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精神分裂症中被破坏的小世界网络。

Disrupted small-world networks in schizophrenia.

作者信息

Liu Yong, Liang Meng, Zhou Yuan, He Yong, Hao Yihui, Song Ming, Yu Chunshui, Liu Haihong, Liu Zhening, Jiang Tianzi

机构信息

National Laboratory of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, Beijing 100080, China.

出版信息

Brain. 2008 Apr;131(Pt 4):945-61. doi: 10.1093/brain/awn018. Epub 2008 Feb 25.

Abstract

The human brain has been described as a large, sparse, complex network characterized by efficient small-world properties, which assure that the brain generates and integrates information with high efficiency. Many previous neuroimaging studies have provided consistent evidence of 'dysfunctional connectivity' among the brain regions in schizophrenia; however, little is known about whether or not this dysfunctional connectivity causes disruption of the topological properties of brain functional networks. To this end, we investigated the topological properties of human brain functional networks derived from resting-state functional magnetic resonance imaging (fMRI). Data was obtained from 31 schizophrenia patients and 31 healthy subjects; then functional connectivity between 90 cortical and sub-cortical regions was estimated by partial correlation analysis and thresholded to construct a set of undirected graphs. Our findings demonstrated that the brain functional networks had efficient small-world properties in the healthy subjects; whereas these properties were disrupted in the patients with schizophrenia. Brain functional networks have efficient small-world properties which support efficient parallel information transfer at a relatively low cost. More importantly, in patients with schizophrenia the small-world topological properties are significantly altered in many brain regions in the prefrontal, parietal and temporal lobes. These findings are consistent with a hypothesis of dysfunctional integration of the brain in this illness. Specifically, we found that these altered topological measurements correlate with illness duration in schizophrenia. Detection and estimation of these alterations could prove helpful for understanding the pathophysiological mechanism as well as for evaluation of the severity of schizophrenia.

摘要

人类大脑被描述为一个庞大、稀疏且复杂的网络,其具有高效的小世界特性,这确保大脑能够高效地生成和整合信息。许多先前的神经影像学研究一致证明了精神分裂症患者大脑区域之间存在“功能连接障碍”;然而,对于这种功能连接障碍是否会导致脑功能网络拓扑特性的破坏却知之甚少。为此,我们研究了源自静息态功能磁共振成像(fMRI)的人类脑功能网络的拓扑特性。数据来自31名精神分裂症患者和31名健康受试者;然后通过偏相关分析估计90个皮质和皮质下区域之间的功能连接,并进行阈值处理以构建一组无向图。我们的研究结果表明,健康受试者的脑功能网络具有高效的小世界特性;而精神分裂症患者的这些特性则遭到破坏。脑功能网络具有高效的小世界特性,这支持以相对较低的成本进行高效的并行信息传递。更重要的是,在精神分裂症患者中,前额叶、顶叶和颞叶的许多脑区的小世界拓扑特性发生了显著改变。这些发现与该疾病中大脑功能整合障碍的假设一致。具体而言,我们发现这些改变的拓扑测量值与精神分裂症的病程相关。检测和估计这些改变可能有助于理解病理生理机制以及评估精神分裂症的严重程度。

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