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Selection of Efficient Clustering Index to Estimate the Number of Dynamic Brain States from Functional Network Connectivity*

机译:选择有效的聚类指数以通过功能网络连接来估计动态大脑状态的数量*

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Clustering analysis is employed in brain dynamic functional connectivity to cluster the data into a set of dynamic states. These states correspond to different patterns of functional connectivity that iterate through time. Although several methods to determine the best clustering partition exists, the appropriateness of methods to apply in the case of dynamic connectivity analysis has not been determined. In this work we examine the use of the Davies-Bouldin clustering validity index via simulation and real data analysis. Currently employed indexes, such as the Silhouette index, do not provide an effective estimation requiring the use of an elbow criterion. All elbow criteria rely on users experience and introduce uncertainty into the estimation. We demonstrate the feasibility of using the Davies-Bouldin index as a method delivering a unique discrete response to provide automated selection of the number of clusters.
机译:聚类分析用于大脑动态功能连接中,以将数据聚类为一组动态状态。这些状态对应于随着时间反复进行的功能连接的不同模式。尽管存在几种确定最佳聚类分区的方法,但尚未确定在动态连接性分析的情况下要应用的方法的适当性。在这项工作中,我们通过模拟和真实数据分析来检验Davies-Bouldin聚类有效性指标的使用。当前采用的索引,例如Silhouette索引,不能提供需要使用弯头准则的有效估计。所有的肘标准都取决于用户的经验并将不确定性引入估计中。我们展示了使用Davies-Bouldin索引作为传递唯一离散响应以提供集群数量自动选择的方法的可行性。

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