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帕金森病功能连接的动态图理论分析:特征值的重要性。

Dynamic Graph Theoretical Analysis of Functional Connectivity in Parkinson's Disease: The Importance of Fiedler Value.

出版信息

IEEE J Biomed Health Inform. 2019 Jul;23(4):1720-1729. doi: 10.1109/JBHI.2018.2875456. Epub 2018 Oct 11.

Abstract

Graph theoretical analysis is a powerful tool for quantitatively evaluating brain connectivity networks. Conventionally, brain connectivity is assumed to be temporally stationary, whereas increasing evidence suggests that functional connectivity exhibits temporal variations during dynamic brain activity. Although a number of methods have been developed to estimate time-dependent brain connectivity, there is a paucity of studies examining the utility of brain dynamics for assessing brain disease states. Therefore, this paper aims to assess brain connectivity dynamics in Parkinson's disease (PD) and determine the utility of such dynamic graph measures as potential components to an imaging biomarker. Resting-state functional magnetic resonance imaging data were collected from 29 healthy controls and 69 PD subjects. Time-varying functional connectivity was first estimated using a sliding windowed sparse inverse covariance matrix. Then, a collection of graph measures, including the Fiedler value, were computed and the dynamics of the graph measures were investigated. The results demonstrated that PD subjects had a lower variability in the Fiedler value, modularity, and global efficiency, indicating both abnormal dynamic global integration and local segregation of brain networks in PD. Autoregressive models fitted to the dynamic graph measures suggested that Fiedler value, characteristic path length, global efficiency, and modularity were all less deterministic in PD. With canonical correlation analysis, the altered dynamics of functional connectivity networks, and particularly dynamic Fiedler value, were shown to be related with disease severity and other clinical variables including age. Similarly, Fiedler value was the most important feature for classification. Collectively, our findings demonstrate altered dynamic graph properties, and in particular the Fiedler value, provide an additional dimension upon which to non-invasively and quantitatively assess PD.

摘要

图论分析是定量评估脑连接网络的有力工具。传统上,脑连接被假设为时间上是静止的,而越来越多的证据表明,在动态脑活动中,功能连接表现出时间变化。尽管已经开发了许多方法来估计时变脑连接,但很少有研究检查脑动力学在评估脑疾病状态中的效用。因此,本文旨在评估帕金森病(PD)中的脑连接动力学,并确定这些动态图测量作为成像生物标志物的潜在成分的效用。从 29 名健康对照者和 69 名 PD 受试者中采集静息态功能磁共振成像数据。首先使用滑动窗口稀疏逆协方差矩阵来估计时变功能连接。然后计算了一系列图测量值,包括费尔德值,并研究了图测量值的动态变化。结果表明,PD 患者的费尔德值、模块性和全局效率的变异性较低,表明 PD 患者的脑网络存在异常的动态全局整合和局部分离。对动态图测量值的自回归模型拟合表明,PD 患者的费尔德值、特征路径长度、全局效率和模块性的确定性都较低。通过典型相关分析,功能连接网络的改变动态,特别是动态费尔德值,与疾病严重程度和其他临床变量(包括年龄)有关。同样,费尔德值是分类的最重要特征。总的来说,我们的发现表明改变的动态图特性,特别是费尔德值,为非侵入性和定量评估 PD 提供了一个额外的维度。

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