dictionary learning algorithm is utilized for sparse representation of the inferred higher-order interaction patterns. Application of this framework on a working memory task-based fMRI data reveals interesting and meaningful distributions of the learned sparse dictionary atoms in task and baseline blocks. In comparison with traditional voxel-wise activation detection and recent pair-wise functional connectivity analysis, our framework offers a new methodology for representation and exploration of higher-order functional activities in the brain.
传统的基于任务的功能磁共振成像(fMRI)激活检测方法,例如广泛使用的一般线性模型(GLM),假定大脑的血液动力学反应遵循基于组块或事件相关的刺激范式。通常,这些激活检测是逐体素独立进行的,然后通常会进行统计校正。尽管这些方法取得了显著成功并被广泛采用,但在任务执行阶段和基线状态下,特定网络内的功能性脑区如何相互作用在很大程度上仍然未知。在本文中,我们提出了一种新颖的算法流程,用于在任务执行和基线状态下,对工作记忆网络内的高阶功能交互模式进行统计推断和稀疏表示。具体而言,通过贪婪等价搜索(GES)算法推断任务和基线组块的高阶交互集合。在接下来的阶段,利用一种有效的在线字典学习算法对推断出的高阶交互模式进行稀疏表示。将此框架应用于基于工作记忆任务的fMRI数据,揭示了在任务和基线组块中学习到的稀疏字典原子的有趣且有意义的分布。与传统的逐体素激活检测和最近的成对功能连接分析相比,我们的框架为大脑中高阶功能活动的表示和探索提供了一种新方法。