Department of Translational Neuroscience, The Mind Research Network, Albuquerque, New Mexico.
Department of Psychology and Neuroscience, Georgia State University, Atlanta, Georgia.
Hum Brain Mapp. 2019 Apr 15;40(6):1955-1968. doi: 10.1002/hbm.24504. Epub 2019 Jan 7.
Dynamic functional network connectivity (dFNC) is an expansion of traditional, static FNC that measures connectivity variation among brain networks throughout scan duration. We used a large resting-state fMRI (rs-fMRI) sample from the PREDICT-HD study (N = 183 Huntington disease gene mutation carriers [HDgmc] and N = 78 healthy control [HC] participants) to examine whole-brain dFNC and its associations with CAG repeat length as well as the product of scaled CAG length and age, a variable representing disease burden. We also tested for relationships between functional connectivity and motor and cognitive measurements. Group independent component analysis was applied to rs-fMRI data to obtain whole-brain resting state networks. FNC was defined as the correlation between RSN time-courses. Dynamic FNC behavior was captured using a sliding time window approach, and FNC results from each window were assigned to four clusters representing FNC states, using a k-means clustering algorithm. HDgmc individuals spent significantly more time in State-1 (the state with the weakest FNC pattern) compared to HC. However, overall HC individuals showed more FNC dynamism than HDgmc. Significant associations between FNC states and genetic and clinical variables were also identified. In FNC State-4 (the one that most resembled static FNC), HDgmc exhibited significantly decreased connectivity between the putamen and medial prefrontal cortex compared to HC, and this was significantly associated with cognitive performance. In FNC State-1, disease burden in HDgmc participants was significantly associated with connectivity between the postcentral gyrus and posterior cingulate cortex, as well as between the inferior occipital gyrus and posterior parietal cortex.
动态功能网络连接(dFNC)是传统静态功能网络连接的扩展,用于测量扫描过程中大脑网络之间的连接变化。我们使用来自 PREDICT-HD 研究的大型静息态 fMRI(rs-fMRI)样本(N=183 名亨廷顿病基因突变携带者[HDgmc]和 N=78 名健康对照[HC]参与者),来研究全脑 dFNC 及其与 CAG 重复长度以及 scaled CAG 长度与年龄乘积(代表疾病负担的变量)的关联。我们还测试了功能连接与运动和认知测量之间的关系。对 rs-fMRI 数据应用组独立成分分析以获得全脑静息状态网络。FNC 被定义为 RSN 时间过程之间的相关性。使用滑动时间窗口方法捕获动态 FNC 行为,使用 k-均值聚类算法将每个窗口的 FNC 结果分配到四个代表 FNC 状态的聚类中。与 HC 相比,HDgmc 个体在状态 1(FNC 模式最弱的状态)中花费的时间明显更多。然而,总体上 HC 个体比 HDgmc 个体表现出更多的 FNC 动态性。还确定了 FNC 状态与遗传和临床变量之间的显著关联。在 FNC 状态 4(最类似于静态 FNC 的状态)中,与 HC 相比,HDgmc 个体的壳核和内侧前额叶皮质之间的连接显著降低,这与认知表现显著相关。在 FNC 状态 1 中,HDgmc 参与者的疾病负担与中央后回和后扣带回皮质之间以及下顶叶回和后顶叶皮质之间的连接显著相关。