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Effect of Multishell Diffusion MRI Acquisition Strategy and Parcellation Scale on Rich-Club Organization of Human Brain Structural Networks

机译:多种扩散MRI采集策略与局域网对人脑结构网络组织的影响

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摘要

The majority of network studies of human brain structural connectivity are based on single-shell diffusion-weighted imaging (DWI) data. Recent advances in imaging hardware and software capabilities have made it possible to acquire multishell (b-values) high-quality data required for better characterization of white-matter crossing-fiber microstructures. The purpose of this study was to investigate the extent to which brain structural organization and network topology are affected by the choice of diffusion magnetic resonance imaging (MRI) acquisition strategy and parcellation scale. We performed graph-theoretical network analysis using DWI data from 35 Human Connectome Project subjects. Our study compared four single-shell (b = 1000, 3000, 5000, 10,000 s/mm2) and multishell sampling schemes and six parcellation scales (68, 200, 400, 600, 800, 1000 nodes) using five graph metrics, including small-worldness, clustering coefficient, characteristic path length, modularity and global efficiency. Rich-club analysis was also performed to explore the rich-club organization of brain structural networks. Our results showed that the parcellation scale and imaging protocol have significant effects on the network attributes, with the parcellation scale having a substantially larger effect. Regardless of the parcellation scale, the brain structural networks exhibited a rich-club organization with similar cortical distributions across the parcellation scales involving at least 400 nodes. Compared to single b-value diffusion acquisitions, the deterministic tractography using multishell diffusion imaging data consisting of shells with b-values higher than 5000 s/mm2 resulted in significantly improved fiber-tracking results at the locations where fiber bundles cross each other. Brain structural networks constructed using the multishell acquisition scheme including high b-values also exhibited significantly shorter characteristic path lengths, higher global efficiency and lower modularity. Our results showed that both parcellation scale and sampling protocol can significantly impact the rich-club organization of brain structural networks. Therefore, caution should be taken concerning the reproducibility of connectivity results with regard to the parcellation scale and sampling scheme.
机译:大多数人的大脑结构的连接的网络的研究都是基于单壳扩散加权成像(DWI)的数据。在成像硬件和软件能力的最新进展已经使人们有可能多壳(b值)获取用于的白质交叉纤维的微结构更好表征所需的高品质的数据。这项研究的目的是调查到的脑组织结构和网络拓扑是通过扩散磁共振成像(MRI)的收购战略和规模地块划分的选择受影响的程度。我们使用从35名人的连接组项目受试者DWI数据图论网络分析。我们的研究比较了四种单壳(B = 1000,3000,5000,10,000S /平方毫米)和多壳取样方案和六个地块划分刻度(68,200,400,600,800,1000个节点)使用五个图表的度量,包括小-worldness,聚类系数,特征路径长度,模块化和全球效率。还进行了富人俱乐部分析,探讨脑结构网络的富人俱乐部组织。我们的研究结果表明,该比例地块划分和成像协议对网络属性显著效果,与具有基本上更大效应的规模地块划分。无论规模地块划分的,大脑结构网络表现出丰富的俱乐部组织,跨涉及至少400个节点的规模地块划分类似皮质的分布。相比于单b值扩散收购,使用由与b值壳5000 s时多壳扩散成像数据确定性示踪/平方毫米导致在其中纤维束彼此交叉的位置显著改进的纤维跟踪结果。脑结构的网络使用多壳采集方案包括高b值也表现出更短的显著特性的路径长度,更高的全球效率和更低的模块化构造。我们的研究结果表明,两种规模的地块划分和抽样协议可以显著影响大脑结构网络的富人俱乐部组织。因此,应谨慎关于连接结果的可重复性相对于规模地块划分和采样方案服用。

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