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      Evaluation of sliding window correlation performance for characterizing dynamic functional connectivity and brain states

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          Abstract

          A promising recent development in the study of brain function is the dynamic analysis of resting-state functional MRI scans, which can enhance understanding of normal cognition and alterations that result from brain disorders. One widely used method of capturing the dynamics of functional connectivity is sliding window correlation (SWC). However, in the absence of a “gold standard” for comparison, evaluating the performance of the SWC in typical resting-state data is challenging. This study uses simulated networks (SNs) with known transitions to examine the effects of parameters such as window length, window offset, window type, noise, filtering, and sampling rate on the SWC performance. The SWC time course was calculated for all node pairs of each SN and then clustered using the k-means algorithm to determine how resulting brain states match known configurations and transitions in the SNs. The outcomes show that the detection of state transitions and durations in the SWC is most strongly influenced by the window length and offset, followed by noise and filtering parameters. The effect of the image sampling rate was relatively insignificant. Tapered windows provide less sensitivity to state transitions than rectangular windows, which could be the result of the sharp transitions in the SNs. Overall, the SWC gave poor estimates of correlation for each brain state. Clustering based on the SWC time course did not reliably reflect the underlying state transitions unless the window length was comparable to the state duration, highlighting the need for new adaptive window analysis techniques.

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          Author and article information

          Journal
          9215515
          20498
          Neuroimage
          Neuroimage
          NeuroImage
          1053-8119
          1095-9572
          29 March 2016
          04 March 2016
          June 2016
          01 June 2017
          : 133
          : 111-128
          Affiliations
          [a ] Georgia Institute of Technology, Electrical and Computer Engineering, Atlanta, GA, USA
          [b ] Georgia Institute of Technology, Biomedical Engineering, Atlanta, GA, USA
          [c ] Emory University, Biomedical Engineering, Atlanta, GA, USA
          Author notes
          [1]

          Postal address: 75 Fifth Street NW. Atlanta, GA 30308.

          [2]

          Postal address: 225 North Ave NW Atlanta, GA 30332, USA.

          [* ] Corresponding author at: 1760 Haygood Dr, HSRB W230, Atlanta, GA 30322, USA. shella.keilholz@ 123456bme.gatech.edu (S.D. Keilholz).
          Article
          PMC4889509 PMC4889509 4889509 nihpa772416
          10.1016/j.neuroimage.2016.02.074
          4889509
          26952197
          050377d7-1b53-41dc-b8c1-4a5389119f62
          History
          Categories
          Article

          Resting-state functional MRI,Functional connectivity,Sliding window correlation,Network dynamics,k-Means,States

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