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首页> 外文期刊>NeuroImage >Hundreds of brain maps in one atlas: Registering coordinate-independent primate neuro-anatomical data to a standard brain
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Hundreds of brain maps in one atlas: Registering coordinate-independent primate neuro-anatomical data to a standard brain

机译:一本地图集中的数百张大脑图:将不依赖坐标的灵长类动物神经解剖数据注册到标准大脑

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摘要

Non-invasive measuring methods such as EEG/MEG, fMRI and DTI are increasingly utilised to extract quantitative information on functional and anatomical connectivity in the human brain. These methods typically register their data in Euclidean space, so that one can refer to a particular activity pattern by specifying its spatial coordinates. Since each of these methods has limited resolution in either the time or spatial domain, incorporating additional data, such as those obtained from invasive animal studies, would be highly beneficial to link structure and function.Here we describe an approach to spatially register all cortical brain regions from the macaque structural connectivity database CoCoMac, which contains the combined tracing study results from 459 publications (http://cocomac.g-node.org). Brain regions from 9 different brain maps were directly mapped to a standard macaque cortex using the tool Caret (Van Essen and Dierker, 2007). The remaining regions in the CoCoMac database were semantically linked to these 9 maps using previously developed algebraic and machine-learning techniques (Bezgin et al., 2008; Stephan et al., 2000). We analysed neural connectivity using several graph-theoretical measures to capture global properties of the derived network, and found that Markov Centrality provides the most direct link between structure and function. With this registration approach, users can query the CoCoMac database by specifying spatial coordinates. Availability of deformation tools and homology evidence then allow one to directly attribute detailed anatomical animal data to human experimental results.
机译:越来越多地利用诸如EEG / MEG,fMRI和DTI的无创测量方法来提取有关人脑功能和解剖学连接性的定量信息。这些方法通常将其数据记录在欧几里得空间中,以便可以通过指定其空间坐标来引用特定的活动模式。由于这些方法在时域或空间上的分辨率都有限,因此结合其他数据(例如从侵入性动物研究中获得的数据)将对链接结构和功能非常有益。在此,我们介绍一种在空间上注册所有皮层大脑的方法猕猴结构连接性数据库CoCoMac中的区域,其中包含459个出版物(http://cocomac.g-node.org)的组合跟踪研究结果。使用工具Caret(Van Essen and Dierker,2007)将来自9个不同大脑图的大脑区域直接映射到标准猕猴皮层。使用以前开发的代数和机器学习技术,CoCoMac数据库中的其余区域在语义上链接到了这9个图(Bezgin等,2008; Stephan等,2000)。我们使用几种图论方法来分析神经连通性,以捕获派生网络的全局属性,并发现马尔可夫中心性在结构和功能之间提供了最直接的联系。使用这种注册方法,用户可以通过指定空间坐标来查询CoCoMac数据库。然后可以使用变形工具和同源性证据,将详细的解剖动物数据直接归因于人类实验结果。

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