Department of Nuclear Medicine, Yonsei University College of Medicine, Seoul, South Korea.
Department of Psychiatry, Yonsei University College of Medicine, Seoul, South Korea.
Front Neural Circuits. 2021 Oct 27;15:719364. doi: 10.3389/fncir.2021.719364. eCollection 2021.
The human brain at rest exhibits intrinsic dynamics transitioning among the multiple metastable states of the inter-regional functional connectivity. Accordingly, the demand for exploring the state-specific functional connectivity increases for a deeper understanding of mental diseases. Functional connectivity, however, lacks information about the directed causal influences among the brain regions, called effective connectivity. This study presents the dynamic causal modeling (DCM) framework to explore the state-dependent effective connectivity using spectral DCM for the resting-state functional MRI (rsfMRI). We established the sequence of brain states using the hidden Markov model with the multivariate autoregressive coefficients of rsfMRI, summarizing the functional connectivity. We decomposed the state-dependent effective connectivity using a parametric empirical Bayes scheme that models the effective connectivity of consecutive windows with the time course of the discrete states as regressors. We showed the plausibility of the state-dependent effective connectivity analysis in a simulation setting. To test the clinical applicability, we applied the proposed method to characterize the state- and subtype-dependent effective connectivity of the default mode network in children with combined-type attention deficit hyperactivity disorder (ADHD-C) compared with age-matched, typically developed children (TDC). All 88 children were subtyped according to the occupation times (i.e., dwell times) of the three dominant functional connectivity states, independently of clinical diagnosis. The state-dependent effective connectivity differences between ADHD-C and TDC according to the subtypes and those between the subtypes of ADHD-C were expressed mainly in self-inhibition, magnifying the importance of excitation inhibition balance in the subtyping. These findings provide a clear motivation for decomposing the state-dependent dynamic effective connectivity and state-dependent analysis of the directed coupling in exploring mental diseases.
静息态下的人脑表现出内在动力学,在区域间功能连接的多个亚稳态之间转换。因此,为了更深入地了解精神疾病,需要探索特定状态下的功能连接。然而,功能连接缺乏关于大脑区域之间有向因果影响的信息,即有效连接。本研究提出了动态因果建模(DCM)框架,使用频谱 DCM 探索静息态功能磁共振成像(rsfMRI)的状态相关有效连接。我们使用 rsfMRI 的多元自回归系数建立了隐马尔可夫模型来确定脑状态序列,对功能连接进行了总结。我们使用参数经验贝叶斯方案对状态相关的有效连接进行了分解,该方案将连续窗口的有效连接建模为离散状态时间历程的回归。我们在模拟环境中展示了状态相关有效连接分析的合理性。为了测试临床适用性,我们将所提出的方法应用于儿童注意力缺陷多动障碍(ADHD-C)与年龄匹配的典型发育儿童(TDC)的默认模式网络的状态和亚型相关的有效连接特征描述。根据三种主要功能连接状态的占据时间(即停留时间),对所有 88 名儿童进行了独立于临床诊断的亚型分类。ADHD-C 与 TDC 之间根据亚型的状态相关有效连接差异,以及 ADHD-C 亚型之间的状态相关有效连接差异,主要表现在自我抑制方面,放大了兴奋抑制平衡在亚分型中的重要性。这些发现为分解状态相关动态有效连接和探索精神疾病的定向耦合状态相关分析提供了明确的动机。