Wang Jianjia, Wu Xichen, Li Mingrui
School of Computer Engineering and Science, Shanghai University, Shanghai 200444, China.
Shanghai Institute for Advanced Communication and Data Science, Shanghai University, Shanghai 200444, China.
Entropy (Basel). 2021 Feb 10;23(2):216. doi: 10.3390/e23020216.
This paper seeks to advance the state-of-the-art in analysing fMRI data to detect onset of Alzheimer's disease and identify stages in the disease progression. We employ methods of network neuroscience to represent correlation across fMRI data arrays, and introduce novel techniques for network construction and analysis. In network construction, we vary thresholds in establishing BOLD time series correlation between nodes, yielding variations in topological and other network characteristics. For network analysis, we employ methods developed for modelling statistical ensembles of virtual particles in thermal systems. The microcanonical ensemble and the canonical ensemble are analogous to two different fMRI network representations. In the former case, there is zero variance in the number of edges in each network, while in the latter case the set of networks have a variance in the number of edges. Ensemble methods describe the macroscopic properties of a network by considering the underlying microscopic characterisations which are in turn closely related to the degree configuration and network entropy. When applied to fMRI data in populations of Alzheimer's patients and controls, our methods demonstrated levels of sensitivity adequate for clinical purposes in both identifying brain regions undergoing pathological changes and in revealing the dynamics of such changes.
本文旨在推动功能磁共振成像(fMRI)数据分析领域的技术发展,以检测阿尔茨海默病的发病情况,并识别疾病进展的阶段。我们采用网络神经科学方法来表示fMRI数据阵列之间的相关性,并引入了网络构建和分析的新技术。在网络构建中,我们在建立节点间血氧水平依赖(BOLD)时间序列相关性时改变阈值,从而产生拓扑结构和其他网络特征方面的变化。对于网络分析,我们采用了为热系统中虚拟粒子统计系综建模而开发的方法。微正则系综和正则系综类似于两种不同的fMRI网络表示。在前一种情况下,每个网络中的边数方差为零,而在后一种情况下,网络集合的边数存在方差。系综方法通过考虑潜在的微观特征来描述网络的宏观特性,而这些微观特征又与度分布和网络熵密切相关。当应用于阿尔茨海默病患者和对照组人群的fMRI数据时,我们的方法在识别发生病理变化的脑区以及揭示此类变化的动态方面,都显示出了足以满足临床目的的灵敏度水平。