State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing, China.
Curr Opin Neurol. 2010 Aug;23(4):341-50. doi: 10.1097/WCO.0b013e32833aa567.
In recent years, there has been an explosion of studies on network modeling of brain connectivity. This review will focus mainly on recent findings concerning graph theoretical analysis of human brain networks with a variety of imaging modalities, including structural MRI, diffusion MRI, functional MRI, and EEG/MEG.
Recent studies have utilized graph theoretical approaches to investigate the organizational principles of brain networks. These studies have consistently shown many important statistical properties underlying the topological organization of the human brain, including modularity, small-worldness, and the existence of highly connected network hubs. Importantly, these quantifiable network properties were found to change during normal development, aging, and various neurological and neuropsychiatric diseases such as Alzheimer's disease and schizophrenia. Moreover, several studies have also suggested that these network properties correlate with behavioral and genetic factors.
The exciting research regarding graph theoretical analysis of brain connectivity yields truly integrative and comprehensive descriptions of the structural and functional organization of the human brain, which provides important implications for health and disease. Future research will most likely involve integrative models of brain structural and functional connectivity with multimodal neuroimaging data, exploring whether graph-based brain network analysis could yield reliable biomarkers for disease diagnosis and treatment.
近年来,关于脑连接网络建模的研究呈爆炸式增长。本综述将主要关注近年来关于使用各种成像模式(包括结构磁共振成像、弥散磁共振成像、功能磁共振成像和 EEG/MEG)对人脑网络进行图论分析的研究发现。
最近的研究利用图论方法来研究脑网络的组织原则。这些研究一致表明,人类大脑拓扑组织存在许多重要的统计性质,包括模块性、小世界性和高度连接的网络枢纽的存在。重要的是,这些可量化的网络特性在正常发育、衰老以及阿尔茨海默病和精神分裂症等各种神经和神经精神疾病中发生变化。此外,一些研究还表明,这些网络特性与行为和遗传因素相关。
关于脑连接图论分析的令人兴奋的研究为人类大脑的结构和功能组织提供了真正综合和全面的描述,这对健康和疾病具有重要意义。未来的研究很可能涉及脑结构和功能连接的综合模型与多模态神经影像学数据,探索基于图的脑网络分析是否可以为疾病诊断和治疗提供可靠的生物标志物。