Spectral Dynamic Causal Modelling: A Didactic Introduction and its Relationship with Functional Connectivity

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Leonardo Novelli, Karl Friston, Adeel Razi
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Abstract

Abstract We present a didactic introduction to spectral Dynamic Causal Modelling (DCM), a Bayesian state-space modelling approach used to infer effective connectivity from non-invasive neuroimaging data. Spectral DCM is currently the most widely applied DCM variant for resting-state functional MRI analysis. Our aim is to explain its technical foundations to an audience with limited expertise in state-space modelling and spectral data analysis. Particular attention will be paid to cross-spectral density, which is the most distinctive feature of spectral DCM and is closely related to functional connectivity, as measured by (zero-lag) Pearson correlations. In fact, the model parameters estimated by spectral DCM are those that best reproduce the cross-correlations between all measurements—at all time lags—including the zero-lag correlations that are usually interpreted as functional connectivity. We derive the functional connectivity matrix from the model equations and show how changing a single effective connectivity parameter can affect all pairwise correlations. To complicate matters, the pairs of brain regions showing the largest changes in functional connectivity do not necessarily coincide with those presenting the largest changes in effective connectivity. We discuss the implications and conclude with a comprehensive summary of the assumptions and limitations of spectral DCM.
谱动态因果模型:教学导论及其与功能连通性的关系
摘要:我们介绍了频谱动态因果建模(DCM),这是一种贝叶斯状态空间建模方法,用于从非侵入性神经成像数据中推断有效的连接。频谱DCM是目前应用最广泛的静息状态功能MRI分析DCM变体。我们的目标是向在状态空间建模和光谱数据分析方面专业知识有限的观众解释其技术基础。我们将特别关注交叉频谱密度,这是频谱DCM最显著的特征,与功能连通性密切相关,通过(零滞后)Pearson相关性来测量。事实上,由频谱DCM估计的模型参数是那些最好地再现所有测量之间的相互关联的参数——在所有时间滞后——包括通常被解释为功能连通性的零滞后相关。我们从模型方程中推导出功能连通性矩阵,并展示了改变单个有效连通性参数如何影响所有成对相关性。更复杂的是,在功能连通性方面表现出最大变化的大脑区域对并不一定与在有效连通性方面表现出最大变化的大脑区域对一致。我们讨论了其含义,并对光谱DCM的假设和局限性进行了全面的总结。
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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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