Frontiers in Neuroscience (Jun 2019)

Characterizing Whole Brain Temporal Variation of Functional Connectivity via Zero and First Order Derivatives of Sliding Window Correlations

  • Flor A. Espinoza,
  • Flor A. Espinoza,
  • Victor M. Vergara,
  • Victor M. Vergara,
  • Eswar Damaraju,
  • Eswar Damaraju,
  • Kyle G. Henke,
  • Kyle G. Henke,
  • Ashkan Faghiri,
  • Ashkan Faghiri,
  • Ashkan Faghiri,
  • Jessica A. Turner,
  • Jessica A. Turner,
  • Aysenil A. Belger,
  • Judith M. Ford,
  • Judith M. Ford,
  • Sarah C. McEwen,
  • Sarah C. McEwen,
  • Daniel H. Mathalon,
  • Daniel H. Mathalon,
  • Bryon A. Mueller,
  • Steven G. Potkin,
  • Adrian Preda,
  • Jatin G. Vaidya,
  • Theo G. M. van Erp,
  • Theo G. M. van Erp,
  • Vince D. Calhoun,
  • Vince D. Calhoun,
  • Vince D. Calhoun,
  • Vince D. Calhoun

DOI
https://doi.org/10.3389/fnins.2019.00634
Journal volume & issue
Vol. 13

Abstract

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Brain functional connectivity has been shown to change over time during resting state fMRI experiments. Close examination of temporal changes have revealed a small set of whole-brain connectivity patterns called dynamic states. Dynamic functional network connectivity (dFNC) studies have demonstrated that it is possible to replicate the dynamic states across several resting state experiments. However, estimation of states and their temporal dynamicity still suffers from noisy and imperfect estimations. In regular dFNC implementations, states are estimated by comparing connectivity patterns through the data without considering time, in other words only zero order changes are examined. In this work we propose a method that includes first order variations of dFNC in the searching scheme of dynamic connectivity patterns. Our approach, referred to as temporal variation of functional network connectivity (tvFNC), estimates the derivative of dFNC, and then searches for reoccurring patterns of concurrent dFNC states and their derivatives. The tvFNC method is first validated using a simulated dataset and then applied to a resting-state fMRI sample including healthy controls (HC) and schizophrenia (SZ) patients and compared to the standard dFNC approach. Our dynamic approach reveals extra patterns in the connectivity derivatives complementing the already reported state patterns. State derivatives consist of additional information about increment and decrement of connectivity among brain networks not observed by the original dFNC method. The tvFNC shows more sensitivity than regular dFNC by uncovering additional FNC differences between the HC and SZ groups in each state. In summary, the tvFNC method provides a new and enhanced approach to examine time-varying functional connectivity.

Keywords