神经科学
精神分裂症(面向对象编程)
神经影像学
丘脑
大脑定位
功能集成
心理学
神经功能成像
功能连接
精神病
生物
听觉皮层
神经网络
脑图谱
听觉感知
幻听
功能磁共振成像
生物神经网络
神经递质
作者
Ziyang Gao,Hui Sun,Fei Zhu,Su Lui,Qiannan Zhao,Wei Yu,Melissa P. DelBello,Yuan Xiao,Qiyong Gong,Su Lui
标识
DOI:10.1038/s41398-025-03748-y
摘要
Convergent phenomenological and neuroimaging evidence support that the dysregulated segregation and integration between brain networks have been implicated in the neural mechanism of auditory verbal hallucination (AVH) in schizophrenia. Nevertheless, the macroscale topographical alterations of functional networks in patients with AVH remain elusive. Cortical gradient mapping provides a novel approach to characterize the distribution pattern of functional organization in a multidimensional connectivity space. Here, leveraging resting-state functional MRI data from 104 first-episode drug-naïve schizophrenia (64 with AVH, 40 without AVH) and 90 matched healthy controls (HC), we extracted intrinsic connectivity gradients and measured the range of each gradient, manifold eccentricity, global, within- and between-network dispersions in a three-dimensional gradient space to characterize the topographical structure of the brain. We then combined publicly available genetic and neurotransmitter distribution data to further unveil the potential molecular basis underlying the AVH-related topographical changes. Our analysis revealed a degradation of the principal unimodal-to-transmodal gradient in patients with AVH compared with those without AVH and HC, as well as the reduced 3D manifold dispersion, especially between high-order transmodal networks. The disrupted topographic pattern related to AVH was linked with expression maps of specific genes enriched for synaptic development and signaling and aligned with the distribution of the noradrenaline and acetylcholine systems. Our work depicts the comprehensive landscape of topographic abnormalities in AVH, underscoring the vital role of disrupted cortical hierarchy and network integration in its pathophysiology.
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