使用中心性测量方法识别人类大脑中心(省和连接器)

R. GeethaRamani, K. Sivaselvi
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引用次数: 11

摘要

人类大脑可以通过神经图像进行研究和分析,如MRI(磁共振成像)/ fMRI(功能磁共振成像)/ PET(正电子发射断层扫描)/ EEG(脑电图)/ MEG(脑磁图),从中揭示隐藏的信息。连接体是一种表示复杂大脑网络连接的图状结构,主要有结构连接和功能连接两种。连通性可以是大脑的解剖和功能特性。在结构连接体和功能连接体中,节点是体素或感兴趣的区域,而边缘是纤维束,是区域之间的时间相关性。本研究的重点是利用图像处理和图理论方法,对通过RS- fMRI图像获得的脑网络进行功能连接分析,以识别人脑中的重要区域。从1000个功能连接体项目中获得RS-fMRI图像,并使用图像处理技术进行预处理。然后利用AAL(Automated anatomy Labeling)图谱对图像进行分割,得到二值矩阵。该图是由派生的矩阵构造的,该矩阵显示了roi(感兴趣区域)之间的功能连接。使用各种中心性度量(度中心性、特征向量中心性、中间中心性和接近中心性)来识别充当省级和/或连接器中心的roi。突出的省级枢纽是罗兰盖、丘脑、岛、海马体、嗅觉和连接枢纽是岛、壳核、枕上回、顶叶上回和边缘上回。这项工作突出了人类大脑中参与网络内大量通信和信息流的关键区域。
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Human brain hubs(provincial and connector) identification using centrality measures
Human Brain can be studied and analysed using neuroimages viz. MRI(Magnetic Resonance Imaging) / fMRI(Functional Magnetic Resonance Imaging) / PET(Positron Emission Tomography) / EEG(Electroencephalography) / MEG(Magnetoencephalography), which brings out the hidden information from it. Connectomes are graph like structure which represents complex brain network connectivity which are of two type's mainly structural connectivity and functional connectivity. Connectivity can be anatomical and functional properties of the brain. Nodes are voxels or Regions of Interest whereas edges are fibre bundles, temporal correlation between regions, in structural connectome and functional connectome respectively. This work focuses on functional connectivity analysis of brain network obtained through RS- fMRI images for identification of important regions in the human brain using image processing and graph theoretical approaches. The RS-fMRI images are obtained from 1000 Functional connectomes project and preprocessed using image processing techniques. Then the image is parcellated using AAL(Automated Anatomical Labeling) atlas and binary matrix is obtained. The graph is constructed from the derived matrix that exhibits functional connectivity between ROIs(Region of Interest). The various centrality measures (degree centrality, eigenvector centrality, betweenness centrality and closeness centrality) are used to identify the ROIs that act as provincial and/or connector hubs. The prominent provincial hubs are Rolandic Operculum, Thalamus, Insula, Hippocampus, Olfactory and connector hubs are Insula, Putamen, Occipital superior gyrus, Parietal Superior gyrus and Supramarginal gyrus. This work highlights the key regions in human brain which is involved in massive communication and information flow within the network.
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