Central Institute of Mental Health, University of Heidelberg, J5, 68159 Mannheim, Germany.
Neuroimage. 2012 Jan 16;59(2):1404-12. doi: 10.1016/j.neuroimage.2011.08.044. Epub 2011 Aug 23.
Characterizing the brain connectome using neuroimaging data and measures derived from graph theory emerged as a new approach that has been applied to brain maturation, cognitive function and neuropsychiatric disorders. For a broad application of this method especially for clinical populations and longitudinal studies, the reliability of this approach and its robustness to confounding factors need to be explored. Here we investigated test-retest reliability of graph metrics of functional networks derived from functional magnetic resonance imaging (fMRI) recorded in 33 healthy subjects during rest. We constructed undirected networks based on the Anatomic-Automatic-Labeling (AAL) atlas template and calculated several commonly used measures from the field of graph theory, focusing on the influence of different strategies for confound correction. For each subject, method and session we computed the following graph metrics: clustering coefficient, characteristic path length, local and global efficiency, assortativity, modularity, hierarchy and the small-worldness scalar. Reliability of each graph metric was assessed using the intraclass correlation coefficient (ICC). Overall ICCs ranged from low to high (0 to 0.763) depending on the method and metric. Methodologically, the use of a broader frequency band (0.008-0.15 Hz) yielded highest reliability indices (mean ICC=0.484), followed by the use of global regression (mean ICC=0.399). In general, the second order metrics (small-worldness, hierarchy, assortativity) studied here, tended to be more robust than first order metrics. In conclusion, our study provides methodological recommendations which allow the computation of sufficiently robust markers of network organization using graph metrics derived from fMRI data at rest.
使用神经影像学数据和图论衍生测量来描绘大脑连接组学已成为一种新方法,已被应用于大脑成熟度、认知功能和神经精神疾病研究。为了更广泛地应用这种方法,特别是在临床人群和纵向研究中,需要探索这种方法的可靠性及其对混杂因素的稳健性。在这里,我们研究了 33 名健康受试者在休息时进行功能性磁共振成像 (fMRI) 记录的功能性网络的图论度量的测试-重测可靠性。我们基于解剖自动标记 (AAL) 图谱模板构建无向网络,并计算了图论领域的几个常用指标,重点关注混杂因素校正策略的影响。对于每个主题、方法和会话,我们计算了以下图论指标:聚类系数、特征路径长度、局部和全局效率、聚类系数、模块性、层次结构和小世界性标度。使用组内相关系数 (ICC) 评估每个图论指标的可靠性。总体 ICC 范围从低到高 (0 到 0.763),具体取决于方法和指标。在方法学上,使用更宽的频带 (0.008-0.15 Hz) 可产生最高的可靠性指数 (平均 ICC=0.484),其次是使用全局回归 (平均 ICC=0.399)。总的来说,这里研究的二阶指标 (小世界性、层次结构、聚类系数) 比一阶指标更稳健。总之,我们的研究提供了方法学建议,可以使用静息态 fMRI 数据计算出足够稳健的网络组织图论指标。