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      Detection of functional brain network reconfiguration during task-driven cognitive states

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          Abstract

          Network science offers computational tools to elucidate the complex patterns of interactions evident in neuroimaging data. Recently, these tools have been used to detect dynamic changes in network connectivity that may occur at short time scales. The dynamics of fMRI connectivity, and how they differ across timescales, are far from understood. A simple way to interrogate dynamics at different timescales is to alter the size of the time window used to extract sequential (or rolling) measures of functional connectivity. Here, in n = 82 participants performing three distinct cognitive visual tasks in recognition memory and strategic attention, we subdivided regional BOLD time series into variable sized time windows and determined the impact of time window size on observed dynamics. Specifically, we applied a multilayer community detection algorithm to identify temporal communities and we calculated network flexibility to quantify changes in these communities over time. Within our frequency band of interest, large and small windows were associated with a narrow range of network flexibility values across the brain, while medium time windows were associated with a broad range of network flexibility values. Using medium time windows of size 75–100 s, we uncovered brain regions with low flexibility (considered core regions, and observed in visual and attention areas) and brain regions with high flexibility (considered periphery regions, and observed in subcortical and temporal lobe regions) via comparison to appropriate dynamic network null models. Generally, this work demonstrates the impact of time window length on observed network dynamics during task performance, offering pragmatic considerations in the choice of time window in dynamic network analysis. More broadly, this work reveals organizational principles of brain functional connectivity that are not accessible with static network approaches.

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          Author and article information

          Journal
          9215515
          20498
          Neuroimage
          Neuroimage
          NeuroImage
          1053-8119
          1095-9572
          15 June 2016
          31 May 2016
          15 November 2016
          15 November 2017
          : 142
          : 198-210
          Affiliations
          [1 ]Department of Bioengineering, University of Pennsylvania, Philadelphia, PA 19104 USA
          [2 ]Army Research Laboratory, Aberdeen Proving Ground, MD 21001 USA
          [3 ]Department of Psychiatry, University of Cambridge, Cambridge, UK
          [4 ]Department Psychological and Brain Science, University of California, Santa Barbara, Santa Barbara, CA 93106 USA
          [5 ]Department of Electrical & Systems Engineering, University of Pennsylvania, Philadelphia, PA 19104 USA
          Author notes
          Corresponding author: Danielle S. Bassett, dsb@ 123456seas.upenn.edu

          Permanent Address: University of Pennsylvania, Department of Bioengineering, 210 S 33 rd St, #240, Philadelphia, PA 19104

          Article
          PMC5133201 PMC5133201 5133201 nihpa795387
          10.1016/j.neuroimage.2016.05.078
          5133201
          27261162
          b0862016-ff98-4437-a3c7-d41366f6636f
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