COHERENCE-BASED TIME SERIES CLUSTERING FOR STATISTICAL INFERENCE AND VISUALIZATION OF BRAIN CONNECTIVITY

成果类型:
Article
署名作者:
Euan, Carolina; Sun, Ying; Ombao, Hernando
署名单位:
King Abdullah University of Science & Technology
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/18-AOAS1225
发表日期:
2019
页码:
990-1015
关键词:
functional connectivity automatic estimation
摘要:
We develop the hierarchical cluster coherence (HCC) method for brain signals, a procedure for characterizing connectivity in a network by clustering nodes or groups of channels that display a high level of coordination as measured by cluster-coherence. While the most common approach to measure dependence between clusters is through pairs of single time series, our method proposes cluster coherence which measures dependence between pairs of whole clusters rather than between single elements. Thus it takes into account both the dependence between clusters and within channels in a cluster. The identified clusters contain time series that exhibit high cross-dependence in the spectral domain. Simulation studies demonstrate that the proposed HCC method is competitive with the other feature-based clustering methods. To study clustering in a network of multichannel electroencephalograms (EEG) during an epileptic seizure, we applied the HCC method and identified connectivity on alpha (8, 12) Hertz and beta (16, 30) Hertz bands at different phases of the recording: before an epileptic seizure, during the early and middle phases of the seizure episode. To increase the potential impact of HCC in neuroscience, we also developed the HCC-Vis, an R-Shiny app (RStudio), which can be downloaded from https://carolinaeuan.shinyapps.io/hcc-vis/.
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