Medical Imaging Center, First Affiliated Hospital of Jinan University, Guangzhou 510630, China; Department of Radiology, Six Affiliated Hospital of Sun Yat-sen University, Guangzhou 510655, China.
Department of Applied Psychology, Guangdong University of Foreign Studies, Guangzhou 510006, China.
J Affect Disord. 2021 Sep 1;292:9-20. doi: 10.1016/j.jad.2021.05.052. Epub 2021 May 27.
Bipolar disorder (BD) has been linked to abnormalities in the communication and gray matter volume (GMV) of large-scale brain networks, as reflected by impaired resting-state functional connectivity (rs-FC) and aberrant voxel-based morphometry (VBM). However, identifying patterns of large-scale network abnormality in BD has been elusive.
Whole-brain seed-based rs-FC and VBM studies comparing individuals with BD and healthy controls (HCs) were retrieved from multiple databases. Multilevel kernel density analysis was used to identify brain networks in which BD was linked to hyper-connectivity or hypo-connectivity with each prior network and the overlap between dysconnectivity and GMV changes.
Thirty-six seed-based rs-FC publications (1526 individuals with BD and 1578 HCs) and 70 VBM publications (2715 BD and 3044 HCs) were included in the meta-analysis. Our results showed that BD was characterized by hypo-connectivity within the default network (DN), hyper-connectivity within the affective network (AN), and ventral attention network (VAN) and hypo- and hyper-connectivity within the frontoparietal network (FN). Hyper-connectivity between-network of AN-DN, AN-FN, AN-VAN, AN-thalamus network (TN), VAN-TN, VAN-DN, VAN-FN, and TN-sensorimotor network were found. Hypo-connectivity between-network of FN and DN was observed. Decreased GMV was found in the insula, inferior frontal gyrus, and anterior cingulate cortex.
Differential weights in the number of included studies and sample size of FC and VBM might have a disproportionate influence on the meta-analytic results.
These results suggest that BD is characterized by both structural and functional abnormalities of large-scale neurocognitive networks, especially in the DN, AN, VAN, FN, and TN.
躁郁症 (BD) 与大尺度脑网络的通讯和灰质体积 (GMV) 异常有关,表现为静息态功能连接 (rs-FC) 受损和体素形态测量学 (VBM) 异常。然而,识别 BD 中大尺度网络异常的模式一直难以捉摸。
从多个数据库中检索比较 BD 患者和健康对照 (HC) 的全脑种子 rs-FC 和 VBM 研究。采用多层次核密度分析来识别与每个先验网络以及连接中断和 GMV 变化之间重叠的 BD 相关的超连接或低连接的脑网络。
36 项基于种子的 rs-FC 研究出版物(1526 名 BD 患者和 1578 名 HCs)和 70 项 VBM 研究出版物(2715 名 BD 患者和 3044 名 HCs)被纳入荟萃分析。我们的结果表明,BD 的特征是默认网络 (DN) 内的低连接性、情感网络 (AN) 内的高连接性、腹侧注意网络 (VAN) 和额顶网络 (FN) 内的低连接性和高连接性。还发现了 AN-DN、AN-FN、AN-VAN、AN-丘脑网络 (TN)、VAN-TN、VAN-DN、VAN-FN 和 TN-感觉运动网络之间的高连接性。观察到 FN 和 DN 之间的低连接性。发现脑岛、额下回和前扣带回皮质的 GMV 减少。
FC 和 VBM 的纳入研究数量和样本大小的差异权重可能对荟萃分析结果产生不成比例的影响。
这些结果表明,BD 的特征是大尺度神经认知网络的结构和功能异常,特别是在 DN、AN、VAN、FN 和 TN 中。