Sleep and NeuroImaging Center, Faculty of Psychology, Southwest University, Chongqing, 400715, China.
Key Laboratory of Cognition and Personality, Ministry of Education, Faculty of Psychology, Southwest University, Chongqing, 400715, China.
Brain Struct Funct. 2024 Jul;229(6):1433-1445. doi: 10.1007/s00429-024-02809-0. Epub 2024 May 27.
Previous studies on structural covariance network (SCN) suggested that patients with insomnia disorder (ID) show abnormal structural connectivity, primarily affecting the somatomotor network (SMN) and default mode network (DMN). However, evaluating a single structural index in SCN can only reveal direct covariance relationship between two brain regions, failing to uncover synergistic changes in multiple structural features. To cover this research gap, the present study utilized novel morphometric similarity networks (MSN) to examine the morphometric similarity between cortical areas in terms of multiple sMRI parameters measured at each area. With seven T1-weighted imaging morphometric features from the Desikan-Killiany atlas, individual MSN was constructed for patients with ID (N = 87) and healthy control groups (HCs, N = 84). Two-sample t-test revealed differences in MSN between patients with ID and HCs. Correlation analyses examined associations between MSNs and sleep quality, insomnia symptom severity, and depressive symptoms severity in patients with ID. The right paracentral lobule (PCL) exhibited decreased morphometric similarity in patients with ID compared to HCs, mainly manifested by its de-differentiation (meaning loss of distinctiveness) with the SMN, DMN, and ventral attention network (VAN), as well as its decoupling with the visual network (VN). Greater PCL-based de-differentiation correlated with less severe insomnia and fewer depressive symptoms in the patients group. Additionally, patients with less depressive symptoms showed greater PCL de-differentiation from the SMN. As an important pilot step in revealing the underlying morphometric similarity alterations in insomnia disorder, the present study identified the right PCL as a hub region that is de-differentiated with other high-order networks. Our study also revealed that MSN has an important potential to capture clinical significance related to insomnia disorder.
先前关于结构协变网络(SCN)的研究表明,失眠障碍(ID)患者表现出异常的结构连接,主要影响躯体运动网络(SMN)和默认模式网络(DMN)。然而,评估 SCN 中的单个结构指标只能揭示两个脑区之间的直接协变关系,无法揭示多个结构特征的协同变化。为了弥补这一研究空白,本研究利用新颖的形态相似网络(MSN),根据每个脑区测量的多个 sMRI 参数,检查皮质区之间的形态相似性。对于 ID 患者(N=87)和健康对照组(HCs,N=84),从 Desikan-Killiany 图谱中提取了七个 T1 加权成像形态学特征,构建了个体 MSN。两样本 t 检验显示 ID 患者和 HCs 之间的 MSN 存在差异。相关性分析检查了 ID 患者的 MSNs 与睡眠质量、失眠症状严重程度和抑郁症状严重程度之间的关联。与 HCs 相比,ID 患者的右侧中央旁小叶(PCL)表现出形态相似性降低,主要表现为其与 SMN、DMN 和腹侧注意网络(VAN)的去分化(即失去独特性),以及与视觉网络(VN)的解耦。更大的 PCL 基于去分化与患者组中更轻的失眠和更少的抑郁症状相关。此外,抑郁症状较轻的患者表现出 PCL 与 SMN 的去分化程度更大。作为揭示失眠障碍潜在形态相似性改变的重要初步步骤,本研究确定右侧 PCL 是一个与其他高阶网络去分化的枢纽区域。我们的研究还表明,MSN 具有捕捉与失眠障碍相关的临床意义的重要潜力。