Acar Evrim, Roald Marie, Hossain Khondoker M, Calhoun Vince D, Adali Tülay
Simula Metropolitan Center for Digital Engineering, Oslo, Norway.
Oslo Metropolitan University, Oslo, Norway.
Front Neurosci. 2022 Apr 25;16:861402. doi: 10.3389/fnins.2022.861402. eCollection 2022.
Analysis of time-evolving data is crucial to understand the functioning of dynamic systems such as the brain. For instance, analysis of functional magnetic resonance imaging (fMRI) data collected during a task may reveal spatial regions of interest, and how they evolve during the task. However, capturing underlying spatial patterns as well as their change in time is challenging. The traditional approach in fMRI data analysis is to assume that underlying spatial regions of interest are static. In this article, using fractional amplitude of low-frequency fluctuations (fALFF) as an effective way to summarize the variability in fMRI data collected during a task, we arrange time-evolving fMRI data as a by by tensor, and analyze the tensor using a tensor factorization-based approach called a PARAFAC2 model to reveal spatial dynamics. The PARAFAC2 model jointly analyzes data from multiple time windows revealing subject-mode patterns, evolving spatial regions (also referred to as networks) and temporal patterns. We compare the PARAFAC2 model with matrix factorization-based approaches relying on independent components, namely, joint independent component analysis (ICA) and independent vector analysis (IVA), commonly used in neuroimaging data analysis. We assess the performance of the methods in terms of capturing evolving networks through extensive numerical experiments demonstrating their modeling assumptions. In particular, we show that (i) PARAFAC2 provides a compact representation in all modes, i.e., , and , revealing temporal patterns as well as evolving spatial networks, (ii) joint ICA is as effective as PARAFAC2 in terms of revealing evolving networks but does not reveal temporal patterns, (iii) IVA's performance depends on sample size, data distribution and covariance structure of underlying networks. When these assumptions are satisfied, IVA is as accurate as the other methods, (iv) when subject-mode patterns differ from one time window to another, IVA is the most accurate. Furthermore, we analyze real fMRI data collected during a sensory motor task, and demonstrate that a component indicating statistically significant group difference between patients with schizophrenia and healthy controls is captured, which includes primary and secondary motor regions, cerebellum, and temporal lobe, revealing a meaningful spatial map and its temporal change.
对随时间演变的数据进行分析对于理解诸如大脑等动态系统的功能至关重要。例如,对任务期间收集的功能磁共振成像(fMRI)数据进行分析可能会揭示感兴趣的空间区域,以及它们在任务过程中的演变情况。然而,捕捉潜在的空间模式及其随时间的变化具有挑战性。fMRI数据分析的传统方法是假设潜在的感兴趣空间区域是静态的。在本文中,我们使用低频波动分数幅度(fALFF)作为总结任务期间收集的fMRI数据变异性的有效方法,将随时间演变的fMRI数据排列为一个 × × 张量,并使用一种基于张量分解的方法(称为PARAFAC2模型)来分析该张量,以揭示空间动态。PARAFAC2模型联合分析来自多个时间窗口的数据,揭示主体模式模式、不断演变的空间区域(也称为网络)和时间模式。我们将PARAFAC2模型与基于矩阵分解的方法进行比较,这些方法依赖于独立成分,即联合独立成分分析(ICA)和独立向量分析(IVA),它们常用于神经成像数据分析。我们通过广泛的数值实验评估这些方法在捕捉不断演变的网络方面的性能,以证明它们的建模假设。特别是,我们表明:(i)PARAFAC2在所有模式(即 、 和 )中都提供了紧凑的表示,揭示了时间模式以及不断演变的空间网络;(ii)联合ICA在揭示不断演变的网络方面与PARAFAC2一样有效,但没有揭示时间模式;(iii)IVA的性能取决于样本大小、数据分布和潜在网络的协方差结构。当这些假设得到满足时,IVA与其他方法一样准确;(iv)当主体模式模式在不同时间窗口之间不同时,IVA是最准确的。此外,我们分析了在感觉运动任务期间收集的真实fMRI数据,并证明捕捉到了一个表明精神分裂症患者与健康对照之间具有统计学显著组间差异的成分,该成分包括初级和次级运动区域、小脑和颞叶,揭示了一个有意义的空间图谱及其时间变化。