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A probabilistic approach to discovering dynamic full-brain functional connectivity patterns

机译:一种发现动态全脑功能连通模式的概率方法

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摘要

Recent research shows that the covariance structure of functional magnetic resonance imaging (fMRI) data - commonly described as functional connectivity - can change as a function of the participant's cognitive state (for review see Turk-Browne, 2013). Here we present a Bayesian hierarchical matrix factorization model, termed hierarchical topographic factor analysis (HTFA), for efficiently discovering full-brain networks in large multi-subject neuroimaging datasets. HTFA approximates each subject's network by first re-representing each brain image in terms of the activities of a set of localized nodes, and then computing the covariance of the activity time series of these nodes. The number of nodes, along with their locations, sizes, and activities (over time) are learned from the data. Because the number of nodes is typically substantially smaller than the number of fMRI voxels, HTFA can be orders of magnitude more efficient than traditional voxel-based functional connectivity approaches. In one case study, we show that HTFA recovers the known connectivity patterns underlying a collection of synthetic datasets. In a second case study, we illustrate how HTFA may be used to discover dynamic full-brain activity and connectivity patterns in real fMRI data, collected as participants listened to a story. In a third case study, we carried out a similar series of analyses on fMRI data collected as participants viewed an episode of a television show. In these latter case studies, we found that the HTFA-derived activity and connectivity patterns can be used to reliably decode which moments in the story or show the participants were experiencing. Further, we found that these two classes of patterns contained partially non-overlapping information, such that decoders trained on combinations of activity-based and dynamic connectivity-based features performed better than decoders trained on activity or connectivity patterns alone. We replicated this latter result with two additional (previously developed) methods for efficiently characterizing full-brain activity and connectivity patterns.
机译:最近的研究表明,功能性磁共振成像(FMRI)数据的协方差结构 - 通常被描述为功能连接 - 可以随着参与者的认知状态的函数而变化(用于审查Turk-Browne,2013)。在这里,我们提出了一种贝叶斯分层矩阵分解模型,称为分层地形因子分析(HTFA),用于有效地发现大型多主题神经影像数据集中的全脑网络。 HTFA在一组局部节点的活动方面首先重新表示每个脑图像,然后计算这些节点的活动时间序列的协方差,通过首先重新表示每个脑图像来近似每个受试者的网络。节点的数量以及它们的位置,大小和活动(随时间)来自数据。因为节点的数量通常基本上小于FMRI体素的数量,所以HTFA可以是比传统的基于体素的功能连接方法更有效的数量级。在一个案例中,我们表明HTFA恢复了合成数据集集合的已知连接模式。在第二个案例研究中,我们说明了如何使用HTFA在真正的FMRI数据中发现动态全大脑活动和连接模式,因为参与者听到故事。在第三种案例研究中,我们对收集的FMRI数据进行了类似的一系列分析,因为参与者观看了电视节目的集。在这些后期的研究中,我们发现HTFA衍生的活动和连接模式可用于可靠地解码故事中的哪些时刻或显示参与者正在经历。此外,我们发现这两种类别的模式包含了部分不重叠的信息,使得对基于活动的基于动态连接的特征的组合培训的解码器比仅在活动或连接模式上训练的解码器更好地执行。我们通过两种附加(以前开发的)方法复制了后一种结果,用于有效地表征全脑活动和连接模式。

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