EiDA: A lossless approach for dynamic functional connectivity; application to fMRI data of a model of ageing

Giuseppe de Alteriis, Eilidh MacNicol, Fran Hancock, Alessandro Ciaramella, Diana Cash, P. Expert, Federico E. Turkheimer
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Abstract

Abstract Dynamic Functional Connectivity (dFC) is the study of the dynamic patterns of interaction that characterise brain function. Numerous numerical methods are available to compute and analyse dFC from high-dimensional data. In fMRI, a number of them rely on the computation of the instantaneous Phase Alignment (iPA) matrix (also known as instantaneous Phase Locking). Their limitations are the high computational cost and the concomitant need to introduce approximations with ensuing information loss. Here, we introduce the analytical decomposition of the iPA. This has two advantages. Firstly, we achieve an up to 1000-fold reduction in computing time without information loss. Secondly, we can formally introduce two alternative approaches to the analysis of the resulting time-varying instantaneous connectivity patterns, Discrete and Continuous EiDA (Eigenvector Dynamic Analysis), and a related set of metrics to quantify the total amount of instantaneous connectivity, drawn from dynamical systems and information theory. We applied EiDA to a dataset from 48 rats that underwent functional magnetic resonance imaging (fMRI) at four stages during a longitudinal study of ageing. Using EiDA, we found that the metrics we introduce provided robust markers of ageing with decreases in total connectivity and metastability, and an increase in informational complexity over the life span. This suggests that ageing reduces the available functional repertoire that is postulated to support cognitive functions and overt behaviours, slows down the exploration of this reduced repertoire, and decreases the coherence of its structure. In summary, EiDA is a method to extract lossless connectivity information that requires significantly less computational time, and provides robust and analytically principled metrics for brain dynamics. These metrics are interpretable and promising for studies on neurodevelopmental and neurodegenerative disorders.
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EiDA:动态功能连接的无损方法;应用于老龄化模型的 fMRI 数据
摘要 动态功能连接(dFC)是对大脑功能的动态交互模式的研究。有许多数值方法可用于计算和分析高维数据中的 dFC。在 fMRI 中,许多方法都依赖于计算瞬时相位对齐(iPA)矩阵(也称为瞬时相位锁定)。其局限性在于计算成本高,同时需要引入近似值,从而造成信息损失。在这里,我们介绍 iPA 的分析分解。这有两个优点。首先,我们在不损失信息的情况下将计算时间减少了 1000 倍。其次,我们可以正式引入两种方法来分析由此产生的时变瞬时连接模式,即离散和连续 EiDA(特征向量动态分析),以及从动态系统和信息论中提取的量化瞬时连接总量的相关指标集。我们将 EiDA 应用于 48 只大鼠的数据集,这些大鼠在老化纵向研究的四个阶段接受了功能磁共振成像(fMRI)。通过使用 EiDA,我们发现我们引入的度量指标提供了稳健的老化标记,总连通性和易变性下降,而信息复杂性随着寿命的延长而增加。这表明,衰老减少了用于支持认知功能和公开行为的可用功能库,减缓了对这一减少的功能库的探索,并降低了其结构的一致性。总之,EiDA 是一种提取无损连接信息的方法,它所需的计算时间大大减少,并能为大脑动态提供稳健的分析原理度量。这些指标具有可解释性,有望用于神经发育和神经退行性疾病的研究。
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