School of Engineering, RMIT University, Melbourne, Australia.
Sci Rep. 2016 Jul 15;6:29780. doi: 10.1038/srep29780.
The human brain can be modelled as a complex networked structure with brain regions as individual nodes and their anatomical/functional links as edges. Functional brain networks are constructed by first extracting weighted connectivity matrices, and then binarizing them to minimize the noise level. Different methods have been used to estimate the dependency values between the nodes and to obtain a binary network from a weighted connectivity matrix. In this work we study topological properties of EEG-based functional networks in Alzheimer's Disease (AD). To estimate the connectivity strength between two time series, we use Pearson correlation, coherence, phase order parameter and synchronization likelihood. In order to binarize the weighted connectivity matrices, we use Minimum Spanning Tree (MST), Minimum Connected Component (MCC), uniform threshold and density-preserving methods. We find that the detected AD-related abnormalities highly depend on the methods used for dependency estimation and binarization. Topological properties of networks constructed using coherence method and MCC binarization show more significant differences between AD and healthy subjects than the other methods. These results might explain contradictory results reported in the literature for network properties specific to AD symptoms. The analysis method should be seriously taken into account in the interpretation of network-based analysis of brain signals.
人脑可以被建模为一个复杂的网络结构,其中大脑区域是单个节点,它们的解剖/功能连接是边缘。功能大脑网络是通过首先提取加权连接矩阵,然后将其二值化以最小化噪声水平来构建的。已经使用了不同的方法来估计节点之间的依赖值,并从加权连接矩阵中获得二进制网络。在这项工作中,我们研究了阿尔茨海默病(AD)中基于 EEG 的功能网络的拓扑性质。为了估计两个时间序列之间的连接强度,我们使用 Pearson 相关系数、相干性、相位顺序参数和同步似然。为了二值化加权连接矩阵,我们使用最小生成树(MST)、最小连通分量(MCC)、均匀阈值和密度保持方法。我们发现,检测到的与 AD 相关的异常高度依赖于用于依赖性估计和二值化的方法。使用相干性方法和 MCC 二值化构建的网络的拓扑性质显示出 AD 患者与健康受试者之间的差异比其他方法更为显著。这些结果可能解释了文献中报道的特定于 AD 症状的网络属性的矛盾结果。在解释基于大脑信号的网络分析时,应该认真考虑分析方法。