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Graph theoretical analysis of structural and functional connectivity MRI in normal and pathological brain networks

机译:正常和病理脑网络中结构和功能连接性MRI的图论分析

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Graph theoretical analysis of structural and functional connectivity MRI data (ie. diffusion tractography or cortical volume correlation and resting-state or task-related (effective) fMRI, respectively) has provided new measures of human brain organization in vivo. The most striking discovery is that the whole-brain network exhibits “small-world” properties shared with many other complex systems (social, technological, information, biological). This topology allows a high efficiency at different spatial and temporal scale with a very low wiring and energy cost. Its modular organization also allows for a high level of adaptation. In addition, degree distribution of brain networks demonstrates highly connected hubs that are crucial for the whole-network functioning. Many of these hubs have been identified in regions previously defined as belonging to the default-mode network (potentially explaining the high basal metabolism of this network) and the attentional networks. This could explain the crucial role of these hub regions in physiology (task-related fMRI data) as well as in pathophysiology. Indeed, such topological definition provides a reliable framework for predicting behavioral consequences of focal or multifocal lesions such as stroke, tumors or multiple sclerosis. It also brings new insights into a better understanding of pathophysiology of many neurological or psychiatric diseases affecting specific local or global brain networks such as epilepsy, Alzheimer’s disease or schizophrenia. Graph theoretical analysis of connectivity MRI data provides an outstanding framework to merge anatomical and functional data in order to better understand brain pathologies.
机译:对结构和功能连接性MRI数据进行图论分析(即分别进行扩散束摄影或皮层体积相关性以及与静止状态或任务相关(有效)fMRI),提供了体内人脑组织的新度量。最惊人的发现是,全脑网络具有与许多其他复杂系统(社会,技术,信息,生物)共享的“小世界”属性。这种拓扑结构允许在不同的空间和时间范围内以极低的布线和能源成本实现高效率。它的模块化组织还允许高度适应。此外,大脑网络的度分布显示出高度连接的集线器,这些集线器对于整个网络的功能至关重要。已经在先前定义为属于默认模式网络(可能解释了该网络的高基础代谢)和注意力网络的区域中发现了许多这些中心。这可以解释这些枢纽区域在生理学(与任务相关的功能磁共振成像数据)以及病理生理学中的关键作用。实际上,这种拓扑定义为预测局灶性或多灶性病变(如中风,肿瘤或多发性硬化症)的行为后果提供了可靠的框架。它还为更好地理解影响特定局部或全局大脑网络(例如癫痫,阿尔茨海默氏病或​​精神分裂症)的许多神经或精神疾病的病理生理学提供了新的见解。连接性MRI数据的图论分析提供了一个出色的框架,可以合并解剖学和功能数据,以便更好地了解脑部病理。

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