Department of Psychiatry and Biobehavioral Sciences, Center for Cognitive Neuroscience, University of California Los Angeles Los Angeles, CA, USA.
Front Hum Neurosci. 2013 Sep 2;7:520. doi: 10.3389/fnhum.2013.00520. eCollection 2013.
Functional network connectivity (FNC) is a method of analyzing the temporal relationship of anatomical brain components, comparing the synchronicity between patient groups or conditions. We use functional-connectivity measures between independent components to classify between Schizophrenia patients and healthy controls during resting-state. Connectivity is measured using a variety of graph-theoretic connectivity measures such as graph density, average path length, and small-worldness. The Schizophrenia patients showed significantly less clustering (transitivity) among components than healthy controls (p < 0.05, corrected) with networks less likely to be connected, and also showed lower small-world connectivity than healthy controls. Using only these connectivity measures, an SVM classifier (without parameter tuning) could discriminate between Schizophrenia patients and healthy controls with 65% accuracy, compared to 51% chance. This implies that the global functional connectivity between resting-state networks is altered in Schizophrenia, with networks more likely to be disconnected and behave dissimilarly for diseased patients. We present this research finding as a tutorial using the publicly available COBRE dataset of 146 Schizophrenia patients and healthy controls, provided as part of the 1000 Functional Connectomes Project. We demonstrate preprocessing, using independent component analysis (ICA) to nominate networks, computing graph-theoretic connectivity measures, and finally using these connectivity measures to either classify between patient groups or assess between-group differences using formal hypothesis testing. All necessary code is provided for both running command-line FSL preprocessing, and for computing all statistical measures and SVM classification within R. Collectively, this work presents not just findings of diminished FNC among resting-state networks in Schizophrenia, but also a practical connectivity tutorial.
功能网络连接(FNC)是一种分析大脑解剖结构之间时间关系的方法,用于比较患者组或不同状态之间的同步性。我们使用独立成分之间的功能连接测量值,在静息状态下对精神分裂症患者和健康对照组进行分类。连接性是通过各种图论连接性测量来衡量的,例如图密度、平均路径长度和小世界性。与健康对照组相比,精神分裂症患者的组件之间的聚类(传递性)明显减少(p < 0.05,校正),网络连接的可能性降低,并且小世界连接性也低于健康对照组。仅使用这些连接性测量值,SVM 分类器(无需参数调整)可以以 65%的准确率区分精神分裂症患者和健康对照组,而机会仅为 51%。这意味着静息状态网络之间的全局功能连接在精神分裂症中发生改变,网络更可能断开连接,并且对患病患者的行为表现不同。我们使用公开的 COBRE 数据集(包含 146 名精神分裂症患者和健康对照组)作为 1000 个功能连接组项目的一部分,展示了这项研究结果。我们演示了预处理,使用独立成分分析(ICA)来提名网络,计算图论连接性测量值,最后使用这些连接性测量值来对患者组进行分类,或使用正式的假设检验评估组间差异。提供了用于运行命令行 FSL 预处理以及在 R 中计算所有统计测量值和 SVM 分类的所有必要代码。总之,这项工作不仅展示了静息状态网络中精神分裂症患者功能连接性降低的发现,还提供了一个实用的连接性教程。