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Test-Retest Reliability of Graph Metrics in High-resolution Functional Connectomics: A Resting-State Functional MRI Study

机译:高分辨率功能Connectomics中图形度量的重测可靠性:静态功能MRI研究

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Background: The combination of resting-state functional MRI (R-fMRI) technique and graph theoretical approaches has emerged as a promising tool for characterizing the topological organization of brain networks, that is, functional connectomics. In particular, the construction and analysis of high-resolution brain connectomics at a voxel scale are important because they do not require prior regional parcellations and provide finer spatial information about brain connectivity. However, the test-retest reliability of voxel-based functional connectomics remains largely unclear. Aims: This study tended to investigate both short-term (similar to 20 min apart) and long-term (6 weeks apart) test-retest (TRT) reliability of graph metrics of voxel-based brain networks. Methods: Based on graph theoretical approaches, we analyzed R-fMRI data from 53 young healthy adults who completed two scanning sessions (session 1 included two scans 20 min apart; session 2 included one scan that was performed after an interval of similar to 6 weeks). Results: The high-resolution networks exhibited prominent small-world and modular properties and included functional hubs mainly located at the default-mode, salience, and executive control systems. Further analysis revealed that test-retest reliabilities of network metrics were sensitive to the scanning orders and intervals, with fair to excellent long-term reliability between Scan 1 and Scan 3 and lower reliability involving Scan 2. In the long-term case (Scan 1 and Scan 3), most network metrics were generally test-retest reliable, with the highest reliability in global metrics in the clustering coefficient and in the nodal metrics in nodal degree and efficiency. Conclusion: We showed high test-retest reliability for graph properties in the high-resolution functional connectomics, which provides important guidance for choosing reliable network metrics and analysis strategies in future studies.
机译:背景:静止状态功能MRI(R-fMRI)技术和图论方法的结合已成为一种有前途的工具,可用于表征脑部网络的拓扑组织,即功能性连接组学。特别是,在体素尺度上构建和分析高分辨率脑部连接学非常重要,因为它们不需要事先进行区域分割并提供有关脑部连接的更精细的空间信息。但是,基于体素的功能连接组学的重测可靠性仍然很大程度上不清楚。目的:本研究倾向于研究基于体素的大脑网络图形指标的短期(相隔20分钟)和长期(相隔6周)的重测(TRT)可靠性。方法:基于图论方法,我们分析了53位年轻健康成年人的R-fMRI数据,这些成年人完成了两次扫描会议(第1次会议相隔20分钟进行两次扫描;第2次会议进行了间隔约6周的一次扫描) )。结果:高分辨率网络展现出突出的小世界和模块化特性,并且包括主要位于默认模式,显着性和执行控制系统的功能集线器。进一步的分析表明,网络度量标准的重测可靠性对扫描顺序和间隔很敏感,在扫描1和扫描3之间的长期可靠性中等到极好,而在扫描2中的可靠性较低。在长期情况下(扫描1和扫描3),大多数网络指标通常都可以重测可靠,在全局指标中,聚类系数的可靠性最高,而在节点度和效率方面的可靠性最高。结论:我们在高分辨率功能连接组学中显示了图属性的高度重测可靠性,这为在以后的研究中选择可靠的网络指标和分析策略提供了重要的指导。

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