Smith Keith, Abasolo Daniel, Escudero Javier
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:2826-2829. doi: 10.1109/EMBC.2016.7591318.
The Cluster-Span Threshold (CST) is a recently introduced unbiased threshold for functional connectivity networks. This binarisation technique offers a natural trade-off of sparsity and density of information by balancing the ratio of closed to open triples in the network topology. Here we present findings comparing it with the Union of Shortest Paths (USP), another recently proposed objective method. We analyse standard network metrics of binarised networks for sensitivity to clinical Alzheimer's disease in the Beta band of Electroencephalogram activity. We find that the CST outperforms the USP, as well as subjective thresholds based on fixing the network density, as a sensitive threshold for distinguishing differences in the functional connectivity between Alzheimer's disease patients and control. This study provides the first evidence of the usefulness of the CST for clinical research purposes.
簇跨度阈值(CST)是最近引入的一种用于功能连接网络的无偏阈值。这种二值化技术通过平衡网络拓扑中封闭三元组与开放三元组的比例,提供了一种信息稀疏性和密度的自然权衡。在此,我们展示了将其与最短路径联合(USP)(另一种最近提出的客观方法)进行比较的研究结果。我们分析了二值化网络的标准网络指标,以评估其对脑电图活动β波段临床阿尔茨海默病的敏感性。我们发现,作为区分阿尔茨海默病患者与对照组功能连接差异的敏感阈值,CST优于USP以及基于固定网络密度的主观阈值。本研究首次证明了CST用于临床研究目的的有效性。