Topological abnormalities of the morphometric similarity network of the cerebral cortex in schizophrenia

精神分裂症(面向对象编程) 神经科学 相似性(几何) 中心性 皮质(解剖学) 神经影像学 心理学 计算机科学 人工智能 数学 精神科 组合数学 图像(数学)
作者
Sung Woo Joo,Young Tak Jo,Woohyeok Choi,Sun Min Kim,So Young Yoo,Soohyun Joe,Jung Sun Lee
标识
DOI:10.1038/s41537-024-00477-x
摘要

Abstract A morphometric similarity (MS) network can be constructed using multiple magnetic resonance imaging parameters of each cortical region. An MS network can be used to assess the similarity between cortical regions. Although MS networks can detect microstructural alterations and capture connections between histologically similar cortical areas, the influence of schizophrenia on the topological characteristics of MS networks remains unclear. We obtained T1- and diffusion-weighted images of 239 healthy controls and 190 individuals with schizophrenia to construct the MS network. Group comparisons of the mean MS of the cortical regions and subnetworks were performed. The strengths of the connections between the cortical regions and the global and nodal network indices were compared between the groups. Clinical associations with the network indices were tested using Spearman’s rho. Compared with healthy controls, individuals with schizophrenia had significant group differences in the mean MS of several cortical regions and subnetworks. Individuals with schizophrenia had both superior and inferior strengths of connections between cortical regions compared with those of healthy controls. We observed regional abnormalities of the MS network in individuals with schizophrenia regarding lower centrality values of the pars opercularis, superior frontal, and superior temporal areas. Specific nodal network measures of the right pars opercularis and left superior temporal areas were associated with illness duration in individuals with schizophrenia. We identified regional abnormalities of the MS network in schizophrenia with the left superior temporal area possibly being a key region in topological organization and cortical connections.
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