Center for Evolutionary Cognitive Sciences, Graduate School of Art and Sciences, The University of Tokyo, Tokyo, Japan.
Department of Neuropsychiatry, Graduate School of Wakayama Medical University, Wakayama, Japan.
Schizophr Bull. 2023 Jul 4;49(4):933-943. doi: 10.1093/schbul/sbad022.
Dynamics of the distributed sets of functionally synchronized brain regions, known as large-scale networks, are essential for the emotional state and cognitive processes. However, few studies were performed to elucidate the aberrant dynamics across the large-scale networks across multiple psychiatric disorders. In this paper, we aimed to investigate dynamic aspects of the aberrancy of the causal connections among the large-scale networks of the multiple psychiatric disorders.
We applied dynamic causal modeling (DCM) to the large-sample multi-site dataset with 739 participants from 4 imaging sites including 4 different groups, healthy controls, schizophrenia (SCZ), major depressive disorder (MDD), and bipolar disorder (BD), to compare the causal relationships among the large-scale networks, including visual network, somatomotor network (SMN), dorsal attention network (DAN), salience network (SAN), limbic network (LIN), frontoparietal network, and default mode network.
DCM showed that the decreased self-inhibitory connection of LIN was the common aberrant connection pattern across psychiatry disorders. Furthermore, increased causal connections from LIN to multiple networks, aberrant self-inhibitory connections of DAN and SMN, and increased self-inhibitory connection of SAN were disorder-specific patterns for SCZ, MDD, and BD, respectively.
DCM revealed that LIN was the core abnormal network common to psychiatric disorders. Furthermore, DCM showed disorder-specific abnormal patterns of causal connections across the 7 networks. Our findings suggested that aberrant dynamics among the large-scale networks could be a key biomarker for these transdiagnostic psychiatric disorders.
功能同步的脑区分布式集合,即大规模网络的动力学,对情绪状态和认知过程至关重要。然而,很少有研究阐明多种精神障碍的大规模网络之间的异常动力学。在本文中,我们旨在研究多种精神障碍的大规模网络之间的因果关系异常的动态方面。
我们应用动态因果建模(DCM)对来自 4 个成像站点的 739 名参与者的大样本多站点数据集进行分析,包括 4 个不同的组,即健康对照组、精神分裂症(SCZ)、重度抑郁症(MDD)和双相情感障碍(BD),以比较大规模网络之间的因果关系,包括视觉网络、躯体运动网络(SMN)、背侧注意网络(DAN)、突显网络(SAN)、边缘网络(LIN)、额顶网络和默认模式网络。
DCM 显示,LIN 的自抑制连接减少是精神障碍共有的异常连接模式。此外,LIN 对多个网络的因果连接增加、DAN 和 SMN 的异常自抑制连接以及 SAN 的自抑制连接增加,分别是 SCZ、MDD 和 BD 的特异性障碍模式。
DCM 表明 LIN 是精神障碍的核心异常网络。此外,DCM 显示了 7 个网络之间的因果连接存在特定障碍的异常模式。我们的研究结果表明,大规模网络之间的异常动力学可能是这些跨诊断精神障碍的关键生物标志物。