State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing, China.
PLoS One. 2011;6(7):e21976. doi: 10.1371/journal.pone.0021976. Epub 2011 Jul 19.
Graph-based computational network analysis has proven a powerful tool to quantitatively characterize functional architectures of the brain. However, the test-retest (TRT) reliability of graph metrics of functional networks has not been systematically examined. Here, we investigated TRT reliability of topological metrics of functional brain networks derived from resting-state functional magnetic resonance imaging data. Specifically, we evaluated both short-term (<1 hour apart) and long-term (>5 months apart) TRT reliability for 12 global and 6 local nodal network metrics. We found that reliability of global network metrics was overall low, threshold-sensitive and dependent on several factors of scanning time interval (TI, long-term>short-term), network membership (NM, networks excluding negative correlations>networks including negative correlations) and network type (NT, binarized networks>weighted networks). The dependence was modulated by another factor of node definition (ND) strategy. The local nodal reliability exhibited large variability across nodal metrics and a spatially heterogeneous distribution. Nodal degree was the most reliable metric and varied the least across the factors above. Hub regions in association and limbic/paralimbic cortices showed moderate TRT reliability. Importantly, nodal reliability was robust to above-mentioned four factors. Simulation analysis revealed that global network metrics were extremely sensitive (but varying degrees) to noise in functional connectivity and weighted networks generated numerically more reliable results in compared with binarized networks. For nodal network metrics, they showed high resistance to noise in functional connectivity and no NT related differences were found in the resistance. These findings provide important implications on how to choose reliable analytical schemes and network metrics of interest.
基于图的计算网络分析已被证明是一种定量描述大脑功能架构的强大工具。然而,功能网络的图度量的测试-重测(TRT)可靠性尚未得到系统的检验。在这里,我们研究了静息态功能磁共振成像数据得出的功能脑网络拓扑度量的 TRT 可靠性。具体来说,我们评估了 12 个全局和 6 个局部节点网络度量的短期(相隔不到 1 小时)和长期(相隔超过 5 个月)TRT 可靠性。我们发现,全局网络度量的可靠性总体较低,对扫描时间间隔(TI,长期>短期)、网络成员(NM,排除负相关的网络>包括负相关的网络)和网络类型(NT,二值网络>加权网络)等因素敏感。这种依赖性受节点定义(ND)策略的另一个因素的调节。局部节点的可靠性在节点度量之间表现出很大的可变性,并且具有空间异质性分布。节点度是最可靠的度量指标,在上述因素中变化最小。联合和边缘/边缘皮层中的枢纽区域显示出中度的 TRT 可靠性。重要的是,节点可靠性对上述四个因素具有很强的鲁棒性。模拟分析表明,全局网络度量对功能连接中的噪声极其敏感(但程度不同),与二值网络相比,数值生成的加权网络产生了更可靠的结果。对于节点网络度量,它们对功能连接中的噪声具有很高的抵抗力,并且在抵抗中没有发现与 NT 相关的差异。这些发现对如何选择可靠的分析方案和感兴趣的网络度量具有重要意义。