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Cross-covariance isolate detect: a new change-point method for estimating dynamic functional connectivity

Andreas Anastasiou, Ivor Cribben, Piotr Fryzlewicz
doi: https://doi.org/10.1101/2020.12.20.423696
Andreas Anastasiou
aDepartment of Mathematics and Statistics, University of Cyprus
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Ivor Cribben
bDepartment of Accounting and Business Analytics, Alberta School of Business, University of Alberta
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  • For correspondence: cribben@ualberta.ca
Piotr Fryzlewicz
cDepartment of Statistics, London School of Economics
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Abstract

Evidence of the non stationary behavior of functional connectivity (FC) networks has been observed in task based functional magnetic resonance imaging (fMRI) experiments and even prominently in resting state fMRI data. This has led to the development of several new statistical methods for estimating this time-varying connectivity, with the majority of the methods utilizing a sliding window approach. While computationally feasible, the sliding window approach has several limitations. In this paper, we circumvent the sliding window, by introducing a statistical method that finds change-points in FC networks where the number and location of change-points are unknown a priori. The new method, called cross-covariance isolate detect (CCID), detects multiple change-points in the second-order (cross-covariance or network) structure of multivariate, possibly high-dimensional time series. CCID allows for change-point detection in the presence of frequent changes of possibly small magnitudes, can assign change-points to one or multiple brain regions, and is computationally fast. In addition, CCID is particularly suited to task based data, where the subject alternates between task and rest, as it firstly attempts isolation of each of the change-points within subintervals, and secondly their detection therein. Furthermore, we also propose a new information criterion for CCID to identify the change-points. We apply CCID to several simulated data sets and to task based and resting state fMRI data and compare it to recent change-point methods. CCID is also applicable to electroencephalography (EEG), magentoencephalography (MEG) and electrocorticography (ECoG) data. Similar to other biological networks, understanding the complex network organization and functional dynamics of the brain can lead to profound clinical implications. Finally, the R package ccid implementing the method from the paper is available from GitHub.

Competing Interest Statement

The authors have declared no competing interest.

Footnotes

  • ↵* Joint first authors

  • ** Email address: anastasiou.andreas{at}ucy.ac.cy, cribben{at}ualberta.ca, p.fryzlewicz{at}lse.ac.uk

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. All rights reserved. No reuse allowed without permission.
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Posted December 22, 2020.
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Cross-covariance isolate detect: a new change-point method for estimating dynamic functional connectivity
Andreas Anastasiou, Ivor Cribben, Piotr Fryzlewicz
bioRxiv 2020.12.20.423696; doi: https://doi.org/10.1101/2020.12.20.423696
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Cross-covariance isolate detect: a new change-point method for estimating dynamic functional connectivity
Andreas Anastasiou, Ivor Cribben, Piotr Fryzlewicz
bioRxiv 2020.12.20.423696; doi: https://doi.org/10.1101/2020.12.20.423696

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