Shared and Specific Patterns of Structural Brain Connectivity Across Affective and Psychotic Disorders

精神分裂症(面向对象编程) 重性抑郁障碍 双相情感障碍 心理学 静息状态功能磁共振成像 连接体 白质 神经科学 精神科 功能连接 医学 认知 磁共振成像 放射科
作者
Jonathan Repple,Marius Gruber,Marco Mauritz,Siemon C. de Lange,Nils R. Winter,Nils Opel,Janik Goltermann,Susanne Meinert,Dominik Grotegerd,Elisabeth J. Leehr,Verena Enneking,Tiana Borgers,Melissa Klug,Hannah Lemke,Lena Waltemate,Katharina Thiel,Alexandra Winter,Fabian Breuer,Pascal Grumbach,Hannes Hofmann
出处
期刊:Biological Psychiatry [Elsevier BV]
卷期号:93 (2): 178-186 被引量:33
标识
DOI:10.1016/j.biopsych.2022.05.031
摘要

Altered brain structural connectivity has been implicated in the pathophysiology of psychiatric disorders including schizophrenia (SZ), bipolar disorder (BD), and major depressive disorder (MDD). However, it is unknown which part of these connectivity abnormalities are disorder specific and which are shared across the spectrum of psychotic and affective disorders. We investigated common and distinct brain connectivity alterations in a large sample (N = 1743) of patients with SZ, BD, or MDD and healthy control (HC) subjects.This study examined diffusion-weighted imaging-based structural connectome topology in 720 patients with MDD, 112 patients with BD, 69 patients with SZ, and 842 HC subjects (mean age of all subjects: 35.7 years). Graph theory-based network analysis was used to investigate connectome organization. Machine learning algorithms were trained to classify groups based on their structural connectivity matrices.Groups differed significantly in the network metrics global efficiency, clustering, present edges, and global connectivity strength with a converging pattern of alterations between diagnoses (e.g., efficiency: HC > MDD > BD > SZ, false discovery rate-corrected p = .028). Subnetwork analysis revealed a common core of edges that were affected across all 3 disorders, but also revealed differences between disorders. Machine learning algorithms could not discriminate between disorders but could discriminate each diagnosis from HC. Furthermore, dysconnectivity patterns were found most pronounced in patients with an early disease onset irrespective of diagnosis.We found shared and specific signatures of structural white matter dysconnectivity in SZ, BD, and MDD, leading to commonly reduced network efficiency. These results showed a compromised brain communication across a spectrum of major psychiatric disorders.
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